Hostname: page-component-848d4c4894-4rdrl Total loading time: 0 Render date: 2024-06-29T17:34:31.504Z Has data issue: false hasContentIssue false

Socio-economic factors associated with the incidence of Shiga-toxin producing Escherichia coli (STEC) enteritis and cryptosporidiosis in the Republic of Ireland, 2008–2017

Published online by Cambridge University Press:  29 July 2021

E. Cleary
Affiliation:
SpatioTemporal Environmental Epidemiology Research (STEER) Group, Environmental Sustainability & Health Institute, Technological University Dublin, Dublin, Ireland
M. Boudou
Affiliation:
SpatioTemporal Environmental Epidemiology Research (STEER) Group, Environmental Sustainability & Health Institute, Technological University Dublin, Dublin, Ireland
C. ÓhAiseadha
Affiliation:
Health Service Executive, (HSE), Dublin, Ireland
P. McKeown
Affiliation:
Health Protection Surveillance Centre (HPSC), Dublin, Ireland
P. Garvey
Affiliation:
Health Protection Surveillance Centre (HPSC), Dublin, Ireland
J. O'Dwyer*
Affiliation:
School of Biological, Earth and Environmental Sciences, University College Cork, Cork, Ireland Water and Environment Research Group, Environmental Research Institute, Cork, Ireland Irish Centre for Research in Applied Geoscience, University College Dublin, Dublin, Ireland
P. Hynds*
Affiliation:
SpatioTemporal Environmental Epidemiology Research (STEER) Group, Environmental Sustainability & Health Institute, Technological University Dublin, Dublin, Ireland Irish Centre for Research in Applied Geoscience, University College Dublin, Dublin, Ireland
*
Author for correspondence: J. O'Dwyer, E-mail: jean.odwyer@ucc.ie; P. Hynds, E-mail: hyndsp@tcd.ie
Author for correspondence: J. O'Dwyer, E-mail: jean.odwyer@ucc.ie; P. Hynds, E-mail: hyndsp@tcd.ie
Rights & Permissions [Opens in a new window]

Abstract

The Republic of Ireland (ROI) currently reports the highest incidence rates of Shiga-toxin producing Escherichia coli (STEC) enteritis and cryptosporidiosis in Europe, with the spatial distribution of both infections exhibiting a clear urban/rural divide. To date, no investigation of the role of socio-demographic profile on the incidence of either infection in the ROI has been undertaken. The current study employed bivariate analyses and Random Forest classification to identify associations between individual components of a national deprivation index and spatially aggregated cases of STEC enteritis and cryptosporidiosis. Classification accuracies ranged from 78.2% (STEC, urban) to 90.6% (cryptosporidiosis, rural). STEC incidence was (negatively) associated with a mean number of persons per room and percentage of local authority housing in both urban and rural areas, addition to lower levels of education in rural areas, while lower unemployment rates were associated with both infections, irrespective of settlement type. Lower levels of third-level education were associated with cryptosporidiosis in rural areas only. This study highlights settlement-specific disparities with respect to education, unemployment and household composition, associated with the incidence of enteric infection. Study findings may be employed for improved risk communication and surveillance to safeguard public health across socio-demographic profiles.

Type
Original Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2021. Published by Cambridge University Press

Introduction

Shiga-toxin producing Escherichia coli (STEC) is an enteric pathogen causing gastroenteritis with symptoms ranging from diarrhoea and haemorrhagic colitis to haemolytic uraemic syndrome, and death in severe cases [Reference Karmali, Gannon and Sargeant1, Reference Page and Liles2]. Cryptosporidium spp. are protozoan parasites characterised by self-limiting diarrhoeal disease in immunocompetent people, but with potentially severe clinical symptoms among immunocompromised individuals, young children and older adults [Reference Hunter and Nichols3, Reference Ramirez, Ward and Sreevatsan4]. Over the past decade, crude incidence rates (CIRs) of STEC enteritis and cryptosporidiosis in Ireland have been among the highest in Europe, with CIRs of 20.0 (STEC) and 13.2 (cryptosporidiosis) cases per 100 000 population, respectively, notified during 2018 [5, 6].

The spatial distribution of both infections exhibits a strong urban–rural partition in Ireland, with the incidence rates of both infections significantly higher in rural areas [Reference Garvey79]. Dominant transmission pathways include direct contact with farm animals, consumption from private (ground)water sources and high reliance on (poorly managed) private domestic wastewater treatment systems (i.e. septic tanks); all factors typically associated with rurality [Reference ÓhAiseadha8Reference O'Dwyer10]. International studies have reported associations between infection incidence and a broad range of social determinants, including measured deprivation [Reference Alirol11Reference Flies13]. For example, the incidence of food- and waterborne infections in urban areas is frequently associated with poor sanitation infrastructure, synonymous with economically deprived areas and person-to-person transmission (i.e. elevated population densities) [Reference Alirol11Reference Flies13]. Conversely, infectious diseases in rural areas have been attributed to barriers accessing healthcare [Reference Farrelly, Flaherty and Healy14] and poor water resource infrastructure [Reference Hynds, Gill and Misstear15].

While the environmental determinants of STEC enteritis and cryptosporidiosis in Ireland are relatively well understood (e.g. private well use, high vulnerability hydrogeological settings, high livestock densities, wastewater infrastructure) [Reference ÓhAiseadha8, Reference Hynds, Gill and Misstear15], to date, the socio-economic drivers of infection have not been comprehensively explored. Accordingly, the current study sought to examine the presence of associations between individual components of the Pobal HP deprivation index [Reference Haase and Pratschke16] with spatially aggregated cases of STEC enteritis and cryptosporidiosis in Ireland from 2008 to 2017, with analyses delineated by urban/rural classification due to the aforementioned divide associated with both infections in Ireland.

Methods

Infection data

Laboratory-confirmed, irriversibly anonymised case data were obtained from the Computerised Infectious Disease Reporting (CIDR) database (http://www.hpsc.ie/CIDR/), an information system used for collating notifiable (communicable) infection data in Ireland [17]. Primary and index cases of STEC enteritis were included for analyses, with primary and index cases defined as sporadic (i.e. not associated with a confirmed outbreak or cluster) or the first case identified as part of a recognised outbreak/cluster, respectively [Reference ÓhAiseadha8]. Confirmed STEC cases occurring between 1 January 2013 and 31 December 2017 were included for analyses, with STEC cases notified prior to 2013 excluded to ensure consistency regarding laboratory confirmation protocols.

Data for notified primary and secondary cases of cryptosporidiosis were obtained from 1 January 2008 to 31 December 2017, with a secondary infection defined as a laboratory-confirmed case with an epidemiological link to another notified case [Reference Garvey and McKeown18]. Cryptosporidiosis cases prior to 1 January 2008 were excluded to avoid biases associated with a large cryptosporidiosis outbreak which occurred in the west of Ireland during spring 2007 [Reference Chyzheuskaya19]. All individual cases of infection were geo-referenced to one of 18 488 Central Statistics Office (CSO) Small Area (SA) centroids, using a previously developed protocol [Reference Domegan20]. SAs comprise 80–120 dwellings, geographically defined for population census reporting, and are the smallest spatially referenced unit in Ireland [21]. A binary variable was developed to indicate the presence/absence of a confirmed infection within all individual SAs over the study period.

Pobal HP deprivation index data

The Pobal Haase Pratschke (HP) deprivation index comprises 16 individual components representing the three main dimensions of deprivation, as measured in the Republic of Ireland (ROI); demographic profile, social class composition and labour market situation (Table 1; Fig. 1) [Reference Haase and Pratschke16]. Absolute and relative index scores represent composite measures of deprivation based on these components, calculated for each SA and measured on a single scale across all census periods (Supplementary Table S1). The absolute deprivation score reflects any changes to the national economy at SA level between census periods while the relative deprivation index score is a comparative measure of deprivation between SAs during a census period [Reference Haase and Pratschke16]. Deprivation index component data were obtained for two waves of the national census of Ireland (2011 and 2016) to correspond with the study period.

Fig. 1. (a) Pobal HP relative deprivation index spatial distribution by CSO small area in Ireland. (b) Urban/rural classification spatial distribution by CSO small area in Ireland.

Table 1. Pobal HP deprivation index components and descriptions

Note. Reprinted from the 2016 Pobal HP Deprivation Index for Small Areas (SA): Introduction and Reference Tables, Trutz Haase Jonathan Pratschke, September 2017.

Urban/rural classification

A binary SA-specific settlement type variable was developed using data obtained from the Irish CSO (Fig. 1b; Supplementary Table S2). The CSO settlement type dataset comprises 14 variables classified along an urban/peri-urban/rural scale ranging from ‘city’ (1) to ‘rural’ (14). The urban/rural variable was coded such that any classification which included a built-up area (classification 1–13) was recoded as ‘urban’, with remaining areas (classification 14) coded as ‘rural’. All datasets were spatially integrated using a unique SA identifier in Stata V14 (StataCorp, College Station, Texas, USA).

Data analysis

Bivariate analysis

Exploratory analyses of associations between individual deprivation components and the incidence of both infections in rural and urban areas were conducted via sequential bivariate logistic regressions. Statistically significant associations were assessed using a confidence level of 95% (P ⩽ 0.05), with explanatory variables for multivariate classification selected based on Bayesian Inference Criterion (BIC). The presence of collinearity between explanatory variables was diagnosed using the Variance Inflation Factor (VIF) and Spearman's rank (non-parametric) correlation coefficient (ρ). A VIF of ⩾5 and a Spearman's ρ of ⩾0.5 were considered indicative of potentially significant collinearity between individual deprivation components.

Random Forest classification

A suite of classification algorithms (support vector machines, Naïve Bayes, optimised generalised linear models and CART (decision trees)) were tested, with the Random Forest (RF) algorithm found to exhibit the highest classification performance. Calibrated parameters were selected using hyperparameter tuning and validated via an optimised iterative Breiman's RF parameter estimation algorithm in the randomForest package (R Foundation for Statistical Computing, Vienna, Austria). Parameters for STEC and cryptosporidiosis models, obtained from hyperparameter tuning, were set at a number of randomly sampled variables at each split (mtry = 3–4). RF models were calibrated using partitioned training datasets (70% of data) and ‘re-trained’ using full datasets (100% of data) to ensure classification stability (i.e. change in variable importance between datasets). Attribute importance was assessed via the mean Gini value decrease, with larger values indicative of a greater contribution to infection classification.

Results

Bivariate analyses

STEC enteritis

Overall, 2757 confirmed cases of STEC enteritis were geocoded to one of 12 246 categorically urban SAs and 6242 rural SAs; 2342 SAs were identified as having ⩾1 case of STEC enteritis, of which 1088 were urban (46.5% of total STEC SA level infection; 5.9% of total SAs; 8.9% of total urban SAs; OR = 0.31); and 1254 were rural (53.5% of total STEC SA level infection; 6.8% of total SAs; 20% of total rural SAs; OR = 3.25). A significantly higher proportion of STEC cases occurred among children ⩽5 years (39.6% of total infections) and people aged ⩾65 years (16.6% of total infections). Infection was relatively evenly distributed among males (47.3%) and females (52.7%).

The occurrence of STEC enteritis was significantly associated with both absolute (presence mean = −4.69; absence mean = −5.35; P = 0.002) and relative deprivation scores (presence mean = −0.90; absence mean = −1.54; P = 0.002) in rural areas only (Tables 2, 3 and S3). STEC infection was also associated with a higher SA total population in both urban (282.6 vs. 264.4; P < 0.001) and rural areas (260.5 vs. 236.1; P = 0.001), and a significantly higher age dependency rate (AGEDEP) in urban areas (34.3 vs. 32.3; P < 0.001). The occurrence of STEC enteritis exhibited negative associations with household density (PERROOM) in urban areas (0.53 vs. 0.55; P < 0.001) and percentage of local authority housing (LARENT) in both urban (8.9% vs. 10.9%; P < 0.001) and rural SAs (3.5% vs. 4.3%; P = 0.001). Within rural SAs, STEC presence was associated with a lower incidence of third-level education (29.1% vs. 29.7%; P < 0.001), and a lower incidence of secondary-level education (i.e. primary education only) in both urban and rural areas (18.2% vs. 15.5%; P = 0.001). STEC presence was associated with lower mean unemployment rates among both male (11.4% vs. 12.9%; P = 0.001) and female residents (9.7% vs. 10.4%; P = 0.001) across both settlement types.

Table 2. Calculated odds ratios (ORs) for STEC (presence/absence) and individual Pobal HP deprivation index components in urban areas across both census periods

Table 3. Calculated odds ratios (ORs) for STEC (presence/absence) and individual Pobal HP deprivation index components in rural areas across both census periods

Cryptosporidiosis

Overall, 4509 confirmed cases of cryptosporidiosis were geocoded to 3412 SAs, of which 2027 SAs were rural (59.4% of infections; 11.0% of total SAs; 32.5% of rural SAs; OR = 3.77) and 1385 were urban (40.6% of infections; 7.5% of total SAs; 11.3% of urban SAs; OR = 0.27) (Fig. 2). Just under 60% of infections were observed among children aged ⩽5 years, with no significant difference noted with respect to case gender (male = 53%, female = 47%).

Fig. 2. Mean decrease in Gini index for retained explanatory Pobal HP index deprivation components in Random Forest models using 2011 and 2016 census deprivation examined at both urban and rural level; (a) Cryptosporidiosis Urban 2011; (b) Cryptosporidiosis Urban 2016; (c) Cryptosporidiosis Rural 2011; (d) Cryptosporidiosis Rural 2016.

As for STEC enteritis, the incidence of cryptosporidiosis was associated with both higher absolute (presence mean = −4.9; absence mean = −5.4; P = 0.006) and relative deprivation scores (presence mean = −1.1; absence mean = −1.5; P = 0.006) in rural areas only (Tables 4, 5 and S4). Cryptosporidiosis occurrence across both settlement types was associated with a higher total population (e.g. 2011 Urban 271.1 vs. 251.1; P < 0.001) and age dependency rate (e.g. 2011 Urban 33.3 vs. 31.9; P < 0.001) (Tables 5, S3 and S6).

Table 4. Calculated odds ratios (ORs) for cryptosporidiosis (presence/absence) and individual Pobal HP deprivation index components in urban areas across both census periods

Table 5. Calculated odds ratios (ORs) for cryptosporidiosis (presence/absence) and individual Pobal HP deprivation index components in rural areas across both census periods

The occurrence of cryptosporidiosis exhibited a negative association with household density (0.52 vs. 0.55; P < 0.001) in urban areas only, while a lower lone parent ratio (12.8 vs. 14.5; P < 0.001) and lower proportion of semi-skilled or unskilled workers (17.7 vs. 18.2; P = 0.008) were associated with infection irrespective of settlement type. Cryptosporidiosis was associated with lower proportions of residents with primary education only (13.6 vs. 14.5; P = 0.008) in urban areas only, whereas incidence across all settlement types was associated with a lower proportion of residents with third-level education (36.9% vs. 38.5%). Lower male (11.8 vs. 12.9; P < 0.001) and female unemployment rates (9.8 vs. 10.5; P < 0.001) were correlated with cryptosporidiosis in rural areas only.

Random Forest classification

STEC enteritis

Classification accuracy for STEC presence/absence ranged from 78.2% (Urban 2016) to 85.2% (Rural 2011) (after 100% model re-training) (Table S5). Total population (TOTPOP) exhibited a high relative contribution to infection classification within all models (highest mean Gini decrease [MGD] = 622.93, Urban 2011) (Fig. 3). A lower mean number of persons per room was associated with the presence of STEC enteritis within both urban and rural SAs, albeit this was the lowest relative contributor in all three models in which it appeared (Urban 2011, 2016; Rural 2016).

Fig. 3. Mean decrease in Gini index for retained explanatory Pobal HP index deprivation components in Random Forest models using 2011 and 2016 census deprivation examined at both urban and rural level: (a) STEC Urban 2011, (b) STEC Urban 2016, (c) STEC Rural 2011, (d) STEC Rural 2016.

In urban SAs, higher age dependency rates (highest MDG = 681.1, Urban 2011) and lower percentages of local authority housing (highest MDG = 562.7, Urban 2011) were significant contributors to STEC classification, with neither of these attributes retained in rural models. Conversely, a lower proportion of population with third-level education (highest MDG = 668.3, Rural 2016) and primary level education only (highest MDG = 393.3, Rural 2011) were associated with the occurrence of STEC enteritis in rural areas only. Similarly, rates of (un)employment were explanatory within rural areas only; lower rates of female unemployment were associated with the occurrence of STEC enteritis using 2011 deprivation index data (highest MDG = 396.1, Rural 2011), while lower rates of male unemployment were associated with infection during the 2016 census period (highest MDG = 604.6; Rural 2016).

Cryptosporidiosis

Classification accuracy for cryptosporidiosis ranged from 82.0% (Urban 2016) to 90.6% (Rural 2011) (Table S6). Higher total SA populations (highest MDG = 574.9, Rural 2016) and age dependency rates (highest MDG = 550.9, Rural 2016) were significant attributes within all four classification models (Fig. 2). A lower household density was also significant within both rural and urban areas, although this attribute exhibited the lowest overall relative contribution to infection classification (highest MDG = 114.4, Urban 2016).

Across both settlement types, rates of unemployment were significantly associated with the presence of cryptosporidiosis, with associations again alternating based on gender-specific rates and time period; female unemployment was significant within the 2016 Rural (MDG = 519.5) and Urban RF models (MDG = 369.7), while conversely, male unemployment was significant within both rural models (2011 – MDG = 405.6; 2016 – MDG = 529.5). A lower population proportion with primary education only was retained within urban cryptosporidiosis models (highest MDG = 406.2, Urban 2011), while a lower proportion with third-level education were associated with infection within rural areas only (highest MDG = 591.4, Rural 2016). A higher proportion of skilled and semi-skilled workers were associated with cryptosporidiosis in urban settlements only (highest MDG = 418.2, Urban 2011).

Discussion

The present study represents the first comprehensive investigation of individual socio-economic index components, as they relate to the incidence of two enteric infections in the ROI. Prior to the interpretation of study findings, the authors feel it is important to highlight some inherent limitations of the current study. As with any ecological analyses employing spatial areas as the primary study unit, it is crucial that caution is employed when interpreting study findings or replicating this approach. The Pobal HP deprivation index was designed and is employed as a measure of national-scale socio-economic deprivation, and as such, was not specifically developed for elucidating the transmission of or exposure to enteric pathogens and/or public health risk. Moreover, as both deprivation indices and infection data were aggregated to spatial units, examination of individual-level associations of infection with socio-economic elements is not possible, nor should study findings be interpolated to this level, i.e. findings are susceptible to ecological fallacy whereby affluent individuals (and cases of infection) may reside within a socio-economically deprived area, and vice versa. Comparison of findings for the two infections should account for differential management of secondary cases; while secondary cases were excluded from the STEC dataset, all cluster-related cases were included in the cryptosporidiosis dataset. This approach was taken partially to minimise spatiotemporal bias, and partially to account for differences in transmission. A significant majority of STEC clusters were consistently identified as such in the CIDR database across all geographical areas and throughout the data collection period, thus it was possible to consistently exclude secondary cases. Conversely, cryptosporidiosis clusters were not all identified in the earlier years of the 10-year dataset, and so secondary cases could not be excluded without introducing a spatiotemporal bias. Additionally, the route of transmission for STEC clusters was almost exclusively person-to-person, thus secondary cases contribute little to the statistical power of presented analyses. In contrast, the suspected route of transmission for cryptosporidiosis outbreaks was typically waterborne or animal contact, thus statistical source attribution is justified. The use of binary classification (i.e. RF) as opposed to a zero-inflated count (e.g. Poisson) model should minimise any potential effect this differential management of secondary infections had on presented findings.

Bivariate analyses reveal some similarities between several index components and the incidence of both STEC enteritis and cryptosporidiosis, which is likely reflective of inherent similarities between the two pathogens (e.g. sources, transmission pathways, etc.). Higher total population number was associated with both organisms in both urban and rural areas and across both census time periods. Higher local populations (and thus density) are often associated with economic deprivation, particularly in urban areas; previous studies have shown that the transmission of diarrhoeal diseases is typically higher among populations in more socially deprived urban areas [Reference Zhang and Atkinson22]. Moreover, settlement patterns in Ireland are characterised by a burgeoning rural ‘commuter belt’, whereby rural populations exhibit a preference for living in the suburban periphery of large rural towns or urban connurbations due to high urban house prices and/or proximity to workplaces and schools [Reference ÓhAiseadha8]. Accordingly, ‘peri-urban’ populations, while characteristically rural with respect to local landuse and infrastructure, may be more susceptible to infection via secondary (person-to-person) transmission through increased contact with urban residents via childcare facilities and occupational exposures, in addition to being reliant on characteristically ‘rural’ infrastructure (e.g. private wells, septic tanks).

A higher age dependency rate was also associated with the occurrence of both infections. In Ireland, children under 5 years of age represent a high-risk group for STEC infection, with cryptosporidiosis also a leading cause of paediatric gastrointestinal morbidity [Reference O'Leary23]. The association between infection incidence and age dependency rate mirrors the demographic breakdown of cases, with young children (<5 years of age) and older adults (>65 years of age) historically characterised by the highest rates of infection [9, 17]. Young children may be at increased risk due to frequent contact with other young children, lower standards of hygiene and inherent immunological susceptibility to infection [24], with onward transmission of infection to older members of households also attributed to higher rates of infection among children [Reference Mossong25].

The incidence of STEC enteritis in rural areas was significantly associated with lower levels of third-level education, likely reflecting the prevalence of agriculturally based employment in rural Ireland, which is typically generational and not contingent on higher education. Notably, significant associations were also identified between the presence of both infections and lower rates of male and female unemployment in rural areas only. Lower levels of poverty, in concurrence with higher mean income, have been associated with STEC incidence in the USA and Japan [Reference Sakuma, Urashima and Okabe26, Reference Whitney27], although this association has not been found across all regions (e.g. Finland [Reference Simonsen, Frisch and Ethelberg28], Canada [Reference Pearl29]). The interplay between affluence and infection (notification) may be indicative of healthcare-seeking behaviours among higher income sub-populations as suggested by Lal et al. [Reference Lal30] who report that increasingly deprived areas were inversely associated with the incidence of cryptosporidiosis in New Zealand. Further support is provided by a previous study of waterborne cryptosporidiosis in Ireland which reported that paediatric cases from agricultural backgrounds were less likely to have unemployed parents than a control group (children with gastroenteritis not associated with Cryptosporidium) [31]. Conversely, higher rates of female and male unemployment were associated with the presence of cryptosporidiosis in urban areas, suggesting that the relationship between affluence and cryptosporidiosis is not nationally uniform.

Lower mean household density was associated with the incidence of both infections in urban areas; this finding was unexpected based on previous studies which report household size and structural profile as a proxy for secondary transmission [Reference Cohen32, Reference Korpe33]. Household transmission and overcrowding are important risk factors for cryptosporidiosis, albeit more frequently reported within low- and middle-income countries [Reference Bouzid, Kintz and Hunter34]. The association between enteric infections and urban household density identified in the current study may indicate elevated infection risks among affluent demographic groups. Likewise, a lower proportion of local authority housing was associated with STEC presence in urban areas, once again potentially reflecting the nexus between pathogenic exposure and economic affluence. Previous studies have cited international travel and food consumption patterns associated with higher socio-demographic status (e.g. higher intake of fresh fruit, vegetables and unprocessed produce) as risk factors for both STEC enteritis and cryptosporidiosis [Reference Whitney27, Reference Simonsen, Frisch and Ethelberg28].

Education represents a key indicator of socio-economic status, and by extension, overall population health, with increased educational attainment typically associated with a lower incidence of non-communicable disease [Reference Regidor35, Reference Ma, Nolan and Smith36]. The current study identified significant associations between infection and areas characterised by higher proportions of (a) primary education only and (b) a third-level education; thus, higher and lower educational attainment were significantly associated with the incidence of both infections at the local level. A recent review by Newman et al. [Reference Newman37] reports significant, non-ordered variation between educational attainment and the incidence of STEC enteritis. In Ireland, younger cohorts are more likely to have received a third-level education than their predecessors, due to the introduction of free secondary school education in the late-1960s, thus the proportion of people with primary education only is appreciably higher among older people [Reference Kamiya and Sofroniou38], as such, lower educational attainment may represent a potential proxy measure for immunological status. Conversely, previous work reports that higher infection risks are associated with higher levels of education [Reference Jalava39], with higher education serving as a proxy for increased affluence, which as previously mentioned is often associated with international travel and consumption of unprocessed foods [Reference Whitney27, Reference Simonsen, Frisch and Ethelberg28].

Overall, infection classification based on RF models using deprivation index components was generally considered moderately accurate; based on the published literature, this (unsurprisingly) suggests that the incidence (and thus mechanics) of infection within spatial units cannot be predicted solely based upon socio-economic metrics, with environmental factors, for example, likely to significantly strengthen predictive capacity, particularly in rural areas. Environmental drivers of STEC enteritis and cryptosporidiosis typically exhibit marked differences with respect to settlement type, for example, the incidence of STEC enteritis in rural areas has been associated with direct (farm) animal contact and contaminated drinking water, while contaminated food products have been reported as a significant driver in urban areas [Reference O'Dwyer10, Reference Jalava39, Reference Augustin40, Reference Boudou41]. Notwithstanding, full (i.e. 100% datasets) RF models presented here did exhibit 50–80% ‘true-positive’ classification (i.e. sensitivity), thus there is little doubt that both infections are driven, to some extent, by local socio-economic profile in Ireland. Accordingly, the authors recommend that future work focus on increasingly prospective approaches (in parallel with retrospective, data-driven studies), and employ a variety of metrics/indices for the classification of socio-economic profile. Moreover, the authors strongly recommend that future research should seek to incorporate socio-economic, environmental (including climactic) and behavioural drivers of infection to provide increasingly holistic models of infection incorporating the myriad sources, pathways and receptors potentially associated with transmission.

Conclusion

Increased local age dependency rates and total population number were associated with the occurrence of both infections, irrespective of settlement type, highlighting population density (person-to-person contact) and vulnerable sub-populations (i.e. immunological status, infection severity) as important transmission drivers. Numerous heterogeneities were identified with respect to ‘place’ as it relates to both settlement type and socio-economic profile, and particularly those associated with education, unemployment and household composition. Lower rates of third-level education, unemployment and household density were associated with infections in urban areas only. Differences were also observed between socio-economic components and infection aetiology; lower proportions of lone parent households and higher proportions of semi-skilled and unskilled workers were associated with the incidence of cryptosporidiosis, but not STEC enteritis. Future work should incorporate environmental (including climactic), socio-economic and epidemiological data to increase current understanding of spatially-specific exposure to and transmission of enteric infections, thus permitting improved evidence-based surveillance, targeted intervention design and mitigation strategies, both nationally and internationally.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/S0950268821001564.

Financial support

This study has been funded by the Irish Research Council as part of their COALESCE Funding Programme (Grant Number COALESCE/2019/53) and the Environmental Protection Agency as part of their STRIVE Funding Programme (Grant Number 2018-W-MS33).

Data availability statement

The human infection data that support the findings of this study are available from the Computerised Infectious Disease Reporting (CIDR) Committee (https://www.hpsc.ie/cidr/), and require formal permission following application by researchers for individual studies. Restrictions apply to the availability of these data, which were used under licence for this study. The urban/rural classification used to support the findings of this study is freely available from the Central Statistics Office (Ireland) (https://www.cso.ie/en/releasesandpublications/ep/p-cp3oy/cp3/urr/). The Pobal HP deprivation index data used to support the findings of this study are freely available, and may be accessed from http://trutzhaase.eu/deprivation-index/the-2016-pobal-hp-deprivation-index-for-small-areas/.

References

Karmali, MA, Gannon, V and Sargeant, JM (2010) Verocytotoxin-producing Escherichia coli (VTEC). Veterinary Microbiology 140, 360370.CrossRefGoogle Scholar
Page, AV and Liles, WC (2013) Enterohemorrhagic Escherichia coli infections and the hemolytic-uremic syndrome. Medical Clinics 97, 681695.Google ScholarPubMed
Hunter, PR and Nichols, G (2002) Epidemiology and clinical features of Cryptosporidium infection in immunocompromised patients. Clinical Microbiology Reviews 15, 145154.CrossRefGoogle ScholarPubMed
Ramirez, NE, Ward, LA and Sreevatsan, S (2004) A review of the biology and epidemiology of cryptosporidiosis in humans and animals. Microbes and Infection 6, 773785.CrossRefGoogle ScholarPubMed
ECDC (2019) Cryptosporidiosis: Annual Epidemiological Report for 2017. Retrieved from Stockholm.Google Scholar
ECDC (2020) Shiga-Toxin/Verocytotoxin-Producing Escherichia coli (STEC) Infection: Annual Epidemiological Report for 2018. Retrieved from Stockholm.Google Scholar
Garvey, P et al. (2016) Verotoxigenic Escherichia coli transmission in Ireland: a review of notified outbreaks, 2004–2012. Epidemiology & Infection 144, 917926.CrossRefGoogle ScholarPubMed
ÓhAiseadha, C et al. (2017) A geostatistical investigation of agricultural and infrastructural risk factors associated with primary verotoxigenic E. coli (VTEC) infection in the Republic of Ireland, 2008–2013. Epidemiology & Infection 145, 95105.CrossRefGoogle ScholarPubMed
HPSC (2019a) Cryptosporidiosis in Ireland, 2018. Retrieved from Dublin.Google Scholar
O'Dwyer, J et al. (2018) Development of a hierarchical model for predicting microbiological contamination of private groundwater supplies in a geologically heterogeneous region. Environmental Pollution 237, 329338.CrossRefGoogle Scholar
Alirol, E et al. (2011) Urbanisation and infectious diseases in a globalised world. The Lancet Infectious Diseases 11, 131141.CrossRefGoogle Scholar
Reyes, R et al. (2013) Urbanization and infectious diseases: general principles, historical perspectives, and contemporary challenges. In: Challenges in Infectious Diseases. New York, NY: Springer, pp. 123146.CrossRefGoogle Scholar
Flies, EJ et al. (2019) Urban-associated diseases: candidate diseases, environmental risk factors, and a path forward. Environment International 133, 105187.CrossRefGoogle Scholar
Farrelly, T, Flaherty, S and Healy, H (2019) The challenges to public health nurse practice in rural Ireland. Public Health Nursing 36, 341347.CrossRefGoogle ScholarPubMed
Hynds, P, Gill, LW and Misstear, BD (2014) A quantitative risk assessment of verotoxigenic E. coli (VTEC) in private groundwater sources in the Republic of Ireland. Human and Ecological Risk Assessment 20, 14461468.CrossRefGoogle Scholar
Haase, T and Pratschke, J (2012) The 2016 Pobal HP deprivation index (sa).Google Scholar
HPSC (2016a) Computerised infectious disease reporting (CIDR). Retrieved from https://www.hpsc.ie/cidr/.Google Scholar
Garvey, P and McKeown, P (2009) Epidemiology of human cryptosporidiosis in Ireland, 2004–2006: analysis of national notification data. Eurosurveillance 14, 19128.CrossRefGoogle ScholarPubMed
Chyzheuskaya, A et al. (2017) Economic assessment of waterborne outbreak of cryptosporidiosis. Emerging Infectious Diseases 23, 1650.CrossRefGoogle ScholarPubMed
Domegan, L et al. (2021) Geo-coding cryptosporidiosis cases in Ireland (2008–2017) – development of a reliable, reproducible, multi-phase geo-coding methodology. Irish Journal of Medical Science (1971- ), 111.Google Scholar
Central Statistics Office (CSO) (2019a) Census 2016 boundary files: small areas – Census 2016 small area population statistics.Google Scholar
Zhang, P and Atkinson, PM (2008) Modelling the effect of urbanization on the transmission of an infectious disease. Mathematical Biosciences 211, 166185.CrossRefGoogle ScholarPubMed
O'Leary, JK et al. (2020) Cryptosporidium spp surveillance and epidemiology in Ireland: a longitudinal cohort study employing duplex real-time PCR based speciation of clinical cases. Journal of Clinical Pathology 73, 758761.CrossRefGoogle ScholarPubMed
HSE (2014) Management of infectious disease in schools.Google Scholar
Mossong, J et al. (2008) Social contacts and mixing patterns relevant to the spread of infectious diseases. PLoS Medicine 5, e74.CrossRefGoogle ScholarPubMed
Sakuma, M, Urashima, M and Okabe, N (2006) Verocytotoxin-producing Escherichia coli, Japan, 1999–2004. Emerging Infectious Diseases 12, 323.CrossRefGoogle Scholar
Whitney, BM et al. (2015) Socioeconomic status and foodborne pathogens in Connecticut, USA, 2000–2011. Emerging Infectious Diseases, 21, 1617.CrossRefGoogle Scholar
Simonsen, J, Frisch, M and Ethelberg, S (2008) Socioeconomic risk factors for bacterial gastrointestinal infections. Epidemiology 19, 282290.CrossRefGoogle ScholarPubMed
Pearl, D et al. (2009) A multi-level approach for investigating socio-economic and agricultural risk factors associated with rates of reported cases of Escherichia coli o157 in humans in Alberta, Canada. Zoonoses and Public Health 56, 455464.CrossRefGoogle ScholarPubMed
Lal, A et al. (2018) A Bayesian spatio-temporal framework to identify outbreaks and examine environmental and social risk factors for infectious diseases monitored by routine surveillance. Spatial and Spatio-temporal Epidemiology 25, 3948.CrossRefGoogle ScholarPubMed
NDSC (National Disease Surveillance Centre) (2004) Report of Waterborne Cryptosporidiosis Subcommittee of the Scientific Advisory Committee.Google Scholar
Cohen, SA et al. (2008) The seeds of two gastrointestinal diseases: socioeconomic, environmental, and demographic factors related to cryptosporidiosis and giardiasis in Massachusetts. Environmental Research 108, 185191.CrossRefGoogle ScholarPubMed
Korpe, PS et al. (2018) Epidemiology and risk factors for cryptosporidiosis in children from 8 low-income sites: results from the MAL-ED study. Clinical Infectious Diseases 67, 16601669.Google ScholarPubMed
Bouzid, M, Kintz, E and Hunter, PR (2018) Risk factors for Cryptosporidium infection in low and middle income countries: a systematic review and meta-analysis. PLoS Neglected Tropical Diseases 12, e0006553.CrossRefGoogle ScholarPubMed
Regidor, E et al. (2002) Educational level and mortality from infectious diseases. Journal of Epidemiology & Community Health 56, 682683.CrossRefGoogle ScholarPubMed
Ma, Y, Nolan, A and Smith, JP (2018) The value of education to health: evidence from Ireland. Economics & Human Biology 31, 1425.CrossRefGoogle ScholarPubMed
Newman, KL et al. (2015) The impact of socioeconomic status on foodborne illness in high-income countries: a systematic review. Epidemiology & Infection 143, 24732485.CrossRefGoogle ScholarPubMed
Kamiya, Y and Sofroniou, N (2011) Socio-demographic characteristics of older people in Ireland. Fifty Plus in Ireland 2011, 23.Google Scholar
Jalava, K et al. (2011) Agricultural, socioeconomic and environmental variables as risks for human verotoxigenic Escherichia coli (VTEC) infection in Finland. BMC Infectious Diseases 11, 18.CrossRefGoogle ScholarPubMed
Augustin, J-C et al. (2020) Risk factors for sporadic infections caused by Shiga toxin-producing Escherichia coli: a systematic review and meta-analysis. Microbial Risk Analysis 17, 100117.CrossRefGoogle Scholar
Boudou, M et al. (2021) Flood hydrometeorology and gastroenteric infection: the winter 2015–2016 flood event in the Republic of Ireland. Journal of Hydrology 599, 126376.CrossRefGoogle Scholar
Figure 0

Fig. 1. (a) Pobal HP relative deprivation index spatial distribution by CSO small area in Ireland. (b) Urban/rural classification spatial distribution by CSO small area in Ireland.

Figure 1

Table 1. Pobal HP deprivation index components and descriptions

Figure 2

Table 2. Calculated odds ratios (ORs) for STEC (presence/absence) and individual Pobal HP deprivation index components in urban areas across both census periods

Figure 3

Table 3. Calculated odds ratios (ORs) for STEC (presence/absence) and individual Pobal HP deprivation index components in rural areas across both census periods

Figure 4

Fig. 2. Mean decrease in Gini index for retained explanatory Pobal HP index deprivation components in Random Forest models using 2011 and 2016 census deprivation examined at both urban and rural level; (a) Cryptosporidiosis Urban 2011; (b) Cryptosporidiosis Urban 2016; (c) Cryptosporidiosis Rural 2011; (d) Cryptosporidiosis Rural 2016.

Figure 5

Table 4. Calculated odds ratios (ORs) for cryptosporidiosis (presence/absence) and individual Pobal HP deprivation index components in urban areas across both census periods

Figure 6

Table 5. Calculated odds ratios (ORs) for cryptosporidiosis (presence/absence) and individual Pobal HP deprivation index components in rural areas across both census periods

Figure 7

Fig. 3. Mean decrease in Gini index for retained explanatory Pobal HP index deprivation components in Random Forest models using 2011 and 2016 census deprivation examined at both urban and rural level: (a) STEC Urban 2011, (b) STEC Urban 2016, (c) STEC Rural 2011, (d) STEC Rural 2016.

Supplementary material: File

Cleary et al. supplementary material

Cleary et al. supplementary material

Download Cleary et al. supplementary material(File)
File 41.5 KB