| Literature DB >> 31684018 |
Aishwarya Venkat1, Tania M Alarcon Falconi2, Melissa Cruz3, Meghan A Hartwick4, Shalini Anandan5, Naveen Kumar6, Honorine Ward7,8,9, Balaji Veeraraghavan10, Elena N Naumova11,12.
Abstract
Systematically collected hospitalization records provide valuable insight into disease patterns and support comprehensive national infectious disease surveillance networks. Hospitalization records detailing patient's place of residence (PoR) can be utilized to better understand a hospital's case load and strengthen surveillance among mobile populations. This study examined geographic patterns of patients treated for cholera at a major hospital in south India. We abstracted 1401 laboratory-confirmed cases of cholera between 2000-2014 from logbooks and electronic health records (EHRs) maintained by the Christian Medical College (CMC) in Vellore, Tamil Nadu, India. We constructed spatial trend models and identified two distinct clusters of patient residence-one around Vellore (836 records (61.2%)) and one in Bengal (294 records (21.5%)). We further characterized differences in peak timing and disease trend among these clusters to identify differences in cholera exposure among local and visiting populations. We found that the two clusters differ by their patient profiles, with patients in the Bengal cluster being most likely older males traveling to Vellore. Both clusters show well-aligned seasonal peaks in mid-July, only one week apart, with similar downward trend and proportion of predominant O1 serotype. Large hospitals can thus harness EHRs for surveillance by utilizing patients' PoRs to study disease patterns among resident and visitor populations.Entities:
Keywords: India; cholera; disease clusters; electronic health records (EHR); hospitalization; mobile population; spatial statistics
Mesh:
Year: 2019 PMID: 31684018 PMCID: PMC6862112 DOI: 10.3390/ijerph16214257
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Location-based information relevant to disease source-tracking: Place of Residence (PoR), Place of Exposure (PoE), and Place of Hospitalization (PoH).
Figure 2Flowchart of analytical process.
Figure 3Map of cholera patients’ places of residence as observed at Christian Medical College (CMC) hospital in Vellore, Tamil Nadu state, India.
Negative binomial models with trend, seasonality, weekends, and holidays.
| Model | Model Formulation * |
|---|---|
| I: Trend |
|
| II: Trend + Seasonality |
|
| III: Trend + Seasonality + Weekends + Holidays |
|
* Variables: c = cholera counts, t = days since the start of the study (e.g., t = 1, for 1 January 2000), ω = frequency calculated as 1/365.25, W = weekends, H = holidays.
Figure 4Number of patients treated for cholera at CMC Vellore by year and month, with reported place of residence by Indian state. The following states and territories are not shown due to low case counts (under five cases in complete dataset): Delhi, Goa, Mizoram, Nagaland, Punjab, and Sikkim.
Figure 5Number of patients treated for cholera at CMC Vellore by year and month from the country of Bangladesh and the Indian states of Tamil Nadu and West Bengal.
Figure 6Isotropic Gaussian kernel smoothed intensity (cases per unit area) in CMC dataset. Each panel represents a bandwidth: (a) cross-validation; (b) likelihood cross-validation; and isotropic Gaussian kernel adjustment factors of: (c) 0.25, (d) 0.50, (e) 0.75, and (f) 1.
Cases within Vellore and Bengal clusters based on spatial trend models.
| Model No. | Trend | AIC * | Cases in Vellore Cluster | Cases in Bengal Cluster | Cases in Joint Cluster |
|---|---|---|---|---|---|
| 15 | sin(x) + cos(y) | 58,132 | 836 | 493 | - |
| 14 | cos(y) + x | 58,351 | 841 | 294 | - |
| 8 | cos(y) | 58,475 | 836 | 470 | - |
| 11 | sin(x) + y | 60,160 | 800 | 500 | - |
| 13 | cos(x) + y | 60,244 | 798 | 500 | - |
| 3 | y | 60,536 | 800 | 500 | - |
| 12 | sin(y) + x | 61,123 | - | - | 1135 |
| 7 | sin(y) | 61,511 | - | - | 1327 |
| 9 | sin(x + y) | 62,028 | - | - | 1339 |
| 2 | x | 62,060 | 843 | 291 | - |
| 5 | sin(x) | 62,193 | - | - | 1339 |
| 6 | cos(x) | 62,214 | - | - | 1339 |
| 10 | cos(x + y) | 62,419 | - | - | 1339 |
| 1 | 1 | 62,558 | - | - | 1339 |
* AIC—Akaike Information Criterion.
Figure 7Boundaries and cases included in the Vellore (purple) and Bengal (green) stable clusters.
Figure 8Daily time series and histograms for cholera cases in the stable Bengal (upper row) and Vellore (lower row) clusters.
Summary and effect of temporal covariates on case intensity for the stable clusters.
| Variable | Measure | Vellore | Bengal |
|---|---|---|---|
| Total Cases | Count | 836 | 294 |
| Holiday | Count (%) | 116 (13.88) | 45 (15.31) |
| Weekend | Count (%) | 181 (21.65) | 72 (24.49) |
| Male | Count (%) | 468 (56.05) | 185 (62.93) |
| Age | Mean (Sd) | 25.73 (23.14) | 33.92 (18.81) |
| O1 serotype | Count (%) | 574 (68.66) | 180 (61.22) |
| O139 serotype | Count (%) | 49 (5.86) | 12 (4.08) |
Summary of negative binomial model fit for the Vellore and Bengal stable clusters.
| Model | Vellore | Bengal | ||
|---|---|---|---|---|
| AIC * | VE (%) ** | AIC | VE (%) | |
| I: Trend | 4865 | 1.93 | 2308 | 1.02 |
| II: Trend + Seasonality | 4815 | 4.05 | 2288 | 2.81 |
| III: Trend + Seasonality + Weekends + Holidays | 2290 | 4.72 | 2290 | 2.96 |
* AIC—Akaike Information Criterion; ** VE (%)—percent variability explained.
Summary of trend, peak timing estimates, and weekend and holiday effects of cholera cases for the Vellore and Bengal clusters.
| Variable | Vellore | Bengal |
|---|---|---|
| Trend as % change in disease counts per 30 days | −0.519 (−0.667, −0.371) | −0.455 (−0.690, −0.222) |
| Weekend effect as % difference | −31.27 (−42.96, −17.52) | −18.67 (−39.00, 7.31) |
| Holiday effect as % difference | −9.47 (−27.78, 12.73) | 2.18 (−28.08, 42.33) |
| Peak timing in days | 186.2 (170.5, 202.0) | 194.6 (171.5, 217.8) |
| Peak timing | July 7 ± 16 days | July 14 ± 23 days |