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Machine learning generalizability across healthcare settings: insights from multi-site COVID-19 screening

Jenny Yang, Andrew A. S. Soltan, David A. Clifton

2022npj Digital Medicine163 citationsDOIOpen Access PDF

Abstract

As patient health information is highly regulated due to privacy concerns, most machine learning (ML)-based healthcare studies are unable to test on external patient cohorts, resulting in a gap between locally reported model performance and cross-site generalizability. Different approaches have been introduced for developing models across multiple clinical sites, however less attention has been given to adopting ready-made models in new settings. We introduce three methods to do this-(1) applying a ready-made model "as-is" (2); readjusting the decision threshold on the model's output using site-specific data and (3); finetuning the model using site-specific data via transfer learning. Using a case study of COVID-19 diagnosis across four NHS Hospital Trusts, we show that all methods achieve clinically-effective performances (NPV > 0.959), with transfer learning achieving the best results (mean AUROCs between 0.870 and 0.925). Our models demonstrate that site-specific customization improves predictive performance when compared to other ready-made approaches.

Topics & Concepts

Generalizability theoryMachine learningCoronavirus disease 2019 (COVID-19)PersonalizationHealth careComputer scienceTransfer of learningArtificial intelligenceTest (biology)Data miningMedicinePsychologyEconomicsDiseaseDevelopmental psychologyPathologyPaleontologyEconomic growthInfectious disease (medical specialty)World Wide WebBiologyMachine Learning in HealthcareCOVID-19 diagnosis using AIArtificial Intelligence in Healthcare and Education
Machine learning generalizability across healthcare settings: insights from multi-site COVID-19 screening | Litcius