首页> 外文期刊>Frontiers in Veterinary Science >Evaluating diagnostic tests with near-perfect specificity: use of a Hui-Walter approach when designing a trial of a DIVA test for bovine Tuberculosis.
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Evaluating diagnostic tests with near-perfect specificity: use of a Hui-Walter approach when designing a trial of a DIVA test for bovine Tuberculosis.

机译:以近乎完美的特异性评估诊断测试:在设计针对牛结核的DIVA测试的试验时,使用Hui-Walter方法。

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Active surveillance of rare infectious diseases requires diagnostic tests to have high specificity, otherwise the false positive results can outnumber the true cases detected, leading to low positive predictive values. Where a positive result can have economic consequences, such as the cull of a bovine Tuberculosis (bTB) positive herd, establishing a high specificity becomes particularly important. When evaluating new diagnostic tests against a ”gold standard” reference test with assumed perfect sensitivity and specificity, calculation of sample sizes are commonly done using a normal approximation to the binomial distribution, although this approach can be misleading. As the expected specificity of the evaluated diagnostic test nears 100%, the errors arising from this approximation are appreciable. Alternatively, it is straightforward to calculate the sample size by using more appropriate confidence intervals, while precisely quantifying the effect of sampling variability using the binomial distribution. However, regardless of the approach, if specificity is high the sample size required becomes large, and the gold standard may be prohibitively costly. An alternative to a gold standard test is to use at least two imperfect, conditionally independent tests, and to analyse the results using a variant of the approach initially proposed by Hui and Walter. We show how this method performs for tests with near-perfect specificity; in particular we show that the sample size required to deliver useful bounds on the precision becomes very large for both approaches. We illustrate these concepts using simulation studies carried out to support the design of a trial of a bTB vaccine and a diagnostic that is able to ’Differentiate Infected and Vaccinated Animals’ (DIVA). Both test characteristics and the efficacy of the bTB vaccine will influence the sample size required for the study. We propose an improved methodology using a two stage approach to evaluating diagnostic tests in low disease prevalence populations. By combining an initial gold standard pilot study with a larger study analysed using a Hui-Walter approach, the sample size required for each study can be reduced and the precision of the specificity estimate improved, since information from both studies is combined.
机译:积极监测罕见的传染病需要诊断测试具有高特异性,否则假阳性结果可能会超过检测到的真实病例,从而导致较低的阳性预测值。在阳性结果可能会产生经济后果的地方,例如牛结核病(bTB)阳性牛群的剔除,建立高度特异性变得尤为重要。在假定具有理想的灵敏度和特异性的情况下,针对“黄金标准”参考测试评估新的诊断测试时,通常使用二项分布的正态近似值来计算样本量,尽管这种方法可能会产生误导。当评估的诊断测试的预期特异性接近100%时,由这种近似引起的误差是可观的。可替代地,通过使用更适当的置信区间来计算样本大小是很简单的,同时使用二项式分布来精确地量化样本变异性的影响。但是,无论采用哪种方法,如果特异性高,则所需的样本量会变大,并且金标准可能会非常昂贵。黄金标准测试的替代方法是至少使用两个不完善的,有条件的独立测试,并使用Hui和Walter最初提出的方法的变体来分析结果。我们展示了这种方法在具有近乎完美的特异性的测试中的性能。尤其是,我们表明,两种方法都需要提供非常大的精度界限,而样本量却变得非常大。我们使用模拟研究来说明这些概念,以支持bTB疫苗试验和能够“区分感染和接种动物”(DIVA)的诊断程序的设计。 bTB疫苗的测试特征和功效都会影响研究所需的样本量。我们提出了一种改进的方法,该方法使用两阶段方法来评估低疾病患病率人群的诊断测试。通过将最初的金标准试验研究与使用Hui-Walter方法进行分析的较大研究相结合,可以减少每项研究所需的样本量,并提高特异性估计的准确性,因为这两项研究的信息相结合。

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