Skip to main content
Erschienen in: BMC Infectious Diseases 1/2019

Open Access 01.12.2019 | Research article

Detection of risk clusters for deaths due to tuberculosis specifically in areas of southern Brazil where the disease was supposedly a non-problem

verfasst von: Luana Seles Alves, Danielle Talita dos Santos, Marcos Augusto Moraes Arcoverde, Thais Zamboni Berra, Luiz Henrique Arroyo, Antônio Carlos Vieira Ramos, Ivaneliza Simionato de Assis, Ana Angélica Rêgo de Queiroz, Jonas Boldini Alonso, Josilene Dália Alves, Marcela Paschoal Popolin, Mellina Yamamura, Juliane de Almeida Crispim, Elma Mathias Dessunti, Pedro Fredemir Palha, Francisco Chiaraval-Neto, Carla Nunes, Ricardo Alexandre Arcêncio

Erschienen in: BMC Infectious Diseases | Ausgabe 1/2019

Abstract

Background

Tuberculosis (TB) is the infectious disease that kills the most people worldwide. The use of geoepidemiological techniques to demonstrate the dynamics of the disease in vulnerable communities is essential for its control. Thus, this study aimed to identify risk clusters for TB deaths and their variation over time.

Methods

This ecological study considered cases of TB deaths in residents of Londrina, Brazil between 2008 and 2015. We used standard, isotonic scan statistics for the detection of spatial risk clusters. The Poisson discrete model was adopted with the high and low rates option used for 10, 30 and 50% of the population at risk, with circular format windows and 999 replications considered the maximum cluster size. Getis-Ord Gi* (Gi*) statistics were used to diagnose hotspot areas for TB mortality. Kernel density was used to identify whether the clusters changed over time.

Results

For the standard version, spatial risk clusters for 10, 30 and 50% of the exposed population were 4.9 (95% CI 2.6–9.4), 3.2 (95% CI: 2.1–5.7) and 3.2 (95% CI: 2.1–5.7), respectively. For the isotonic spatial statistics, the risk clusters for 10, 30 and 50% of the exposed population were 2.8 (95% CI: 1.5–5.1), 2.7 (95% CI: 1.6–4.4), 2.2 (95% CI: 1.4–3.9), respectively. All risk clusters were located in the eastern and northern regions of the municipality. Additionally, through Gi*, hotspot areas were identified in the eastern and western regions.

Conclusions

There were important risk areas for tuberculosis mortality in the eastern and northern regions of the municipality. Risk clusters for tuberculosis deaths were observed in areas where TB mortality was supposedly a non-problem. The isotonic and Gi* statistics were more sensitive for the detection of clusters in areas with a low number of cases; however, their applicability in public health is still restricted.
Hinweise

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Abkürzungen
DD
Declaration of Death
FHS
Family Health Strategy
Gi*
Getis-Ord Gi* statistics
ICD
International Classification of Diseases
MHDI
Municipal Human Development Index
MIS
Mortality Information System
PHUs
Primary Health Units
TB
Tuberculosis
WHO
World Health Organization

Background

Tuberculosis (TB) is an ancient disease that remains a serious public health problem worldwide, affecting 30 countries that account for 87% of TB cases. The disease is among the infectious disease that kills the most people worldwide, more than HIV and malaria [1]. The World Health Organization (WHO) launched the ‘End TB’ strategy in 2014, aiming to achieve the elimination of TB by 2050 (< 1 case per 100,000 people), and to also reduce TB mortality by 95% by 2035; both goals are a large challenge in developing countries, such as Brazil [2].
In 2017, Brazil had an incidence rate of 44 cases per 100,000 inhabitants and a mortality rate of 2.4 per 100,000 inhabitants, with a treatment success rate of 72% among the patients monitored in 2016; this result falls short of the WHO recommendations [1]. Recently, the ‘Brazil free of tuberculosis’ strategy was adopted, which aims to improve access to diagnosis and quality treatment in order to achieve the goals defined by the WHO [2]. The strategy is also based on three pillars: integrated and patient-centred prevention and care; bold policies and supportive systems; and the intensification of research and innovation [3].
Currently, government predictions outline that Brazil will achieve the goal of reducing mortality by 2035 at the national level [2]; however, it is unlikely that this will happen at the subnational levels, i.e. states or municipalities. This is due to Brazil being one of the largest countries in the Americas, occupying almost 20.8% of the hemisphere and 47.3% of South America, making it difficult to reduce the mortality rate homogeneously throughout all regions [2].
Studying the subunits of the country and thus an approximation of local health systems is relevant in order to highlight the trends and impact of tuberculosis mortality in these scenarios [4]. Mortality due to TB is defined as a socially determined event, marked mainly by social inequalities related to income, schooling, housing conditions, labour conditions, the weakness of health services (delay in diagnosis, poor diagnosis and treatment) and the absence of social politics and social protection. The risk of deaths is influenced by these factors, which range between areas in a same city, county or country [5, 6], therefore measuring the spatial risk to which given communities are exposed can contribute to the guidance of public policies and strategic actions [7].
This situation is not static. On the contrary, it is very dynamic and varies between the regions according to the availability of resources in terms of health, social investment, urbanisation, immigration, and modes of social organisation; therefore, the risk of disease and its impact (fatality) are influenced by these social dynamics [5]. The literature indicates that, in certain territories, deaths from TB are more prevalent in areas with social problems and a lack of assistance, however, there are few studies that show this, which is important for addressing the problem [6]. Therefore, measuring the spatial risk to which given communities are exposed can contribute to the guidance of public policies and the adoption of directed and focused health measures.
Tuberculosis is a low frequency event compared to diseases such as hypertension, diabetes and malaria, among others; it affects very specific and/or minor populations or groups. Therefore, because traditional techniques, such as scan statistics, require a greater number of event occurrences, their use may lead to erroneous inferences of the non-existence of the death risk of TB in a vulnerable community when it is in fact present and imminent.
The literature has a wide variety of definitions and methodological approaches for identifying clusters [8]; various methods are compared, contrasted and matched, aiming to overcome the issue of unknown and underdiagnosed clusters and to ensure the validity, sensitivity and accuracy of the studies [9].
Through a literature review of TB mortality risk clusters, only three articles were identified in Brazil [6, 8, 9], however all of these articles applied standard scan statistics. Isotonic spatial scan statistics and Getis-Ord Gi* statistics (Gi*) can be used complementarily to increase the chances of identifying a cluster, mainly in areas where the event is more rare. Although these statistics are interesting resources to identify spatial risk clusters in the case of rare phenomena, their application in the area of geoepidemiology is still very limited. Thus, this study aimed to identify risk clusters for TB deaths, specifically in areas where TB supposedly does not seem to be a problem.

Methods

Study design and setting

This ecological study [10] was carried out in the municipality of Londrina, which is a centre for business, technology, research and health development [11]. It is situated at the following geographical coordinates: 23°18′ S latitude and 51°09′ W longitude [12]. Figure 1 illustrates the location of the municipality.
The municipal population is 548,249 inhabitants, of whom 493,520 are concentrated in the urban area, which is the second most populous city of Paraná. The municipal population density is 330.95 inhabitants/km2 [12].
In terms of social indicators, the municipality has a Municipal Human Development Index (MHDI) of 0.78, classified as a high HDI (0.700 to 0.799) according to the United Nations Development Program (UNDP) [13]. Longevity is the attribute that contributes most to the MHDI, with an index of 0.837, followed by income, with an index of 0.789, and education, with an index of 0.712. Regarding social inequality, the municipality presents a Gini coefficient of 0.42, suggesting that there is an inequality of income distribution, and a poverty rate of 36.49% [13].
The municipality has 56 primary health units (PHUs), with 86 family health strategy (FHS) teams distributed in 54 PHUs. FHS coverage is 58.62%, with 32 hospitals and two emergency care units (ECUs) [11, 12].
In 2015, Londrina had a TB incidence rate of 32.95/100,000 inhabitants, a bacillary TB incidence rate of 17.16/100,000 inhabitants and a mortality rate of 0.7/100,000 inhabitants [14].

Study observation units

The analysis units of the study were census tracts [15]. The municipality of Londrina has 713 census tracts; the 678 tracts that are considered to be urban were used in this study.

Study population and period

The study population consisted of cases of deaths caused by TB, with the Declaration of Death (DD) showing codes A15.0 to A19.9, according to the International Classification of Diseases (ICD version 10). This corresponded to all clinical forms of TB, and was assessed over the period from 2008 to 2015.

Source of information and data collection

Data were obtained from two different sources. The first source was 2010 Demographic Census of the Brazilian Institute of Geography and Statistics to obtain the maps data, and the second source was the mortality information system (MIS) of the Health Surveillance Department of the Municipal Health Department of Londrina, BR. The use of the MIS is justified because it was one of the pioneering systems to be founded in Brazil [16].

Data analysis

In the first step, descriptive statistics were performed, including the calculation of absolute frequency and proportion measures for the categorical variables and location (mean and median) and dispersion (standard deviation) measures for the continuous variables, using Statistica (v12.0) software.
Subsequently, the geographic coordinates of each address were searched using the free access Google Earth technology and the geo-referencing technique of the cases was performed using the Terraview (v4.2.2) software. The SaTScan v9.4.2 software was used to identify the risk areas for TB mortality, initially applied to the standard, and then the isotonic version [17, 18].
Scan statistics is a technique developed by Kulldorff and Nagarwalla [13]. It consists of circles that move throughout the study area around the centroids, which correspond to the centre of each territorial unit under analysis [19]. The formation of the spatial clusters is based on the calculation of the number of events found within each circle. If the observed value of the region delimited by the circle is larger than expected, it is called a risk cluster; if the value is lower than expected, it is called a low-risk or protective cluster. This procedure is repeated until all centroids are tested [20].
In the centralisation process, the log likelihood ratio (LLR) of each potential cluster is formulated based on the calculation of the mortality that is observed and expectedin and out of the circular window in which the p-value is assigned, according to the following formula [21]:
$$ \mathrm{LLR}=\log {\left(\frac{{\mathrm{O}}_{\mathrm{in}}}{{\mathrm{E}}_{\mathrm{in}}}\right)}^{\mathrm{O}\mathrm{in}}{\left(\frac{\mathrm{O}-{\mathrm{O}}_{\mathrm{in}}}{\mathrm{O}-{\mathrm{E}}_{\mathrm{in}}}\right)}^{\mathrm{O}-{\mathrm{O}}_{\mathrm{in}}} $$
in which O represents the observed cases and E represents the expected cases. In this way, Oin and Ein denote the number of observed and expected cases in the window, respectively. Ein is calculated by multiplying the deaths due to TB by the population of the census tracts. The higher the LLR, the less likely the cluster detection occurred due to chance [22].
After the formation of the cluster, the software also presents the spatial relative risk (SRR) value [23], which is obtained through an equation [24] that corresponds to the estimated risk within a cluster divided by the estimated risk outside the cluster. The SRR is calculated by taking into account the observed cases divided by the expected cases within the cluster, all divided by the observed cases divided by the expected cases outside the cluster. The equation is:
$$ SRR=\frac{N_z/{E}_z}{\left(N-{N}_z\right)/\left({E}_{A-}{E}_Z\right)} $$
where N is the total number of cases, NZ is the number of cases in the Z cluster, EA is the expected number of cases in the region under the null hypothesis, and EZ is the expected number of cases in the Z area under the null hypothesis.
The difference between the standard and isotonic methods lies in the number of circular windows generated during the centralisation procedure; the isotonic version, instead of developing only one circular window, uses a set of different sized, overlapping circles, centred on the same centroid. It also starts from the alternative hypothesis that the mortality rate is highest within the innermost circle, a little lower between the first and second circles, and so on, until the final circle [18, 24].
In the isotonic version of a given centroid, the risk is modelled as higher within some unknown distance (d) of the centroid compared to a greater distance from the same centroid. This means that the risk is modelled as a function r(d) of the distance from the centroid, and that it uses the steps in a risk function with a single discontinuity in d [25, 26].
The risk function can be classified as a non-increasing function, i.e. the greater the distance from the centroid of the territorial unit of analysis, the smaller the spatial risk for the occurrence of death due to TB. After the identification of the purely spatial risk clusters, to assess the reliability of the SRR values, the respective 95% confidence intervals (95% CI) were calculated [27].
In terms of the spatial clusters, the Poisson method was adopted, with the high and low rates option used for the two analyses, and 10, 30 and 50% of the population at risk, with circular format windows and 999 replications considered as the maximum cluster size [28, 29].
In the third step, the Gi* statistical technique was used to analyse the spatial association of TB mortality. For this, it was necessary to calculate the TB mortality rate standardised by sex and age (TxMTBi), with age classified as less than or equal to the median, or greater than the median (56 years), according to the formula:
$$ \mathrm{TxMTBi}=\frac{\Sigma\ \mathrm{of}\ \mathrm{the}\ \mathrm{standard}\mathrm{ised}\ \mathrm{by}\ \mathrm{age}\ \mathrm{X}\ \mathrm{100,000}}{\Sigma\ \mathrm{of}\ \mathrm{the}\ \mathrm{standard}\ \mathrm{population}}\ \mathrm{X}\ \frac{1}{8} $$
Next, to estimate the radius of the distance used in the Gi*, the Incremental Spatial Autocorrelation (ISA) tool provided by ArcGIS (10.5) was used. The ISA was tested for 30 distances, in which the result of the most pronounced distance was 3143.28 m with p < 0.01 [30, 31]. Also, for the spatial association analysis, the weight matrix normalised by distance was created using Geoda version 1.8 software.
The Getis-Ord General G, G(d), analysis was performed in ArcGIS (v.10.5) software. The G(d) consists of a global index to evaluate the spatial association of an attribute based on statistical distances and calculated from a sum of values for a given distance, according to the following formula [32]:
$$ G(d)=\frac{\sum_{i=1}^n{\sum}_{j=1}^n{w}_{ij}(d){x}_i{x}_j}{\sum_{i=1}^n{\sum}_{j=1}^n{x}_i{x}_j},j\ not\ equal\ to\ i $$
where n corresponds to the number of areas, Wij is the value in the proximity matrix for region i with region j as a function of distance (d), and xi and xj are the values of the attributes considered in the areas i and j.
The value of G(d) is provided by a Z score, ranging from + 3 to − 3, which determines whether the attributes with high or low values are spatially grouped, with higher Z scores indicating more extreme grouping in the region, called hotspots, lower Z-scores indicating low value groupings, called coldspots, and values of 0 indicating no grouping [33, 34]. In this sense, with the intention of examining the spatial patterns in detail, the Gi* local association indicator was used. In the Gi*, the values for each location, that is, each census sector, are considered from a neighbourhood matrix.
The pseudo-significance test was used to certify the statistical validity of the results [35]. A type I error of 5% was fixed as statistically significant (p < 0.05) for all the tests.

Kernel density

An estimation of the density of the nucleus was performed every year to identify whether the conglomerates were changing over time. This analysis consisted of an exploratory interpolation in which the density was generated for the visual identification of hotspot areas, which belong to regions with a higher density of TB deaths [36]. A radius of 3143.28 m was considered, according to the analysis performed through ArcGIS (v.10.5) software. Thematic maps were also constructed using this software.
The maps data from 2010 Demographic Census of the Brazilian Institute of Geography and Statistics are open data, and the data from the MIS were authorized of the Health Surveillance Department of the Municipal Health Department of Londrina,BR. This study was approved by the Research Ethics Committee of the School of Nursing of the University of São Paulo, Ribeirão Preto Campus, in accordance with the Guidelines and Regulatory Standards for Research with Human Subjects, Resolution No. 196/96 of the National Health Council, under Certificate of Presentation for Ethical Appreciation No. 56305516.0.0000.5393, issued on 11 December 2015. A signed consent form was not necessary as secondary data were used and the participants were not identified.

Results

A total of 61 deaths due to TB were identified, the characteristics of which are described in Table 1. According to this table, the mean age was 56.9 years with a standard deviation (SD) of 17.8; 49 (80.3%) were male, 39 (63.9%) were white, 17 (27.9%) were married and 20 (32.8%) had a high school education. According to Table 1, 32 (52.4%) presented the pulmonary clinical form of TB. All identified cases were georeferenced, with a general municipal mortality rate of 1.5 cases per 100,000 inhabitants.
Table 1
Characteristics of the individuals who died of tuberculosis in Londrina, Brazil (2008–2015)
Variable
n
%
Age (years)
  < 19
1
1.6
 20–39
8
13.1
 40–59
27
44.3
  ≥ 60
25
41.0
Median
56
Mean
56.9
Gender
 Male
49
80.3
 Female
12
19.7
Skin colour/ethnicity
 White (Caucasian)
39
63.9
 Black (African)
9
14.8
 Yellow (Asian)
4
6.6
 Brown (Mixed race)
9
14.8
Marital status
 Single
17
27.9
 Married
23
37.7
 Widowed
6
9.8
 Divorced
6
9.8
 Steady partner
2
3.3
 No response
7
11.5
Level of education
 No schooling
1
1.6
 Elementary education
12
19.7
 High school education
20
32.8
 Higher education
15
24.6
 No response
13
21.3
Occupation
 Retired/pensioner
13
21.3
 Homemaker
7
11.5
 Miscellaneous
28
45.9
 No response
13
21.3
Place of death
 Hospital
54
88.5
 Home
7
11.5
Received medical assistance
 Yes
32
52.5
 No
2
3.3
 No response
27
44.3
Diagnosis confirmed by further examination
 Yes
14
23.0
 No
2
3.3
 No response
45
73.8
Diagnosis confirmed by surgery
 Yes
1
1.6
 No
15
24.6
 No response
45
73.8
Diagnosis confirmed by necropsy
 Yes
5
8.2
 No
36
59.0
 No response
20
32.8
Death certified by
 Assistant
17
27.9
 Substitute
19
31.1
 Death Surveillance Service
2
3.3
TB site
 Pulmonary
32
52.4
 Extra-pulmonary
29
47.5
Source: MIS Londrina, BR 2016
Regarding the application of the standard for high rates, a risk cluster was identified for each percentage of the population exposed, i.e. 10, 30 and 50%, with the SRR and 95% CI values expressed in Fig. 2.
In Fig. 2, the clusters of risk covered the north and east regions of the municipality, with 12 deaths in the cluster with 10% of the population at risk and 29 deaths for 30 and 50%. Also, usingk the traditional scan, for low rates and 10% of the population exposed, a protection cluster was identified in the northwestern region of the municipality, where there were no deaths due to TB, whereas for 30 and 50% of the population at risk, the protection cluster involved the entire southern region of the municipality, with 5 deaths for each cluster.
Referring to the isotonic version, as seen in Fig. 3, spatial risk clusters were also found in the northern and eastern regions of the municipality, demonstrating that there was no change in the location of the risk clusters. The protection clusters also maintained the same location as in the traditional scan. The SRR and 95% CI values are described in Fig. 3.
In the isotonic version, the steps in the risk function are present, which corresponds to the multiple circular windows formed during the centralisation process of the scan. This also maximises the LLR. These steps allowed for the verification of the intensity of mortality within the clusters. Thus, for the risk cluster with 10% of the population, step 1 had the lowest radius (0.3 km; Table 2) and the highest SRR value (20.8; 95% CI 7.5–57.1), totalling 4 deaths, whereas step 2 had a radius of 1.8 km and a SRR of 2.05 (95% CI 1.1–3.0), totalling 14 deaths.
Table 2
Risk clusters for TB deaths, according to the steps in risk function, in Londrina, Brazil (2008–2015)
Rate
Pop. at risk (%)
Steps in risk function
No. census sectors
Pop. of cluster
Annual cases/100,000
No. Cases
Expected cases
SRRa (95% CI)
Radius (km)
High
10
1
2
1846
27.0
4
0.2
20.8 (7.5–57.1)
0.3
2
62
47193
3.7
14
5.7
2.05 (1.1–3.7)
1.8
30
1
2
1846
27.0
4
0.2
24.4 (8.9–67.3)
0.3
2
71
55843
3.5
16
6.8
2.43 (1.4–4.3)
1.9
3
107
79956
3.2
21
2.9
2.31 (1.3–3.9)
2.5
4
130
95969
3.1
24
3.6
2.09 (1.2–3.4)
2.8
5
149
112273
3.0
27
2.0
2.03 (1.2–3.3)
2.9
50
1
2
1846
27.0
4
0.2
24.46 (8.9–67.3)
0.3
2
71
55843
3.5
16
6.8
2.43 (1.4–4.3)
1.9
3
107
79956
3.2
21
2.9
2.31 (1.3–3.9)
2.5
4
130
95969
3.1
24
1.9
2.09 (1.2–3.4)
2.8
5
149
112273
3.0
27
2.0
2.03 (1.2–3.3)
2.9
6
281
203846
2.3
38
11.7
1.4 (1.3–3.9)
3.9
Low
10
1
63
53032
0
0
6.1
0 (0.0)
1.6
30
1
31
23448
0
0
2.7
0 (0.0)
4.0
2
216
35782
1.7
5
15.5
0.25 (0.1–0.6)
6.0
50
1
31
23448
0
0
2.7
0 (0.0)
4.0
2
217
144348
0.4
5
15.6
0.23 (0.09–0.6)
6.0
3
230
154346
0.5
6
1.3
0.6 (0.1–0.5)
6.0
4
261
156194
0.6
8
2.3
0.63 (0.1–0.6)
6.3
aSpatial relative risk
The risk cluster for 50% of the population at risk had six steps, with step 1 having a radius of 0.3 km and SRR of 24.4 (95% CI 8.9–67.3), with 4 deaths, and step 6 having a radius of 3.9 km and SRR of 1.4 (95% CI 1.3–3.9), with 38 deaths. In this way, the smaller the cluster radius of the risk clusters, the higher the SRR value.
Regarding the protection clusters, step 1 had the lowest SRR, as it occurred in the cluster for 30% of the population at risk, in which step 1 presented a radius of 4.0 km and SRR of 0 and step 2 had a radius of 6.0 km and SRR of 0.25 (95% CI 0.1–0.6), totalling 5 deaths, i.e. the smaller the radius, the smaller the SRR value.
Table 2 shows the spatial characteristics of TB deaths within the clusters identified through the isotonic version according to the steps in risk function.
Table 3 compares 346 the data obtained through the standard scan and the isotonic scan.
Table 3
Comparative analysis of standard and isotonic scans of TB mortality, Londrina, Brazil (2008–2015)
Rate
High
Low
Pop. at risk (%)
10
30
50
10
30
50
No. census sectors
Standard
32
153
153
63
216
217
Isotonic
60
149
281
63
216
261
Pop. of cluster
Standard
22993
102433
102433
53032
143762
144328
Isotonic
47193
112265
203830
53032
143762
172652
Annual cases/100,000
Standard
6.4
3.4
3.4
0
0.4
0.4
Isotonic
3.7
3.0
2.3
0
0.4
0.6
No. cases
Standard
12
29
29
0
5
5
Isotonic
14
27
38
0
5
8
Expected cases
Standard
2.9
13.3
13.3
6
18.3
18.4
Isotonic
5.9
14
25.8
6.1
18.3
22
Radius (km)
Standard
1.4
2.4
2.4
1.6
5.9
6.0
Isotonic
1.8
2.9
3.9
1.6
5.9
6.3
LLRa
Standard
8.7
9.7
9.7
6.4
8.7
8.7
Isotonic
9.6
12.3
12.7
6.4
9.5
9.9
p-value
Standard
0.05
0.02**
0.03**
0.05
0.04**
0.04**
Isotonic
0.04**
0.01**
< 0.01**
0.05
0.02**
0.02**
aLog likelihood ratio; **p < 0.05
Table 3 shows that the isotonic version covered more census tracts due to the larger radius dimensions. For 10 and 50% of the population, there were 60 and 281 sectors in the isotonic versus 32 and 153 sectors in the traditional version, respectively.
In terms of TB cases, the traditional version captured fewer cases than the isotonic version, with the traditional version presenting 29 deaths for 50% of the population, compared to 38 deaths in the isotonic version. The SRR in the traditional version remained larger than that in the isotonic version, ranging from 3.2 to 4.9 and 2.2 to 2.8, respectively; however, in the isotonic version, the SRR assumed higher standards within the steps, ranging from 1.4 to 24.4.
A similar case occurred for the mortality rates, with the traditional version calculating 3.4 to 6.4 deaths per 100,000 inhabitants, whereas the isotonic version calculated 2.3 to 3.7 deaths per 100,000 inhabitants. However, the rates within the steps ranged from 3.0 to 27.0 deaths per 100,000 inhabitants.
For the protection clusters, the data were similar when considering 10 and 30% of the population at risk, however, when the size of the cluster was changed to 50% of the population, the isotonic version grouped more census sectors, with 261 sectors and more TB deaths, totalling 8. An important aspect to be emphasised is the LLR values; as Table 3 shows, in the isotonic version, the LLRs were increased for both the risk and protection clusters, highlighting that the randomness of the clusters in the isotonic version was lower than in the traditional version.
Regarding the spatial association, Fig. 4 shows the hotspots and coldspots detected by the global and local analysis of the Getis-Ord statistic. The general index of the Getis-Ord statistic (Fig. 4b) had a value of 0.002, demonstrating a positive spatial relationship. The local analysis Gi* (Fig. 4a) demonstrated the formation of hotspots in the eastern regions, with 95% confidence, and in the western region, with 99% confidence, where the Gi Z-score was higher than 1.96. Coldspots were also found in the northwestern and southern regions of the municipality, with 95% confidence level. The pseudo-significance test (Fig. 4b) confirmed both the statistical significance of the analysis, with p < 0.01, and the non-randomness of the clusters.
Figure 5 shows the distribution of the highest density of deaths due to TB for each year of this study.

Discussion

This study aimed to identify risk clusters for TB deaths, specifically in areas where TB supposedly does not seem to be a problem. We observed that the isotonic version covered a greater area of risk than the traditional method, areas that would be considered to be non-problematic or unknown by health care services.
The difference between the traditional method and the isotonic version consists of the number of circular windows generated during the centralisation procedure. The isotonic version, instead of developing only one circular window, uses a set of different sized, overlapping circles, centred on the same centroid. It also starts from the alternative hypothesis that the mortality rate is highest within the innermost circle, a little lower between the first and second circles, and so on, until the final circle [18]. Despite the isotonic version evaluating a window with multiple circles, only a single circle provides the highest likelihood and therefore defines the most probable cluster; in this way, the isotonic version and Gi* proved to be more suitable spatial techniques to analyse territorial subunits and with rarer events.
When Gi* was performed, a new hotspot region was identified, which would have been unknown or underdiagnosed by scan statistics. Although this technique does not follow the same analysis pattern as scan statistics (Fig. 4), it diagnosed clusters in areas where TB was supposedly not a problem.
These findings are important to keep in mind when considering the procedures and tools that have been used by health surveillance and health care workers. When the results are negative, it is likely that these areas will not be prioritised in terms of active TB case finding, the education of health professionals and community, and investigations into health care services, among other actions [37, 38]. When risk clusters for TB deaths are identified, these areas might be prioritised in terms of new resources and investment to improve health conditions and access [6, 7]. thus advancing health equity. The results might motivate integration between epidemiological surveillance activities and Primary Health Care and this way, early diagnosis, the active search for respiratory symptomatology, and the follow-up of patients.
Due to the development of information technology, epidemiology has added a series of modern instruments to its arsenal, which allow for the consideration of the issue of space and to deepen reflections on social relations and the conditions that differ between the risk of dying and living in the different areas under investigation; this study has produced important contributions to these areas.
In relation to the profile of the deaths investigated in the study, the most affected age group corresponded to the economically active population, corroborating the findings in the literature [39, 40]. Another important finding was that, in spite of the predominance of middle-aged deaths, deaths in older adults were also highlighted as, due to the increased longevity of the population, the municipality is facing an increasing number of older adults with TB. Senility has been found to be a risk factor for TB disease [4143]. Males were more frequently affected by death, as was the case in the studies by Dale [44], Beyene [45] and Ferrer [46], which associated this fact with the cultural, economic and social factors related to TB exposure.
Studies show that TB mortality in Brazil occurs predominantly in the non-white population [9, 47, 48]. However, in the present study, the white population was most affected. This was probably due to the fact that the municipality was colonised by Europeans and 70% of the population identifies as white [26, 49]. The majority of cases had a complete high school education, unlike the findings in the literature, which report that the level of schooling is an essential tool for understanding TB patients in terms of their clinical situation and adherence to treatment, with increased education reducing the index and risk of death [5052].
Regarding occupation, retirees/pensioners were prevalent. According to Cavalcante [53], this is due to the fact that retirees present greater vulnerability in terms of economic conditions, difficulties in transportation to health services, abandonment by family members and the difficulties in implementing public policy that meet the health demands of older adults.
The majority of the deaths occurred in the hospital after receiving medical care, with this finding highlighting difficulties in the early diagnosis of TB and the consequent delay in the treatment of these patients; this may be due to shortcomings in the primary healthcare system. It is important to highlight that the coverage of the FHS is approximately 58% in the municipality [5356].
This study showed the pulmonary form of TB to be the most frequent in cases of death, which has also been observed in other studies [44, 50]. However, there was no bacteriological or histological confirmation information (ICD A16.2) for the classification of death.
Regarding the methods of analysis used to identify the risk of mortality in the areas under study, both techniques showed spatial risk and protection clusters for the occurrence of death due to TB (Figs. 2, 3 and 4) in the same regions of the municipality, but with different conformations. The isotonic analysis produced spatial risk clusters with larger dimensions, grouping more census tracts and calculating a greater number of deaths, compared to the standard version. This finding corroborates a study carried out by Kulldorff [18] on breast cancer in the United States.
As highlighted in the results of the study, a spatial scan detects the general location of the cluster by treating the SRR as a constant value, whereas the isotonic version presents the steps in risk function, which stratifies the radius sizes and SRR values within the cluster. This allows for a better diagnosis of the mortality in the municipality and shows areas with real risks of the event or those that constitute regions of protection.
In addition to the discussion of protection clusters, which were identified by both analyses (traditional and isotonic) and in the Gi* analysis, large differences were not observed in terms of the protection areas when the approaches were compared. Specifically regarding the protection areas shown by the study, it should be mentioned that the results were derived from data generated by health services and, therefore, their existence may be due to the underreporting of TB, although MIS is considered the gold standard throughout the country.
Through the kernel density analysis, there was little variation in the spatial distribution of deaths over time. Moreover, the areas of risk identified in the other spatial techniques remained the same, highlighting the eastern region, which continued to have a high density of deaths in all study years.
Mortality from tuberculosis can be influenced by the degree of integration between epidemiological surveillance activities and care provided over time, especially with regard to primary health care. Changes in health policies that do not focus on strengthening primary health care are commonly observed in Brazil. Therefore, mortality rates are also influenced by health actions, such as the training of health professionals to perform early diagnosis, the active search for respiratory symptomatology, and the follow-up of patients. In addition, local socioeconomic inequalities also suffer from variations in space-time, directly related with TB mortality.
This study worked with a small number of observations, since death due to TB is an infrequent phenomenon in the region. Thus, using traditional scan statistics might result in false negative areas of risk, which could compromise the surveillance actions of the city.
Since this study introduced alternative methods for diagnosing risk clusters and confirmed areas that were considered to be non-problematic, this study can become a reference for other small Brazilian municipalities (about 5,000 cities) where TB mortality may still be occult or silent. The application of the Gi* and kernel methods is more frequent than the isotonic spatial scan statistic, yet, when they are used together, the results become much more consistent, reliable and valid.
A reduction in TB mortality requires an understating of the dynamics of TB at the local level, not only at the national or state levels. Since most Brazilian municipalities are small in size, new approaches, including geo-statistics, are absolutely necessary to unravel some mysteries. Stevens and Pfeiffer [57] corroborate this idea by emphasising that innovative methodologies for a more congruous spatial approach to health enable the discovery of results that are more in line with the real situation and can provide guidance for health decision making.
The authors understand that the study might be a reference for diagnosing risk TB mortality and others rarer diseases, as well as a tool to guide policy makers, managers, stakeholders in the allocation of resources, such as cash transfers (Bolsa Família) and others social pockets according to the areas of highest risk [13].
The limitations of this study include the use of secondary data, which may have introduced bias due to the presence of gaps or incomplete data. It should also be noted that for the spatial analyses, only the cases of the deaths of individuals living in the urban area of the municipality were considered.

Conclusions

In conclusion, risk areas for tuberculosis mortality have been identified, including areas where TB was supposedly not a problem. These findings were achieved due to the combination of complementary methods. This study does not allow for a conclusion in terms of the best method for estimating the spatial risk for small regions, since the concepts and approach of each method are different. For this, a different study design would be necessary, with a focus on geostatistical analysis through simulations and more dense and robust tests. These findings show the need to match methods to confer more accurate results, specifically in areas where the phenomenon is rare.

Acknowledgements

We are grateful to the Municipal Secretariat for Health of Londrina, for the partnership and support that they provided in the materialisation of the study.
The study was approved by the Human Research Ethics Committee of the University of São Paulo at Ribeirão Preto College of Nursing, CAAE 56305516.0.0000.5393, issued on 11 December 2015. The Committee accepted a statement with justification for the waiver of the consent term due to the fact that the research was carried out with secondary data from the MIS and the IBGE. The Brazilian legislation regarding Resolution 466/2012 was respected.
Not applicable.

Competing interests

The authors declare that they have no competing interests.
Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://​creativecommons.​org/​licenses/​by/​4.​0/​), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://​creativecommons.​org/​publicdomain/​zero/​1.​0/​) applies to the data made available in this article, unless otherwise stated.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Literatur
4.
Zurück zum Zitat Albuquerque M d FPM d, Batista J d’A L, Ximenes RA d A, Carvalho MS, GTN D, Rodrigues LC. Risk factors associated with death in patients who initiate treatment for tuberculosis after two different follow-up periods. Rev Bras Epidemiol. 2009;12:513–22.CrossRef Albuquerque M d FPM d, Batista J d’A L, Ximenes RA d A, Carvalho MS, GTN D, Rodrigues LC. Risk factors associated with death in patients who initiate treatment for tuberculosis after two different follow-up periods. Rev Bras Epidemiol. 2009;12:513–22.CrossRef
5.
Zurück zum Zitat Berra TZ, Queiroz AA, Yamamura M, Arroyo LH, Garcia MC, Popolin MP, Santos DT, Ramos AC, Alves LS, Fronteira IE, Chiaravalloti NF. Spatial risk of tuberculosis mortality and social vulnerability in Northeast Brazil. Rev Soc Bras Med Trop. 2017;50(5):693–7.CrossRef Berra TZ, Queiroz AA, Yamamura M, Arroyo LH, Garcia MC, Popolin MP, Santos DT, Ramos AC, Alves LS, Fronteira IE, Chiaravalloti NF. Spatial risk of tuberculosis mortality and social vulnerability in Northeast Brazil. Rev Soc Bras Med Trop. 2017;50(5):693–7.CrossRef
6.
Zurück zum Zitat Santos-Neto M, Yamamura M, Garcia MCC, Popolin MP, Rodrigues LBB, Chiaravalloti Neto F, et al. Pulmonary tuberculosis in São Luis, state of Maranhão, Brazil: space and space-time risk clusters for death (2008-2012). Rev Soc Bras Med Trop. 2015;48(l1):69–76.CrossRef Santos-Neto M, Yamamura M, Garcia MCC, Popolin MP, Rodrigues LBB, Chiaravalloti Neto F, et al. Pulmonary tuberculosis in São Luis, state of Maranhão, Brazil: space and space-time risk clusters for death (2008-2012). Rev Soc Bras Med Trop. 2015;48(l1):69–76.CrossRef
7.
Zurück zum Zitat Yamamura M, Santos-Neto M, Santos RA, Garcia MC, Nogueira JD, Arcêncio RA. Epidemiological characteristics of cases of death from tuberculosis and vulnerable territories. Rev Latinoam Enferm. 2015;23(5):910–8.CrossRef Yamamura M, Santos-Neto M, Santos RA, Garcia MC, Nogueira JD, Arcêncio RA. Epidemiological characteristics of cases of death from tuberculosis and vulnerable territories. Rev Latinoam Enferm. 2015;23(5):910–8.CrossRef
8.
Zurück zum Zitat Elliot P, Wakefield JC, Best NG, Briggs DJ. Spatial epidemiology: methods and applications. Oxford: Oxford University Press; 2000. Elliot P, Wakefield JC, Best NG, Briggs DJ. Spatial epidemiology: methods and applications. Oxford: Oxford University Press; 2000.
9.
Zurück zum Zitat Grubesic TH, Wei R, Murray AT. Spatial clustering overview and comparison: accuracy, sensitivity, and computational expense. Ann Assoc Am Geogr. 2014;104(6):1134–56.CrossRef Grubesic TH, Wei R, Murray AT. Spatial clustering overview and comparison: accuracy, sensitivity, and computational expense. Ann Assoc Am Geogr. 2014;104(6):1134–56.CrossRef
10.
Zurück zum Zitat Rothman KJ, Greenland S, Lash TL. Modern Epidemiology. 3rd ed. Philadelphia: Lippincott Williams & Wilkins; 2008. Rothman KJ, Greenland S, Lash TL. Modern Epidemiology. 3rd ed. Philadelphia: Lippincott Williams & Wilkins; 2008.
14.
Zurück zum Zitat Brasil. Ministério da Saúde. Secretaria de vigilância em saúde. Panorama da tuberculose no Brasil. 2014. Accessed 12 Dec 2017. Brasil. Ministério da Saúde. Secretaria de vigilância em saúde. Panorama da tuberculose no Brasil. 2014. Accessed 12 Dec 2017.
16.
Zurück zum Zitat Rocha MS, de Oliveira GP, Aguiar FP, Saraceni V, Pinheiro RS, Rocha MS, et al. Do que morrem os pacientes com tuberculose: causas múltiplas de morte de uma coorte de casos notificados e uma proposta de investigação de causas presumíveis. Cad Saúde Pública. 2015;31(4):709–21.CrossRef Rocha MS, de Oliveira GP, Aguiar FP, Saraceni V, Pinheiro RS, Rocha MS, et al. Do que morrem os pacientes com tuberculose: causas múltiplas de morte de uma coorte de casos notificados e uma proposta de investigação de causas presumíveis. Cad Saúde Pública. 2015;31(4):709–21.CrossRef
17.
Zurück zum Zitat Kulldorff M, Nagarwalla N. Spatial disease clusters: detection and inference. Stat Med. 1995;14:799–810.CrossRef Kulldorff M, Nagarwalla N. Spatial disease clusters: detection and inference. Stat Med. 1995;14:799–810.CrossRef
18.
Zurück zum Zitat Kulldorff M. An isotonic spatial scan statistic for geographical disease surveillance. J Natl Inst Public Heal. 1999;48:94–101. Kulldorff M. An isotonic spatial scan statistic for geographical disease surveillance. J Natl Inst Public Heal. 1999;48:94–101.
19.
Zurück zum Zitat Olfatifar M, Karami M, Hosseini SM, Parvin M. Clustering of pulmonary tuberculosis in Hamadan province, western Iran: A population based cross sectional study (2005–2013). J Res Health Sci. 2016;16(3):166–9.PubMed Olfatifar M, Karami M, Hosseini SM, Parvin M. Clustering of pulmonary tuberculosis in Hamadan province, western Iran: A population based cross sectional study (2005–2013). J Res Health Sci. 2016;16(3):166–9.PubMed
20.
Zurück zum Zitat DE Lucena EFS, Moraes RM. Detecção de agrupamentos espaço-temporais para identificação de áreas de risco de homicídios por arma branca em João Pessoa, PB. Boletim de Ciências Geodésicas. 2012;18:605–23. DE Lucena EFS, Moraes RM. Detecção de agrupamentos espaço-temporais para identificação de áreas de risco de homicídios por arma branca em João Pessoa, PB. Boletim de Ciências Geodésicas. 2012;18:605–23.
21.
Zurück zum Zitat Waller LA, Gotway CA. Applied spatial statistics for public health data. Georgia: Wiley; 2004.CrossRef Waller LA, Gotway CA. Applied spatial statistics for public health data. Georgia: Wiley; 2004.CrossRef
22.
Zurück zum Zitat Gao F, Abe EM, Li S, Zhang L, He J-C, Zhang S, et al. Fine scale spatial-temporal cluster analysis for the infection risk of schistosomiasis japonica using space-time scan statistics. Parasit Vectors. 2014;7:578.CrossRef Gao F, Abe EM, Li S, Zhang L, He J-C, Zhang S, et al. Fine scale spatial-temporal cluster analysis for the infection risk of schistosomiasis japonica using space-time scan statistics. Parasit Vectors. 2014;7:578.CrossRef
23.
Zurück zum Zitat Jardine CG. Role of risk communication in a comprehensive risk management approach. Encycl Quant Risk Anal Assess. 2008:1584–7. Jardine CG. Role of risk communication in a comprehensive risk management approach. Encycl Quant Risk Anal Assess. 2008:1584–7.
24.
Zurück zum Zitat Prates MO, Kulldorff M, Assunção RM. Relative risk estimates from spatial and space–time scan statistics: are they biased? Stat Med. 2014;33(Suppl 15):2634–44.CrossRef Prates MO, Kulldorff M, Assunção RM. Relative risk estimates from spatial and space–time scan statistics: are they biased? Stat Med. 2014;33(Suppl 15):2634–44.CrossRef
25.
Zurück zum Zitat Li XZ, Wang JF, Yang WZ, Li ZJ, Lai SJ. A spatial scan statistic for nonisotropic two-level risk cluster. Stat Med. 2012;31:177–87.CrossRef Li XZ, Wang JF, Yang WZ, Li ZJ, Lai SJ. A spatial scan statistic for nonisotropic two-level risk cluster. Stat Med. 2012;31:177–87.CrossRef
27.
Zurück zum Zitat Wagner MB, Callegari-Jacques SM. Medidas de associação em estudos epidemiológicos: risco relativo e odds ratio. J Pediatr. 1998;74(Suppl 3):247–51. Wagner MB, Callegari-Jacques SM. Medidas de associação em estudos epidemiológicos: risco relativo e odds ratio. J Pediatr. 1998;74(Suppl 3):247–51.
28.
Zurück zum Zitat Azage M, Kumie A, Worku A, Bagtzoglou AC. Childhood Diarrhea Exhibits Spatiotemporal Variation in Northwest Ethiopia: A SaTScan Spatial Statistical Analysis. Odoi A, editor. PLoS One. 2015;10:e0144690.CrossRef Azage M, Kumie A, Worku A, Bagtzoglou AC. Childhood Diarrhea Exhibits Spatiotemporal Variation in Northwest Ethiopia: A SaTScan Spatial Statistical Analysis. Odoi A, editor. PLoS One. 2015;10:e0144690.CrossRef
29.
Zurück zum Zitat Sluydts V, Heng S, Coosemans M, Van Roey K, Gryseels C, Canier L, et al. Spatial clustering and risk factors of malaria infections in Ratanakiri Province, Cambodia Malar. J BioMed Central. 2014;13:387–99. Sluydts V, Heng S, Coosemans M, Van Roey K, Gryseels C, Canier L, et al. Spatial clustering and risk factors of malaria infections in Ratanakiri Province, Cambodia Malar. J BioMed Central. 2014;13:387–99.
30.
Zurück zum Zitat Stopka TJ, Goulart MA, Meyers DJ, Hutcheson M, Barton K, Onofrey S, et al. Identifying and characterizing hepatitis C virus hotspots in Massachusetts: a spatial epidemiological approach. BMC Infect. Dis. 2017;17(Suppl 1):294.CrossRef Stopka TJ, Goulart MA, Meyers DJ, Hutcheson M, Barton K, Onofrey S, et al. Identifying and characterizing hepatitis C virus hotspots in Massachusetts: a spatial epidemiological approach. BMC Infect. Dis. 2017;17(Suppl 1):294.CrossRef
31.
Zurück zum Zitat Zhang Y, Shen Z, Ma C, Jiang C, Feng C, Shankar N, et al. Cluster of human infections with avian influenza A (H7N9) cases: a temporal and spatial analysis. Int J Environ Res Public Health. 2015;12:816–28.CrossRef Zhang Y, Shen Z, Ma C, Jiang C, Feng C, Shankar N, et al. Cluster of human infections with avian influenza A (H7N9) cases: a temporal and spatial analysis. Int J Environ Res Public Health. 2015;12:816–28.CrossRef
32.
Zurück zum Zitat Getis A, Ord JK. The analysis of spatial association. Geogr Anal. 1992;24:189–206.CrossRef Getis A, Ord JK. The analysis of spatial association. Geogr Anal. 1992;24:189–206.CrossRef
33.
Zurück zum Zitat Wang T, Xue F, Chen Y, Ma Y, Liu Y. The spatial epidemiology of tuberculosis in Linyi City, China, 2005–2010. BMC Public Health. 2012;12:885.CrossRef Wang T, Xue F, Chen Y, Ma Y, Liu Y. The spatial epidemiology of tuberculosis in Linyi City, China, 2005–2010. BMC Public Health. 2012;12:885.CrossRef
34.
Zurück zum Zitat Abedi-Astaneh F, Hajjaran H, Yaghoobi-Ershadi MR, Hanafi-Bojd AA, Mohebali M, Shirzadi MR, et al. Risk Mapping and Situational Analysis of Cutaneous Leishmaniasis in an Endemic Area of Central Iran: A GIS-Based Survey. Munderloh UG, editor. PLoS One. 2016;11:e0161317 Public Library of Science.CrossRef Abedi-Astaneh F, Hajjaran H, Yaghoobi-Ershadi MR, Hanafi-Bojd AA, Mohebali M, Shirzadi MR, et al. Risk Mapping and Situational Analysis of Cutaneous Leishmaniasis in an Endemic Area of Central Iran: A GIS-Based Survey. Munderloh UG, editor. PLoS One. 2016;11:e0161317 Public Library of Science.CrossRef
35.
Zurück zum Zitat Câmara G, Monteiro AM, Fucks SD, Carvalho MS. Análise espacial e geoprocessamento. Análise espacial de dados geográficos; 2002. Câmara G, Monteiro AM, Fucks SD, Carvalho MS. Análise espacial e geoprocessamento. Análise espacial de dados geográficos; 2002.
36.
Zurück zum Zitat Davies TM, Hazelton ML. Adaptive kernel estimation of spatial relative risk. Stat Med. 2010;29(23):2423–37.PubMed Davies TM, Hazelton ML. Adaptive kernel estimation of spatial relative risk. Stat Med. 2010;29(23):2423–37.PubMed
37.
Zurück zum Zitat Arcêncio RA, Arakawa T, Oliveira MF, Cardozo-Gonzales RI, Scatena LM, Ruffino-Netto A, Villa TC. Barreiras econômicas na acessibilidade ao tratamento da tuberculose em Ribeirão Preto-São Paulo. Rev Esc Enferm USP. 2011;45(5):1121-7.CrossRef Arcêncio RA, Arakawa T, Oliveira MF, Cardozo-Gonzales RI, Scatena LM, Ruffino-Netto A, Villa TC. Barreiras econômicas na acessibilidade ao tratamento da tuberculose em Ribeirão Preto-São Paulo. Rev Esc Enferm USP. 2011;45(5):1121-7.CrossRef
38.
Zurück zum Zitat Arcêncio RA, Oliveira MF, Cardozo-Gonzales RI, Ruffino-Netto A, Pinto IC, Villa TC. City tuberculosis control coordinators’ perspectives of patient adherence to DOT in São Paulo state, Brazil, 2005. Int J Tuberc Lung Dis. 2008;12(5):527–31 38. Arcêncio RA, Oliveira MF, Cardozo-Gonzales RI, Ruffino-Netto A, Pinto IC, Villa TC. City tuberculosis control coordinators’ perspectives of patient adherence to DOT in São Paulo state, Brazil, 2005. Int J Tuberc Lung Dis. 2008;12(5):527–31 38.
39.
Zurück zum Zitat Augusto CJ, Carvalho Wda S, Goncalves AD, Ceccato M d, Miranda SS, et al. Characteristics of tuberculosis in the state of Minas Gerais, Brazil: 2002–2009. J Bras Pneumol. 2013;39:357–64 Sociedade Brasileira de Pneumologia e Tisiologia.CrossRef Augusto CJ, Carvalho Wda S, Goncalves AD, Ceccato M d, Miranda SS, et al. Characteristics of tuberculosis in the state of Minas Gerais, Brazil: 2002–2009. J Bras Pneumol. 2013;39:357–64 Sociedade Brasileira de Pneumologia e Tisiologia.CrossRef
40.
Zurück zum Zitat Cecilio HPM, Molena-Fernandes CA, Mathias TA d F, Marcon SS. Perfil das internações e óbitos hospitalares por tuberculose. Acta Paul Enferm. 2013;26:250–5.CrossRef Cecilio HPM, Molena-Fernandes CA, Mathias TA d F, Marcon SS. Perfil das internações e óbitos hospitalares por tuberculose. Acta Paul Enferm. 2013;26:250–5.CrossRef
41.
Zurück zum Zitat Yen Y-F, Feng J-Y, Pan S-W, Chuang P-H, Su VY-F, Su W-J. Determinants of mortality in elderly patients with tuberculosis: a population-based follow-up study. Epidemiol Infect. 2017;145:1374–81.CrossRef Yen Y-F, Feng J-Y, Pan S-W, Chuang P-H, Su VY-F, Su W-J. Determinants of mortality in elderly patients with tuberculosis: a population-based follow-up study. Epidemiol Infect. 2017;145:1374–81.CrossRef
42.
Zurück zum Zitat Qi Z, Yang W, Wang Y-F. Epidemiological analysis of pulmonary tuberculosis in Heilongjiang province China from 2008 to 2015. Int J Mycobacteriol. 2017;6:264.CrossRef Qi Z, Yang W, Wang Y-F. Epidemiological analysis of pulmonary tuberculosis in Heilongjiang province China from 2008 to 2015. Int J Mycobacteriol. 2017;6:264.CrossRef
43.
Zurück zum Zitat Raimundo AG, Guimarães AM, Nery A, Silva SC. Tuberculose: o perfil no novo milênio. Rev Enferm UFPE line. 2015;10:1387–96. Raimundo AG, Guimarães AM, Nery A, Silva SC. Tuberculose: o perfil no novo milênio. Rev Enferm UFPE line. 2015;10:1387–96.
44.
Zurück zum Zitat Dale K, Tay E, Trevan P, Denholm JT. Mortality among tuberculosis cases in Victoria, 2002–2013: case fatality and factors associated with death. Int J Tuberc Lung Dis. 2016;20:515–23.CrossRef Dale K, Tay E, Trevan P, Denholm JT. Mortality among tuberculosis cases in Victoria, 2002–2013: case fatality and factors associated with death. Int J Tuberc Lung Dis. 2016;20:515–23.CrossRef
45.
Zurück zum Zitat Beyene Y, Geresu B, Mulu A. Mortality among tuberculosis patients under DOTS programme: a historical cohort study. BMC Public Health. 2016;16:883.CrossRef Beyene Y, Geresu B, Mulu A. Mortality among tuberculosis patients under DOTS programme: a historical cohort study. BMC Public Health. 2016;16:883.CrossRef
46.
Zurück zum Zitat Ferrer GCN, da Silva RM, Ferrer KT, Traebert J, Ferrer GCN, da Silva RM, et al. The burden of disease due to tuberculosis in the state of Santa Catarina. Brazil J Bras Pneumol. 2014;40:61–8.CrossRef Ferrer GCN, da Silva RM, Ferrer KT, Traebert J, Ferrer GCN, da Silva RM, et al. The burden of disease due to tuberculosis in the state of Santa Catarina. Brazil J Bras Pneumol. 2014;40:61–8.CrossRef
47.
Zurück zum Zitat Ceccon RF, Maffacciolli R, Burille A, Meneghel SN, de Oliveira DLLC, Gerhardt TE, et al. Mortalidade por tuberculose nas capitais brasileiras, 2008-2010. Epidemiol Serv Saúde. 2017;26(2):349–58.CrossRef Ceccon RF, Maffacciolli R, Burille A, Meneghel SN, de Oliveira DLLC, Gerhardt TE, et al. Mortalidade por tuberculose nas capitais brasileiras, 2008-2010. Epidemiol Serv Saúde. 2017;26(2):349–58.CrossRef
48.
Zurück zum Zitat Cardoso JN. Perfil epidemiológico e fatores associados ao óbito por tuberculose em Teresina; 2015. Cardoso JN. Perfil epidemiológico e fatores associados ao óbito por tuberculose em Teresina; 2015.
49.
Zurück zum Zitat Dessunti EM, Meier DA, Donath BC, Costa AA, Guariente MH. Infecção latente de tuberculose: adesão ao tratamento e evolução dos casos. Rev Enferm UERJ. 2013;21:711–7. Dessunti EM, Meier DA, Donath BC, Costa AA, Guariente MH. Infecção latente de tuberculose: adesão ao tratamento e evolução dos casos. Rev Enferm UERJ. 2013;21:711–7.
50.
Zurück zum Zitat Sánchez-Barriga JJ. Tendencias de mortalidad y riesgo de muerte por tuberculosis pulmonar en las 7 regiones socioeconómicas y los 32 estados de México, 2000-2009. Arch Bronconeumol. 2015;51:16–23.CrossRef Sánchez-Barriga JJ. Tendencias de mortalidad y riesgo de muerte por tuberculosis pulmonar en las 7 regiones socioeconómicas y los 32 estados de México, 2000-2009. Arch Bronconeumol. 2015;51:16–23.CrossRef
51.
Zurück zum Zitat Blöndal K, Rahu K, Altraja A, Viiklepp P, Rahu M, Blöndal K. Overall and cause-specific mortality among patients with tuberculosis and multidrug-resistant tuberculosis. Int J Tuberc Lung Dis. 2013;17:961–8.CrossRef Blöndal K, Rahu K, Altraja A, Viiklepp P, Rahu M, Blöndal K. Overall and cause-specific mortality among patients with tuberculosis and multidrug-resistant tuberculosis. Int J Tuberc Lung Dis. 2013;17:961–8.CrossRef
52.
Zurück zum Zitat Lin Y-S, Yen Y-F. Determinants of mortality before start of and during tuberculosis treatment among elderly patients: a population-based retrospective cohort study. Age Ageing. 2015;44(3):490–6.CrossRef Lin Y-S, Yen Y-F. Determinants of mortality before start of and during tuberculosis treatment among elderly patients: a population-based retrospective cohort study. Age Ageing. 2015;44(3):490–6.CrossRef
53.
Zurück zum Zitat Oliveira Cavalcante EF, Guerreiro Vieira da Silva DM. Profile of Tuberculosis Patients Perfil De Personas Acometidas Por Tuberculosis. Revista da Rede de Enfermagem do Nordeste. 2013;14(4):1–10. Oliveira Cavalcante EF, Guerreiro Vieira da Silva DM. Profile of Tuberculosis Patients Perfil De Personas Acometidas Por Tuberculosis. Revista da Rede de Enfermagem do Nordeste. 2013;14(4):1–10.
54.
Zurück zum Zitat Salinas J, Calvillo S, Caylà J, Nedel FB, Martín M, Navarro A, et al. Delays in the diagnosis of pulmonary tuberculosis in Coahuila, Mexico. Int J Tuberc Lung Dis. 2012;16:1193–8.CrossRef Salinas J, Calvillo S, Caylà J, Nedel FB, Martín M, Navarro A, et al. Delays in the diagnosis of pulmonary tuberculosis in Coahuila, Mexico. Int J Tuberc Lung Dis. 2012;16:1193–8.CrossRef
55.
Zurück zum Zitat Saifodine A, Gudo PS, Sidat M, Black J. Patient and health system delay among patients with pulmonary tuberculosis in Beira city, Mozambique. BMC Public Health. 2013;13:559.CrossRef Saifodine A, Gudo PS, Sidat M, Black J. Patient and health system delay among patients with pulmonary tuberculosis in Beira city, Mozambique. BMC Public Health. 2013;13:559.CrossRef
56.
Zurück zum Zitat Theron G, Jenkins HE, Cobelens F, Abubakar I, Khan AJ, Cohen T, et al. Data for action: collection and use of local data to end tuberculosis. Lancet. 2015;386:2324–33.CrossRef Theron G, Jenkins HE, Cobelens F, Abubakar I, Khan AJ, Cohen T, et al. Data for action: collection and use of local data to end tuberculosis. Lancet. 2015;386:2324–33.CrossRef
57.
Zurück zum Zitat Stevens KB, Pfeiffer DU. Spatial modelling of disease using data- and knowledge-driven approaches. Spat Spatiotemporal Epidemiol. 2011;2:125–33.CrossRef Stevens KB, Pfeiffer DU. Spatial modelling of disease using data- and knowledge-driven approaches. Spat Spatiotemporal Epidemiol. 2011;2:125–33.CrossRef
Metadaten
Titel
Detection of risk clusters for deaths due to tuberculosis specifically in areas of southern Brazil where the disease was supposedly a non-problem
verfasst von
Luana Seles Alves
Danielle Talita dos Santos
Marcos Augusto Moraes Arcoverde
Thais Zamboni Berra
Luiz Henrique Arroyo
Antônio Carlos Vieira Ramos
Ivaneliza Simionato de Assis
Ana Angélica Rêgo de Queiroz
Jonas Boldini Alonso
Josilene Dália Alves
Marcela Paschoal Popolin
Mellina Yamamura
Juliane de Almeida Crispim
Elma Mathias Dessunti
Pedro Fredemir Palha
Francisco Chiaraval-Neto
Carla Nunes
Ricardo Alexandre Arcêncio
Publikationsdatum
01.12.2019
Verlag
BioMed Central
Erschienen in
BMC Infectious Diseases / Ausgabe 1/2019
Elektronische ISSN: 1471-2334
DOI
https://doi.org/10.1186/s12879-019-4263-1

Weitere Artikel der Ausgabe 1/2019

BMC Infectious Diseases 1/2019 Zur Ausgabe

Leitlinien kompakt für die Innere Medizin

Mit medbee Pocketcards sicher entscheiden.

Seit 2022 gehört die medbee GmbH zum Springer Medizin Verlag

Notfall-TEP der Hüfte ist auch bei 90-Jährigen machbar

26.04.2024 Hüft-TEP Nachrichten

Ob bei einer Notfalloperation nach Schenkelhalsfraktur eine Hemiarthroplastik oder eine totale Endoprothese (TEP) eingebaut wird, sollte nicht allein vom Alter der Patientinnen und Patienten abhängen. Auch über 90-Jährige können von der TEP profitieren.

Niedriger diastolischer Blutdruck erhöht Risiko für schwere kardiovaskuläre Komplikationen

25.04.2024 Hypotonie Nachrichten

Wenn unter einer medikamentösen Hochdrucktherapie der diastolische Blutdruck in den Keller geht, steigt das Risiko für schwere kardiovaskuläre Ereignisse: Darauf deutet eine Sekundäranalyse der SPRINT-Studie hin.

Bei schweren Reaktionen auf Insektenstiche empfiehlt sich eine spezifische Immuntherapie

Insektenstiche sind bei Erwachsenen die häufigsten Auslöser einer Anaphylaxie. Einen wirksamen Schutz vor schweren anaphylaktischen Reaktionen bietet die allergenspezifische Immuntherapie. Jedoch kommt sie noch viel zu selten zum Einsatz.

Therapiestart mit Blutdrucksenkern erhöht Frakturrisiko

25.04.2024 Hypertonie Nachrichten

Beginnen ältere Männer im Pflegeheim eine Antihypertensiva-Therapie, dann ist die Frakturrate in den folgenden 30 Tagen mehr als verdoppelt. Besonders häufig stürzen Demenzkranke und Männer, die erstmals Blutdrucksenker nehmen. Dafür spricht eine Analyse unter US-Veteranen.

Update Innere Medizin

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