Receiver operating characteristic (ROC) analysis is one of the most popular approaches for evaluating and comparing the accuracy of medical diagnostic tests. Although various methodologies have been developed for estimating ROC curves and its associated summary indices, there is no consensus on a single framework that can provide consistent statistical inference whilst handling the complexities associated with medical data. Such complexities might include covariates that influence the diagnostic potential of a test, ordinal test data, censored data due to instrument detection limits or correlated biomarkers. We propose a regression model for the transformed test results which exploits the invariance of ROC curves to monotonic transformations and naturally accommodates these features. Our use of maximum likelihood inference guarantees asymptotic efficiency of the resulting estimators and associated confidence intervals. Simulation studies show that the estimates based on transformation models are unbiased and yield coverage at nominal levels. The methodology is applied to a cross-sectional study of metabolic syndrome where we investigate the covariate-specific performance of weight-to-height ratio as a non-invasive diagnostic test. Software implementations for all the methods described in the article are provided in the "tram" R package.
翻译:虽然为估计ROC曲线及其相关的摘要指数制定了各种方法,但对于一个单一框架没有达成共识,在处理与医疗数据有关的复杂情况时,可以提供一致的统计推论,这种复杂性可能包括影响测试的诊断潜力的共变数据、原试验数据、因仪器检测限值或相关生物标志而受审查的数据。我们为将ROC曲线的变异性用于单体变异性转化并自然适应这些特征的变化试验结果提出了一个回归模型。我们使用最大可能性的推断保证作为由此产生的估计值和相关信任间隔的抑制效率。模拟研究表明,基于变异模型的估计数是不带偏见的,在名义上覆盖了产量。该方法用于对代谢综合症的跨部门研究,我们通过该研究将重力至八分之比的共变性表现作为非侵入性诊断性测试。我们用“R”组合中描述的所有方法的软件实施情况在“R”中提供。