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Article

Multimodal machine learning to predict surgical site infection with healthcare workload impact assessment

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Citation

Bouamrane M (2024) Multimodal machine learning to predict surgical site infection with healthcare workload impact assessment. npj Digital Medicine.

Abstract
Remote monitoring is essential for healthcare digital transformation, however, this poses greater burdens on healthcare providers to review and respond as the data collected expands. This study developed a multimodal neural network to automate assessments of patient-generated data from remote postoperative wound monitoring. Two interventional studies including adult gastrointestinal surgery patients collected wound images and patient-reported outcome measures (PROMs) for 30-days postoperatively. Neural networks for PROMs and images were combined to predict surgical site infection (SSI) diagnosis within 48 hours. The multimodal neural network model to predict confirmed SSI within 48h remained comparable to clinician triage (0.762 [0.690-0.835] vs 0.777 [0.721-0.832]), with an excellent performance on external validation. Simulated usage indicated an 80% reduction in staff time (51.5 to 9.1 hours) without compromising diagnostic accuracy. This multimodal approach can effectively support remote monitoring, alleviating provider burden while ensuring high-quality postoperative care.

Keywords
Machine Learning, Surgical Site Infections, Remote Post-operative Monitoring, Tele-Medicine, Perioperative Medicine

Notes
This article is accepted and in print so not yet published.

Journal
npj Digital Medicine

StatusAccepted
Funders and
Date accepted by journal23/12/2024
ISSN2398-6352
eISSN2398-6352

People (1)

Professor Matt-Mouley Bouamrane

Professor Matt-Mouley Bouamrane

Professor in Health/Social Informatics, Computing Science

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