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多项目单变量增量检查法:一种新方法。

The multi-item univariate delta check method: a new approach.

作者信息

Rheem I, Lee K N

机构信息

Department of Clinical Pathology, College of Medicine, Dankook University, Cheonan, Korea.

出版信息

Stud Health Technol Inform. 1998;52 Pt 2:859-63.

Abstract

The delta check methods are methods for detection of random errors in clinical laboratory tests including specimen abnormalities, specimen mix-up, problems in analysis processes, and clerical errors. Methodologically, it is known that the multivariate delta check methods are more superior to the univariate delta check methods. However, due to some problems in reality including technical difficulties, it is hard to put the multivariate delta check methods into practice. Since the univariate delta check methods are methods at hand, there has been a need for an efficient and effective univariate delta check method. In order to meet such a need, we propose "the multi-item univariate delta check (MIUDC) method". By the multi-item univariate delta check (MIUDC) method, we mean a method in which univariate delta checks are performed on multiple items and specimens with the positive univariate delta check in at least k items are put under a detailed investigation. Our research objectives are the determination of an appropriate value of such k and identification of test items deserving of more interest. Through real data and simulation studies, we concluded that an appropriate value of k is 4 because, with k = 4, we can have light checking-out volumes and high efficiency. Also, we identified total cholesterol, albumin, and total protein as items deserving of more interest because the false positive rate associated with them in the MIUDC was zero in a simulation study. We present the MIUDC method as a quality control method that is easy-to-implement and efficient.

摘要

差值核对法是用于检测临床实验室检测中随机误差的方法,包括标本异常、标本混淆、分析过程中的问题以及文书错误。从方法学上讲,已知多变量差值核对法比单变量差值核对法更优越。然而,由于现实中存在一些问题,包括技术困难,多变量差值核对法难以付诸实践。由于单变量差值核对法是现成的方法,因此需要一种高效有效的单变量差值核对法。为了满足这一需求,我们提出了“多项目单变量差值核对(MIUDC)法”。多项目单变量差值核对(MIUDC)法是指对多个项目进行单变量差值核对,并对至少k个项目中出现单变量差值核对阳性的标本进行详细调查的方法。我们的研究目标是确定这样一个合适的k值,并识别出更值得关注的检测项目。通过实际数据和模拟研究,我们得出结论,合适的k值为4,因为当k = 4时,我们可以实现较轻的检查量和较高的效率。此外,我们确定总胆固醇、白蛋白和总蛋白为更值得关注的项目,因为在模拟研究中,MIUDC中与它们相关的假阳性率为零。我们将MIUDC法作为一种易于实施且高效的质量控制方法进行介绍。

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