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Conversion and time-to-conversion predictions of mild cognitive impairment using low-rank affinity pursuit denoising and matrix completion

机译:使用低级亲和追求去噪和矩阵完成温和认知障碍的转换和时间转换预测

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In this paper, we aim to predict conversion and time-to-conversion of mild cognitive impairment (MCI) patients using multi-modal neuroimaging data and clinical data, via cross-sectional and longitudinal studies. However, such data are often heterogeneous, high-dimensional, noisy, and incomplete. We thus propose a framework that includes sparse feature selection, low-rank affinity pursuit denoising (LRAD), and low-rank matrix completion (LRMC) in this study. Specifically, we first use sparse linear regressions to remove unrelated features. Then, considering the heterogeneity of the MCI data, which can be assumed as a union of multiple subspaces, we propose to use a low rank subspace method (i.e., LRAD) to denoise the data. Finally, we employ LRMC algorithm with three data fitting terms and one inequality constraint for joint conversion and time-to-conversion predictions. Our framework aims to answer a very important but yet rarely explored question in AD study, i.e., when will the MCI convert to AD? This is different from survival analysis, which provides the probabilities of conversion at different time points that are mainly used for global analysis, while our time-to-conversion prediction is for each individual subject. Evaluations using the ADNI dataset indicate that our method outperforms conventional LRMC and other state-of-the-art methods. Our method achieves a maximal pMCI classification accuracy of 84% and time prediction correlation of 0.665. (C) 2018 Elsevier B.V. All rights reserved.
机译:在本文中,我们的目的是通过横截面和纵向研究预测使用多模态神经影像数据和临床数据的轻度认知障碍(MCI)患者的转换和时间转换。然而,这种数据通常是异质的,高维的,嘈杂和不完整的。因此,我们提出了一个包括稀疏特征选择,低级亲和追求去噪(LRAD)和低级矩阵完成(LRMC)的框架。具体来说,我们首先使用稀疏线性回归来删除不相关的功能。然后,考虑到MCI数据的异质性,可以假设为多个子空间的联合,我们建议使用低秩子空间方法(即,LRAD)来代替数据。最后,我们使用具有三个数据拟合术语的LRMC算法和一个不等式约束,用于联合转换和时间转换预测。我们的框架旨在在广告学习中回答非常重要但又但很少探讨的问题,即,MCI何时会转换为广告?这与生存分析不同,这提供了主要用于全局分析的不同时间点的转换概率,而我们的时间转换预测是每个受试者。使用ADNI DataSet的评估表明我们的方法优于传统的LRMC和其他最先进的方法。我们的方法实现了84%的最大PMCI分类精度和0.665的时间预测相关性。 (c)2018 Elsevier B.v.保留所有权利。

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