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Multi RBF-kernel Support Vector Regression for Clinical Cognitive Scores Prediction in Schizophrenia

机译:多种RBF核支持向量回归用于精神分裂症临床认知评分预测

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This article aims to design a regression model to successfully predict clinical scores based on features provided by multimodal magnetic resonance (MR) images. We propose a multimodal MR predictive analysis pipeline with nonlinear support vector regression (SVR). Firstly, feature selection methods are elaborately chosen according to different feature characteristics for each modality. For features extracted from structural MR images and diffusion MR images, Support Vector Machine-Recursive Feature Elimination with Correlation Bias Reduction (SVMRFE+CBR) is applied to select predictive features and eliminate the high infra-correlations exist in the original features. For functional features, sparse coding (SC) considers multiple features' combination for group predictiveness but cost less computation. After feature selection, the single radial bias function (RBF) kernels are calculated based on the modalities' respectively selected features. A multi-RBF kernel is calculated by weighted-sum of single RBF kernels, and the kernel finally serves for the multimodal SVR model. Our proposed framework is tested on an online schizophrenia (SZ) dataset with 171 subjects from two study cohorts using 10-fold cross-validation (CV). The models are trained by the subjects" clinical-related scores in Positive and Negative Syndrome Scale (PANSS) to be able to give the estimated scores as precisely as possible. The experimental results show that our proposed model can successfully predict clinical scores. Further comparative test results show that the proposed multimodal model can improve predictiveness compared with single modal ones, and our choice of feature selection methods plays an important role in the good performance.
机译:本文旨在设计一种回归模型,以基于多峰磁共振(MR)图像提供的功能成功预测临床评分。我们提出了具有非线性支持向量回归(SVR)的多模式MR预测分析管道。首先,针对每个模态,根据不同的特征特征精心选择特征选择方法。对于从结构MR图像和扩散MR图像中提取的特征,应用带有相关偏差减少的支持向量机递归特征消除(SVMRFE + CBR)来选择预测特征,并消除原始特征中存在的高次相关性。对于功能特征,稀疏编码(SC)考虑将多个特征的组合用于组预测,但计算成本较低。选择特征后,将根据模态分别选择的特征来计算单个径向偏差函数(RBF)内核。通过单个RBF内核的加权和来计算多RBF内核,该内核最终用于多模式SVR模型。我们提出的框架在在线精神分裂症(SZ)数据集上进行了测试,该数据集使用10倍交叉验证(CV)对来自两个研究队列的171名受试者进行了测试。该模型通过受试者在正负综合症量表(PANSS)中的临床相关评分来训练,从而能够尽可能准确地给出估计的评分。实验结果表明,我们提出的模型可以成功预测临床评分。测试结果表明,与单模态模型相比,所提出的多模态模型可以提高预测性,并且我们选择的特征选择方法对于良好的性能起着重要作用。

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