基于多变量概率的药物肝信号检测。

Donald C Trost
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引用次数: 18

摘要

药物肝效应的临床信号检测是一门非常不精确的科学。普通的临床实验室检查是肝脏变化的主要生物标志物。启发式规则已开发的临床医生诊断肝病和监测这些变化。这些都是基于实验室参考限度,这也是很大程度上的启发式。本文回顾了单变量参考极限的一些统计特征,并展示了如何将它们扩展到多变量参考区域。例如,在单变量方法中,假阳性的概率不能指定,并且随着评估的分析物数量的增加而增加。然而,准确的参考区域需要来自参考人群的非常大的样本。尽管均匀最小方差无偏估计量相对于最大似然估计量可以极大地提高均方误差效率,但它仍然需要成千上万的参考样本来估计20个分析物的95%参考区域,例如95 +/- 1%。给出了椭圆参考区域估计器的构造方法和样本大小的确定方法。小型实验室不可能进行这些计算,除非实施更严格的标准化方法,并跨机构合并数据。拥有电子医疗记录的大型医疗保健系统和大型制药公司单独或合作,如果实施使实验室间结果具有可比性的技术,可以为准确的参考区域产生足够的样本量。退出参考区域,无论是基于人群还是个体化,只能告诉你患者何时从稳定状态改变。患者结果进入的区域和这种变化的动态可能包含相当多的生物学信息。一个例子就是Hy法则。随着新的、昂贵的生物标志物数量的增加,找到更好的方法来使用我们已经收集的数据,使用新的生物标志物进行验证,可能会更具成本效益。数学和计算机可以帮助做到这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multivariate probability-based detection of drug-induced hepatic signals.

Clinical signal detection of drug-induced hepatic effects is a very inexact science. Ordinary clinical laboratory tests are the primary biomarkers for liver changes. Heuristic rules have been developed by clinicians for diagnosing liver disease and monitoring these changes. These are based on laboratory reference limits, which are also largely heuristic. This article reviews some of the statistical characteristics of univariate reference limits and shows how they can and should be extended to multivariate reference regions. For instance, in the univariate approach, the probability of a false positive cannot be specified and grows with increasing numbers of analytes evaluated. However, accurate reference regions require very large samples from reference populations. Although the uniformly minimum variance unbiased estimator can greatly improve the mean-squared-error efficiency relative to a maximum likelihood estimator, it still requires tens of thousands of reference samples to estimate the 95% reference region for 20 analytes to an order of 95 +/- 1%, for example. Methods for constructing the elliptical reference region estimators and for sample size determination are provided. It is not feasible for small laboratories to make these calculations unless more rigorous methods of standardisation can be imposed and data merged across institutions. Large healthcare systems with electronic medical records and large pharmaceutical companies singly or in collaboration could generate sufficient sample sizes for accurate reference regions if techniques to make inter-laboratory results comparable are implemented. Exiting a reference region, whether population-based or individualised, can only tell you when the patient has changed from steady state. The region into which the patient's results enter and dynamics of this change are likely to contain considerable biological information. An example of this is Hy's rule. As the number of new, expensive biomarkers grows, it may be more cost-effective to find better ways to use the data we already collect, using the new biomarkers for validation. Mathematics and computers can help do this.

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