诊断测试性能指标:概述。

Farrokh Habibzadeh
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引用次数: 0

摘要

诊断试验是临床实践的重要手段。为了评估诊断测试的性能,我们通常需要将其结果与金标准测试的结果进行比较。检测灵敏度是指患者检测结果呈阳性的概率;特异性,无病患者的阴性检测结果。然而,这些指标对于寻找逆概率的临床医生都没有用处,即分别具有阳性和阴性检测结果的人存在和不存在疾病的概率,即所谓的阳性和阴性预测值。似然比是临床医生不易理解的其他性能指标。还有另一个指标被提出,看起来对执业医生来说更容易理解——误诊所需的数量。它是为了发现一个误诊(假阳性或假阴性结果)而需要进行检测的人数。对于具有连续结果的测试,有必要设置一个截止点,该截止点的选择会影响测试性能。为了对测试性能指数做出正确的估计,重要的是要使用一个设计合理的研究,并考虑可能损害研究有效性的各个方面,包括金标准的选择和人口研究等。最后,有可能仅仅根据测试结果在某一特定人群中的分布形状来得出测试的表现指数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnostic tests performance indices: an overview.

Diagnostic tests are important means in clinical practice. To assess the performance of a diagnostic test, we commonly need to compare its results to those obtained from a gold standard test. The test sensitivity is the probability of having a positive test in a diseased-patient; the specificity, a negative test result in a disease-free person. However, none of these indices are useful for clinicians who are looking for the inverse probabilities, i.e., the probabilities of the presence and absence of the disease in a person with a positive and negative test result, respectively, the so-called positive and negative predictive values. Likelihood ratios are other performance indices, which are not readily comprehensible to clinicians. There is another index proposed that looks more comprehensible to practicing physicians - the number needed to misdiagnose. It is the number of people who need to be tested in order to find one misdiagnosed (a false positive or a false negative result). For tests with continuous results, it is necessary to set a cut-off point, the choice of which affects the test performance. To arrive at a correct estimation of test performance indices, it is important to use a properly designed study and to consider various aspects that could potentially compromise the validity of the study, including the choice of the gold standard and the population study, among other things. Finally, it may be possible to derive the performance indices of a test solely based on the shape of the distribution of its results in a given group of people.

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