A Naive Bayes machine learning approach to risk prediction using censored, time-to-event data

Stat Med. 2015 Sep 20;34(21):2941-57. doi: 10.1002/sim.6526. Epub 2015 May 18.

Abstract

Predicting an individual's risk of experiencing a future clinical outcome is a statistical task with important consequences for both practicing clinicians and public health experts. Modern observational databases such as electronic health records provide an alternative to the longitudinal cohort studies traditionally used to construct risk models, bringing with them both opportunities and challenges. Large sample sizes and detailed covariate histories enable the use of sophisticated machine learning techniques to uncover complex associations and interactions, but observational databases are often 'messy', with high levels of missing data and incomplete patient follow-up. In this paper, we propose an adaptation of the well-known Naive Bayes machine learning approach to time-to-event outcomes subject to censoring. We compare the predictive performance of our method with the Cox proportional hazards model which is commonly used for risk prediction in healthcare populations, and illustrate its application to prediction of cardiovascular risk using an electronic health record dataset from a large Midwest integrated healthcare system.

Keywords: Naive Bayes; electronic health records; machine learning; risk prediction; survival analysis.

Publication types

  • Research Support, N.I.H., Extramural
  • Research Support, U.S. Gov't, P.H.S.

MeSH terms

  • Bayes Theorem*
  • Biometry / methods*
  • Cardiovascular Diseases / epidemiology
  • Computer Simulation
  • Databases, Factual
  • Delivery of Health Care, Integrated
  • Electronic Health Records
  • Humans
  • Longitudinal Studies
  • Machine Learning
  • Midwestern United States / epidemiology
  • Proportional Hazards Models*
  • Risk
  • Risk Assessment / methods*
  • Space-Time Clustering