A Probabilistic Case-finding Algorithm for Chronic Disease Surveillance
Author(s) -
Stephanie Brien,
Luke Mondor,
Nancy E. Mayo,
David L. Buckeridge
Publication year - 2014
Publication title -
online journal of public health informatics
Language(s) - English
Resource type - Journals
ISSN - 1947-2579
DOI - 10.5210/ojphi.v6i1.5015
Subject(s) - logistic regression , medicine , cohort , probabilistic logic , diabetes mellitus , data mining , algorithm , statistics , artificial intelligence , computer science , mathematics , endocrinology
We developed and validated a multivariable probabilistic case-detection model to detect known cases of diabetes mellitus (DM) using clinical and demographic data. We applied our method to a cohort of older adult residents of the region of Sherbrooke, Quebec. Predictors were added to a logistic regression model and internally validated using a 2:1 split sample approach. Models were compared using measures goodness of fit, discrimination and accuracy. The best model incorporated all predictors into the model: male sex, age, at least one hospitalization, physician visit and drug dispensed for diabetes.
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