Suppr超能文献

利用磁共振成像早期检测阿尔茨海默病:一种结合卷积神经网络和集成学习的新方法

Early Detection of Alzheimer's Disease Using Magnetic Resonance Imaging: A Novel Approach Combining Convolutional Neural Networks and Ensemble Learning.

作者信息

Pan Dan, Zeng An, Jia Longfei, Huang Yin, Frizzell Tory, Song Xiaowei

机构信息

School of Computers, Guangdong University of Technology, Guangzhou, China.

Guangdong Key Laboratory of Big Data Analysis and Processing, Guangzhou, China.

出版信息

Front Neurosci. 2020 May 13;14:259. doi: 10.3389/fnins.2020.00259. eCollection 2020.

Abstract

Early detection is critical for effective management of Alzheimer's disease (AD) and screening for mild cognitive impairment (MCI) is common practice. Among several deep-learning techniques that have been applied to assessing structural brain changes on magnetic resonance imaging (MRI), convolutional neural network (CNN) has gained popularity due to its superb efficiency in automated feature learning with the use of a variety of multilayer perceptrons. Meanwhile, ensemble learning (EL) has shown to be beneficial in the robustness of learning-system performance via integrating multiple models. Here, we proposed a classifier ensemble developed by combining CNN and EL, i.e., the CNN-EL approach, to identify subjects with MCI or AD using MRI: i.e., classification between (1) AD and healthy cognition (HC), (2) MCIc (MCI patients who will convert to AD) and HC, and (3) MCIc and MCInc (MCI patients who will not convert to AD). For each binary classification task, a large number of CNN models were trained applying a set of sagittal, coronal, or transverse MRI slices; these CNN models were then integrated into a single ensemble. Performance of the ensemble was evaluated using stratified fivefold cross-validation method for 10 times. The number of the intersection points determined by the most discriminable slices separating two classes in a binary classification task among the sagittal, coronal, and transverse slice sets, transformed into the standard Montreal Neurological Institute (MNI) space, acted as an indicator to assess the ability of a brain region in which the points were located to classify AD. Thus, the brain regions with most intersection points were considered as those mostly contributing to the early diagnosis of AD. The result revealed an accuracy rate of 0.84 ± 0.05, 0.79 ± 0.04, and 0.62 ± 0.06, respectively, for classifying AD vs. HC, MCIc vs. HC, and MCIc vs. MCInc, comparable to previous reports and a 3D deep learning approach (3D-SENet) based on a more state-of-the-art and popular Squeeze-and-Excitation Networks model using channel attention mechanism. Notably, the intersection points accurately located the medial temporal lobe and several other structures of the limbic system, i.e., brain regions known to be struck early in AD. More interestingly, the classifiers disclosed multiple patterned MRI changes in the brain in AD and MCIc, involving these key regions. These results suggest that as a data-driven method, the combined CNN and EL approach can locate the most discriminable brain regions indicated by the trained ensemble model while the generalization ability of the ensemble model was maximized to successfully capture AD-related brain variations early in the disease process; it can also provide new insights into understanding the complex heterogeneity of whole-brain MRI changes in AD. Further research is needed to examine the clinical implication of the finding, capability of the advocated CNN-EL approach to help understand and evaluate an individual subject's disease status, symptom burden and progress, and the generalizability of the advocated CNN-EL approach to locate the most discriminable brain regions in the detection of other brain disorders such as schizophrenia, autism, and severe depression, in a data-driven way.

摘要

早期检测对于阿尔茨海默病(AD)的有效管理至关重要,而对轻度认知障碍(MCI)进行筛查是常见的做法。在已应用于通过磁共振成像(MRI)评估脑结构变化的多种深度学习技术中,卷积神经网络(CNN)因其在使用各种多层感知器进行自动特征学习方面的卓越效率而受到欢迎。同时,集成学习(EL)已被证明通过整合多个模型对学习系统性能的稳健性有益。在此,我们提出了一种通过结合CNN和EL开发的分类器集成方法,即CNN-EL方法,用于使用MRI识别患有MCI或AD的受试者:即(1)AD与健康认知(HC)之间、(2)MCIc(将转化为AD的MCI患者)与HC之间、以及(3)MCIc与MCInc(不会转化为AD的MCI患者)之间的分类。对于每个二分类任务,使用矢状面、冠状面或横断面MRI切片集训练大量的CNN模型;然后将这些CNN模型集成到一个单一的集成模型中。使用分层五折交叉验证方法对集成模型的性能进行了10次评估。在转化为标准蒙特利尔神经病学研究所(MNI)空间的矢状面、冠状面和横断面切片集中,由二分类任务中分隔两类的最具辨别力的切片所确定的交点数量,用作评估交点所在脑区对AD进行分类的能力的指标。因此,具有最多交点的脑区被认为是对AD早期诊断贡献最大的脑区。结果显示,在对AD与HC、MCIc与HC以及MCIc与MCInc进行分类时,准确率分别为0.84±0.05、0.79±0.04和0.62±0.06,与先前的报告以及基于更先进且流行的使用通道注意力机制的挤压与激发网络模型的三维深度学习方法(3D-SENet)相当。值得注意的是,这些交点准确地定位了内侧颞叶和边缘系统的其他几个结构,即已知在AD早期受影响的脑区。更有趣的是,分类器揭示了AD和MCIc患者大脑中多个有模式的MRI变化,涉及这些关键区域。这些结果表明,作为一种数据驱动的方法,结合CNN和EL的方法可以定位训练后的集成模型所指示的最具辨别力的脑区,同时集成模型的泛化能力被最大化,以在疾病过程早期成功捕捉与AD相关的脑变化;它还可以为理解AD中全脑MRI变化的复杂异质性提供新的见解。需要进一步的研究来检验这一发现的临床意义、所倡导的CNN-EL方法帮助理解和评估个体受试者疾病状态、症状负担和进展的能力,以及所倡导的CNN-EL方法以数据驱动的方式在检测其他脑部疾病如精神分裂症、自闭症和重度抑郁症时定位最具辨别力的脑区的可推广性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/74a8/7238823/e496aa66b76a/fnins-14-00259-g001.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验