Using Machine Learning to Predict Laboratory Test Results

Author:

Luo Yuan1,Szolovits Peter1,Dighe Anand S23,Baron Jason M23

Affiliation:

1. Computer Science and Artificial Intelligence Lab, Massachusetts Institute of Technology, Cambridge

2. Department of Pathology, Massachusetts General Hospital, Boston

3. Harvard Medical School, Boston, MA

Abstract

Abstract Objectives While clinical laboratories report most test results as individual numbers, findings, or observations, clinical diagnosis usually relies on the results of multiple tests. Clinical decision support that integrates multiple elements of laboratory data could be highly useful in enhancing laboratory diagnosis. Methods Using the analyte ferritin in a proof of concept, we extracted clinical laboratory data from patient testing and applied a variety of machine-learning algorithms to predict ferritin test results using the results from other tests. We compared predicted with measured results and reviewed selected cases to assess the clinical value of predicted ferritin. Results We show that patient demographics and results of other laboratory tests can discriminate normal from abnormal ferritin results with a high degree of accuracy (area under the curve as high as 0.97, held-out test data). Case review indicated that predicted ferritin results may sometimes better reflect underlying iron status than measured ferritin. Conclusions These findings highlight the substantial informational redundancy present in patient test results and offer a potential foundation for a novel type of clinical decision support aimed at integrating, interpreting, and enhancing the diagnostic value of multianalyte sets of clinical laboratory test results.

Publisher

Oxford University Press (OUP)

Subject

General Medicine

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