Six SIGMA evaluation of 17 biochemistry parameters using bias calculated from internal quality control and external quality assurance data.

Tülay Çevlik, Goncagül Haklar
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Abstract

Background: Six Sigma is a popular quality management system that enables continuous monitoring and improvement of analytical performance in the clinical laboratory. We aimed to calculate sigma metrics and quality goal index (QGI) for 17 biochemical analytes and compare the use of bias from internal quality control (IQC) and external quality assurance (EQA) data in the calculation of sigma metrics.

Methods: This retrospective study was conducted in Marmara University Pendik E&R Hospital Biochemistry Laboratory. Sigma metrics calculation was performed as (TEa-bias)/CV). CV was calculated from IQC data from June 2018 - February 2019. EQA bias was calculated as the mean of % deviation from the peer group means in the last seven surveys, and IQC bias was calculated as (laboratory control result mean-manufacturer control mean)/ manufacturer control mean) x100. In parameters where sigma metrics were <5; QGI=bias/1.5 CV) score of <0.8 indicated imprecision, >1.2 pointed inaccuracy, and 0.8-1.2 showed both imprecision and inaccuracy.

Results: Creatine kinase (both levels), iron and magnesium (pathologic levels) showed an ideal performance with ≥6 sigma level for both bias determinations. Eight of the 17 parameters had different sigma levels when we compared sigma values calculated from EQA and IQC derived bias% while the rest were grouped at the same levels.

Conclusions: Sigma metrics is a good quality tool to assess a laboratory's analytical performance and facilitate the comparison of the assay performances in the same manner across multiple systems. However, we might need to design a tight internal quality control protocol for analytes showing poor assay performance.

利用内部质量控制和外部质量保证数据计算出的偏差,对 17 个生化参数进行六标法评估。
背景:六西格玛是一种流行的质量管理系统,可持续监控和改进临床实验室的分析性能。我们旨在计算 17 种生化分析物的西格玛指标和质量目标指数(QGI),并比较内部质量控制(IQC)和外部质量保证(EQA)数据在计算西格玛指标时的偏差使用情况:这项回顾性研究在马尔马拉大学 Pendik E&R 医院生化实验室进行。西格玛指标的计算方法为 (TEa-bias)/CV) 。CV 根据 2018 年 6 月至 2019 年 2 月的 IQC 数据计算。EQA 偏差按最近七次调查中与同行组平均值偏差的百分比平均值计算,IQC 偏差按(实验室对照结果平均值-制造商对照平均值)/制造商对照平均值)x100 计算。在西格玛指标为 1.2 的参数中,不准确度为 0.8-1.2,不精确度和不准确度均为 0.8-1.2:结果:肌酸激酶(两个水平)、铁和镁(病理水平)的性能理想,两个偏差测定的西格玛水平均≥6。当我们比较根据 EQA 和 IQC 得出的偏倚率计算的西格玛值时,17 个参数中有 8 个参数的西格玛值不同,而其余参数的西格玛值相同:西格玛指标是评估实验室分析性能的良好质量工具,有助于以相同的方式比较多个系统的检测性能。不过,我们可能需要针对检测性能不佳的分析物设计一套严格的内部质量控制方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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