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ENSEMBLE PREDICTION OF LONGITUDINAL SCORES OF ALZHEIMER'S DISEASE BASED ON ?_(2,1)-NORM REGULARIZED CORRENTROPY WITH SPATIAL-TEMPORAL CONSTRAINT

机译:基于α_(2,1) - 具有空间约束的α_(2,1) - _(2,1)的纵向评分纵向评分的集合预测

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This paper presents a novel longitudinal framework for clinical score prediction in Alzheimer's disease (AD) diagnosis. In contrast to the previous approaches that use the data collected at a single time point only for the clinical score prediction, we propose to exploit the imaging data of multiple time points. Furthermore, a spatial-temporal group sparse method is proposed for robust feature selection through imposing a fused smoothness term and a locality-preserving-projection based term as well as integrating correntropy into the framework, which is able to promote the prediction consistency and reduce the adverse effect of noises and outliers. Ensemble learning of support vector regression (SVR) is exploited to predict the AD scores more accurately with the selected features. The proposed approach is extensively evaluated on the Alzheimer's disease neuroimaging initiative (ADNI) dataset. The experiments demonstrate that our proposed approach achieves promising regression accuracy.
机译:本文介绍了阿尔茨海默病(AD)诊断的临床评分预测纵向框架。与使用在仅用于临床评分预测的单个时间点收集的数据的先前方法相比,我们建议利用多个时间点的成像数据。此外,提出了一种用于鲁棒特征选择的空间临时组稀疏方法,通过施加融合的平滑度术语和基于位置保留的术语,以及将控制器集成到框架中,这能够促进预测一致性并减少噪音和异常值的不利影响。用于支持向量回归的集合学习(SVR)被利用以使用所选功能更准确地预测广告分数。在阿尔茨海默病神经影像倡议(ADNI)数据集上广泛评估了所提出的方法。实验表明,我们的拟议方法实现了有希望的回归准确性。

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