Skip to main content
Erschienen in: Malaria Journal 1/2011

Open Access 01.12.2011 | Research

Factors associated with mosquito net use by individuals in households owning nets in Ethiopia

verfasst von: Patricia M Graves, Jeremiah M Ngondi, Jimee Hwang, Asefaw Getachew, Teshome Gebre, Aryc W Mosher, Amy E Patterson, Estifanos B Shargie, Zerihun Tadesse, Adam Wolkon, Richard Reithinger, Paul M Emerson, Frank O Richards Jr

Erschienen in: Malaria Journal | Ausgabe 1/2011

Abstract

Background

Ownership of insecticidal mosquito nets has dramatically increased in Ethiopia since 2006, but the proportion of persons with access to such nets who use them has declined. It is important to understand individual level net use factors in the context of the home to modify programmes so as to maximize net use.

Methods

Generalized linear latent and mixed models (GLLAMM) were used to investigate net use using individual level data from people living in net-owning households from two surveys in Ethiopia: baseline 2006 included 12,678 individuals from 2,468 households and a sub-sample of the Malaria Indicator Survey (MIS) in 2007 included 14,663 individuals from 3,353 households. Individual factors (age, sex, pregnancy); net factors (condition, age, net density); household factors (number of rooms [2006] or sleeping spaces [2007], IRS, women's knowledge and school attendance [2007 only], wealth, altitude); and cluster level factors (rural or urban) were investigated in univariate and multi-variable models for each survey.

Results

In 2006, increased net use was associated with: age 25-49 years (adjusted (a) OR = 1.4, 95% confidence interval (CI) 1.2-1.7) compared to children U5; female gender (aOR = 1.4; 95% CI 1.2-1.5); fewer nets with holes (Ptrend = 0.002); and increasing net density (Ptrend < 0.001). Reduced net use was associated with: age 5-24 years (aOR = 0.2; 95% CI 0.2-0.3). In 2007, increased net use was associated with: female gender (aOR = 1.3; 95% CI 1.1-1.6); fewer nets with holes (aOR [all nets in HH good] = 1.6; 95% CI 1.2-2.1); increasing net density (Ptrend < 0.001); increased women's malaria knowledge (Ptrend < 0.001); and urban clusters (aOR = 2.5; 95% CI 1.5-4.1). Reduced net use was associated with: age 5-24 years (aOR = 0.3; 95% CI 0.2-0.4); number of sleeping spaces (aOR [per additional space] = 0.6, 95% CI 0.5-0.7); more old nets (aOR [all nets in HH older than 12 months] = 0.5; 95% CI 0.3-0.7); and increasing household altitude (Ptrend < 0.001).

Conclusion

In both surveys, net use was more likely by women, if nets had fewer holes and were at higher net per person density within households. School-age children and young adults were much less likely to use a net. Increasing availability of nets within households (i.e. increasing net density), and improving net condition while focusing on education and promotion of net use, especially in school-age children and young adults in rural areas, are crucial areas for intervention to ensure maximum net use and consequent reduction of malaria transmission.
Hinweise

Electronic supplementary material

The online version of this article (doi:10.​1186/​1475-2875-10-354) contains supplementary material, which is available to authorized users.
Patricia M Graves, Jeremiah M Ngondi contributed equally to this work.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

PG, JH, RR, FR, TG and PE conceived and planned the study; PG, JH, TG, AM, ES, ZT, AW and RR trained staff, carried out the survey and managed the data; JN and PG undertook data analysis with input from JH, AM, and RR; PG, JN and AP wrote the paper with input from JH, AM, RR, FR, TG, ZT and PE; all authors approved the final draft.

Background

Large donations of free nets have allowed net ownership by households in Africa to increase markedly since 2000 [1], and ownership of long-lasting insecticidal nets (LLIN) in Ethiopia has increased dramatically in the last few years [2, 3]. After an initial peak in ownership and use shortly after distribution, net ownership and use have been observed to drop off in several countries [4, 5].
Clearly, net ownership is a necessary prerequisite for net use. However, whether or not a net owner will use a net every night, some nights, or not at all depends on complex multi-level interactions between individual characteristics, household characteristics, social and cultural factors, community-level factors, aspects of the physical environment and characteristics of the net itself.
In Ethiopia, a decline was observed in net use in households owning nets between two representative household surveys conducted approximately one year apart, and this did not appear to be associated with differences in sampling or any climatic or seasonal differences between the survey years [3]. To investigate further the reasons for the decline, characteristics of nets that may be impacting their use in Ethiopia were studied. Between 2006 and 2007, the proportion of households owning at least one net increased dramatically from 19.6% to 65.6%, but the proportion of nets used the previous night in households owning nets decreased from 85.1% to 56.0% [3, 6]. In the net level analysis, factors independently associated in both surveys with reduced likelihood that a net would be used were: increasing net age, increasing damage of nets, increasing household net density (nets/person), and increasing altitude (> 2,000 m). Factors associated with increased likelihood of a net being used were: increasing wealth index (at both surveys), LLIN net type (in 2006), and household status of indoor residual spraying with insecticide (in 2007) [6].
At the individual level, factors influencing net use have been reported to include age and gender [5, 710], education, occupation/livelihood [1113], degree of control over household decision-making [14], malaria knowledge, beliefs and risk perceptions [5, 1521], perceived benefits and disadvantages of nets [5, 17, 18, 21], trust in health workers providing health education and LLINs [22], knowledge of appropriate net use/care practices, and net-hanging skills [2325]. Household level determinants of net use include household size and composition [14], the number of children under five years of age (U5) in the household, intra-household sleeping arrangements [5, 13, 26], household structure and space [5, 7, 9, 18, 26, 27], household decision-making processes and power structures [14], and use of other vector control measures [14, 19, 28]. At the community level, social norms and values [13], cultural beliefs and practices [13, 20], mechanisms of LLIN distribution and distance to LLIN suppliers [14, 20], rumours about LLINs [20] and social support and pressure [24] all have the potential to influence net use by individuals and within households. For example, white nets may be associated with burial shrouds and death, and free nets may be regarded as toxic or even deliberately harmful to recipient groups [20]. Important environmental factors include climate and temperature [7, 18], perceived mosquito density [19], availability and proximity of land for farming and grazing livestock [13]. Characteristics of the nets themselves, such as their cost, size, shape, colour, physical condition, type of insecticide used and perceived durability have also been shown to influence net use [7, 19, 20], and are likely to interact with individual, household, community and environmental factors in complex ways to determine attitudes towards net use and the feasibility of net use for a given individual or household.
A recent review of literature on determinants of net use highlights the need for greater understanding of these determinants and the relationships between them [29]. In addition, net use among those who own nets is commonly interrupted by temporary, periodic or infrequent conditions, which can inhibit net use even among regular net users. These conditions include travelling, night work, sleeping in the fields during planting or harvest seasons or while tending livestock, attending late-night social events, disruption of usual sleeping arrangements, net unavailability due to washing or dirtiness, extreme fatigue, labour pains, illness or forgetfulness [13, 27, 3032].
This study builds on a previous analysis at the net level [6] of the results of two sequential surveys in Ethiopia [3] that demonstrated certain modifiable factors concerning net use, such as improved net care and replacement. In the previous study, the outcome was use or non-use for each net [6], whereas here factors associated with the outcome of individual use or non-use were investigated. The current study adjusts for both household and net level factors, including the important net age and condition characteristics identified previously [6]. In contrast to most previous studies, including some in Ethiopia [19, 33, 34], this analysis was not restricted to high risk groups (children U5 and pregnant women), but examined net use in all age groups including the 5-24 year old school-age children and young adults, women of reproductive age, and adults age 50 years and older. School-age children are a group generally least protected by insecticide-impregnated nets in Africa [35], including Ethiopia [9].
Since availability of a net in the household is a prerequisite for use, only those households owning at least one net are included in this analysis, to avoid biasing the results by lack of net availability in some households. Net density (i.e. number of nets per person in each household) is also used to account for differing household sizes and intra-household access to nets. The goal of this study is to identify under-served groups and modifiable factors that could be used to better target efforts to increase net use and, hence, assist in long-term reduction of malaria transmission in Ethiopia.

Methods

The study setting and surveys

The characteristics, survey design and sampling for the two surveys analysed here have been described previously [6]. Briefly, the analysis focused on the regional states of Amhara, Oromia and Southern Nations, Nationalities and Peoples' (SNNPR) of Ethiopia. For the baseline survey in 2006, a multi-stage cluster random sampling with probability proportional to population size was used to select 224 clusters with 25 households in each cluster. For the Malaria Indicator Survey (MIS) in 2007, a nationally representative sample was selected using a two-stage design stratified by three domains: areas below 1,500 m, rural areas between 1,500 m and 2,500 m, and urban areas between 1,500 m and 2,500 m. To enable comparisons with the baseline survey, only MIS 2007 clusters for three regional states, Amhara, Oromia and SNNPR, were included in the analysis presented here. This is referred to as the MIS 3R 2007 sub-sample and comprised 245 clusters defined as census enumeration areas (EA). A simple random sample of 25 households was selected from all mapped households in each EA, with altitude and location of each household recorded using personal digital assistants equipped with Global Positioning System capability.

Outcome and risk factor measurement

The survey questionnaires were both based on the MIS Household Questionnaire modified for the local conditions to include socio-economic factors [36] as has been described previously [37]. The questionnaire was translated and conducted in Amharic language and pilot-tested in a non-survey cluster to determine the validity of the pre-coded answers. Interviews were conducted with the head of household, or another adult if the head of household was absent or unable to respond for any reason.
During the interviews, age and gender of all residents was recorded; and the number of rooms (2006) or sleeping spaces (2007) noted. The respondents were asked about mosquito nets in their household: presence, number, type and who used which nets the previous night. Both surveys used net rosters to associate individuals with specific observed nets.
Reports of recent (within the last 12 months) indoor residual spraying of the household with insecticide were recorded. At MIS 2007, women of reproductive age completed the malaria knowledge questionnaire which included questions assessing knowledge of the cause, symptoms, danger signs, and preventive measures of malaria.

Statistical methods

Figure 1 summarizes the framework for analysis of association between use of net and explanatory factors. The analysis was restricted to participants living in households owning at least one net. Each survey was considered separately. The reported use (or not) of a net by individuals the previous night was the dependent variable. Since this analysis was at the individual level, in order to examine characteristics of all nets in the household, including those not slept under, we developed summary variables for the age and condition of the nets in each household. Households with nets were classified as having 'none', 'some' or 'all' nets in good condition (i.e. a net without any holes). Proportion of nets older than one year was defined as households having 'none', 'some' or 'all' nets for 12 months or more. Net density was calculated by dividing the number of nets in a household by the number of people in the household.
The household wealth index was derived from relevant household characteristics using principal components analysis as previously described [38] and terciles defined (poorest, middle, richest). For the MIS 3R 2007, malaria knowledge score was derived based on methods previously described by Hwang et al. [15]. In brief, from the malaria knowledge questionnaire, a composite malaria knowledge score was calculated for each woman where every correct answer received a single point. The maximum knowledge score achieved out of 3,055 women was 18, but the median was 4 and 97% of women scored less than 10. Most households (2,392 of 2,701 or 89%) had only one woman respondent, 232 (10%) had two, 30 (1.1%) had three, 6 (0.2%) had four, and 1 (0.04%) had five respondents. To account for households that had more than one woman completing the malaria knowledge questionnaire (11% of 2,701 households), a mean malaria knowledge score was generated for every household and categorized into terciles (0-1, 2-4, and ≥ 5). School attendance was only obtained for women of reproductive age; school attendance was classified for a household as 'Yes' if any woman in the household had attended school.
Statistical analysis was conducted using Stata 8.2 (Stata Corporation, College Station, Texas). Descriptive statistics were used to examine the characteristics of the sample, and prevalence of outcomes and explanatory factors. To account for differences in the sampling design, prevalence estimates were adjusted for sampling weights. To investigate the association of reported net use by individuals the previous night and explanatory factors, hierarchical regression models were developed using generalized linear latent and mixed models (GLLAMM) [39]. The multi-level structure of GLLAMM allowed for non-independence of the household variables, enabled clustering of net observations within households and clusters, and allowed for variability at household and cluster levels. Univariate analysis was conducted for each potential explanatory factor. Multi-variable models were then developed by stepwise regression analysis for model selection. This involved starting with a null model then proceeding in a sequential fashion of adding/deleting explanatory variables if they satisfied the entry/removal criterion, which was set at 5% significance level using a log-likelihood ratio test. Since not all MIS 3R households had a malaria knowledge score, two multi-variable models were fitted: the first assessed independent risk factors in all eligible participants and the second assessed effects of women's malaria knowledge and school attendance adjusting for variables found to be independent risk factors in the first model. To investigate effect modification between malaria knowledge and school attendance previously described by Hwang et al. [15] an interaction term was included in the multivariable model.

Ethical considerations

The protocols received ethical clearance from the Emory University Institutional Review Board (IRB#1816 and 6389), the US Centers for Disease Control and Prevention ethical review committee (IRB#990132) and the Ethiopian Science and Technology Agency. For both surveys, informed consent to participate in interviews was sought from the heads of household in accordance with the tenets of the Declaration of Helsinki.

Results

Characteristics of the sample

The characteristics of the sample are summarized in Table 1 and Figure 2. A total of 12,678 participants in 2,468 households owning nets were included in the baseline 2006 analysis, while the MIS 3R 2007 analysis comprised 14,663 participants in 3,353 households owning nets. At baseline 2006 survey, 37.0% of households owned at least one net, while in MIS 3R 2007, the household net ownership had increased to 56.7%. At baseline 2006 survey, 59.4% of the nets were LLINs, while in MIS 3R 2007 LLINs comprised 95.1% of the nets. Despite an increase in the proportion of households owning at least one net, a lower proportion of participants (50.9%) reported using nets the previous night during MIS 3R 2007 compared to baseline 2006 (70.8%) among those people who had access to a net (Table 1). Figure 2 shows the proportions of net use by age and gender. For both surveys, there was a lower proportion of net use among people aged 5-24 years compared to the other age groups.
Table 1
Characteristics of sample population
Characteristics
Baseline 2006
MIS 3R 2007
 
Amhara
Oromia
SNNP
Total
Amhara
Oromia
SNNP
Total
Number of clusters
160
32
32
224
108
97
40
245
Number of HHs surveyed
4,101
809
798
5,708
2,609
2,321
980
5,910
Number of HHs owning nets
1,688
366
414
2,468
1940
960
453
3,353
Proportion of HHs owning at least one net (%)
34.7
45.4
51.2
37.0
74.4
41.4
46.2
56.7
Number of participants
19,059
4,428
4,397
27,884
10,733
10,266
4,082
25,081
Number of participants in HHs owning nets
8,298
2,019
2,361
12,678
8,381
4,342
1,940
14,663
Proportion of participants using net last night:*
All ages
70.2
76.9
65.2
70.8
54.2
48.8
49.4
50.9
Children U5
77.9
81.9
75.1
78.4
63.4
56.4
56.2
58.7
Children age 5-14 years
63.8
74.6
51.3
64.2
46.1
41.5
34.2
41.7
Women age 15-49 years
75.3
78.8
71.7
75.5
62.7
55.5
55.1
58.1
Pregnant women
80.3
83.5
82.8
81.2
62.7
70.4
63.1
66.1
Persons age ≥ 50 years
78.8
81.7
81.4
79.4
59.7
53.7
69.2
59.1
Net density (average nets per person) in HHs owning nets
0.36
0.30
0.26
0.34
0.45
0.39
0.42
0.43
Net condition in HHs owning nets, assessed by proportion of HH with:
No good nets (0%)
3.4
33.6
14.0
9.7
19.3
34.9
30.0
25.3
Some good nets (1-99%)
3.2
4.4
3.4
3.4
11.7
9.3
9.1
10.7
All good nets (100%)
93.4
62.0
82.6
86.9
68.9
55.8
60.9
64.1
Net age in HH owning nets, assessed by proportion of HH with:
No nets > 12 m old (0%)
88.2
83.3
88.7
87.6
76.5
73.5
89.9
77.5
Some nets > 12 m old (1-99%)
3.4
0.6
0.7
2.6
7.6
3.1
6.0
6.1
All nets > 12 m old (100%)
8.4
16.1
10.6
9.9
15.8
23.4
4.2
16.4
*Among those people living in a household with ≥ 1 net
HHs households; LLIN long-lasting insecticidal net; m months

Associations between net use and explanatory factors: Baseline survey 2006

Univariate logistic regression analysis of the associations between net use at baseline 2006 and explanatory factors is shown in Table 2. Factors associated with increased net use among participants were: age 25-49 years (OR = 1.5; 95% confidence interval [CI] 1.2-1.8) or age 50 years and above (OR = 1.3, 95% CI 1.0-1.7) compared to children U5; female gender (OR = 1.3; 95% CI 1.2-1.5); children U5 compared to other ages (OR = 2.0; 95% CI 1.7-2.4); pregnant women compared to other participants (OR = 3.8; 95% CI 2.3-6.3); increasing proportion of good nets in the household (Ptrend = 0.004); and increasing net density (Ptrend < 0.001). Reduced net use among participants was associated with: age 5-24 years compared to children U5 (OR = 0.2; 95% CI 0.2-0.3) (see Figure 2); increasing proportion of nets older than one year (Ptrend < 0.001); and increasing household altitude (OR[household altitude > 2000 m] = 0.1; 95% CI 0.03-0.1).
Table 2
Baseline 2006: univariable logistic regression analysis of association between individual use of net and explanatory factors in households owning at least one net
Factors
Total persons
N = 12,678
Persons used net last night
N = 8,945
% of persons using net
Odds Ratio
95% CI
p-value
p-value test for trend (> 2 categories)
Individual characteristics
Age group (years)
< 5
2,073
1,621
78.2
1.0
   
 
5-24
6,081
3,680
60.5
0.2
0.2-0.3
< 0.001
 
 
25-49
3,432
2,781
81.0
1.5
1.2-1.8
< 0.001
 
 
50+
1,092
863
79.0
1.3
1.0-1.7
0.042
 
Gender
Male
6,271
4,308
68.7
1.0
   
 
Female
6,407
4,637
72.4
1.3
1.2-1.5
< 0.001
 
Child U5
No
10,605
7,324
69.1
1.0
   
 
Yes
2,073
1,621
78.2
2.0
1.7-2.4
< 0.001
 
Pregnant woman
No
12,446
8,751
70.3
1.0
   
 
Yes
232
194
83.6
3.8
2.3-6.3
< 0.001
 
Net characteristics
Proportion of good nets (in HH with nets)
None (0%)
1,213
745
61.4
1.0
  
Ptrend = 0.004
 
Some (1-99%)
535
421
78.7
2.5
1.5-4.01
< 0.001
 
 
All (100%)
10,930
7,779
71.2
1.6
1.2-2.0
0.001
 
Proportion of nets older than 1 year (in HH with nets)
None (0%)
11,025
8,073
73.2
1.0
  
Ptrend < 0.001
 
Some (1-99%)
349
277
79.4
1.1
0.8-2.2
0.326
 
 
All (100%)
1,304
595
45.6
0.1
0.04-0.1
< 0.001
 
Household characteristics
Number of rooms (per additional room)
  
0.9
0.8-1.0
0.182
 
Net density
< 0.5
11,139
7566
67.9
1.0
  
Ptrend < 0.001
 
≥ 0.5 < 1.0
1,437
1287
89.6
5.1
3.5-7.5
< 0.001
 
 
≥ 1.0
102
92
90.2
9.0
2.8-28.6
< 0.001
 
Indoor residual spraying
Not sprayed
9,507
6452
67.9
1.0
   
 
Sprayed < 12 m ago
3,171
2493
78.6
0.9
0.7-1.1
0.375
 
Wealth index quintiles
Poorest
4,291
3,107
72.4
1.0
  
Ptrend = 0.282
 
Middle
3,919
2,840
72.5
0.9
0.7-1.1
0.332
 
 
Richest
4,468
2,998
67.1
0.9
0.7-1.1
0.27
 
Altitude
< 1000 m
2,597
1,889
72.7
1.0
  
Ptrend = 0.796
 
≥ 1000-2000 m
7,604
5,274
69.4
0.7
0.6-0.9
0.015
 
 
> 2000 m
2,477
1,782
71.9
0.1
0.03-0.1
< 0.001
 
Table 3 shows the multi-variable associations between individual net use at baseline 2006 and explanatory factors. Factors independently associated with increased net use were: age 25 to 49 years (OR = 1.4; 95% CI 1.2-1.7) compared to children U5; female gender (OR = 1.4; 95% CI 1.2-1.5); increasing proportion of good nets (with no holes) in household (Ptrend = 0.002); and increasing net density (Ptrend < 0.001). Reduced net use by participants was independently associated with age 5-24 years (OR = 0.2; 95% CI 0.2-0.3) compared to children U5.
Table 3
Baseline 2006: multi-variable logistic regression analysis of association between individual use of net and explanatory factors in households owning at least one net
Risk factors
 
Odds Ratio
95% CI
p-value
p-value test for trend (> 2 categories)
Age (years)
5-24
0.2
0.2-0.3
< 0.001
 
 
25-49
1.4
1.2-1.7
< 0.001
 
 
50+
1.3
1.0-1.6
0.101
 
Gender (Female)
 
1.4
1.2-1.5
< 0.001
 
Proportion of good nets in HH
Some (1-99%)
4.6
2.5-8.3
0.01
Ptrend = 0.002
 
All (100%)
1.5
1.1-2.1
0.033
 
Net density
≥ 0.5 < 1.0
5.8
3.9-8.7
< 0.001
Ptrend < 0.001
 
≥ 1.0
6.0
1.9-19.5
0.003
 

Associations between net use and explanatory factors: MIS 3R 2007 survey

Table 4 summarizes the univariate logistic regression analysis of the associations between net use at MIS 2007 and explanatory factors. Factors associated with increased net use among participants were: female gender (OR = 1.3; 95% CI 1.2-1.5); children U5 compared to other ages (OR = 1.8; 95% CI 1.5-2.3); pregnant women compared to other participants (OR = 3.0; 95% CI 2.0-4.5); increasing proportion of good nets in the household (Ptrend = 0.042); increasing net density (Ptrend < 0.001); increasing malaria knowledge (Ptrend = 0.004); and urban clusters compared to rural clusters (OR = 2.0; 95% CI 1.3-3.1). Reduced net use among participants was associated with: age 5-24 years (OR = 0.3; 95% CI 0.2-0.3) compared to children U5 (see Figure 2) all nets in households older than one year (OR = 0.3; 95% CI 0.1-0.6); increased number of sleeping spaces (OR = 0.5; 95% CI 0.5-0.6); and increasing household altitude (Ptrend < 0.001).
Table 4
MIS 3R 2007*: univariable logistic regression analysis of association between individual use of net and explanatory factors in households owning at least one net
Factors
Total persons N = 14,663
Persons used net last night N = 7,354
% of persons using net
Odds Ratio
95% CI
p-value
p-value test for trend (> 2 categories)
Individual characteristics
Age group (years)
< 5
2,323
1,329
57.2
1.0
   
 
5-24
6,932
2,959
42.7
0.3
0.2-0.3
< 0.001
 
 
25-49
3,902
2,249
57.6
1.1
0.8-1.4
0.604
 
 
50+
1,506
817
54.2
1.2
0.8-2.0
0.4
 
Gender
Male
7,264
3,455
47.6
1.0
   
 
Female
7,399
3,899
52.7
1.3
1.1-1.5
< 0.001
 
Child U5
No
12,340
6,025
48.8
1.0
   
 
Yes
2,323
1,329
57.2
1.8
1.5-2.3
< 0.001
 
Pregnant woman
No
14,423
7,213
50.0
1.0
   
 
Yes
240
141
58.8
3.0
2.0-4.5
< 0.001
 
Net characteristics
Proportion of good nets (in HH with nets)
None (0%)
3,791
1529
40.3
1.0
  
Ptrend = 0.042
 
Some (1-99%)
1,879
1016
54.1
2.5
1.8-3.5
< 0.001
 
 
All (100%)
8,993
4809
53.5
1.8
1.3-2.6
< 0.001
 
Proportion of nets older than 1 yr (in HH with nets)
None (0%)
11,104
5885
53.0
1.0
  
Ptrend = 0.091
 
Some (1-99%)
1,055
556
52.7
1.1
0.3-4.2
0.939
 
 
All (100%)
2,504
913
36.5
0.3
0.1-0.6
0.002
 
Household characteristics
Number of sleeping spaces (per additional space)
0.5
0.5-0.6
< 0.001
 
Net density
< 0.5
11,040
5040
45.7
1.0
  
Ptrend < 0.001
 
≥ 0.5 < 1.0
3,224
2048
63.5
2.6
2.0-3.4
< 0.001
 
 
≥ 1.0
399
266
66.7
3.9
2.1-7.3
< 0.001
 
Indoor residual spraying
Not sprayed
11,790
5749
48.8
1.0
   
 
Sprayed < 12 m ago
2,873
1605
55.9
1.4
1.0-2.1
0.079
 
Wealth index quintiles
Poorest
4,912
2,415
49.2
1.0
  
Ptrend = 0.384
 
Middle
4,880
2,424
49.7
1.0
0.5-1.7
0.868
 
 
Richest
4,871
2,515
51.6
0.7
0.5-1.0
0.071
 
School attendance*
No
9,857
4,891
49.6
1.0
   
 
Yes
2,946
1,556
52.8
0.9
0.7-1.2
0.63
 
Malaria knowledge mean score (terciles)*
0-1
3,251
1,517
46.7
1.0
  
Ptrend = 0.004
 
2-4
4,758
2,438
49.3
2.3
1.3-4.2
0.005
 
 
≥ 4
4,794
2,582
53.9
2.1
1.0-4.0
0.036
 
Altitude
< 1000 m
416
201
48.3
1.0
  
Ptrend < 0.001
 
≥ 1000- ≤ 2000 m
9,996
5211
52.1
0.5
0.4-0.8
0.006
 
 
> 2000 m
4,251
1942
45.7
0.3
0.2-0.4
< 0.001
 
Cluster characteristics
Location of cluster
Rural
12,060
5981
49.6
1.0
   
 
Urban
2,603
1373
52.7
2.0
1.3-3.1
0.001
 
* Household women's knowledge score and school attendance available for 12,803 participants in 2,701 households owning nets where women of reproductive age completed knowledge questionnaire
Multi-variable associations between net use at MIS 3R 2007 and explanatory factors are shown in Table 5. Since not all households had a malaria knowledge score, two multi-variable models were fitted: the first assessed independent risk factors in all eligible participants (n = 14,663); and the second assessed effects of malaria knowledge and school attendance (n = 12,803) adjusting for variables found to be independent risk factors in the first model. Restriction of the sample size in Model II did not change the variables included in the multivariate model.
Table 5
MIS 3R 2007: Multi-variable logistic regression analysis of association between individual use of net and explanatory factors
Model*
Risk factors
 
Odds Ratio
95% CI
p-value
p-value test for trend (> 2 categories)
I
Age (years)
5-24
0.3
0.2-0.4
< 0.001
 
  
25-49
1.1
0.8-1.5
0.474
 
  
50+
1.2
0.7-2.0
0.415
 
 
Gender (Female)
 
1.3
1.1-1.6
0.001
 
 
Proportion of good nets in household
Some (1-99%)
1.8
1.2-2.8
0.006
 
  
All (100%)
1.6
1.2-2.1
0.003
 
 
Proportion of nets older than 12 m
Some (1-99%)
0.9
0.5-1.6
0.781
 
  
All (100%)
0.5
0.3-0.7
< 0.001
 
 
Number of sleeping spaces in HH (per additional space)
0.6
0.5-0.7
< 0.001
 
 
Net density
≥ 0.5 < 1.0
2.0
1.5-2.7
< 0.001
Ptrend = 0.001
  
≥ 1.0
2.0
0.9-4.2
0.077
 
 
Altitude
≥ 1000- ≤ 2000 m
1.4
0.9-2.4
0.142
Ptrend < 0.001
  
> 2000 m
0.5
0.3-1.0
0.068
 
 
Urban clusters
 
2.5
1.5-4.1
< 0.001
 
II**
Malaria knowledge mean score (terciles)
2-4
1.6
1.2-2.2
< 0.001
Ptrend < 0.001
  
≥ 5
2.4
1.4-2.4
< 0.001
 
 
School attendance
Yes
1.1
0.8-1.5
0.719
 
*Model I assessed independent risk factors in all 14,663 participants (in 3,353 households owning nets). Model II assessed effect of household women's knowledge and school attendance in 12,803 participants (in 2,701 of these households where women of reproductive age completed malaria knowledge questionnaire) adjusting for the effects of independent risk factors from model I.
**Test for interaction between malaria knowledge and school attendance did not reveal any statistically significant effects (Wald Test p-value = 0.781)
Factors independently associated with increased net use were: female gender (OR = 1.3; 95% CI 1.1-1.6); increasing proportion of good nets in household (OR[all nets in HH good] = 1.6; 95% CI 1.2-2.1); increasing net density (Ptrend < 0.001); women's malaria knowledge (Ptrend < 0.001); and urban clusters (OR = 2.5; 95% CI 1.5-4.1). Reduced net use by participants was independently associated with: age 5-24 years (OR = 0.3; 95% CI 0.2-0.4) compared to children U5; number of sleeping spaces (OR [per additional space] = 0.6, 95% CI 0.5-0.7; increasing proportion of nets older than one year (OR [all nets older than 12 months] = 0.5; 95% CI 0.3-0.7); and increasing household altitude (Ptrend < 0.001). Test for interaction between malaria knowledge mean score and school attendance did not reveal any statistically significant effects (Wald test p-value = 0.781)

Discussion and Conclusion

This paper describes determinants of net use as assessed in two consecutive household surveys in 2006 and 2007 in the three largest regional states of Ethiopia. Decline in net use (in households owning nets) between these surveys had been observed, despite increase in overall net ownership [3]. A previous study examined use in a net level analysis (i.e. whether or not each net had been used the previous night) [6], and demonstrated that increasing net age and increasing damage of nets were both associated with a lower likelihood of nets being used. In that study, increased net density was associated with decreased likelihood of a net being used, which is logical since the more nets there are in a household (especially above a density of one net per person), the less the chance of each one being used.
Most previous studies (with some exceptions [19, 40]) have expressed net use not as a proportion of nets used, but as a proportion of persons (usually children U5 or pregnant women) using nets [33, 34, 37, 41]. This individual outcome of net use is used in the current study, but includes all individuals in the sampled households since the programme goal is universal coverage. GLLAMM was used to account for both household characteristics and the previously identified net level determinants of use. Using individual net use as an outcome, it would be expected that increased net density would be associated with increased net use, as we found here in both 2006 and 2007. Net density by household was classified in three categories as < 0.5, 0.5 - < 1 and ≥ 1 nets per person, and net use was found to be five-fold higher (in 2006) or two-fold higher (in 2007) when net density was greater than 0.5. This suggests that a net distribution target higher than one net per two persons (such as two nets per three persons or if possible one net per person) is more likely to maximize net use, especially if there are sufficient nets to cover all sleeping spaces. While it is commonly stated that lack of access to sufficient nets within households may be an explanation for low use, there are very few other studies that examined net use in relation to household net density while adjusting for other factors [8].
This study confirmed the previously demonstrated impact of the two related factors of net age and condition on likelihood of net use. In 2006, net use was about twice as likely if some or all the nets in the household were undamaged, while in 2007 net use was one third as likely if all the nets in the household were older than 12 months. The frequent observation of nets in poor condition has been previously reported from Ethiopia [42] and nets owned for less than 12 months were significantly more likely to be used [19]. These findings have implications for care and replacement of nets. The programme should promote net repair and maintenance and also conduct educational activities to change the perception that nets with a few holes are no longer worth using.
Overall, females in both surveys slept under a net the previous night 1.3-1.4 times as often as males. Less than 2% of the population reported being pregnant at each survey. In univariate analysis, pregnant women were at least three times more likely than the general population to use nets, but this factor did not remain associated with net use in the multi-variate model. Net use by age group showed surprisingly that children U5 are not the group with highest net use: persons older than 24 years were more likely to use nets in both surveys, although the association was only statistically significant for the 25-49 year old age group in the 2006 survey. It is clear that children and young adults age 5-24 years use nets much less frequently than children U5 or persons over 24 years (Figure 2). Less frequent use by school-age children has been observed in many other African counties [35] and it would be interesting to conduct a study of net use in which children's own school attendance, access to nets, and knowledge are taken into account, rather than using proxies from women in their households. It is critical that more attention is paid to increasing net use in children, teenagers and young adults (e.g. perhaps by school-based education campaigns and activities), since they likely contribute significantly to transmission and are at risk of severe disease, if infected.
The finding of higher net use in urban compared to rural areas in MIS 2007 was surprising, since urban dwellers might be expected to associate net use with villagers and rural life. However, another study in Ethiopia [19] observed the same higher use of LLIN in urban areas. Possible reasons include: higher levels of education; potentially larger and more diverse social networks perhaps due to greater population density; or a more progressive attitude among urban dwellers leading to earlier adoption of unfamiliar strategies. Other potential unmeasured factors (other than those for which we adjusted such as net density, socio-economic status, malaria knowledge, and IRS status) should be explored further.
Women's malaria knowledge and school attendance were assessed only in the MIS 3R 2007 survey, and expressed as terciles of an index of correct scores, applied at the household level. The results shown here support those of Hwang et al. [15] and others [33, 34] that increased women's knowledge of malaria can improve net use by individuals and/or members of their household. However, the interaction effect previously described [15], whereby higher women's knowledge (score of > = 1) only increased net use in themselves and their children U5 if the women had not attended school, was not observed here. This may be due to the different outcome (net use in all ages), different quantification of knowledge scores (in terciles), or application of women's knowledge scores and school attendance at the household level.
Potential limitations of this study include the fact that a number of other possible determinants of net use were not assessed, including, but not limited to, perceptions of malaria risk, the proportion of nets that were hanging, and the opinions or beliefs of householders about their ability to hang nets and/or difficulty of hanging nets in their homes. In addition, aspects of net condition other than the presence of holes (e.g. cleanliness, smell and perceived effectiveness of insecticide) that might affect a person's choice to sleep under a net were not measured. It may be that once the novelty of newly distributed nets has worn off, people stop using nets because the practice grows tiresome and their risk perception returns to initial lower levels, suggesting the need for sustained behaviour change communication. Differences in climate factors or seasonality between the two surveys are potential limitations, but a previous study examined this question extensively [3] and showed that slight differences in survey timing in each year did not result in important differences in rainfall or temperature conditions between the surveys. Differences in sampling strategy between surveys were also examined and were found to be highly unlikely to have introduced bias in the estimate of net use [3].
Examining net use from both the net level [6] and the individual level (present study) while restricting the data to only households owning nets enables adjustment for the different levels of analysis (net, household, cluster) and avoidance of spurious associations, while using net density in the models allows accounting for changes in net ownership over time. Increasing availability of nets within households (i.e. increasing net density), and improving net condition while focusing on education and promotion of net use, especially in school-age children and young adults in rural areas, are crucial areas for intervention to ensure maximum net use and consequent reduction of malaria transmission.
Despite large distribution of new nets between the surveys, the pool of nets in households in 2007 was older and in less good condition than 2006 due to nets remaining from earlier distributions as well as rapid accumulation of damage to nets [43]. Older nets in poor condition are used less than new nets [5]. The study raises important issues about the longevity of nets and when a net is considered 'expired' or no longer suitable for use. More research on this issue is warranted since firstly nets considered to be too damaged may not be used; and secondly the accumulation of 'expired' nets in households would inflate estimates of net ownership in standard household surveys and net density estimates as used in this analysis. Qualitative research investigating when households would consider nets unfit for use, and determining whether this expectation would be realistic - from an operational and programmatic perspective - is necessary. Why damaged and unused nets are kept, or how they are disposed of is also of interest. Such information would generate realistic assessments of average usable net life and improve planning of sensible and sustainable replacement and communication strategies instead of blanket mass distributions at predetermined intervals.

Acknowledgements

The baseline survey was financially and technically supported by The Carter Center and carried out in collaboration with the Amhara, Oromia and SNNP Regional Health Bureaus. The follow-up Malaria Indicator Survey 2007 was the result of joint support and efforts by multiple partners, including the Federal Ministry of Health of Ethiopia, The Carter Center, Malaria Control and Evaluation Partnership for Africa (MACEPA, a program at PATH), World Health Organization (WHO), United Nations Children's Fund (UNICEF), President's Malaria Initiative [US Agency for International Development (USAID)/US Centers for Disease Control and Prevention (CDC)], the Ethiopia Central Statistical Agency, Center for National Health Development in Ethiopia, and Malaria Consortium.
This research was made possible through support provided by the President's Malaria Initiative via the Office of Health, Infectious Diseases, and Nutrition, Bureau for Global Health, US Agency for International Development, under the terms of an inter-agency agreement with CDC. The opinions expressed herein are those of the author(s) and do not necessarily reflect the views of the US Centers for Disease Control and Prevention, the US Agency for International Development, or other employing organizations or sources of funding.
We are especially grateful to Minister Tedros Adhanom Gebreyesus and all the persons who assisted in both surveys, including but not limited to: Laurent Bergeron, Hana Bilak, Brian Chirwa, Firew Demeke, Wubishet Dinkessa, Yeshewamebrat Ejigsemahu, Tekola Endeshaw, Kebede Etana, Gashu Fente, Anatoly Frolov, Khoti Gausi, Afework Hailemariam, Daddi Jima, Henok Kebede, Christopher Lungu, Ambachew Medhin, John Miller, Rory Nefdt, Dereje Olana, Richard Steketee, Zerihun Tadesse, Tesfaye Teferri, Eskindir Tenaw, Abate Tilahun, Gedeon Yohannes, and Mulat Zerihun. We thank Dr. Stephen Kaptoge, Department of Public Health and Primary Care, University of Cambridge, UK for statistical advice. We appreciate assistance from Stephanie Palmer in preparing Figure 1. The authors owe sincere gratitude to all the survey participants who gave freely of their time in the surveys.
Open AccessThis article is published under license to BioMed Central Ltd. This is an Open Access article is distributed under the terms of the Creative Commons Attribution 2.0 International License (https://​creativecommons.​org/​licenses/​by/​2.​0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

PG, JH, RR, FR, TG and PE conceived and planned the study; PG, JH, TG, AM, ES, ZT, AW and RR trained staff, carried out the survey and managed the data; JN and PG undertook data analysis with input from JH, AM, and RR; PG, JN and AP wrote the paper with input from JH, AM, RR, FR, TG, ZT and PE; all authors approved the final draft.
Anhänge

Authors’ original submitted files for images

Below are the links to the authors’ original submitted files for images.
Literatur
1.
Zurück zum Zitat Noor AM, Mutheu JJ, Tatem AJ, Hay SI, Snow RW: Insecticide-treated net coverage in Africa: mapping progress in 2000-07. Lancet. 2009, 373: 58-67. 10.1016/S0140-6736(08)61596-2.PubMedCentralCrossRefPubMed Noor AM, Mutheu JJ, Tatem AJ, Hay SI, Snow RW: Insecticide-treated net coverage in Africa: mapping progress in 2000-07. Lancet. 2009, 373: 58-67. 10.1016/S0140-6736(08)61596-2.PubMedCentralCrossRefPubMed
2.
Zurück zum Zitat WHO: World Malaria Report 2010. 2010, Global Malaria Program WHO: World Malaria Report 2010. 2010, Global Malaria Program
3.
Zurück zum Zitat Shargie EB, Ngondi J, Graves PM, Getachew A, Hwang J, Gebre T, Mosher AW, Ceccato P, Endeshaw T, Jima D, Tadesse Z, Tenaw E, Reithinger R, Emerson PM, Richards FO, Ghebreyesus TA: Rapid increase in ownership and use of long-lasting insecticidal nets and decrease in prevalence of malaria in three regional States of Ethiopia (2006-2007). J Trop Med. 2010, 750978-Epub 2010 Sep 23 Shargie EB, Ngondi J, Graves PM, Getachew A, Hwang J, Gebre T, Mosher AW, Ceccato P, Endeshaw T, Jima D, Tadesse Z, Tenaw E, Reithinger R, Emerson PM, Richards FO, Ghebreyesus TA: Rapid increase in ownership and use of long-lasting insecticidal nets and decrease in prevalence of malaria in three regional States of Ethiopia (2006-2007). J Trop Med. 2010, 750978-Epub 2010 Sep 23
4.
Zurück zum Zitat Garcia-Basteiro AL, Schwabe C, Aragon C, Baltazar G, Rehman AM, Matias A, Nseng G, Kleinschmidt I: Determinants of bed net use in children under five and household bed net ownership on Bioko Island, Equatorial Guinea. Malar J. 2011, 10: 179-10.1186/1475-2875-10-179.PubMedCentralCrossRefPubMed Garcia-Basteiro AL, Schwabe C, Aragon C, Baltazar G, Rehman AM, Matias A, Nseng G, Kleinschmidt I: Determinants of bed net use in children under five and household bed net ownership on Bioko Island, Equatorial Guinea. Malar J. 2011, 10: 179-10.1186/1475-2875-10-179.PubMedCentralCrossRefPubMed
5.
Zurück zum Zitat Toé LP, Skovmand O, Dabire KR, Diabate A, Diallo Y, Guiguemde TR, Doannio JM, Akogbeto M, Baldet T, Gruenais ME: Decreased motivation in the use of insecticide-treated nets in a malaria endemic area in Burkina Faso. Malar J. 2009, 8: 175-10.1186/1475-2875-8-175.PubMedCentralCrossRefPubMed Toé LP, Skovmand O, Dabire KR, Diabate A, Diallo Y, Guiguemde TR, Doannio JM, Akogbeto M, Baldet T, Gruenais ME: Decreased motivation in the use of insecticide-treated nets in a malaria endemic area in Burkina Faso. Malar J. 2009, 8: 175-10.1186/1475-2875-8-175.PubMedCentralCrossRefPubMed
6.
Zurück zum Zitat Ngondi JM, Graves PM, Gebre T, Mosher AW, Shargie EB, Emerson PM, Richards FO: Which nets are being used: factors associated with mosquito net use in Amhara, Oromia and Southern Nations, Nationalities and Peoples' Regions of Ethiopia. Malar J. 2011, 10: 92-10.1186/1475-2875-10-92.PubMedCentralCrossRefPubMed Ngondi JM, Graves PM, Gebre T, Mosher AW, Shargie EB, Emerson PM, Richards FO: Which nets are being used: factors associated with mosquito net use in Amhara, Oromia and Southern Nations, Nationalities and Peoples' Regions of Ethiopia. Malar J. 2011, 10: 92-10.1186/1475-2875-10-92.PubMedCentralCrossRefPubMed
7.
Zurück zum Zitat Alaii JA, Hawley WA, Kolczak MS, ter Kuile FO, Gimnig JE, Vulule JM, Odhacha A, Oloo AJ, Nahlen BL, Phillips-Howard PA: Factors affecting use of permethrin-treated bed nets during a randomized controlled trial in western Kenya. Am J Trop Med Hyg. 2003, 68: 137-141.PubMed Alaii JA, Hawley WA, Kolczak MS, ter Kuile FO, Gimnig JE, Vulule JM, Odhacha A, Oloo AJ, Nahlen BL, Phillips-Howard PA: Factors affecting use of permethrin-treated bed nets during a randomized controlled trial in western Kenya. Am J Trop Med Hyg. 2003, 68: 137-141.PubMed
8.
Zurück zum Zitat Eisele TP, Keating J, Littrell M, Larsen D, Macintyre K: Assessment of insecticide-treated bednet use among children and pregnant women across 15 countries using standardized national surveys. Am J Trop Med Hyg. 2009, 80: 209-214.PubMed Eisele TP, Keating J, Littrell M, Larsen D, Macintyre K: Assessment of insecticide-treated bednet use among children and pregnant women across 15 countries using standardized national surveys. Am J Trop Med Hyg. 2009, 80: 209-214.PubMed
9.
Zurück zum Zitat Baume CA, Marin MC: Intra-household mosquito net use in Ethiopia, Ghana, Mali, Nigeria, Senegal, and Zambia: are nets being used? Who in the household uses them?. Am J Trop Med Hyg. 2007, 77: 963-971.PubMed Baume CA, Marin MC: Intra-household mosquito net use in Ethiopia, Ghana, Mali, Nigeria, Senegal, and Zambia: are nets being used? Who in the household uses them?. Am J Trop Med Hyg. 2007, 77: 963-971.PubMed
10.
Zurück zum Zitat Rashed S, Johnson H, Dongier P, Moreau R, Lee C, Crepeau R, Lambert J, Jefremovas V, Schaffer C: Determinants of the Permethrin Impregnated Bednets (PIB) in the Republic of Benin: the role of women in the acquisition and utilization of PIBs. Soc Sci Med. 1999, 49: 993-1005. 10.1016/S0277-9536(99)00152-5.CrossRefPubMed Rashed S, Johnson H, Dongier P, Moreau R, Lee C, Crepeau R, Lambert J, Jefremovas V, Schaffer C: Determinants of the Permethrin Impregnated Bednets (PIB) in the Republic of Benin: the role of women in the acquisition and utilization of PIBs. Soc Sci Med. 1999, 49: 993-1005. 10.1016/S0277-9536(99)00152-5.CrossRefPubMed
11.
Zurück zum Zitat Thomson M, Connor S, Bennett S, D'Alessandro U, Milligan P, Aikins M, Langerock P, Jawara M, Greenwood B: Geographical perspectives on bednet use and malaria transmission in The Gambia, West Africa. Soc Sci Med. 1996, 43: 101-112. 10.1016/0277-9536(95)00346-0.CrossRefPubMed Thomson M, Connor S, Bennett S, D'Alessandro U, Milligan P, Aikins M, Langerock P, Jawara M, Greenwood B: Geographical perspectives on bednet use and malaria transmission in The Gambia, West Africa. Soc Sci Med. 1996, 43: 101-112. 10.1016/0277-9536(95)00346-0.CrossRefPubMed
12.
Zurück zum Zitat MacCormack CP, Snow RW: Gambian cultural preferences in the use of insecticide-impregnated bed nets. J Trop Med Hyg. 1986, 89: 295-302.PubMed MacCormack CP, Snow RW: Gambian cultural preferences in the use of insecticide-impregnated bed nets. J Trop Med Hyg. 1986, 89: 295-302.PubMed
13.
Zurück zum Zitat Dunn CE, Le Mare A, Makungu C: Malaria risk behaviours, socio-cultural practices and rural livelihoods in southern Tanzania: implications for bednet usage. Soc Sci Med. 2011, 72: 408-417. 10.1016/j.socscimed.2010.11.009.CrossRefPubMed Dunn CE, Le Mare A, Makungu C: Malaria risk behaviours, socio-cultural practices and rural livelihoods in southern Tanzania: implications for bednet usage. Soc Sci Med. 2011, 72: 408-417. 10.1016/j.socscimed.2010.11.009.CrossRefPubMed
14.
Zurück zum Zitat Wiseman V, Scott A, McElroy B, Conteh L, Stevens W: Determinants of bed net use in The Gambia: Implications for malaria control. Am J Trop Med Hyg. 2007, 76: 830-836.PubMed Wiseman V, Scott A, McElroy B, Conteh L, Stevens W: Determinants of bed net use in The Gambia: Implications for malaria control. Am J Trop Med Hyg. 2007, 76: 830-836.PubMed
15.
Zurück zum Zitat Hwang J, Graves PM, Jima D, Reithinger R, Kachur SP: Knowledge of malaria and its association with malaria-related behaviors--results from the Malaria Indicator Survey, Ethiopia, 2007. Plos One. 2010, 5: e11692-10.1371/journal.pone.0011692.PubMedCentralCrossRefPubMed Hwang J, Graves PM, Jima D, Reithinger R, Kachur SP: Knowledge of malaria and its association with malaria-related behaviors--results from the Malaria Indicator Survey, Ethiopia, 2007. Plos One. 2010, 5: e11692-10.1371/journal.pone.0011692.PubMedCentralCrossRefPubMed
16.
Zurück zum Zitat Hausmann-Muela S, Muela Ribera J, Mushi AK, Tanner M: Medical syncretism with reference to malaria in a Tanzanian community. Soc Sci Med. 2002, 55: Hausmann-Muela S, Muela Ribera J, Mushi AK, Tanner M: Medical syncretism with reference to malaria in a Tanzanian community. Soc Sci Med. 2002, 55:
17.
Zurück zum Zitat Adongo P, Kirkwood B, Kendall C: How local community knowledge about malaria affects insecticide treated net use in northern Ghana MIM-PA-238950. Acta Trop. 2005, 95: S49-S50. Adongo P, Kirkwood B, Kendall C: How local community knowledge about malaria affects insecticide treated net use in northern Ghana MIM-PA-238950. Acta Trop. 2005, 95: S49-S50.
18.
Zurück zum Zitat Ng'ang'a PN, Jayasinghe G, Kimani V, Shililu J, Kabutha C, Kabuage L, Githure J, Mutero C: Bed net use and associated factors in a rice farming community in Central Kenya. Malar J. 2009, 8: Ng'ang'a PN, Jayasinghe G, Kimani V, Shililu J, Kabutha C, Kabuage L, Githure J, Mutero C: Bed net use and associated factors in a rice farming community in Central Kenya. Malar J. 2009, 8:
19.
Zurück zum Zitat Baume CA, Reithinger R, Woldehanna S: Factors associated with use and non-use of mosquito nets owned in Oromia and Amhara regional states, Ethiopia. Malar J. 2009, 8: 264-10.1186/1475-2875-8-264.PubMedCentralCrossRefPubMed Baume CA, Reithinger R, Woldehanna S: Factors associated with use and non-use of mosquito nets owned in Oromia and Amhara regional states, Ethiopia. Malar J. 2009, 8: 264-10.1186/1475-2875-8-264.PubMedCentralCrossRefPubMed
20.
Zurück zum Zitat Chuma J, Okungu V, Ntwiga J, Molyneux C: Towards achieving Abuja targets: identifying and addressing barriers to access and use of insecticides treated nets among the poorest populations in Kenya. BMC Public Health. 2010, 10: 137-10.1186/1471-2458-10-137.PubMedCentralCrossRefPubMed Chuma J, Okungu V, Ntwiga J, Molyneux C: Towards achieving Abuja targets: identifying and addressing barriers to access and use of insecticides treated nets among the poorest populations in Kenya. BMC Public Health. 2010, 10: 137-10.1186/1471-2458-10-137.PubMedCentralCrossRefPubMed
21.
Zurück zum Zitat Dye TD, Apondi R, Lugada ES, Kahn JG, Smith J, Othoro C: "Before we used to get sick all the time": perceptions of malaria and use of long-lasting insecticide-treated bed nets (LLINs) in a rural Kenyan community. Malar J. 2010, 9: 345-10.1186/1475-2875-9-345.PubMedCentralCrossRefPubMed Dye TD, Apondi R, Lugada ES, Kahn JG, Smith J, Othoro C: "Before we used to get sick all the time": perceptions of malaria and use of long-lasting insecticide-treated bed nets (LLINs) in a rural Kenyan community. Malar J. 2010, 9: 345-10.1186/1475-2875-9-345.PubMedCentralCrossRefPubMed
22.
Zurück zum Zitat de Hoop T, van Kempen L: Trust in health providers as a catalyst for malaria prevention: hetergeneous impacts of health education in rural Ghana. Developing Economies. 2010, 48: 376-404. 10.1111/j.1746-1049.2010.00112.x.CrossRef de Hoop T, van Kempen L: Trust in health providers as a catalyst for malaria prevention: hetergeneous impacts of health education in rural Ghana. Developing Economies. 2010, 48: 376-404. 10.1111/j.1746-1049.2010.00112.x.CrossRef
23.
Zurück zum Zitat Widmar M, Nagel CJ, Ho DY, Benziger PW, Hennig N: Determining and addressing obstacles to the effective use of long-lasting insecticide-impregnated nets in rural Tanzania. Malar J. 2009, 8: Widmar M, Nagel CJ, Ho DY, Benziger PW, Hennig N: Determining and addressing obstacles to the effective use of long-lasting insecticide-impregnated nets in rural Tanzania. Malar J. 2009, 8:
24.
Zurück zum Zitat Rickard DG, Dudovitz RN, Wong MD, Jen HC, Osborn RD, Fernandez HE, Donkor CI: Closing the gap between insecticide treated net ownership and use for the prevention of malaria. Progress in community health partnerships: research, education, and action. 2011, 5: 123-131. 10.1353/cpr.2011.0018.CrossRef Rickard DG, Dudovitz RN, Wong MD, Jen HC, Osborn RD, Fernandez HE, Donkor CI: Closing the gap between insecticide treated net ownership and use for the prevention of malaria. Progress in community health partnerships: research, education, and action. 2011, 5: 123-131. 10.1353/cpr.2011.0018.CrossRef
25.
Zurück zum Zitat Cohee L, Mills LA, Kagaayi J, Jacobs I, Galiwango R, Ludigo J, Ssekasanvu J, Reynolds SJ: High retention and appropriate use of insecticide-treated nets distributed to HIV-affected households in Rakai, Uganda: results from interviews and home visits. Malar J. 2009, 8: 76-10.1186/1475-2875-8-76.PubMedCentralCrossRefPubMed Cohee L, Mills LA, Kagaayi J, Jacobs I, Galiwango R, Ludigo J, Ssekasanvu J, Reynolds SJ: High retention and appropriate use of insecticide-treated nets distributed to HIV-affected households in Rakai, Uganda: results from interviews and home visits. Malar J. 2009, 8: 76-10.1186/1475-2875-8-76.PubMedCentralCrossRefPubMed
26.
Zurück zum Zitat Iwashita H, Dida G, Futami K, Sonye G, Kaneko S, Horio M, Kawada H, Maekawa Y, Aoki Y, Minakawa N: Sleeping arrangement and house structure affect bed net use in villages along Lake Victoria. Malar J. 2010, 9: Iwashita H, Dida G, Futami K, Sonye G, Kaneko S, Horio M, Kawada H, Maekawa Y, Aoki Y, Minakawa N: Sleeping arrangement and house structure affect bed net use in villages along Lake Victoria. Malar J. 2010, 9:
27.
Zurück zum Zitat Keating J, Macintyre K, Mbogo CM, Githure JI, Beier JC: Self-reported malaria and mosquito avoidance in relation to household risk factors in a Kenyan coastal city. J Biosoc Sci. 2005, 37: 761-771. 10.1017/S0021932005007182.PubMedCentralCrossRefPubMed Keating J, Macintyre K, Mbogo CM, Githure JI, Beier JC: Self-reported malaria and mosquito avoidance in relation to household risk factors in a Kenyan coastal city. J Biosoc Sci. 2005, 37: 761-771. 10.1017/S0021932005007182.PubMedCentralCrossRefPubMed
28.
Zurück zum Zitat Edelu BO, Ikefuna AN, Emodi JI, Adimora GN: Awareness and use of insecticide-treated bed nets among children attending outpatient clinic at UNTH, Enugu - the need for an effective mobilization process. African Health Sciences. 2010, 10: 117-119.PubMedCentralPubMed Edelu BO, Ikefuna AN, Emodi JI, Adimora GN: Awareness and use of insecticide-treated bed nets among children attending outpatient clinic at UNTH, Enugu - the need for an effective mobilization process. African Health Sciences. 2010, 10: 117-119.PubMedCentralPubMed
29.
Zurück zum Zitat Pulford J, Hetzel MW, Bryant M, Siba PM, Mueller I: Reported reasons for not using a mosquito net when one is available: a review of the published literature. Malar J. 2011, 10: Pulford J, Hetzel MW, Bryant M, Siba PM, Mueller I: Reported reasons for not using a mosquito net when one is available: a review of the published literature. Malar J. 2011, 10:
30.
Zurück zum Zitat Alaii JA, van den Borne HW, Kachur SP, Mwenesi H, Vulule JM, Hawley WA, Meltzer MI, Nahlen BL, Phillips-Howard PA: Perceptions of bed nets and malaria prevention before and after a randomized controlled trial of permethrin-treated bed nets in western Kenya. Am J Trop Med Hyg. 2003, 68: 142-148.PubMed Alaii JA, van den Borne HW, Kachur SP, Mwenesi H, Vulule JM, Hawley WA, Meltzer MI, Nahlen BL, Phillips-Howard PA: Perceptions of bed nets and malaria prevention before and after a randomized controlled trial of permethrin-treated bed nets in western Kenya. Am J Trop Med Hyg. 2003, 68: 142-148.PubMed
31.
Zurück zum Zitat Brieger WR, Ekanem OJ, Nwankwo E, Ezike VI, Robinson T, Sexton JD, Breman JG, Parker KA: Social and behavioural baseline for guiding implementation of an efficacy trial of insecticide impregnated bed nets for malaria control at nsukka, Nigeria. International quarterly of community health education. 1996, 16: 47-61. 10.2190/43HT-6MEH-MTDE-HBV2.CrossRefPubMed Brieger WR, Ekanem OJ, Nwankwo E, Ezike VI, Robinson T, Sexton JD, Breman JG, Parker KA: Social and behavioural baseline for guiding implementation of an efficacy trial of insecticide impregnated bed nets for malaria control at nsukka, Nigeria. International quarterly of community health education. 1996, 16: 47-61. 10.2190/43HT-6MEH-MTDE-HBV2.CrossRefPubMed
32.
Zurück zum Zitat Pettifor A, Taylor E, Nku D, Duvall S, Tabala M, Meshnick S, Behets F: Bed net ownership, use and perceptions among women seeking antenatal care in Kinshasa, Democratic Republic of the Congo (DRC): Opportunities for improved maternal and child health. BMC Public Health. 2008, 8: Pettifor A, Taylor E, Nku D, Duvall S, Tabala M, Meshnick S, Behets F: Bed net ownership, use and perceptions among women seeking antenatal care in Kinshasa, Democratic Republic of the Congo (DRC): Opportunities for improved maternal and child health. BMC Public Health. 2008, 8:
33.
Zurück zum Zitat Belay M, Deressa W: Use of insecticide treated nets by pregnant women and associated factors in a pre-dominantly rural population in northern Ethiopia. Trop Med Int Health. 2008, 13: 1303-1313. 10.1111/j.1365-3156.2008.02159.x.CrossRefPubMed Belay M, Deressa W: Use of insecticide treated nets by pregnant women and associated factors in a pre-dominantly rural population in northern Ethiopia. Trop Med Int Health. 2008, 13: 1303-1313. 10.1111/j.1365-3156.2008.02159.x.CrossRefPubMed
34.
Zurück zum Zitat Haileselassie B, Ali A: Assessment of insecticide treated nets coverage for malaria control in Kafta-Humera District, Tigray; Possession versus use by high-risk groups. Ethiop J Health Dev. 2008, 22: 259-267. Haileselassie B, Ali A: Assessment of insecticide treated nets coverage for malaria control in Kafta-Humera District, Tigray; Possession versus use by high-risk groups. Ethiop J Health Dev. 2008, 22: 259-267.
35.
Zurück zum Zitat Noor AM, Kirui VC, Brooker SJ, Snow RW: The use of insecticide treated nets by age: implications for universal coverage in Africa. BMC Public Health. 2009, 9: 369-10.1186/1471-2458-9-369.PubMedCentralCrossRefPubMed Noor AM, Kirui VC, Brooker SJ, Snow RW: The use of insecticide treated nets by age: implications for universal coverage in Africa. BMC Public Health. 2009, 9: 369-10.1186/1471-2458-9-369.PubMedCentralCrossRefPubMed
36.
Zurück zum Zitat Malaria RB: Malaria Indicator Survey: Basic documentation for survey design and implementation. 2005, Calverton MD: RBM Monitoring and Evaluation Research Group, WHO, UNICEF, Measure Evaluation, US Centers for Disease Control and Prevention Malaria RB: Malaria Indicator Survey: Basic documentation for survey design and implementation. 2005, Calverton MD: RBM Monitoring and Evaluation Research Group, WHO, UNICEF, Measure Evaluation, US Centers for Disease Control and Prevention
37.
Zurück zum Zitat Jima D, Getachew A, Bilak H, Steketee RW, Emerson PM, Graves PM, Gebre T, Reithinger R, Hwang J: Malaria indicator survey 2007, Ethiopia: coverage and use of major malaria prevention and control interventions. Malar J. 2010, 9: 58-10.1186/1475-2875-9-S2-P58.PubMedCentralCrossRefPubMed Jima D, Getachew A, Bilak H, Steketee RW, Emerson PM, Graves PM, Gebre T, Reithinger R, Hwang J: Malaria indicator survey 2007, Ethiopia: coverage and use of major malaria prevention and control interventions. Malar J. 2010, 9: 58-10.1186/1475-2875-9-S2-P58.PubMedCentralCrossRefPubMed
38.
Zurück zum Zitat Graves PM, Richards FO, Ngondi J, Emerson PM, Shargie EB, Endeshaw T, Ceccato P, Ejigsemahu Y, Mosher AW, Hailemariam A, Zerihun M, Teferi T, Ayele B, Mesele A, Yohannes G, Tilahun A, Gebre T: Individual, household and environmental risk factors for malaria infection in Amhara, Oromia and SNNP regions of Ethiopia. Trans R Soc Trop Med Hyg. 2009, 103: 1211-1220. 10.1016/j.trstmh.2008.11.016.CrossRefPubMed Graves PM, Richards FO, Ngondi J, Emerson PM, Shargie EB, Endeshaw T, Ceccato P, Ejigsemahu Y, Mosher AW, Hailemariam A, Zerihun M, Teferi T, Ayele B, Mesele A, Yohannes G, Tilahun A, Gebre T: Individual, household and environmental risk factors for malaria infection in Amhara, Oromia and SNNP regions of Ethiopia. Trans R Soc Trop Med Hyg. 2009, 103: 1211-1220. 10.1016/j.trstmh.2008.11.016.CrossRefPubMed
39.
Zurück zum Zitat Rebe-Hesketh S, Skrondal A, Pickles A: GLLAMM Manual (October 2004). Working Paper series. 2004, Berkeley CA: UC Berkeley Rebe-Hesketh S, Skrondal A, Pickles A: GLLAMM Manual (October 2004). Working Paper series. 2004, Berkeley CA: UC Berkeley
40.
Zurück zum Zitat Fettene M, Balkew M, Gimblet C: Utilization, retention and bio-efficacy studies of PermaNet in selected villages in Buie and Fentalie districts of Ethiopia. Malar J. 2009, 8: 114-10.1186/1475-2875-8-114.PubMedCentralCrossRefPubMed Fettene M, Balkew M, Gimblet C: Utilization, retention and bio-efficacy studies of PermaNet in selected villages in Buie and Fentalie districts of Ethiopia. Malar J. 2009, 8: 114-10.1186/1475-2875-8-114.PubMedCentralCrossRefPubMed
41.
Zurück zum Zitat Astatkie A, Feleke A: Utilization of insecticide treated nets in Arbaminch Town and the malarious villages of Arbaminch Zuria District, Southern Ethiopia. Ethiopian Journal of Health Development. 2009, 24: 15-24. Astatkie A, Feleke A: Utilization of insecticide treated nets in Arbaminch Town and the malarious villages of Arbaminch Zuria District, Southern Ethiopia. Ethiopian Journal of Health Development. 2009, 24: 15-24.
42.
Zurück zum Zitat NetMark: Ethiopia Bednet Utilization Study: Why some nets owned are not used. 2008 NetMark: Ethiopia Bednet Utilization Study: Why some nets owned are not used. 2008
43.
Zurück zum Zitat Smith S, Brackery A, Yohannes G, Graves PM, Endeshaw T, Shargie EB, Mosher AW, Emerson PM, Gebre T: Monitoring the durability of long-lasting insecticidal bed nets in rural Ethiopia (abstract). Am J Trop Med Hyg. 2010, 83: 180- Smith S, Brackery A, Yohannes G, Graves PM, Endeshaw T, Shargie EB, Mosher AW, Emerson PM, Gebre T: Monitoring the durability of long-lasting insecticidal bed nets in rural Ethiopia (abstract). Am J Trop Med Hyg. 2010, 83: 180-
Metadaten
Titel
Factors associated with mosquito net use by individuals in households owning nets in Ethiopia
verfasst von
Patricia M Graves
Jeremiah M Ngondi
Jimee Hwang
Asefaw Getachew
Teshome Gebre
Aryc W Mosher
Amy E Patterson
Estifanos B Shargie
Zerihun Tadesse
Adam Wolkon
Richard Reithinger
Paul M Emerson
Frank O Richards Jr
Publikationsdatum
01.12.2011
Verlag
BioMed Central
Erschienen in
Malaria Journal / Ausgabe 1/2011
Elektronische ISSN: 1475-2875
DOI
https://doi.org/10.1186/1475-2875-10-354

Weitere Artikel der Ausgabe 1/2011

Malaria Journal 1/2011 Zur Ausgabe

Leitlinien kompakt für die Innere Medizin

Mit medbee Pocketcards sicher entscheiden.

Seit 2022 gehört die medbee GmbH zum Springer Medizin Verlag

Update Innere Medizin

Bestellen Sie unseren Fach-Newsletter und bleiben Sie gut informiert.