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报告带有(不)确定性的结果。

Reporting results with (Un)certainty.

作者信息

Moore A Russell, Freeman Kathleen

机构信息

Department of Microbiology, Immunology, and Pathology, College of Veterinary Medicine and Biomedical Science, Colorado State University, Fort Collins, Colorado.

Synlabs, TDDS, The Innovation Centre, University of Exeter, Exeter, UK.

出版信息

Vet Clin Pathol. 2019 Jun;48(2):259-269. doi: 10.1111/vcp.12735. Epub 2019 Jun 13.

Abstract

BACKGROUND

A degree of uncertainty occurs with every measured laboratory result due to both analytical and biological variation. The tools of Total Observed error (TE ) and dispersion based on biological variation have helped veterinary labs quantify the causes of variation that lead to measurement uncertainty (MU). International organizations recommend that the amount of MU in veterinary laboratory results be identified and communicated. The expanded measurement uncertainty (EMU), dispersion, and reporting interval adjustment have been recommended as tools to allow communication of MU to laboratory data users but are not commonly discussed in the veterinary literature.

OBJECTIVE

Using the vocabulary of Total Observed error and biological variation and examples from veterinary medicine, a review of the theory and application of the EMU, dispersion, and the methods for deriving an appropriate reporting interval recommended by Hawkins and Badrick, is presented.

CONCLUSIONS

By addressing the way that MU is communicated to users of laboratory results, the laboratory enables users to better understand the potential uncertainty associated with reported results, helps to prevent over and under-interpretation of data, and improves diagnostic accuracy and patient care.

摘要

背景

由于分析和生物学变异,每个实验室测量结果都会存在一定程度的不确定性。总观察误差(TE)工具以及基于生物学变异的离散度有助于兽医实验室量化导致测量不确定度(MU)的变异原因。国际组织建议识别并传达兽医实验室结果中的MU量。扩展测量不确定度(EMU)、离散度和报告区间调整已被推荐为向实验室数据用户传达MU的工具,但在兽医文献中并不常被讨论。

目的

运用总观察误差和生物学变异的术语,并结合兽医学实例,对EMU、离散度的理论与应用,以及霍金斯和巴德里克推荐的推导合适报告区间的方法进行综述。

结论

通过解决向实验室结果用户传达MU的方式问题,实验室能让用户更好地理解与报告结果相关的潜在不确定性,有助于防止对数据的过度解读和解读不足,并提高诊断准确性和患者护理水平。

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