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Multi-Modal Multi-Task Learning for Joint Prediction of Clinical Scores in Alzheimer's Disease

机译:阿尔茨海默病临床分数联合预测的多模态多任务学习

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摘要

One recent interest in computer-aided diagnosis of neurological diseases is to predict the clinical scores from brain images. Most existing methods usually estimate multiple clinical variables separately, without considering the useful correlation information among them. On the other hand, nearly all methods use only one modality of data (mostly structural MRI) for regression, and thus ignore the complementary information among different modalities. To address these issues, in this paper, we present a general methodology, namely Multi-Modal Multi-Task (M3T) learning, to jointly predict multiple variables from multi-modal data. Our method contains three major subsequent steps: (1) a multi-task feature selection which selects the common subset of relevant features for the related multiple clinical variables from each modality; (2) a kernel-based multimodal data fusion which fuses the above-selected features from all modalities; (3) a support vector regression which predicts multiple clinical variables based on the previously learnt mixed kernel. Experimental results on ADNI dataset with both imaging modalities (MRI and PET) and biological modality (CSF) validate the efficacy of the proposed M3T learning method.
机译:最近对电子疾病的计算机辅助诊断的兴趣是预测脑图像的临床评分。大多数现有方法通常分别估计多个临床变量,而不考虑它们之间的有用相关信息。另一方面,几乎所有方法都仅使用一个数据(主要是结构MRI)的一种模型进行回归,因此忽略不同模式之间的互补信息。为了解决这些问题,在本文中,我们介绍了一般方法,即多模态多任务(M3T)学习,共同预测来自多模态数据的多个变量。我们的方法包含三个主要的后续步骤:(1)一个多任务特征选择,它选择来自每个模态的相关多个临床变量的相关功能的常见子集; (2)基于内核的多模式数据融合,其融合了来自所有方式的上述功能; (3)基于先前学习的混合内核预测多个临床变量的支持向量回归。 ADNI数据集与成像模态(MRI和PET)和生物模态(CSF)的实验结果验证了所提出的M3T学习方法的功效。

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