ROC analyses are considered under a variety of assumptions concerning the distributions of a measurement $X$ in two populations. These include the binormal model as well as nonparametric models where little is assumed about the form of distributions. The methodology is based on a characterization of statistical evidence which is dependent on the specification of prior distributions for the unknown population distributions as well as for the relevant prevalence $w$ of the disease in a given population. In all cases, elicitation algorithms are provided to guide the selection of the priors. Inferences are derived for the AUC as well as the cutoff $c$ used for classification and the associated error characteristics.
翻译:RC分析是在关于两个人口群体中X美元计量值分布情况的各种假设下考虑的,其中包括双正常模型和非参数模型,这些模型很少假定分配形式,该方法基于统计证据的定性,取决于对未知人口分布以及特定人口疾病相关流行程度的先前分配情况的具体说明,在所有情况下,都提供引算算法,指导选择前科,为ACUC得出推论,以及用于分类的截断值和相关的误差特征。