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Stability-Weighted Matrix Completion of Incomplete Multi-modal Data for Disease Diagnosis

机译:用于疾病诊断的不完整多模式数据的稳定性加权矩阵完成

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摘要

Effective utilization of heterogeneous multi-modal data for Alzheimer’s Disease (AD) diagnosis and prognosis has always been hampered by incomplete data. One method to deal with this is low-rank matrix completion (LRMC), which simultaneous imputes missing data features and target values of interest. Although LRMC yields reasonable results, it implicitly weights features from all the modalities equally, ignoring the differences in discriminative power of features from different modalities. In this paper, we propose stability-weighted LRMC (swLRMC), an LRMC improvement that weights features and modalities according to their importance and reliability. We introduce a method, called stability weighting, to utilize subsampling techniques and outcomes from a range of hyper-parameters of sparse feature learning to obtain a stable set of weights. Incorporating these weights into LRMC, swLRMC can better account for differences in features and modalities for improving diagnosis. Experimental results confirm that the proposed method outperforms the conventional LRMC, feature-selection based LRMC, and other state-of-the-art methods.
机译:异构数据的有效利用一直以来都被不完整的数据所困扰,这些数据用于阿尔茨海默氏病(AD)的诊断和预后。一种解决此问题的方法是低秩矩阵完成(LRMC),它可以同时估算缺少的数据特征和感兴趣的目标值。尽管LRMC产生了合理的结果,但是它隐式地加权了所有模态中的特征,而忽略了不同模态中的判别能力的差异。在本文中,我们提出了稳定性加权的LRMC(swLRMC),这是对LRMC的改进,根据其重要性和可靠性对特征和模式进行加权。我们引入了一种称为稳定性加权的方法,该方法利用子采样技术和稀疏特征学习的一系列超参数的结果来获得稳定的权重集。将这些权重合并到LRMC中,swLRMC可以更好地说明功能和模式方面的差异以改善诊断。实验结果证实,该方法优于传统的LRMC,基于特征选择的LRMC和其他最新方法。

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