Sorting multiple classes in multi-dimensional ROC analysis: Parametric and nonparametric approaches

Jialiang Li, Yanyu Chow, Weng Kee Wong, Tien Yin Wong

研究成果: Review article同行評審

13 引文 斯高帕斯(Scopus)

摘要

In large-scale data analysis, such as in a microarray study to identify the most differentially expressed genes, diagnostic tests are frequently used to classify and predict subjects into their different categories. Frequently, these categories do not have an intrinsic natural order even though the quantitative test results have a relative order. As identifying the correct order for a proper definition of accuracy measures is important for a high-dimensional receiver operating characteristic (ROC) analysis, we propose rigorous and automated approaches to sort out the multiple categories using simple summary statistics such as means and relative effects. We discuss the hypervolume under the ROC manifold (HUM), its dependence on the order of the test results and the minimum acceptable HUM values in a general multi-category classification problem. Using a leukemia data set and a liver cancer data set, we show how our approaches provide accurate screening results when we have a large number of tests.

原文English
頁(從 - 到)1-8
頁數8
期刊Biomarkers
19
發行號1
DOIs
出版狀態Published - 2014 2月

All Science Journal Classification (ASJC) codes

  • 生物化學
  • 臨床生物化學
  • 健康、毒理學和誘變

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