Precision quality control: A dynamic model for risk-based analysis of analytical quality

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Abstract

Objectives: There is continuing pressure to improve the cost effectiveness of quality control (QC) for clinical laboratory testing. Risk-based approaches are promising but recent research has uncovered problems in some common methods. There is a need for improvements in risk-based methods for quality control. Methods: We provide an overview of a dynamic model for assay behavior. We demonstrate the practical application of the model using simulation and compare the performance of simple Shewhart QC monitoring against Westgard rules. We also demonstrate the utility of trade-off curves for analysis of QC performance. Results: Westgard rules outperform simple Shewhart control over a narrow range of the trade-off curve of false-positive and false negative risk. The risk trade-off can be visualized in terms of risk, risk vs. cost, or in terms of cost. Risk trade-off curves can be "smoothed"by log transformation. Conclusions: Dynamic risk-models may provide advantages relative to static models for risk-based QC analysis.

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Schmidt, R. L., Moore, R. A., Walker, B. S., & Rudolf, J. W. (2023). Precision quality control: A dynamic model for risk-based analysis of analytical quality. Clinical Chemistry and Laboratory Medicine, 61(4), 679–687. https://doi.org/10.1515/cclm-2022-1094

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