eLife (Feb 2021)

A modular approach to integrating multiple data sources into real-time clinical prediction for pediatric diarrhea

  • Ben J Brintz,
  • Benjamin Haaland,
  • Joel Howard,
  • Dennis L Chao,
  • Joshua L Proctor,
  • Ashraful I Khan,
  • Sharia M Ahmed,
  • Lindsay T Keegan,
  • Tom Greene,
  • Adama Mamby Keita,
  • Karen L Kotloff,
  • James A Platts-Mills,
  • Eric J Nelson,
  • Adam C Levine,
  • Andrew T Pavia,
  • Daniel T Leung

DOI
https://doi.org/10.7554/eLife.63009
Journal volume & issue
Vol. 10

Abstract

Read online

Traditional clinical prediction models focus on parameters of the individual patient. For infectious diseases, sources external to the patient, including characteristics of prior patients and seasonal factors, may improve predictive performance. We describe the development of a predictive model that integrates multiple sources of data in a principled statistical framework using a post-test odds formulation. Our method enables electronic real-time updating and flexibility, such that components can be included or excluded according to data availability. We apply this method to the prediction of etiology of pediatric diarrhea, where 'pre-test’ epidemiologic data may be highly informative. Diarrhea has a high burden in low-resource settings, and antibiotics are often over-prescribed. We demonstrate that our integrative method outperforms traditional prediction in accurately identifying cases with a viral etiology, and show that its clinical application, especially when used with an additional diagnostic test, could result in a 61% reduction in inappropriately prescribed antibiotics.

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