回归建模对评估和统一用于猫科动物血浆生化检验的护理点分析仪和商业实验室分析仪的影响

IF 1.2 4区 农林科学 Q3 VETERINARY SCIENCES
Randolph M. Baral, Bente Flatland, Susan M. Jaensch, Douglas A. Hayward, Kathleen P. Freeman
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引用次数: 0

摘要

背景回归描述了两台分析仪检测结果之间的关系,生成的方程可用于统一检测结果。最终用户无法校准床旁(POC)分析仪,因此回归法提供了一个计算协调的机会。我们的目的是利用三种回归技术来描述 POC 和商用实验室分析仪(CL)上多种生化分析物结果之间的关系,并利用回归方程来协调 POC 和 CL 的结果。统一结果按照公认的质量目标进行评估。我们使用统一的结果来评估回归技术。方法在对分析仪的不精密度进行评估后,用一个数据集对配对临床样本进行评估,以计算回归参数,并将其应用于第二个数据集。采用了三种回归技术,每种技术都用于协调 POC 结果和 CL 结果。结果所有回归技术都可用于协调大多数分析物,使 95% 的结果符合 ASVCP TEa 准则。结论回归法是协调 POC 和 CL 分析仪的一种方法。需要进一步开展工作,评估可以可靠使用的样本数量,并评估可能存在的物种差异。当相关性较差时,没有一种回归技术能可靠地描述方法之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Impact of regression modeling on the assessment and harmonization of a point-of-care analyzer and commercial laboratory analyzer for feline plasma biochemistry testing

Impact of regression modeling on the assessment and harmonization of a point-of-care analyzer and commercial laboratory analyzer for feline plasma biochemistry testing

Background

Regression describes the relationship of results from two analyzers, and the generated equation can be used to harmonize results. Point-of-care (POC) analyzers cannot be calibrated by the end user, so regression offers an opportunity for calculated harmonization. Harmonization (uniformity) of laboratory results facilitates the use of common reference intervals and medical decision thresholds.

Objective

Our aims were to characterize the relationship of results for multiple biochemistry analytes on a POC and a commercial laboratory analyzer (CL) with three regression techniques and to use regression equations to harmonize the POC results with those of the CL. Harmonized results were assessed by recognized quality goals. We used harmonized results to assess the regression techniques.

Methods

After analyzer imprecision assessments, paired clinical samples were assessed with one dataset to calculate regression parameters that were applied to a second dataset. Three regression techniques were performed, and each was used to harmonize the POC results with those from the CL. POC results were assessed for bias and the number of results reaching quality goals before and after harmonization.

Results

All regression techniques could be used to harmonize most analytes so that 95% of results were within ASVCP TEa guidelines. Harmonization could be further improved with alternate regression techniques or exclusions.

Conclusions

Regression offers a means to harmonize POC and CL analyzers. Further work is needed to assess how few samples can reliably be used and to assess likely species differences. No regression technique reliably describes the relationship between methods when correlation is poor.

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来源期刊
Veterinary clinical pathology
Veterinary clinical pathology 农林科学-兽医学
CiteScore
1.70
自引率
16.70%
发文量
133
审稿时长
18-36 weeks
期刊介绍: Veterinary Clinical Pathology is the official journal of the American Society for Veterinary Clinical Pathology (ASVCP) and the European Society of Veterinary Clinical Pathology (ESVCP). The journal''s mission is to provide an international forum for communication and discussion of scientific investigations and new developments that advance the art and science of laboratory diagnosis in animals. Veterinary Clinical Pathology welcomes original experimental research and clinical contributions involving domestic, laboratory, avian, and wildlife species in the areas of hematology, hemostasis, immunopathology, clinical chemistry, cytopathology, surgical pathology, toxicology, endocrinology, laboratory and analytical techniques, instrumentation, quality assurance, and clinical pathology education.
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