The Receiver Operational Characteristic for Binary Classification with Multiple Indices and Its Application to the Neuroimaging Study of Alzheimer's Disease

  • Authors:
  • Xia Wu;Juan Li;Napatkamon Ayutyanont;Hillary Protas;William Jagust;Adam Fleisher;Eric Reiman;Li Yao;Kewei Chen

  • Affiliations:
  • Beijing Normal University, Beijing;Beijing Normal University, Beijing;Banner Alzheimer's Institute (BAI) & Banner Good Samaritan PET Center and Arizona Alzheimer's Consortium, Phoenix;Banner Alzheimer's Institute (BAI) & Banner Good Samaritan PET Center and Arizona Alzheimer's Consortium, Phoenix;University of California Berkeley, Berkeley;Banner Alzheimer's Institute (BAI) & Banner Good Samaritan PET Center and Arizona Alzheimer's Consortium, Phoenix;Banner Alzheimer's Institute (BAI) & Banner Good Samaritan PET Center and Arizona Alzheimer's Consortium, Phoenix;Beijing Normal University, Beijing;Banner Alzheimer's Institute (BAI) & Banner Good Samaritan PET Center and Arizona Alzheimer's Consortium, Phoenix

  • Venue:
  • IEEE/ACM Transactions on Computational Biology and Bioinformatics (TCBB)
  • Year:
  • 2013

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Abstract

Given a single index, the receiver operational characteristic (ROC) curve analysis is routinely utilized for characterizing performances in distinguishing two conditions/groups in terms of sensitivity and specificity. Given the availability of multiple data sources (referred to as multi-indices), such as multimodal neuroimaging data sets, cognitive tests, and clinical ratings and genomic data in Alzheimer's disease (AD) studies, the single-index-based ROC underutilizes all available information. For a long time, a number of algorithmic/analytic approaches combining multiple indices have been widely used to simultaneously incorporate multiple sources. In this study, we propose an alternative for combining multiple indices using logical operations, such as "AND,” "OR,” and "at least $(n)$” (where $(n)$ is an integer), to construct multivariate ROC (multiV-ROC) and characterize the sensitivity and specificity statistically associated with the use of multiple indices. With and without the "leave-one-out” cross-validation, we used two data sets from AD studies to showcase the potentially increased sensitivity/specificity of the multiV-ROC in comparison to the single-index ROC and linear discriminant analysis (an analytic way of combining multi-indices). We conclude that, for the data sets we investigated, the proposed multiV-ROC approach is capable of providing a natural and practical alternative with improved classification accuracy as compared to univariate ROC and linear discriminant analysis.