LGQMFeb 1, 2023

Using Machine Learning to Develop Smart Reflex Testing Protocols

Harvard
arXiv:2302.00794v11 citationsh-index: 27
Originality Incremental advance
AI Analysis

This work addresses the need for more effective diagnostic test ordering in clinical practice, though it is incremental as it builds on existing reflex testing concepts with a new method.

The authors tackled the problem of limited reflex testing protocols in clinical laboratories by developing a machine learning model to predict ferritin test ordering, showing it performed moderately well and may improve test ordering compared to traditional rule-based approaches.

Objective: Reflex testing protocols allow clinical laboratories to perform second line diagnostic tests on existing specimens based on the results of initially ordered tests. Reflex testing can support optimal clinical laboratory test ordering and diagnosis. In current clinical practice, reflex testing typically relies on simple "if-then" rules; however, this limits their scope since most test ordering decisions involve more complexity than a simple rule will allow. Here, using the analyte ferritin as an example, we propose an alternative machine learning-based approach to "smart" reflex testing with a wider scope and greater impact than traditional rule-based approaches. Methods: Using patient data, we developed a machine learning model to predict whether a patient getting CBC testing will also have ferritin testing ordered, consider applications of this model to "smart" reflex testing, and evaluate the model by comparing its performance to possible rule-based approaches. Results: Our underlying machine learning models performed moderately well in predicting ferritin test ordering and demonstrated greater suitability to reflex testing than rule-based approaches. Using chart review, we demonstrate that our model may improve ferritin test ordering. Finally, as a secondary goal, we demonstrate that ferritin test results are missing not at random (MNAR), a finding with implications for unbiased imputation of missing test results. Conclusions: Machine learning may provide a foundation for new types of reflex testing with enhanced benefits for clinical diagnosis and laboratory utilization management.

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