Development, Implementation, and Evaluation of a Personalized Machine Learning Algorithm for Clinical Decision Support: Case Study With Shingles Vaccination
Journal of Medical Internet Research2020Vol. 22(4), pp. e16848–e16848
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Ji Chen, Sara Chokshi, Roshini Hegde, Javier González, Eduardo Iturrate, Yindalon Aphinyanaphongs, David Mann
Abstract
All key statistics remained stable while the system was turned on. Although the results are promising, the characteristics of the system can be subject to future data shifts, which require automated logging and monitoring. We demonstrated that an automated, ML-based method and data architecture to suppress alerts are feasible without detriment to overall order rates. This work is the first alert suppression ML-based model deployed in practice and serves as foundational work in encounter-level customization of alert display to maximize effectiveness.
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