Machine learning in practice-Evaluation of clinical value, guidelines

Publication date

2023-11-05

Authors

Juárez-Orozco, Luis Eduardo
Ruijsink, Bram
Yeung, Ming Wai
Benjamins, Jan Walter
van der Harst, PimORCID 0000-0002-2713-686X

Editors

Asselbergs, Folkert W.
Denaxas, Spiros
Oberski, Daniel L.
Moore, Jason H.

Advisors

Supervisors

Document Type

Part of book

Collections

Open Access logo

License

taverne

Abstract

Machine learning research in health care literature has grown at an unprecedented pace. This development has generated a clear disparity between the number of first publications involving machine learning implementations and that of orienting guidelines and recommendation statements to promote quality and report standardization. In turn, this hinders the much-needed evaluation of the clinical value of machine learning studies and applications. This appraisal should constitute a continuous process that allows performance evaluation, facilitates repeatability, leads optimization and boost clinical value while minimizing research waste. The present chapter outlines the need for machine learning frameworks in healthcare research to guide efforts in reporting and evaluating clinical value these novel implementations, and it discusses the emerging recommendations and guidelines in the area.

Keywords

Artificial intelligence, Clinical applications, Evaluation, Guidelines, Machine learning, Standards, Taverne, General Medicine, General Health Professions, General Nursing, General Biochemistry,Genetics and Molecular Biology, General Agricultural and Biological Sciences, General Computer Science

Citation

Juarez-Orozco, L E, Ruijsink, B, Yeung, M W, Benjamins, J W & van der Harst, P 2023, Machine learning in practice-Evaluation of clinical value, guidelines. in F W Asselbergs, S Denaxas, D L Oberski & J H Moore (eds), Clinical Applications of Artificial Intelligence in Real-World Data. 1 edn, Springer, Cham, pp. 247-261. https://doi.org/10.1007/978-3-031-36678-9_16