Machine Learning in Laboratory Medicine: Recommendations of the IFCC Working Group

Author:

Master Stephen R12ORCID,Badrick Tony C3,Bietenbeck Andreas4ORCID,Haymond Shannon56

Affiliation:

1. Department of Pathology and Laboratory Medicine, Children’s Hospital of Philadelphia , Philadelphia, PA , United States

2. Perelman School of Medicine, University of Pennsylvania , Philadelphia, PA , United States

3. Royal College of Pathologists of Australasia Quality Assurance Programs , Sydney , Australia

4. MVZ Ärztliche Laboratorien München-Land GmbH , Poing , Germany

5. Ann & Robert H. Lurie Children’s Hospital of Chicago , Chicago, IL , United States

6. Department of Pathology, Feinberg School of Medicine, Northwestern University , Chicago, IL , United States

Abstract

Abstract Background Machine learning (ML) has been applied to an increasing number of predictive problems in laboratory medicine, and published work to date suggests that it has tremendous potential for clinical applications. However, a number of groups have noted the potential pitfalls associated with this work, particularly if certain details of the development and validation pipelines are not carefully controlled. Methods To address these pitfalls and other specific challenges when applying machine learning in a laboratory medicine setting, a working group of the International Federation for Clinical Chemistry and Laboratory Medicine was convened to provide a guidance document for this domain. Results This manuscript represents consensus recommendations for best practices from that committee, with the goal of improving the quality of developed and published ML models designed for use in clinical laboratories. Conclusions The committee believes that implementation of these best practices will improve the quality and reproducibility of machine learning utilized in laboratory medicine. Summary We have provided our consensus assessment of a number of important practices that are required to ensure that valid, reproducible machine learning (ML) models can be applied to address operational and diagnostic questions in the clinical laboratory. These practices span all phases of model development, from problem formulation through predictive implementation. Although it is not possible to exhaustively discuss every potential pitfall in ML workflows, we believe that our current guidelines capture best practices for avoiding the most common and potentially dangerous errors in this important emerging field.

Funder

National

Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Biochemistry (medical),Clinical Biochemistry

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