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基于风险的统计质量控制策略规划:支持临床和实验室标准协会新的C24-Ed4指南的图形工具

Planning Risk-Based Statistical Quality Control Strategies: Graphical Tools to Support the New Clinical and Laboratory Standards Institute C24-Ed4 Guidance.

作者信息

Bayat Hassan, Westgard Sten A, Westgard James O

机构信息

Sina Medical Laboratory, Qaem Shahr, Iran.

Westgard QC, Inc., Madison, WI.

出版信息

J Appl Lab Med. 2017 Sep 1;2(2):211-221. doi: 10.1373/jalm.2017.023192.

Abstract

BACKGROUND

Clinical and Laboratory Standards Institute (CLSI)'s new guideline for statistical quality control (SQC; C24-Ed4) (CLSI C24-Ed4, 2016; Parvin CA, 2017) recommends the implementation of risk-based SQC strategies. Important changes from earlier editions include alignment of principles and concepts with the general patient risk model in CLSI EP23A (CLSI EP23A, 2011) and a recommendation for optimizing the frequency of SQC (number of patients included in a run, or run size) on the basis of the expected number of unreliable final patient results. The guideline outlines a planning process for risk-based SQC strategies and describes 2 applications for examination procedures that provide 9-σ and 4-σ quality. A serious limitation is that there are no practical tools to help laboratories verify the results of these examples or perform their own applications.

METHODS

Power curves that characterize the rejection characteristics of SQC procedures were used to predict the risk of erroneous patient results based on Parvin's MaxE(Nuf) parameter (Clin Chem 2008;54:2049-54). Run size was calculated from MaxE(Nuf) and related to the probability of error detection for the critical systematic error (Pedc).

RESULTS

A plot of run size vs Pedc was prepared to provide a simple nomogram for estimating run size for common single-rule and multirule SQC procedures with Ns of 2 and 4.

CONCLUSIONS

The "traditional" SQC selection process that uses power function graphs to select control rules and the number of control measurements can be extended to determine SQC frequency by use of a run size nomogram. Such practical tools are needed for planning risk-based SQC strategies.

摘要

背景

临床和实验室标准协会(CLSI)关于统计质量控制(SQC;C24-Ed4)的新指南(CLSI C24-Ed4,2016;帕尔文·CA,2017)推荐实施基于风险的SQC策略。与早期版本的重要变化包括使原则和概念与CLSI EP23A(CLSI EP23A,2011)中的一般患者风险模型保持一致,以及建议根据不可靠的最终患者结果的预期数量来优化SQC的频率(一次分析中包含的患者数量,即分析批大小)。该指南概述了基于风险的SQC策略的规划过程,并描述了两种用于检验程序的应用,这些程序可提供9-σ和4-σ质量。一个严重的局限性是,没有实用工具来帮助实验室验证这些示例的结果或执行他们自己的应用。

方法

基于帕尔文的MaxE(Nuf)参数(《临床化学》2008;54:2049-2054),使用表征SQC程序拒收特性的功效曲线来预测错误患者结果的风险。分析批大小由MaxE(Nuf)计算得出,并与关键系统误差的误差检测概率(Pedc)相关。

结果

绘制了分析批大小与Pedc的关系图,以提供一个简单的列线图,用于估计Ns为2和4的常见单规则和多规则SQC程序的分析批大小。

结论

使用功效函数图来选择控制规则和控制测量次数的“传统”SQC选择过程可以扩展,通过使用分析批大小列线图来确定SQC频率。规划基于风险的SQC策略需要这样的实用工具。

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