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Individualized Risk Prediction for Improved Chronic Wound Management.

Veličković VM, Spelman T, Clark M, Probst S, Armstrong DG, Steyerberg E

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  • Journal Advances in wound care

  • Published 01 Nov 2022

  • Volume 12

  • ISSUE 7

  • Pagination 387-398

  • DOI 10.1089/wound.2022.0017

Abstract

Where the number of predictors is large and heterogenous, the correlations between various risk factors complex, and very large data sets are available, ML may prove a powerful adjuvant for risk stratifying patients predisposed to chronic wounds. Conventional regression-based approaches remain important, particularly where the number of predictors is relatively small. Translating estimated risk derived from ML algorithms into practical prediction tools for use in clinical practice remains challenging.