Literature DB >> 28504080

Expected p-values in light of an ROC curve analysis applied to optimal multiple testing procedures.

Albert Vexler1, Jihnhee Yu1, Yang Zhao1, Alan D Hutson2, Gregory Gurevich3.   

Abstract

Many statistical studies report p-values for inferential purposes. In several scenarios, the stochastic aspect of p-values is neglected, which may contribute to drawing wrong conclusions in real data experiments. The stochastic nature of p-values makes their use to examine the performance of given testing procedures or associations between investigated factors to be difficult. We turn our focus on the modern statistical literature to address the expected p-value (EPV) as a measure of the performance of decision-making rules. During the course of our study, we prove that the EPV can be considered in the context of receiver operating characteristic (ROC) curve analysis, a well-established biostatistical methodology. The ROC-based framework provides a new and efficient methodology for investigating and constructing statistical decision-making procedures, including: (1) evaluation and visualization of properties of the testing mechanisms, considering, e.g. partial EPVs; (2) developing optimal tests via the minimization of EPVs; (3) creation of novel methods for optimally combining multiple test statistics. We demonstrate that the proposed EPV-based approach allows us to maximize the integrated power of testing algorithms with respect to various significance levels. In an application, we use the proposed method to construct the optimal test and analyze a myocardial infarction disease dataset. We outline the usefulness of the "EPV/ROC" technique for evaluating different decision-making procedures, their constructions and properties with an eye towards practical applications.

Entities:  

Keywords:  AUC; Benjamini–Hochberg procedure; Bonferroni procedure; Bootstrap tilting method; P-value; ROC curve; best combination; confidence region; expected p-value; multiple testing; partial AUC

Mesh:

Substances:

Year:  2017        PMID: 28504080      PMCID: PMC6212326          DOI: 10.1177/0962280217704451

Source DB:  PubMed          Journal:  Stat Methods Med Res        ISSN: 0962-2802            Impact factor:   2.494


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