用深度学习早期诊断阿尔茨海默病

Siqi Liu, Sidong Liu, Weidong (Tom) Cai, Sonia Pujol, R. Kikinis, D. Feng
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引用次数: 405

摘要

阿尔茨海默病(AD)的准确诊断在患者护理中具有重要作用,特别是在早期,因为对病情严重程度和进展风险的认识可以使患者在形成不可逆转的脑损伤之前采取预防措施。虽然近年来已有许多研究将机器学习方法应用于AD的计算机辅助诊断(CAD),但大多数现有研究都存在诊断性能的瓶颈,这主要是由于所选择的学习模型存在先天局限性。在这项研究中,我们设计了一个深度学习架构,它包含堆叠的自编码器和一个softmax输出层,以克服瓶颈,帮助AD及其前症阶段轻度认知障碍(MCI)的诊断。与以前的工作流程相比,我们的方法能够在一个设置中分析多个类,并且需要较少的标记训练样本和最小的领域先验知识。在我们的实验中,所有诊断组的分类都取得了显着的性能提升。
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Early diagnosis of Alzheimer's disease with deep learning
The accurate diagnosis of Alzheimer's disease (AD) plays a significant role in patient care, especially at the early stage, because the consciousness of the severity and the progression risks allows the patients to take prevention measures before irreversible brain damages are shaped. Although many studies have applied machine learning methods for computer-aided-diagnosis (CAD) of AD recently, a bottleneck of the diagnosis performance was shown in most of the existing researches, mainly due to the congenital limitations of the chosen learning models. In this study, we design a deep learning architecture, which contains stacked auto-encoders and a softmax output layer, to overcome the bottleneck and aid the diagnosis of AD and its prodromal stage, Mild Cognitive Impairment (MCI). Compared to the previous workflows, our method is capable of analyzing multiple classes in one setting, and requires less labeled training samples and minimal domain prior knowledge. A significant performance gain on classification of all diagnosis groups was achieved in our experiments.
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