How Well Do AI-Enabled Decision Support Systems Perform in Clinical Settings?

Anindya Pradipta Susanto, David Lyell, Bambang Widyantoro, Shlomo Berkovsky, Farah Magrabi

Research output: Contribution to journalArticlepeer-review

1 Citation (Scopus)

Abstract

Real-world performance of machine learning (ML) models is crucial for safely and effectively embedding them into clinical decision support (CDS) systems. We examined evidence about the performance of contemporary ML-based CDS in clinical settings. A systematic search of four bibliographic databases identified 32 studies over a 5-year period. The CDS task, ML type, ML method and real-world performance was extracted and analysed. Most ML-based CDS supported image recognition and interpretation (n=12; 38%) and risk assessment (n=9; 28%). The majority used supervised learning (n=28; 88%) to train random forests (n=7; 22%) and convolutional neural networks (n=7; 22%). Only 12 studies reported real-world performance using heterogenous metrics; and performance degraded in clinical settings compared to model validation. The reporting of model performance is fundamental to ensuring safe and effective use of ML-based CDS in clinical settings. There remain opportunities to improve reporting.

Original languageEnglish
Pages (from-to)279-283
Number of pages5
JournalStudies in Health Technology and Informatics
Volume310
DOIs
Publication statusPublished - 25 Jan 2024

Keywords

  • Clinical decision support
  • machine learning
  • performance

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