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Erschienen in: BMC Infectious Diseases 1/2019

Open Access 01.12.2019 | Research article

Geographic surveillance of community associated MRSA infections in children using electronic health record data

verfasst von: Lilly Cheng Immergluck, Traci Leong, Khusdeep Malhotra, Trisha Chan Parker, Fatima Ali, Robert C. Jerris, George S. Rust

Erschienen in: BMC Infectious Diseases | Ausgabe 1/2019

Abstract

Background

Community- associated methicillin resistant Staphylococcus aureus (CA-MRSA) cause serious infections and rates continue to rise worldwide. Use of geocoded electronic health record (EHR) data to prevent spread of disease is limited in health service research. We demonstrate how geocoded EHR and spatial analyses can be used to identify risks for CA-MRSA in children, which are tied to place-based determinants and would not be uncovered using traditional EHR data analyses.

Methods

An epidemiology study was conducted on children from January 1, 2002 through December 31, 2010 who were treated for Staphylococcus aureus infections. A generalized estimated equations (GEE) model was developed and crude and adjusted odds ratios were based on S. aureus risks. We measured the risk of S. aureus as standardized incidence ratios (SIR) calculated within aggregated US 2010 Census tracts called spatially adaptive filters, and then created maps that differentiate the geographic patterns of antibiotic resistant and non-resistant forms of S. aureus.

Results

CA-MRSA rates increased at higher rates compared to non-resistant forms, p = 0.01. Children with no or public health insurance had higher odds of CA-MRSA infection. Black children were almost 1.5 times as likely as white children to have CA-MRSA infections (aOR 95% CI 1.44,1.75, p < 0.0001); this finding persisted at the block group level (p < 0.001) along with household crowding (p < 0.001). The youngest category of age (< 4 years) also had increased risk for CA-MRSA (aOR 1.65, 95%CI 1.48, 1.83, p < 0.0001). CA-MRSA encompasses larger areas with higher SIRs compared to non-resistant forms and were found in block groups with higher proportion of blacks (r = 0.517, p < 0.001), younger age (r = 0.137, p < 0.001), and crowding (r = 0.320, p < 0.001).

Conclusions

In the Atlanta MSA, the risk for CA-MRSA is associated with neighborhood-level measures of racial composition, household crowding, and age of children. Neighborhoods which have higher proportion of blacks, household crowding, and children < 4 years of age are at greatest risk. Understanding spatial relationship at a community level and how it relates to risks for antibiotic resistant infections is important to combat the growing numbers and spread of such infections like CA-MRSA.
Hinweise
The original version of this article was revised: the authors reported Dr. Kevin Matthews must be removed from the author list.
The authors would like to extend their deep gratitude to Dr. Kevin Matthews for his spatial analyses in calculating the standardized incidence ratios and for the maps created.
A correction to this article is available online at https://​doi.​org/​10.​1186/​s12879-019-3972-9.
Abkürzungen
aOR
adjusted odds ratio
CA-MRSA
Community-associated methicillin resistant Staphylococcus aureus
ED
Emergency department
GIS
Geographic information systems
MRSA
Methicillin resistant Staphylococcus aureus
MSA
Metropolitan Statistical Area
MSSA
Methicillin sensitive Staphylococcus aureus
OR
Odds ratio

Background

The use of geocoded electronic health record (EHR) data for improving health outcomes is in its infancy [1] particularly for infectious diseases such as community-associated methicillin resistant Staphylococcus aureus (CA-MRSA) infections [24]. This is an important disease to study because it is preventable and the number of children hospitalized with CA-MRSA infections in the United States increased from 6.7 cases per 1000 admissions in 2002 to 21.2 cases in 2007 [5]. We demonstrated how geocoded EHR data in conjunction with a geographic information system (GIS) can be used to enhance the geographic surveillance of CA-MRSA. In doing so, we 1) characterized the communities where children infected by the bacteria Staphylococcus aureus (S. aureus) resided during the height of the CA-MRSA epidemic in the US [6] (2002–2010); and 2) identified areas at high risk for CA-MRSA where targeted interventions aimed at preventing disease transmission will have potentially the most impact.
Electronic health records are becoming a routine part of patient care. Their primary purpose is to follow the provision of care to individual patients. However, they are also a source of data for public health surveillance that cannot be obtained from reportable disease registries or vital statistics databases. EHR data typically includes basic demographic characteristics of the patient as well as their list of diagnoses, prescriptions, results from laboratory tests, referrals to specialists, and provider characteristics [7]. They also contain residential information about the patient which can be geocoded and linked to data about the patient’s social, physical and built environment, community resources and other data about their community [8]. Use of geocoded EHR for public health is still emerging, but there are a wide range of recent application areas including hospital readmissions for pediatric asthma [9], preventable emergency department visits [10, 11], hospitalizations for common illnesses [12], obesity in children [12], and Type 2 diabetes [8, 13, 14].
Population based studies have shown a higher rate of invasive MRSA infections among blacks and other minorities [1518] and in densely populated areas with high numbers of pre-school and school aged children [19]. The subset of MRSA infections emerging from the community, or CA-MRSA infections, have been endemic in many urban areas with significantly increased risk for invasive infection among blacks [6, 17, 20]. Risks associated with CA-MRSA disease may also be related to socioeconomic factors [4, 21], and are not well characterized for this community acquired infection [6, 16, 17]. For instance, household crowding has been cited as a risk for CA-MRSA infections, but the impact of neighborhood crowding has not previously been addressed [22, 23].
The goals of this study are to characterize the neighborhoods with the highest rates of CA-MRSA infection in the Atlanta–Sandy Springs–Roswell, GA Metropolitan Statistical Area (the Atlanta MSA), and to analyze the spatial distribution of CA-MRSA compared to the non-antibiotic resistant form of S. aureus, also known as community-associated methicillin sensitive Staphylococcus aureus (CA-MSSA). There are very few studies to characterize CA-MRSA infections in this region of the US, compared to other parts. This spatial characterization would enable us to identify specific areas at greatest risk for antibiotic resistance and thus, identify those communities most likely to benefit from targeted interventions. Comparing spatial patterns of the nonresistant forms of S. aureus to resistant forms would identify clonal spread of specific resistant strains which may be circulating in a community or neighborhood; primary and secondary intervention plans aimed at specific geographic areas could be tailored, based on the risks associated with a particular location. For example, CA-MRSA rates within certain communities [24] have decreased over the last 5 years when community-level prevention measures (e.g., increased hand sanitizers located throughout public areas) were implemented. The importance of achieving these goals would allow public health officials and area primary care providers to combat the spread of CA-MRSA infections through targeted interventions aimed at those communities at highest risk for acquisition and transmission. Such interventions would contribute to the development of health policy guidelines for infection control, effective home and school-based interventions, and identifying but not stigmatizing children who may be at increased risk for CA-MRSA based on individual and area level risk factors.

Methods

Overview

CA-MRSA infections in the Atlanta MSA from 2002 to 2010 were examined by applying exploratory spatial analysis in order to identify risk factors and characterize geographic variations of CA-MRSA rates compared to CA-MSSA rates.

Study design

A retrospective epidemiology study was conducted of children from January 1, 2002 through December 31, 2010 who were treated for S. aureus infections at two pediatric hospitals in the Atlanta MSA (Scottish Rite Children’s Hospital and Egleston Children’s Hospital). Children diagnosed with S. aureus infection and who were managed in the emergency department (ED), or as an inpatient were included; no data was collected on S. aureus carriage or colonization. All had an International Classification of Diseases, Clinical Modification (ICD- 9-CM) code compatible with a staphylococcal infection, a positive S. aureus culture, and lived within the 20-counties that comprise the Atlanta–Sandy Springs–Roswell, GA Metropolitan Statistical Area (Metro Atlanta). (The two hospitals consistently provide more than 80% of the pediatric hospitalizations for the Atlanta MSA [25].) This study was approved by Institutional Review Boards of hospitals and affiliated academic institutions.
Each unique child met the case definition if their EHR reported a positive MRSA infection on the first culture during a single hospitalization. MRSA carriage or colonization status is not routinely collected on patients with MRSA infection, so this was not collected for our study. Cases were then categorized as ‘community associated’ or ‘hospital acquired’ infections. Using CDC’s guidelines for case definitions, ‘community-associated infections were those which occurred within or at 48 h of hospital admission, otherwise, they were ‘hospital acquired’ [26]. Clinical isolates were identified using routine laboratory methods [27, 28]. Demographic information (race, age, gender and type of health insurance) and residential addresses were obtained from the EHR. Dates of hospital admission and discharge, patient’s body site(s) of infection, previous S. aureus related hospitalizations, and days to a positive culture from time of admission were also collected.
At the neighborhood level, the Census block group where a patient resided was identified [2931]. We obtained American Community Survey [32] data to determine household crowding, proportion of black by block group, and proportion below poverty. Race/ethnicity, children living in poverty, and median household income were obtained from 2010 Decennial Census [32]. Boundary files for use in GIS for Georgia block groups and counties were downloaded from the National Historical Geographic Information System [33].

Race/ethnicity

Race/ethnicity was categorized as white, black, Hispanic and other (‘other’ included: Asian, Native American, multi-racial, Native Hawaiian, and other/declined) and proportions within each block were determined. Based on the proportions of race (black, Asian, American Indian or Alaska Native, Native Hawaiian or other Pacific Islander) reported in the 2010 US Census, we determined which block groups were ‘concentrated’ area of blacks by using the overall percentage of blacks for the state as a reference point. [34] For example, the overall percentage of blacks in Georgia was 30.5% [34] in 2010, so any block group ≥30.5% blacks, was thereby defined as a ‘concentrated’ area of blacks.

Poverty

We used the ratio of income to poverty to control for variations in household size and to determine relative poverty by block group. It was determined by dividing the median 2010 family income by the 2010 poverty threshold for a family of four ($22,491) [35] and then assigning block groups as very low income (< 0.99), low income (0.99–1.25), moderate income (1.25–2.50), high income (> 2.5) [36, 37].

Household crowding

From US Housing and Urban Development definition, household crowding [38] was any housing unit with more than one person per room [4, 39]. Proportions of crowded households were calculated for each block group.

Data analysis

The basic unit of observation was each child diagnosed with S. aureus infection. Age, gender, and race entered the models as individual level covariates and all others were measured at the Census-block level. All risk factors were categorical except age. Since there were possible unknown correlations between outcomes of interest, and estimates of parameters using a generalized linear model, we applied a generalized estimated equations (GEE) model using an exchangeable covariance structure with model based standard errors; crude odds ratios (OR) were based on conditions determined a priori to be associated with risk of S. aureus and used as estimates of relative risks. Adjusted odds ratios (aORs) were calculated using a generalized linear mixed model, allowing for random effects and correlated errors for non-normal data.
Three separate models were applied for multiple regression analyses: Model 1- individual factors only, Model 2 - neighborhood factors, and Model 3- individual and neighborhood factors. Specific individual level and neighborhood level variables were identified, after comparing Model 1 to Model 3, and Model 2 to Model 3; this was done to ascertain which variables remained significant. Variables were included in the final adjusted model if, e.g., when comparing Model 1 to Model 3, the log likelihood statistics for the fitted model were significant for these variables. All tests for significance were two-tailed, and a p-value of < 0.05 was considered significant. Statistical analysis was performed using SAS 9.4 (SAS Institute, Cary, NC).

Spatial analysis

For spatial analyses, we used data at the 2010 US Census block group because of the relatively homogeneous nature and close relationship of smaller census-derived units to health outcomes [40]. Data from all 20 counties of the Atlanta MSA were used for the multilevel and spatial analysis. To improve the geographic visualization of the disease patterns, the maps only show the eight counties that surround the Atlanta City limits; 78% of all cases were in these counties.

Geographic distribution of community acquired- MRSA and –MSSA

We measured the risk of CA-MRSA and CA-MSSA as standardized incidence ratios (SIR) which use the observed number of events in an area in the numerator and the expected number of events in the denominator. The number of expected MRSA events was calculated by applying the regional rate of CA-MRSA (14.2 per 100,000) to the number of children in each Census block group and the expected number of CA-MSSA events were calculated by applying the regional rate of CA-MSSA (13.2 per 100,000) to the number of children in each Census block group.
We calculated these SIRs in overlapping units of geography called spatially adaptive filter areas [41] (spatial filters). Spatial filters are aggregations of smaller geographic units, which, by themselves, do not contain sufficiently large enough populations to calculate a reliable disease rate. Spatial filter areas effectively address a common problem in the disease mapping literature called the small number problem [42], which occurs when the population in an administrative unit of geography (i.e., a county or a Census block group) is too small to calculate a reliable disease rate. The sizes of the spatial filter vary across the study area and depend on the number of neighboring Census block groups needed for a threshold value; spatial filters are generally much larger in less populated areas than those in denser areas.
Each spatial filter is centered on a sampling location that we derived from the geometric center of each Census block group within the Atlanta MSA. Here, the smaller units that comprise each spatial filter are the set of Census block groups nearest to each sampling location, which we aggregated together until a threshold value of 30 expected CA-MRSA cases and 30 expected CA-MSSA cases were obtained. To accomplish this, we created a unique spatial filter for CA-MRSA and a unique spatial filter for CA-MSSA and then used whichever produced the largest filter area [43]. We chose 30 because the standard error of the SIR can never exceed 0.183 and any small area with an SIR less than 0.702 or greater than 1.425 will be statistically significant at p < 0.01.
The SIRs for CA-MRSA and CA-MSSA were then attributed to the sampling locations and spatially interpolated to reveal a continuous geographic pattern of statistically reliable CA-MRSA and CA-MSSA risk estimates. A by-product of the spatially adaptive filtering procedure is a map of smoothed disease rates, but it differs from other rate smoothing algorithms—such as headbanging [4446] or localized empirical Bayesian estimation methods [4749]—which use potentially unreliable disease rates pre-computed in administrative units. The rates calculated in spatially adaptive filters are not pre-computed; we first aggregated the raw number of S. aureus cases in neighboring geographic units until a large enough population to calculate a reliable disease rate is obtained and then calculate the disease rates. The effect of this procedure is that all SIRs are based on a minimum level of statistical reliability because the size of the geographic units is based on the principle of choosing an acceptable minimum level of reliability [50].
We also used the same spatial filter areas to calculate covariates. For a given spatial filter area, the numerator for percent black is the sum of the number of blacks in the Census block groups that comprise the spatial filter and the denominator is the sum of the people of any race in the same Census block groups. The numerator for the age covariate is the sum of the population younger than 5 years and the denominator is all children younger than 19 years. The numerator for the household crowding is the sum of the number of housing units with more than one person per room and the denominator is the sum of the housing units. We then used Pearson’s R correlation coefficients to measure the association between the percent of S. aureus that were CA-MRSA and the three covariates calculated in the spatial filters.

Results

Sample size and population characteristics

Figure 1 shows the selection criteria for the study. Of 13,938 unique children with a S. aureus infection, 2084 were excluded for invalid addresses (missing, postal office designations, invalid addresses); and 1207 children were excluded with hospital-acquired infections. In 2010, there were 5533 blocks in Georgia and 2097 block groups (38% of all block groups) had one or more observed cases of CA- MRSA. There were a total of 5379 CA- MRSA cases reported during this time period [51]. We determined there were 10,642 community-associated S. aureus infections with complete information, and 50.5% were the antibiotic resistant form, CA-MRSA (Table 1). We then stratified the infections based on the hospital location (Egleston Children’s Hospital or Scottish Rite Children’s Hospital). Differences were found between CA-MRSA and CA-MSSA infections with regard to race, age, gender and type of health insurance. Although white children had the highest proportion of CA-MRSA and CA-MSSA, black children with CA-MRSA was nearly double that of black children with CA-MSSA infections. Children with CA-MRSA also were younger and had higher rates of public health insurance compared to CA-MSSA (p < 0.01).
Table 1
Patient level and neighborhood characteristics
Variable
Overall (n = 10,642)
MRSA (n = 5379)
MSSA (n = 5263)
p-value
Patient Level Characteristics
 Hospital
   
< 0.001
 Egleston
4537 (42.6)
2331 (43.3)
2206 (41.9)
 
 Scottish Rite
6105 (57.4)
3048 (56.7)
3057 (58.1)
 
Race, n (%)
   
< 0.001
 Black
3553 (33.4)
2224 (41.3)
1329 (25.3)
 
 Hispanic
427 (4.0)
212 (3.9)
215 (4.1)
 
 Other
857 (8.1)
377 (7.0)
480 (9.1)
 
 Unknown
156 (1.5)
65 (1.2)
91 (1.7)
 
 White
5649 (53.1)
2501 (46.5)
3148 (59.8)
 
Gender, n (%)
   
< 0.001
 F
5102 (47.9)
2731 (50.8)
2371 (45.1)
 
 M
5540 (52.1)
2648 (49.2)
2892 (54.9)
 
Age group, n (%)
   
< 0.001
 0–3 yrs
4820 (45.3)
2888 (53.7)
1932 (36.7)
 
 4–12 yrs
3350 (31.5)
1399 (26.0)
1951 (37.1)
 
 > 12 yrs
2472 (23.2)
1092 (20.3)
1380 (26.2)
 
Age, Mean (SD)
6.69 (5.65)
5.95 (5.55)
7.44 (5.66)
< 0.001
Insurance, n (%)
   
< 0.001
 Multiple Types
20 (0.2)
10 (0.2)
10 (0.2)
 
 Private
4876 (45.8)
2101 (39.1)
2775 (52.7)
 
 Public
5282 (49.6)
3002 (55.8)
2280 (43.3)
 
 Self Pay
462 (4.3)
266 (4.9)
196 (3.7)
 
Neighborhood Level Characteristics
Household crowding, n (%)
   
< 0.001
 ≤ 1 person/room
5434 (51.1)
2639 (49.1)
2795 (53.1)
 
 > 1 person/room
5208 (48.9)
2740 (50.9)
2468 (46.9)
 
Black population, n (%)
   
< 0.001
 < 40.46%
7322 (68.8)
3361 (62.5)
3961 (75.3)
 
 ≥ 40.46%
3320 (31.2)
2018 (37.5)
1302 (24.7)
 
%Below poverty, Mean (SD)
17.1 (14.5)
18.3 (15.1)
15.9 (13.8)
< 0.001

Prevalence and trend of antibiotic resistant Staphylococcus aureus (2002–2010)

CA-MRSA cases increased per year, rising at higher rates compared to CA-MSSA, p = 0.01. CA-MRSA infections more than doubled from 23.2% in 2002 to 53.7% in 2006. (Fig. 2).

Risk factors for community associated MRSA

Children with no or public health insurance had higher odds of CA-MRSA infection compared to those with private insurance (p < 0.01). Black children were one and a half times (aOR 1.58 (1.44-1.75, p < 0.0001)) as likely as whites to have CA-MRSA infection, after adjusting for gender, age, and health insurance. The youngest category of age (< 4 years) also had increased risk for CA-MRSA (aOR 1.65, 95% CI 1.48, 1.83, p < 0.0001). Both crude and adjusted Odds Ratios from Model 1 as described in Methods are summarized in Table 2.
Table 2
Individual-Level Factors for CA-MRSA Compared to CA-MSSA Infection for Crude and Adjusted Odds Ratios
Variable
Crude OR (95% CI)
p-value
Adjusted OR (95% CI)
p-value
Race
 White
Referent
Referent
 Black
1.92 (1.75, 2.10)
<.0001
1.58 (1.44,1.75)
<.0001
 Hispanic
1.10 (0.90, 1.35)
0.3359
.81 (.66,1.0)
.0487
 Other
0.94 (0.81, 1.09)
0.3989
.73 (.63, .86)
<.0001
Gender
 Male
Referent
Referent
 Female
1.28 (1.18, 1.39)
<.0001
1.22 (1.12,1.33)
<.0001
Age (years)
 > 12 years
Referent
Referent
 4–12 years
.95 (.85, 1.05)
.2725
.95 (.85,1.05)
.3248
 < 4 years
1.74 (1.58, 1.92)
<.0001
1.65 (1.48,1.83)
<.0001
Health Insurance
 Private
Referent
Referent
 Self pay
1.70 (1.40,2.08)
<.0001
1.55 (1.27,1.89)
<.0001
 Public
1.65 (1.52, 1.79)
<.0001
1.42 (1.30,1.55)
<.0001
Note: The analysis above does not include those patients identified with ‘unknown’ race nor those identified to have multiple types of insurance
At the neighborhood level (Model 2), the unadjusted Model 2 showed significant differences between CA-MRSA and CA-MSSA, with risks for antibiotic resistance being higher in blocks with concentrated black populations (> = 40.46%, p < 0.001) and evidence of household crowding (p < 0.001). However, household crowding no longer was a significant risk factor for CA-MRSA (p = 0.6633), after adjusting for poverty and black concentration, while poverty and concentrated blacks living within blocks remained significant in the adjusted model (p < 0.0001 and p = 0.0035, respectively). (Table 3) Blocks in the third and fourth quartiles of crowding had higher odds of poverty levels (3rd quartile’s OR 1.32; 95% CI 1.17–1.48; p-value < 0.0001; 4th quartile’s OR 1.54, 95% CI 1.38–1.75, p < 0.0001). This risk was only slightly higher for CA-MRSA in block groups living below the poverty level (aOR 1.01, 95% CI 1.002, 1.008), compared to aOR of 1.73 (95% CI 1.58, 1.89) if the neighborhood block was concentrated black (p < 0.0001).
Table 3
Neighborhood-Level Factors for CA-MRSA Compared to CA-MSSA Infection for Crude and Adjusted Odds Ratios
Variable
Crude OR (95% CI)
p-value
Adjusted OR (95% CI)
p-value
Household Crowding
 ≤ 1 person/room
Referent
Referent
 > 1 person/room
1.22 (1.10, 1.34)
<.0001
1.03 (.92,1.14)
.6543
Black Population Concentration
 < 40.46%
Referent
Referent
 ≥ 40.46%
2.16 (1.93, 2.41)
<.0001
2.01 (1.79, 2.27)
<.0001
% Below Poverty
1.014 (1.011,1.018)
<.0001
1.006 (1.002, 1.010)
.0033
Multi-level or mixed model analysis (Model 3) showed blacks living in neighborhoods with > = 40.6% blacks, being female, public- or self-pay insurance, and younger age remained highly significant for risk of CA-MRSA infections compared to CA-MSSA, even after adjusting for income, health insurance, gender, crowding, and race/ethnicity (Table 4).
Table 4
Multi-factor Model for CA-MRSA Compared to CA-MSSA for Adjusted Odds Ratios
Variable
Adjusted OR (95% CI)
p-value
Race
 White
Referent
 Black
1.68 (1.45, 1.94)
<.0001
 Hispanic
.81 (.62, 1.05)
0.1169
 Other
.67 (.55, .81)
<.0001
Gender
 Male
Referent
 Female
1.27 (1.15, 1.41)
<.0001
Age (years)
 > 12 years
Referent
 4–12 years
.93 (.81, 1.07)
.0260
 < 4 years
2.06 (1.79, 2.36)
<.0001
Health Insurance
 Private
Referent
 Self pay
1.72 (1.33, 2.23)
<.0001
 Public
1.51 (1.35, 1.70)
<.0001
Black Concentration
 < 40.46%
Referent
 
 ≥ 40.46%
1.30 (1.13, 1.49)
.0003

Spatial densities of CA-MRSA and CA-MSSA infections

The spatial distribution of CA-MRSA and CA-MSSA cover similar areas but the SIRs differ in areas affected: CA-MRSA encompasses larger areas with higher SIRs (and a significantly larger area where the ratio is > 2.5). CA-MRSA is much higher than CA-MSSA in the southeastern part of the eight counties that surround the Atlanta city limits. Similarly, this contrast in CA-MRSA and CA-MSSA are seen in southwestern parts of DeKalb county (one of the two counties where the population density is highest for the Atlanta MSA) and specifically, neighborhoods where the rate of ‘overcrowding’ is greater than 50%. In comparison, in areas where CA-MSSA SIRs are highest (northcentral DeKalb county), the rates of CA-MRSA SIR are still relatively high. The highest SIRs are in areas not far from either hospital, where the patients sought care. However, the overall distribution and the shape of the two highest SIRs are quite distinct between those diagnosed with CA-MRSA compared to those with CA-MSSA (Fig. 3).

Age, race, household crowding spatial relationship to CA-MRSA infections

We found statistically significant measures of positive association between the spatial filter-level proportion of the S. aureus cases that were CA-MRSA and the age (r = 0.137, p < 0.001), race (r = 0.517, p < 0.001), and household crowding covariates (r = 0.320, p < 0.001). These associations indicate that CA-MRSA is elevated in areas where a high proportion of children are younger than age 5 years, where a high proportion of the population are black, and where a high proportion of the households are crowded. These findings are corroborated in our spatial statistical models (Fig. 4). The geographic boundary correlation with race makeup of a geographic area among children with CA-MRSA infections has not been previously reported; previous spatial analyses of CA-MRSA have focused primarily with MRSA colonization of environment or household members, or the hospital’s physical boundaries [52, 53].

Discussion

Our goal for this spatial analysis was to use electronic health record data to determine which block group-level neighborhoods were most ‘at risk’ for CA-MRSA infections and therefore, would benefit most from targeted primary interventions. We found that the highest proportions of CA-MRSA infections occurred within areas that have the highest levels of household crowding, highest proportion of younger children, and highest proportion of blacks. Although there is some geographic overlap in the CA-MRSA and CA-MSSA densities, the geographic patterns of CA-MRSA were different from that of CA-MSSA even though both types presumably have transmission patterns following that of infectious spatial diffusion. This suggests that the factors driving risk for antibiotic resistant disease (specifically CA-MRSA) may be quite different than those which drive risk for non-antibiotic resistant CA-MSSA. This finding suggest that ‘overcrowding’ is a risk factor for CA-MRSA disease risk.
Fulton and DeKalb counties are very densely populated, and like many core urban areas, have areas with high rates of poverty. ‘Crowding’ and poverty may be factors which mediate antibiotic resistance risk by creating geographically closed communities with more substandard housing conditions and thus, increased opportunities for person-to-person transmission. Over 75% of our CA-MRSA cases came from two of the most densely populated counties in Georgia (Fulton and DeKalb counties). Black residents in these counties also have been described as racially segregated from other populations [54], and this segregation may preclude them from social and economic advantages available to other racial/ethnic groups which are not as segregated.
Our finding of CA-MRSA association with poverty is consistent with other published reports, where higher rates of CA-MRSA infection are identified among urban neighborhoods with higher poverty rates [4]. After adjusting for their individual sociodemographic characteristics, these results show no significant racial differences among the cases (CA-MRSA) and controls (CA-MSSA). This confirms that it is the socio-economic and environmental characteristics of the neighborhood that explain the geographic distribution of MRSA. From a prevention standpoint, providing resources, which otherwise would not exist, to these neighborhoods might be a first step towards meaningful community level intervention.
One strength of this study is the use of a large multi-year dataset of geocoded EHR data to detect spatial patterns in the proportion of CA-MRSA. Another strength is our use of aggregated block group data to create spatially adaptive filters, which results in maps where: 1) all locations have approximately equally reliable estimates of disease risk, and 2) the CA-MRSA and CA-MSSA measures were computed within the same set of spatial filters. We also calculated the covariates using the same spatial filter areas used to estimate the risk of both types of S. aureus, which enabled us to measure the association between disease risk and the covariates.

Limitations

Similar to the limitations associated with using administrative health records [55, 56], the primary limitation of this study is that children who sought care and acquired CA-MRSA from the two hospitals may not be representative of the entire population of children in need of care. For this study, we selected children who accessed care from two pediatric hospitals which represents more than 80% of pediatric admissions in the Atlanta MSA. Although these two hospitals are major healthcare providers for the pediatric population residing within the MSA of Atlanta, this population may not reflect all children infected by S. aureus for the geographic region studied. The catchment area of these hospitals may not extend well beyond metropolitan Atlanta counties; and thus, cases closer to other large hospitals may be under reported. Another source of under-reported cases is related to transportation concerns, which may cause some parents to take their child to the nearest hospital rather than a pediatric hospital. Interventions developed would need to factor in the health behaviors characteristic of the populations living in a targeted community.
Another limitation is related to the geospatial correlation analysis of the proportion of S. aureus that were CA-MRSA and the covariates. Given spatial dependence inherent in geographic data, which is magnified when using the overlapping spatially adaptive filters, we have violated a central assumption of Pearson’s R correlation that observations be independent. Even though we detected statistically significant associations, the correlation that we measured is higher than what would be observed if the data was not overlapping. Future research using spatially adaptive filters to conduct correlation analysis needs to account for this inflation.

Future research

The development of targeted community level interventions could be supported by creating community specific reports for the areas with the highest risk of CA-MRSA by characterizing the community according to its unique combination factors known to be associated with antibiotic resistant bacterial transmission. These include neighborhood-level measures of racial composition, household crowding, and age of children as well as information about its built environmental and other social factors. Such a report could be supported using spatial regression modeling to identify where CA-MRSA risk is most associated with these covariates [57]. For example, if types of health insurance and easier access to broad spectrum antibiotics are identified as significantly contributing to CA-MRSA (relative to CA-MSSA) and poor, overcrowded neighborhoods are shown along with their locations of pharmacies and distribution of household income and poverty levels, then at the neighborhood level, we could come up with neighborhood-level (public health) strategies for prevention. Although this study did not address the relationship between CA-MRSA carriage and infection, future studies may include prospectively screening for persistence of carriage among household members and contaminated environmental surfaces associated with patients with recurring infection. Finding ways to decrease bacterial burden on a continuum in these communities may also contribute to an effective prevention strategy. Finally, refining how to spatially ‘weigh’ in socio- and ecological factors, based on geographic place, could combat the spread of antibiotic resistant infections.

Conclusions

Hospital-based electronic health data systems in conjunction with spatial analyses can provide an effective surveillance system, which could be used to develop strategies for preventing CA-MRSA transmission. This study demonstrates how geocoded EHR data can be used to identify areas of excess risk for S. aureus infections which is important for developing interventions to prevent the spread of antibiotic resistant infectious conditions. These methods can be used to identify specific areas to target public health intervention strategies. Such methods have a tremendous potential to prevent the transmission of antibiotic resistant and virulent pathogens in our communities and neighborhoods. While the findings are particular to Atlanta, the methods can be applied globally, where electronically recorded data about S. aureus is available.

Acknowledgements

We would like to extend gratitude to Dr. Monica Farley (Emory University School of Medicine), Dr. Lance Waller (Emory University Rollins School of Public Health), Dr. Shun Zhang (Morehouse School of Medicine, National Center for Primary Care), and Dr. Alexander Quarshie (Morehouse School of Medicine) for their guidance and review of manuscript. We appreciate and acknowledge the copy editing provided by Ms. Angela Wimes (Morehouse School of Medicine). We also appreciate the edits and manuscript feedback provided by Dr. Peter Baltrus (Morehouse School of Medicine, National Center for Primary Care), Dr. Anne Gaglioti (Morehouse School of Medicine, National Center for Primary Care) and Ms. Anaam Mohammed (Pediatric Emergency Medicine Associates, LLC). We appreciate the technical assistance provided by Mr. Anthony Giarrusso and Mr. Yun Sang from Georgia Institute of Technology’s Center for GIS. We appreciate the help from Dr. Ling Liu (Georgia Institute of Technology’s College of Computing) in data mining; Ms. Althea Lewis, and Mr. Alan Nadler from the Children’s Healthcare of Atlanta’s (CHOA) Clinical Microbiology Department, and Mr. Robert Massey (CHOA’s Information & Technology Department) for electronic health record data acquisition and clean up.

Funding

Research reported in this publication was supported in part by funds received from Georgia Tech’s Health Institute, Children’s Healthcare of Atlanta Friends’ Fund; PHS Grant UL1TR002378 from the Clinical and Translational Science Award Program, National Institute of Health, as part of the Georgia Clinical & Translational Science Alliance (Georgia CTSA) (formerly, UL1RR025008, Atlanta Clinical and Translational Science Institute (ACTSI)); Grant Number G12-RR03034, a component of the National Institute of Health; Grant Number HS024338–01, K-08 Mentored Clinical Scientist Award, Agency for Healthcare Research & Quality.

Availability of data and materials

The data that support the findings of this study are available from Children’s Healthcare of Atlanta and Grady Health Center, but restrictions apply to the availability of these data, which were used under license for the current study and contain personal identifiers, and so are not publicly available. Data, which is de-identified of personal information are however available from the authors upon reasonable request and with permission of Children’s Healthcare of Atlanta and Grady Health Center.

Authors’ information

LCI is a general pediatrician and pediatric infectious disease specialist who has been caring for children with MRSA infections for over two decades. This work reflects data collected over the past 5 years and is part of a K-08 Mentored Clinical Scientist Development Award she received. (Dr. George S. Rust and Dr. Lance Waller are her mentors for this project).
This research has been approved by the Institutional Review Boards of Morehouse School of Medicine, Children’s Healthcare of Atlanta, and Grady Health Center.
This research is based on electronic health records collected on patients as part of standard of care, and therefore, no individual patients were directly contacted for the data. Not applicable.

Competing interests

CDC Disclaimer: The findings and conclusions in this report are those of the authors and do not necessarily represent the official positions of the Centers for Disease Control and Prevention or the Centers for Medicare and Medicaid Services.
The authors have indicated they have no competing interests to disclose.

Publisher’s Note

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Open AccessThis 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.
Literatur
1.
Zurück zum Zitat Bazemore AW, Cottrell EK, Gold R, et al. “Community vital signs”: incorporating geocoded social determinants into electronic records to promote patient and population health. J Am Med Inform Assoc. 2016;23:407–12.CrossRef Bazemore AW, Cottrell EK, Gold R, et al. “Community vital signs”: incorporating geocoded social determinants into electronic records to promote patient and population health. J Am Med Inform Assoc. 2016;23:407–12.CrossRef
2.
Zurück zum Zitat Gustafsson E, Ringberg H, Johansson P. MRSA in children from foreign countries adopted to Swedish families. Acta Paediatr. 2006;95:105–8.CrossRef Gustafsson E, Ringberg H, Johansson P. MRSA in children from foreign countries adopted to Swedish families. Acta Paediatr. 2006;95:105–8.CrossRef
3.
Zurück zum Zitat Tirabassi M, Wadie G, Moriarty K, et al. Geographic information system (GIS) localization of community acquired MRSA soft tissue abscesses. J Pediatr Surg. 2005;40:962–6.CrossRef Tirabassi M, Wadie G, Moriarty K, et al. Geographic information system (GIS) localization of community acquired MRSA soft tissue abscesses. J Pediatr Surg. 2005;40:962–6.CrossRef
4.
Zurück zum Zitat Hota B, Ellenbogen C, Hayden MK, Aroutcheva A, Rice T, Weinstein R. Community-associated methicillin resistant Staphylococcus aureus skin and soft tissue infections at a public hospital: do public housing and incarceration amplify transmission? Arch Int Med. 2007;167:1026–33.CrossRef Hota B, Ellenbogen C, Hayden MK, Aroutcheva A, Rice T, Weinstein R. Community-associated methicillin resistant Staphylococcus aureus skin and soft tissue infections at a public hospital: do public housing and incarceration amplify transmission? Arch Int Med. 2007;167:1026–33.CrossRef
5.
Zurück zum Zitat Sandora T. Prevention of healthcare associated infections in children:new strategies and success stories. Curr Opin Infect Dis. 2010;23:300–5.CrossRef Sandora T. Prevention of healthcare associated infections in children:new strategies and success stories. Curr Opin Infect Dis. 2010;23:300–5.CrossRef
6.
Zurück zum Zitat Klevens R, Morrison M, Nadle J, et al. Invasive methicillin-resistant Staphylococcus aureus infections in the United States. JAMA. 2007;298:1763–71.CrossRef Klevens R, Morrison M, Nadle J, et al. Invasive methicillin-resistant Staphylococcus aureus infections in the United States. JAMA. 2007;298:1763–71.CrossRef
7.
Zurück zum Zitat Birkhead GS, Klompas M, Shah NR. Uses of electronic health records for public health surveillance to advance public health. Annual Rev Pub Health. 2015;36:345–59.CrossRef Birkhead GS, Klompas M, Shah NR. Uses of electronic health records for public health surveillance to advance public health. Annual Rev Pub Health. 2015;36:345–59.CrossRef
8.
Zurück zum Zitat Miranda ML, Ferranti J, Strauss B, Neelon B, Califf RM. Geographic health information systems: a platform to support the ‘triple aim’. Health Aff. 2013;32:1608–15.CrossRef Miranda ML, Ferranti J, Strauss B, Neelon B, Califf RM. Geographic health information systems: a platform to support the ‘triple aim’. Health Aff. 2013;32:1608–15.CrossRef
9.
Zurück zum Zitat Blatt AJ. Geospatial Medicine. Health, Science, and Place. In: Doe RK, editor. Geotechnologies and Environment Series: Springer; 2015. p. 101–10. Blatt AJ. Geospatial Medicine. Health, Science, and Place. In: Doe RK, editor. Geotechnologies and Environment Series: Springer; 2015. p. 101–10.
10.
Zurück zum Zitat Bell CN, Bowie JV, Thorpe RJ Jr. Race and “hotspots” of preventable hospitalizations. J Health Dispar Res Pract. 2017;10:5. Bell CN, Bowie JV, Thorpe RJ Jr. Race and “hotspots” of preventable hospitalizations. J Health Dispar Res Pract. 2017;10:5.
11.
Zurück zum Zitat Westgard B, Warren D. 240 hotspots of triple aim opportunity: identifying geographic clusters of potentially preventable emergency department visits and costs. Ann Emer Med Annals. 2014;64:S85–S6.CrossRef Westgard B, Warren D. 240 hotspots of triple aim opportunity: identifying geographic clusters of potentially preventable emergency department visits and costs. Ann Emer Med Annals. 2014;64:S85–S6.CrossRef
12.
Zurück zum Zitat Horst MA, Coco AS. Observing the spread of common illnesses through a community: using geographic information systems (GIS) for surveillance. J Amer Board Fam Med. 2010;23:32–41.CrossRef Horst MA, Coco AS. Observing the spread of common illnesses through a community: using geographic information systems (GIS) for surveillance. J Amer Board Fam Med. 2010;23:32–41.CrossRef
13.
Zurück zum Zitat Laranjo L, Rodrigues D, Pereira AM, Ribeiro RT, Boavida JM. Use of electronic health records and geographic information systems in public health surveillance of type 2 diabetes: a feasibility study. JMIR Pub Health Surv. 2016;2:e12.CrossRef Laranjo L, Rodrigues D, Pereira AM, Ribeiro RT, Boavida JM. Use of electronic health records and geographic information systems in public health surveillance of type 2 diabetes: a feasibility study. JMIR Pub Health Surv. 2016;2:e12.CrossRef
14.
Zurück zum Zitat Spratt SE, Batch BC, Davis LP, et al. Methods and initial findings from the Durham diabetes coalition: integrating geospatial health technology and community interventions to reduce death and disability. J ClinTranslat Endocrin. 2015;2:26–36. Spratt SE, Batch BC, Davis LP, et al. Methods and initial findings from the Durham diabetes coalition: integrating geospatial health technology and community interventions to reduce death and disability. J ClinTranslat Endocrin. 2015;2:26–36.
15.
Zurück zum Zitat Zhang K, McClure J, Elsayed S, Louie T, Conly J. Novel multiplex pcr assay for characterization and concomitant subtyping of staphylococcal cassette chromosome mec types I to V in methicillin-resistant Staphylococcus aureus. J Clin Micro. 2005;43:5026–33.CrossRef Zhang K, McClure J, Elsayed S, Louie T, Conly J. Novel multiplex pcr assay for characterization and concomitant subtyping of staphylococcal cassette chromosome mec types I to V in methicillin-resistant Staphylococcus aureus. J Clin Micro. 2005;43:5026–33.CrossRef
16.
Zurück zum Zitat Naimi T, LeDell K, Como-Sabetti K, et al. Comparison of community- and health care-associated methicillin-resistant Staphylococcus aureus infection. JAMA. 2003;290:2976–84.CrossRef Naimi T, LeDell K, Como-Sabetti K, et al. Comparison of community- and health care-associated methicillin-resistant Staphylococcus aureus infection. JAMA. 2003;290:2976–84.CrossRef
17.
Zurück zum Zitat Fridkin S, Hageman J, Morrison M, et al. Methicillin-resistant Staphylococcus aureus disease in three communities. New Engl J Med. 2005;352:1436–44.CrossRef Fridkin S, Hageman J, Morrison M, et al. Methicillin-resistant Staphylococcus aureus disease in three communities. New Engl J Med. 2005;352:1436–44.CrossRef
18.
Zurück zum Zitat Groom A, Wolsey D, Naimi T, et al. Community-acquired methicillin-resistant Staphylococcus aureus in a rural American Indian community. JAMA. 2001;286:1201–5.CrossRef Groom A, Wolsey D, Naimi T, et al. Community-acquired methicillin-resistant Staphylococcus aureus in a rural American Indian community. JAMA. 2001;286:1201–5.CrossRef
19.
Zurück zum Zitat Tong SYC, Davis JS, Eichenberger E, Holland TL, Fowler VG. Staphylococcus aureus infections: epidemiology, pathophysiology, clinical manifestations, and management. Clin Micro Rev. 2015;28:603–61.CrossRef Tong SYC, Davis JS, Eichenberger E, Holland TL, Fowler VG. Staphylococcus aureus infections: epidemiology, pathophysiology, clinical manifestations, and management. Clin Micro Rev. 2015;28:603–61.CrossRef
20.
Zurück zum Zitat Limbago B, Fosheim G, Schoonover V, et al. Characterization of methicillin-resistant Staphylococcus aureus isolates collected in 2005 and 2006 from patients with invasive disease: a population-based analysis. J Clin Micro. 2005;47:1344–51.CrossRef Limbago B, Fosheim G, Schoonover V, et al. Characterization of methicillin-resistant Staphylococcus aureus isolates collected in 2005 and 2006 from patients with invasive disease: a population-based analysis. J Clin Micro. 2005;47:1344–51.CrossRef
21.
Zurück zum Zitat Fritz S, Garbutt J, Elward A, Shannon W, Storch G. Prevalence of and risk factors for community-acquired methicillin-resistant and methicillin-sensitive Staphylococcus aureus colonization in children seen in a practice-based research network. Pediatr. 2008;121:1090–8.CrossRef Fritz S, Garbutt J, Elward A, Shannon W, Storch G. Prevalence of and risk factors for community-acquired methicillin-resistant and methicillin-sensitive Staphylococcus aureus colonization in children seen in a practice-based research network. Pediatr. 2008;121:1090–8.CrossRef
22.
Zurück zum Zitat Fritz SA, Epplin EK, Garbutt J, Storch GA. Skin infection in children colonized with community-associated methicillin-resistant Staphylococcus aureus. J Inf Secur. 2009;59:394–401. Fritz SA, Epplin EK, Garbutt J, Storch GA. Skin infection in children colonized with community-associated methicillin-resistant Staphylococcus aureus. J Inf Secur. 2009;59:394–401.
23.
Zurück zum Zitat Hota B, Lyles R, Rim J, et al. Predictors of clinical virulence in community-onset methicillin-resistant Staphylococcus aureus infections: the importance of USA300 and pneumonia. Clin Infect Dis. 2011;53:757–65.CrossRef Hota B, Lyles R, Rim J, et al. Predictors of clinical virulence in community-onset methicillin-resistant Staphylococcus aureus infections: the importance of USA300 and pneumonia. Clin Infect Dis. 2011;53:757–65.CrossRef
24.
Zurück zum Zitat Landrum M, Neumann C, Cook C, et al. Epidemiology of Staphylococcus aureus blood and skin and soft tissue infections in the US military health system, 2005-2010. JAMA. 2012;308:50–9.CrossRef Landrum M, Neumann C, Cook C, et al. Epidemiology of Staphylococcus aureus blood and skin and soft tissue infections in the US military health system, 2005-2010. JAMA. 2012;308:50–9.CrossRef
26.
Zurück zum Zitat Gorwitz R, Jernigan D, Powers J, Jernigan J. Strategies for clinical management of MRSA in the community: summary of an experts’ meeting convened by the Centers for Disease Control and Prevention. Atlanta: Centers for Disease Control and Prevention; 2006. p. 1–23. Gorwitz R, Jernigan D, Powers J, Jernigan J. Strategies for clinical management of MRSA in the community: summary of an experts’ meeting convened by the Centers for Disease Control and Prevention. Atlanta: Centers for Disease Control and Prevention; 2006. p. 1–23.
27.
Zurück zum Zitat Miller L, Eells S, Taylor A, et al. Staphylococcus aureus colonization among household contacts of patients with skin infections: risk factors, strain discordance, and complex ecology. Clin Infect Dis. 2012;54:1523–35.CrossRef Miller L, Eells S, Taylor A, et al. Staphylococcus aureus colonization among household contacts of patients with skin infections: risk factors, strain discordance, and complex ecology. Clin Infect Dis. 2012;54:1523–35.CrossRef
28.
Zurück zum Zitat Institute Clinical and Laboratory Standards. Performance standards for antimicrobial susceptibiity testing. Wayne: Clinical Laboratory Standards Insitute; 2008. Institute Clinical and Laboratory Standards. Performance standards for antimicrobial susceptibiity testing. Wayne: Clinical Laboratory Standards Insitute; 2008.
29.
Zurück zum Zitat Jones-Webb R, Wall M. Neighborhood Racial/Ethnic Concentration, Social Disadvantage, and Homicide Risk: An Ecological Analysis of 10 U.S. Cities. J Urb Health. 2008;85:662–75.CrossRef Jones-Webb R, Wall M. Neighborhood Racial/Ethnic Concentration, Social Disadvantage, and Homicide Risk: An Ecological Analysis of 10 U.S. Cities. J Urb Health. 2008;85:662–75.CrossRef
30.
Zurück zum Zitat Tsai PJ, Lin ML, Chu CM, Perng CH. Spatial autocorrelation analysis of health care hotspots in Taiwan in 2006. BMC Public Health. 2009;9:464.CrossRef Tsai PJ, Lin ML, Chu CM, Perng CH. Spatial autocorrelation analysis of health care hotspots in Taiwan in 2006. BMC Public Health. 2009;9:464.CrossRef
31.
Zurück zum Zitat Cohen SS, Sonderman JS, Mumma MT, Signorello LB, Blot WJ. Individual and neighborhood-level socioeconomic characteristics in relation to smoking prevalence among black and white adults in the southeastern United States: a cross-sectional study. BMC Pub Health. 2011;11:877.CrossRef Cohen SS, Sonderman JS, Mumma MT, Signorello LB, Blot WJ. Individual and neighborhood-level socioeconomic characteristics in relation to smoking prevalence among black and white adults in the southeastern United States: a cross-sectional study. BMC Pub Health. 2011;11:877.CrossRef
32.
Zurück zum Zitat US Census Bureau. Census 2010. Summary File 1. DP-1. Profile of General Demographic Characteristics: 2010 by block group, “Georgia”. American FactFinder. Washington D.C: U.S. Census Bureau; 2010. US Census Bureau. Census 2010. Summary File 1. DP-1. Profile of General Demographic Characteristics: 2010 by block group, “Georgia”. American FactFinder. Washington D.C: U.S. Census Bureau; 2010.
33.
Zurück zum Zitat Manson S, Schroeder J, Riper DV, Ruggles S. IPUMS National Historical Geographic Information System. In: Minnesota Univ, ed. version 12.0 ed. Minneapolis: University of Minnesota; 2017. Manson S, Schroeder J, Riper DV, Ruggles S. IPUMS National Historical Geographic Information System. In: Minnesota Univ, ed. version 12.0 ed. Minneapolis: University of Minnesota; 2017.
36.
Zurück zum Zitat US Census Bureau. Census 2000. Poverty thresholds for 2000 by size of family and number of related children under 18 years. Washington D.C. US Census Bureau. Census 2000. Poverty thresholds for 2000 by size of family and number of related children under 18 years. Washington D.C.
37.
Zurück zum Zitat Banthin J, Selden T. Income measurement in the medical expenditure panel survey. Rockville: Agency for Healthcare Research and Quality; 2006. Banthin J, Selden T. Income measurement in the medical expenditure panel survey. Rockville: Agency for Healthcare Research and Quality; 2006.
38.
Zurück zum Zitat Brewer C. Basic mapping principles for visualizing Cancer data using geographic information systems (GIS). Am J Prev Med. 2006;30:S25–36.CrossRef Brewer C. Basic mapping principles for visualizing Cancer data using geographic information systems (GIS). Am J Prev Med. 2006;30:S25–36.CrossRef
39.
Zurück zum Zitat Myers D, Baer W, Choi S. The changing problem of overcrowded housing. J Am Plan Assoc. 1996;1996:6266–84. Myers D, Baer W, Choi S. The changing problem of overcrowded housing. J Am Plan Assoc. 1996;1996:6266–84.
40.
Zurück zum Zitat Krieger N, Chen J, Waterman P, Soobader M, Subramanian S, Carson R. Geocoding and monitoring of US socieoeconomic inequalities in mortality and cancer incidence: does the choice of area-based measure and geographic level matter. Am J Epid. 2002;156:471–82.CrossRef Krieger N, Chen J, Waterman P, Soobader M, Subramanian S, Carson R. Geocoding and monitoring of US socieoeconomic inequalities in mortality and cancer incidence: does the choice of area-based measure and geographic level matter. Am J Epid. 2002;156:471–82.CrossRef
41.
Zurück zum Zitat Talbot TO, Kulldorff M, Forand SP, Haley VB. Evaluation of spatial filters to create smoothed maps of health data. Stat Med. 2000;19:2399–408.CrossRef Talbot TO, Kulldorff M, Forand SP, Haley VB. Evaluation of spatial filters to create smoothed maps of health data. Stat Med. 2000;19:2399–408.CrossRef
42.
Zurück zum Zitat Choynowski M. Maps based on probabilities. J Amer Stat Assoc. 1959;54:385–8.CrossRef Choynowski M. Maps based on probabilities. J Amer Stat Assoc. 1959;54:385–8.CrossRef
43.
Zurück zum Zitat Matthews K. Spatiotemporal correlation analysis of colorectal cancer late-stage incidence, mortality, and survival: Iowa, 1999 to 2010: University of Iowa; 2018. p. 15–29. Matthews K. Spatiotemporal correlation analysis of colorectal cancer late-stage incidence, mortality, and survival: Iowa, 1999 to 2010: University of Iowa; 2018. p. 15–29.
44.
Zurück zum Zitat Pickle LW, Mungiole M, Jones GK, White AA. Exploring spatial patterns of mortality: the new atlas of United States mortality. Stat Med. 1999;18:3211–20.CrossRef Pickle LW, Mungiole M, Jones GK, White AA. Exploring spatial patterns of mortality: the new atlas of United States mortality. Stat Med. 1999;18:3211–20.CrossRef
45.
Zurück zum Zitat Kafadar K. Smoothing geographical data, particularly rates of disease. Stat Med. 1996;15:2539–60.CrossRef Kafadar K. Smoothing geographical data, particularly rates of disease. Stat Med. 1996;15:2539–60.CrossRef
46.
Zurück zum Zitat Mungiole M, Pickle LW, Simonson KH. Application of a weighted head-banging algorithm to mortality data maps. Stat Med. 1999;18:3201–9.CrossRef Mungiole M, Pickle LW, Simonson KH. Application of a weighted head-banging algorithm to mortality data maps. Stat Med. 1999;18:3201–9.CrossRef
47.
Zurück zum Zitat Langford IH. Using empirical Bayes estimates in the geographical analysis of disease risk. Area. 1994:142–9. Langford IH. Using empirical Bayes estimates in the geographical analysis of disease risk. Area. 1994:142–9.
48.
Zurück zum Zitat Casper M, Kramer MR, Quick H, Schieb LJ, Vaughan AS, Greer S. Changes in the geographic patterns of heart disease mortality in the United States: 1973 to 2010. Circulat. 2016;133:1171–80.CrossRef Casper M, Kramer MR, Quick H, Schieb LJ, Vaughan AS, Greer S. Changes in the geographic patterns of heart disease mortality in the United States: 1973 to 2010. Circulat. 2016;133:1171–80.CrossRef
49.
Zurück zum Zitat Vaughan AS, Quick H, Pathak EB, Kramer MR, Casper M. Disparities in temporal and geographic patterns of declining heart disease mortality by race and sex in the United States, 1973–2010. J Amer Heart Assoc. 2015;4:e002567.CrossRef Vaughan AS, Quick H, Pathak EB, Kramer MR, Casper M. Disparities in temporal and geographic patterns of declining heart disease mortality by race and sex in the United States, 1973–2010. J Amer Heart Assoc. 2015;4:e002567.CrossRef
50.
Zurück zum Zitat Cai Q, Rushton G, Bhaduri B. Validation tests of an improved kernel density estimation method for identifying disease clusters. J Geograph Sys. 2012;14:243–64.CrossRef Cai Q, Rushton G, Bhaduri B. Validation tests of an improved kernel density estimation method for identifying disease clusters. J Geograph Sys. 2012;14:243–64.CrossRef
51.
Zurück zum Zitat Centers for Diseaese Control and Prevention. Active Bacterial Core Surveillance (ABCs) Report Emerging Infections Program Network Methicillin-Resistant Staphylococcus aureus, 2008. Atlanta: Centers for Disease Control and Prevention. p. 2008. Centers for Diseaese Control and Prevention. Active Bacterial Core Surveillance (ABCs) Report Emerging Infections Program Network Methicillin-Resistant Staphylococcus aureus, 2008. Atlanta: Centers for Disease Control and Prevention. p. 2008.
52.
Zurück zum Zitat Rossini CJ, Moriarty KP, Tashjian DB, Garb JL, Wait RB. Geographic distribution of community-acquired methicillin-resistant Staphylococcus aureus soft tissue infections. J Pediatr Surg. 2011;46:1089–92.CrossRef Rossini CJ, Moriarty KP, Tashjian DB, Garb JL, Wait RB. Geographic distribution of community-acquired methicillin-resistant Staphylococcus aureus soft tissue infections. J Pediatr Surg. 2011;46:1089–92.CrossRef
53.
Zurück zum Zitat Parrish KL, Hogan PG, Clemons AA 2nd, Fritz SA. Spatial relationships among public places frequented by families plagued by methicillin-resistant Staphylococcus aureus. BMC Res Notes. 2018;11:692.CrossRef Parrish KL, Hogan PG, Clemons AA 2nd, Fritz SA. Spatial relationships among public places frequented by families plagued by methicillin-resistant Staphylococcus aureus. BMC Res Notes. 2018;11:692.CrossRef
54.
Zurück zum Zitat Hayes MM. The building blocks of Atlanta: racial residential segregation and neighborhood inequity. Atlanta: Georgia State University; 2006. Hayes MM. The building blocks of Atlanta: racial residential segregation and neighborhood inequity. Atlanta: Georgia State University; 2006.
55.
Zurück zum Zitat Strauss BW, Valentiner EM, Bhattacharya S, et al. Improving population representation through geographic health information systems: mapping the MURDOCK study. Amer J Translat Res. 2014;6:402. Strauss BW, Valentiner EM, Bhattacharya S, et al. Improving population representation through geographic health information systems: mapping the MURDOCK study. Amer J Translat Res. 2014;6:402.
56.
Zurück zum Zitat Dixon BE, Gibson PJ, Comer KF, Rosenman M. Measuring population health using electronic health records: exploring biases and representativeness in a community health information exchange. 15th World Congress on Health and Biomedical Informatics, MEDINFO 2015: IOS Press; 2015. Dixon BE, Gibson PJ, Comer KF, Rosenman M. Measuring population health using electronic health records: exploring biases and representativeness in a community health information exchange. 15th World Congress on Health and Biomedical Informatics, MEDINFO 2015: IOS Press; 2015.
57.
Zurück zum Zitat Charlton M, Fotheringham S, Brunsdon C. Georgaphically weighted regression. UK: Economic and Social Research Council. Charlton M, Fotheringham S, Brunsdon C. Georgaphically weighted regression. UK: Economic and Social Research Council.
Metadaten
Titel
Geographic surveillance of community associated MRSA infections in children using electronic health record data
verfasst von
Lilly Cheng Immergluck
Traci Leong
Khusdeep Malhotra
Trisha Chan Parker
Fatima Ali
Robert C. Jerris
George S. Rust
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/s12879-019-3682-3

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