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AMIA Annu Symp Proc ; 2021: 1039-1048, 2021.
Article in English | MEDLINE | ID: mdl-35308958

ABSTRACT

Burn wounds are most commonly evaluated through visual inspection to determine surgical candidacy, taking into account burn depth and individualized patient factors. This process, though cost effective, is subjective and varies by provider experience. Deep learning models can assist in burn wound surgical candidacy with predictions based on the wound and patient characteristics. To this end, we present a multimodal deep learning approach and a complementary mobile application - DL4Burn - for predicting burn surgical candidacy, to emulate the multi-factored approach used by clinicians. Specifically, we propose a ResNet50-based multimodal model and validate it using retrospectively obtained patient burn images, demographic, and injury data.


Subject(s)
Burns , Deep Learning , Burns/surgery , Humans , Retrospective Studies
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