Benchmark datasets driving artificial intelligence development fail to capture the needs of medical professionals.

Journal: Journal of biomedical informatics
Published Date:

Abstract

Publicly accessible benchmarks that allow for assessing and comparing model performances are important drivers of progress in artificial intelligence (AI). While recent advances in AI capabilities hold the potential to transform medical practice by assisting and augmenting the cognitive processes of healthcare professionals, the coverage of clinically relevant tasks by AI benchmarks is largely unclear. Furthermore, there is a lack of systematized meta-information that allows clinical AI researchers to quickly determine accessibility, scope, content and other characteristics of datasets and benchmark datasets relevant to the clinical domain. To address these issues, we curated and released a comprehensive catalogue of datasets and benchmarks pertaining to the broad domain of clinical and biomedical natural language processing (NLP), based on a systematic review of literature and. A total of 450 NLP datasets were manually systematized and annotated with rich metadata, such as targeted tasks, clinical applicability, data types, performance metrics, accessibility and licensing information, and availability of data splits. We then compared tasks covered by AI benchmark datasets with relevant tasks that medical practitioners reported as highly desirable targets for automation in a previous empirical study. Our analysis indicates that AI benchmarks of direct clinical relevance are scarce and fail to cover most work activities that clinicians want to see addressed. In particular, tasks associated with routine documentation and patient data administration workflows are not represented despite significant associated workloads. Thus, currently available AI benchmarks are improperly aligned with desired targets for AI automation in clinical settings, and novel benchmarks should be created to fill these gaps.

Authors

  • Kathrin Blagec
    Section for Artificial Intelligence and Decision Support, Medical University of Vienna, Währinger Strasse 25A, OG1, Vienna, 1090, Austria.
  • Jakob Kraiger
    Medical University of Vienna, Institute of Artificial Intelligence. Währingerstraße 25a, BT1, OG1, 1090 Vienna, Austria.
  • Wolfgang Frühwirt
    Machine Learning Research Group, University of Oxford, Walton Well Road, Oxford OX2 6ED, Oxford, UK.
  • Matthias Samwald
    Center for Medical Statistics, Informatics, and Intelligent Systems, Medical University of Vienna, Spitalgasse 23, 1090, Vienna, Austria. matthias.samwald@meduniwien.ac.at.