Statistical outbreak detection by joining medical records and pathogen similarity - Robotics Institute Carnegie Mellon University

Statistical outbreak detection by joining medical records and pathogen similarity

James K. Miller, Jieshi Chen, Alexander Sundermann, Jane W. Marsh, Melissa I. Saul, Kathleen A. Shutt, Marissa Pacey, Mustapha M. Mustapha, Lee H. Harrison, and Artur Dubrawski
Journal Article, Journal of Biomedical Informatics, Vol. 91, March, 2019

Abstract

We present a statistical inference model for the detection and characterization of outbreaks of hospital associated infection. The approach combines patient exposures, determined from electronic medical records, and pathogen similarity, determined by whole-genome sequencing, to simultaneously identify probable outbreaks and their root-causes. We show how our model can be used to target isolates for whole-genome sequencing, improving outbreak detection and characterization even without comprehensive sequencing. Additionally, we demonstrate how to learn model parameters from reference data of known outbreaks. We demonstrate model performance using semi-synthetic experiments.

BibTeX

@article{Miller-2019-121595,
author = {James K. Miller and Jieshi Chen and Alexander Sundermann and Jane W. Marsh and Melissa I. Saul and Kathleen A. Shutt and Marissa Pacey and Mustapha M. Mustapha and Lee H. Harrison and Artur Dubrawski},
title = {Statistical outbreak detection by joining medical records and pathogen similarity},
journal = {Journal of Biomedical Informatics},
year = {2019},
month = {March},
volume = {91},
}