Abstract

Receiver operating characteristic (ROC) analysis is the methodological framework of choice for the assessment of diagnostic markers and classification procedures in general, in both two‐class and multiple‐class classification problems. We focus on the three‐class problem for which inference usually involves formal hypothesis testing using a proxy metric such as the volume under the ROC surface (VUS). In this article, we develop an existing approach from the two‐class ROC framework. We define a hypothesis‐testing procedure that directly compares two ROC surfaces under the assumption of the trinormal model. In the case of the assessment of a single marker, the corresponding ROC surface is compared with the chance plane, that is, to an uninformative marker. A simulation study investigating the proposed tests with existing ones on the basis of the VUS metric follows. Finally, the proposed methodology is applied to a dataset of a panel of pancreatic cancer diagnostic markers. The described testing procedures along with related graphical tools are supported in the corresponding R‐package trinROC, which we have developed for this purpose.

Highlights

  • In the general two‐class diagnostic problem, consider a set of individuals that belongs to one of two diagnostic classes, for example, either to the nondiseased group, denoted by D−, or to the diseased group, D+

  • Based on the reference standard, the receiver operating characteristic (ROC) curve is defined in the unit square as the curve connecting the points of the misclassification probability of a nondiseased individual (1 − specificity) on the x‐axis against the probability of a diseased individual being correctly classified on the y‐axis, for each cut‐off point c, as c varies in the diagnostic marker's measurements support

  • We investigate tests that assess single markers in their deviation from the chance plane in order to evaluate whether a classifier performs significantly better than a random allocation procedure

Read more

Summary

ORIGINAL ARTICLE

Receiver operating characteristic (ROC) analysis is the methodological framework of choice for the assessment of diagnostic markers and classification procedures in general, in both two‐class and multiple‐class classification problems. We focus on the three‐class problem for which inference usually involves formal hypothesis testing using a proxy metric such as the volume under the ROC surface (VUS). We develop an existing approach from the two‐class ROC framework. We define a hypothesis‐testing procedure that directly compares two ROC surfaces under the assumption of the trinormal model. A simulation study investigating the proposed tests with existing ones on the basis of the VUS metric follows. The proposed methodology is applied to a dataset of a panel of pancreatic cancer diagnostic markers. KEYWORDS Box–Cox transformation, Delta method, pancreatic cancer biomarkers, ROC analysis, trinormal ROC model, volume under the ROC surface (VUS)

| INTRODUCTION
The VUS is defined as
Vg US
Wb k
The entries of Cb are given by
Strong crossing
| DISCUSSION
DATA AVAILABILITY STATEMENT
Findings
SUPPORTING INFORMATION
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call