Discriminating Bipolar Disorder From Major Depression Based on SVM-FoBa: Efficient Feature Selection With Multimodal Brain Imaging Data

Nan-Feng Jie, Mao-Hu Zhu, Xiao-Ying Ma, E. Osuch, M. Wammes, J. Théberge, Huan-Dong Li, Yu Zhang, Tianzi Jiang, J. Sui, V. Calhoun
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引用次数: 80

Abstract

Discriminating between bipolar disorder (BD) and major depressive disorder (MDD) is a major clinical challenge due to the absence of known biomarkers; hence a better understanding of their pathophysiology and brain alterations is urgently needed. Given the complexity, feature selection is especially important in neuroimaging applications, however, feature dimension and model understanding present serious challenges. In this study, a novel feature selection approach based on linear support vector machine with a forward-backward search strategy (SVM-FoBa) was developed and applied to structural and resting-state functional magnetic resonance imaging data collected from 21 BD, 25 MDD and 23 healthy controls. Discriminative features were drawn from both data modalities, with which the classification of BD and MDD achieved an accuracy of 92.1% (1000 bootstrap resamples). Weight analysis of the selected features further revealed that the inferior frontal gyrus may characterize a central role in BD-MDD differentiation, in addition to the default mode network and the cerebellum. A modality-wise comparison also suggested that functional information outweighs anatomical by a large margin when classifying the two clinical disorders. This work validated the advantages of multimodal joint analysis and the effectiveness of SVM-FoBa, which has potential for use in identifying possible biomarkers for several mental disorders.
基于SVM-FoBa的双相情感障碍与重度抑郁症鉴别:基于多模态脑成像数据的高效特征选择
由于缺乏已知的生物标志物,区分双相情感障碍(BD)和重度抑郁症(MDD)是一个重大的临床挑战;因此,迫切需要更好地了解它们的病理生理和大脑变化。鉴于复杂性,特征选择在神经成像应用中尤为重要,然而,特征维度和模型理解提出了严峻的挑战。本研究提出了一种基于线性支持向量机的前向向后搜索策略(SVM-FoBa)特征选择方法,并将其应用于21例BD、25例MDD和23例健康对照的结构和静息状态功能磁共振成像数据。从两种数据模式中提取判别特征,其中BD和MDD的分类准确率达到92.1%(1000个bootstrap样本)。对所选特征的权重分析进一步揭示,除了默认模式网络和小脑外,额下回可能在BD-MDD分化中发挥核心作用。一种模式明智的比较也表明,在分类两种临床疾病时,功能信息比解剖信息重要。这项工作验证了多模态联合分析的优势和SVM-FoBa的有效性,该方法有可能用于识别几种精神障碍的可能生物标志物。
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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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