Mapping the distribution of Lyme disease at a mid-Atlantic site in the United States using electronic health data.

Abstract

Lyme disease is a spatially heterogeneous tick-borne infection, with approximately 85% of US cases concentrated in the mid-Atlantic and northeastern states. Surveillance for Lyme disease and its causative agent, including public health case reporting and entomologic surveillance, is necessary to understand its endemic range, but currently used case detection methods have limitations. To evaluate an alternative approach to Lyme disease surveillance, we have performed a geospatial analysis of Lyme disease cases from the Johns Hopkins Health System in Maryland. We used two sources of cases: a) individuals with both a positive test for Lyme disease and a contemporaneous diagnostic code consistent with a Lyme disease-related syndrome; and b) individuals referred for a Lyme disease evaluation who were adjudicated to have Lyme disease. Controls were individuals from the referral cohort judged not to have Lyme disease. Residential address data were available for all cases and controls. We used a hierarchical Bayesian model with a smoothing function for a coordinate location to evaluate the probability of Lyme disease within 100 km of Johns Hopkins Hospital. We found that the probability of Lyme disease was greatest in the north and west of Baltimore, and the local probability that a subject would have Lyme disease varied by as much as 30-fold. Adjustment for demographic and ecological variables partially attenuated the spatial gradient. Our study supports the suitability of electronic medical record data for the retrospective surveillance of Lyme disease.

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Citation

Published Version (Please cite this version)

10.1371/journal.pone.0301530

Publication Info

Lantos, Paul M, Mark Janko, Lise E Nigrovic, Felicia Ruffin, Takaaki Kobayashi, Yvonne Higgins and Paul G Auwaerter (2024). Mapping the distribution of Lyme disease at a mid-Atlantic site in the United States using electronic health data. PloS one, 19(5). p. e0301530. 10.1371/journal.pone.0301530 Retrieved from https://hdl.handle.net/10161/31223.

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Scholars@Duke

Lantos

Paul Michael Lantos

Professor of Medicine

I am interested in the spatial epidemiology of infectious diseases. My research utilizes geographic information systems (GIS) and geostatistical analyses to understand the spatial and spatiotemporal distribution of diseases, and their relationship with environmental and demographic factors. I currently have active studies evaluating the spatial distribution of numerous domestic and international infectious diseases, including SARS-CoV-2 (COVID-19), cytomegalovirus, influenza, and Lyme disease. Additionally I am interested in maternal-child health, and I have a number of ongoing studies of neighborhood health disparities in obstetrical care and birth outcomes. I am interested in GIS education and have conducted workshops on public health GIS in Mongolia and China.

Mark Janko

Instructor of Global Health Institute
Ruffin

Felicia Ruffin

Research Program Leader, Tier 1

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