测量中的不确定性:回顾使用microsoftexcel进行蒙特卡罗模拟,通过函数关系计算不确定性,包括经验导出常数中的不确定性。

Q1 Biochemistry, Genetics and Molecular Biology
Clinical Biochemist Reviews Pub Date : 2014-02-01
Ian Farrance, Robert Frenkel
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引用次数: 0

摘要

《测量不确定度表达指南》(通常称为《测量不确定度表达指南》)提供了评估测量不确定度的基本框架。然而,GUM并不总是提供适合医学实验室应用的明确可识别的程序,特别是当使用内部质量控制(IQC)来获得大多数不确定度估计时。GUM建模方法的许多程序都需要高级的数学技能,但蒙特卡罗模拟(MCS)可以作为许多医学实验室应用的替代方法。特别是,确定函数关系的输入数量中的不确定性如何传播到输出的计算可以使用现成的电子表格(如Microsoft Excel)来完成。MCS程序使用算法生成的伪随机数,然后强制遵循规定的概率分布。当IQC数据提供不确定性估计时,通常认为正态分布(高斯分布)是合适的,但MCS绝不仅限于这种特殊情况。在用随机数模拟输入变化的情况下,函数关系以一种提供其概率分布的方式提供了输出中相应的变化。因此,MCS程序提供了输出不确定性估计,而不需要与GUM建模相关的微分方程。本文的目的是演示如何轻松地使用Microsoft Excel(或类似的电子表格)为通过函数关系派生的度量提供不确定性估计。此外,我们还考虑了相对常见的情况,即经验推导公式包含一个或多个“常数”,每个“常数”都有一个经验推导的数值。这种经验推导的“常数”也必须具有相关的不确定性,这些不确定性通过函数关系传播,并有助于测量的综合标准不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Uncertainty in measurement: a review of monte carlo simulation using microsoft excel for the calculation of uncertainties through functional relationships, including uncertainties in empirically derived constants.

Uncertainty in measurement: a review of monte carlo simulation using microsoft excel for the calculation of uncertainties through functional relationships, including uncertainties in empirically derived constants.

Uncertainty in measurement: a review of monte carlo simulation using microsoft excel for the calculation of uncertainties through functional relationships, including uncertainties in empirically derived constants.

Uncertainty in measurement: a review of monte carlo simulation using microsoft excel for the calculation of uncertainties through functional relationships, including uncertainties in empirically derived constants.

The Guide to the Expression of Uncertainty in Measurement (usually referred to as the GUM) provides the basic framework for evaluating uncertainty in measurement. The GUM however does not always provide clearly identifiable procedures suitable for medical laboratory applications, particularly when internal quality control (IQC) is used to derive most of the uncertainty estimates. The GUM modelling approach requires advanced mathematical skills for many of its procedures, but Monte Carlo simulation (MCS) can be used as an alternative for many medical laboratory applications. In particular, calculations for determining how uncertainties in the input quantities to a functional relationship propagate through to the output can be accomplished using a readily available spreadsheet such as Microsoft Excel. The MCS procedure uses algorithmically generated pseudo-random numbers which are then forced to follow a prescribed probability distribution. When IQC data provide the uncertainty estimates the normal (Gaussian) distribution is generally considered appropriate, but MCS is by no means restricted to this particular case. With input variations simulated by random numbers, the functional relationship then provides the corresponding variations in the output in a manner which also provides its probability distribution. The MCS procedure thus provides output uncertainty estimates without the need for the differential equations associated with GUM modelling. The aim of this article is to demonstrate the ease with which Microsoft Excel (or a similar spreadsheet) can be used to provide an uncertainty estimate for measurands derived through a functional relationship. In addition, we also consider the relatively common situation where an empirically derived formula includes one or more 'constants', each of which has an empirically derived numerical value. Such empirically derived 'constants' must also have associated uncertainties which propagate through the functional relationship and contribute to the combined standard uncertainty of the measurand.

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来源期刊
Clinical Biochemist Reviews
Clinical Biochemist Reviews Biochemistry, Genetics and Molecular Biology-Clinical Biochemistry
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