Application of Sigma metrics in the quality control strategies of immunology and protein analytes.

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作者:Luo Yanfen, Yan Xingxing, Xiao Qian, Long Yifei, Pu Jieying, Li Qiwei, Cai Yimei, Chen Yushun, Zhang Hongyuan, Chen Cha, Ou Songbang
BACKGROUND: Six Sigma (6σ) is an efficient laboratory management method. We aimed to analyze the performance of immunology and protein analytes in terms of Six Sigma. METHODS: Assays were evaluated for these 10 immunology and protein analytes: Immunoglobulin G (IgG), Immunoglobulin A (IgA), Immunoglobulin M (IgM), Complement 3 (C3), Complement 4 (C4), Prealbumin (PA), Rheumatoid factor (RF), Anti streptolysin O (ASO), C-reactive protein (CRP), and Cystatin C (Cys C). The Sigma values were evaluated based on bias, four different allowable total error (TEa) and coefficient of variation (CV) at QC materials levels 1 and 2 in 2020. Sigma Method Decision Charts were established. Improvement measures of analytes with poor performance were recommended according to the quality goal index (QGI), and appropriate quality control rules were given according to the Sigma values. RESULTS: While using the TEa(NCCL) , 90% analytes had a world-class performance with σ>6, Cys C showed marginal performance with σ<4. While using minimum, desirable, and optimal biological variation of TEa, only three (IgG, IgM, and CRP), one (CRP), and one (CRP) analytes reached 6σ level, respectively. Based on σ(NCCL) that is calculated from TEa(NCCL) , Sigma Method Decision Charts were constructed. For Cys C, five multi-rules (1(3s) /2(2s) /R(4s) /4(1s) /6(X) , N = 6, R = 1, Batch length: 45) were adopted for QC management. The remaining analytes required only one QC rule (1(3s) , N = 2, R = 1, Batch length: 1000). Cys C need to improve precision (QGI = 0.12). CONCLUSIONS: The laboratories should choose appropriate TEa goals and make judicious use of Sigma metrics as a quality improvement tool.

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