Regression-Adjusted Real-Time Quality Control

Author:

Duan Xincen1,Wang Beili1,Zhu Jing1,Zhang Chunyan1,Jiang Wenhai2,Zhou Jiaye1,Shao Wenqi1,Zhao Yin1,Yu Qian1,Lei Luo1,Yiu Kwok Leung3,Chin Kim Thiam3,Pan Baishen1,Guo Wei1

Affiliation:

1. Department of Laboratory Medicine, Zhongshan Hospital, Fudan University

2. IT Center, Zhongshan Hospital, Fudan University

3. Roche Diagnostics, China, Shanghai

Abstract

Abstract Background Patient-based real-time quality control (PBRTQC) has gained increasing attention in the field of clinical laboratory management in recent years. Despite the many upsides that PBRTQC brings to the laboratory management system, it has been questioned for its performance and practical applicability for some analytes. This study introduces an extended method, regression-adjusted real-time quality control (RARTQC), to improve the performance of real-time quality control protocols. Methods In contrast to the PBRTQC, RARTQC has an additional regression adjustment step before using a common statistical process control algorithm, such as the moving average, to decide whether an analytical error exists. We used all patient test results of 4 analytes in 2019 from Zhongshan Hospital, Fudan University, to compare the performance of the 2 frameworks. Three types of analytical error were added in the study to compare the performance of PBRTQC and RARTQC protocols: constant, random, and proportional errors. The false alarm rate and error detection charts were used to assess the protocols. Results The study showed that RARTQC outperformed PBRTQC. RARTQC, compared with the PBRTQC, improved the trimmed average number of patients affected before detection (tANPed) at total allowable error by about 50% for both constant and proportional errors. Conclusions The regression step in the RARTQC framework removes autocorrelation in the test results, allows researchers to add additional variables, and improves data transformation. RARTQC is a powerful framework for real-time quality control research.

Funder

B. Wang, the National Natural Science Foundation of China

Shanghai Science and Technology Commission

National Nature Science Foundation of China

Shanghai Municipal Key Clinical Specialty and Key Developing Disciplines of Shanghai Municipal Commission of Health and Family Planning

Zhongshan Hospital, Fudan University

Publisher

Oxford University Press (OUP)

Subject

Biochemistry, medical,Clinical Biochemistry

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