Cheng Bo, Liu Mingxia, Suk Heung-Il, Shen Dinggang, Zhang Daoqiang
College of Computer Science and Technology, Nanjing University of Aeronautics and Astronautics, Nanjing, 210016, China.
Department of Radiology and BRIC, University of North Carolina, Chapel Hill, NC, 27599, USA.
Brain Imaging Behav. 2015 Dec;9(4):913-26. doi: 10.1007/s11682-015-9356-x.
As the early stage of Alzheimer's disease (AD), mild cognitive impairment (MCI) has high chance to convert to AD. Effective prediction of such conversion from MCI to AD is of great importance for early diagnosis of AD and also for evaluating AD risk pre-symptomatically. Unlike most previous methods that used only the samples from a target domain to train a classifier, in this paper, we propose a novel multimodal manifold-regularized transfer learning (M2TL) method that jointly utilizes samples from another domain (e.g., AD vs. normal controls (NC)) as well as unlabeled samples to boost the performance of the MCI conversion prediction. Specifically, the proposed M2TL method includes two key components. The first one is a kernel-based maximum mean discrepancy criterion, which helps eliminate the potential negative effect induced by the distributional difference between the auxiliary domain (i.e., AD and NC) and the target domain (i.e., MCI converters (MCI-C) and MCI non-converters (MCI-NC)). The second one is a semi-supervised multimodal manifold-regularized least squares classification method, where the target-domain samples, the auxiliary-domain samples, and the unlabeled samples can be jointly used for training our classifier. Furthermore, with the integration of a group sparsity constraint into our objective function, the proposed M2TL has a capability of selecting the informative samples to build a robust classifier. Experimental results on the Alzheimer's Disease Neuroimaging Initiative (ADNI) database validate the effectiveness of the proposed method by significantly improving the classification accuracy of 80.1 % for MCI conversion prediction, and also outperforming the state-of-the-art methods.
作为阿尔茨海默病(AD)的早期阶段,轻度认知障碍(MCI)有很高的几率转变为AD。有效预测这种从MCI到AD的转变对于AD的早期诊断以及在症状出现前评估AD风险非常重要。与大多数以前仅使用目标域样本训练分类器的方法不同,在本文中,我们提出了一种新颖的多模态流形正则化迁移学习(M2TL)方法,该方法联合利用来自另一个域(例如,AD与正常对照(NC))的样本以及未标记样本,以提高MCI转变预测的性能。具体而言,所提出的M2TL方法包括两个关键组件。第一个是基于核的最大均值差异准则,它有助于消除辅助域(即AD和NC)与目标域(即MCI转变者(MCI-C)和MCI非转变者(MCI-NC))之间分布差异引起的潜在负面影响。第二个是半监督多模态流形正则化最小二乘分类方法,其中目标域样本、辅助域样本和未标记样本可联合用于训练我们的分类器。此外,通过将组稀疏约束集成到我们的目标函数中,所提出的M2TL具有选择信息性样本以构建稳健分类器的能力。阿尔茨海默病神经成像计划(ADNI)数据库上的实验结果通过显著提高MCI转变预测的分类准确率至80.1%,验证了所提出方法的有效性,并且还优于现有最先进的方法。