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Regularized Multi-source Matrix Factorization for Diagnosis of Alzheimer's Disease

机译:正则化多源矩阵分解对阿尔茨海默氏病的诊断

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In many real-world systems with multiple sources of data, data are often missing in a block-wise way. For example, in the diagnosis of Alzheimer's disease, doctors may collect patients data from MRI images, PET images and CSF tests, while some patients may have done the MRI scan and the PET scan only, while other patients may have done the MRI scan and the CSF test only. Despite various data imputation technologies exist, in general, they neglect the correlation among multi-sources of data and thus may lead to sub-optimal performances. In this paper, we propose a model called regularized multi-source matrix factorization (RMSMF) to alleviate this problem. Specifically, to model the correlation among data sources, RMSMF firstly uses non-negative matrix factorization to factorize the observed multi-source data into the product of subject factors and feature factors. In this process, we assume different subjects from the same data source share the same feature factors. Furthermore, similarity constraints are forced on different subject factors by assuming for the same subject, the subject factors are similar among all sources. Moreover, self-paced learning with soft weighting strategy is applied to reduce the negative influence of noise data and to further enhance the performance of RMSMF. We apply our model on the diagnosis of the Alzheimer's disease. Experimental results on the ADNI data set have demonstrated its effectiveness.
机译:在许多具有多个数据源的现实世界系统中,数据经常以块方式丢失。例如,在诊断阿尔茨海默氏病时,医生可能会从MRI图像,PET图像和CSF检查中收集患者数据,而一些患者可能仅进行了MRI扫描和PET扫描,而其他患者可能进行了MRI扫描和仅CSF测试。尽管存在各种数据插补技术,但总的来说,它们忽略了多数据源之间的相关性,因此可能导致次优性能。在本文中,我们提出了一种称为正则化多源矩阵分解(RMSMF)的模型来缓解此问题。具体而言,为建模数据源之间的相关性,RMSMF首先使用非负矩阵分解将观察到的多源数据分解为主题因子和特征因子的乘积。在此过程中,我们假设来自同一数据源的不同主题共享相同的特征因子。此外,通过假设同一主题的主题因素在所有来源中都是相似的,对不同的主题因素施加了相似性约束。此外,采用具有软加权策略的自定步学习可以减少噪声数据的负面影响,并进一步提高RMSMF的性能。我们将我们的模型应用于阿尔茨海默氏病的诊断。在ADNI数据集上的实验结果证明了其有效性。

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