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基于海马体异常功能连接和机器学习的阿尔茨海默病分类

Classification of Alzheimer's Disease Based on Abnormal Hippocampal Functional Connectivity and Machine Learning.

作者信息

Zhu Qixiao, Wang Yonghui, Zhuo Chuanjun, Xu Qunxing, Yao Yuan, Liu Zhuyun, Li Yi, Sun Zhao, Wang Jian, Lv Ming, Wu Qiang, Wang Dawei

机构信息

School of Information Science and Engineering, Shandong University, Qingdao, China.

Department of Physical Medicine and Rehabilitation, Qilu Hospital of Shandong University, Jinan, China.

出版信息

Front Aging Neurosci. 2022 Feb 22;14:754334. doi: 10.3389/fnagi.2022.754334. eCollection 2022.

Abstract

OBJECTIVE

Alzheimer's disease (AD) is a neurodegenerative disease characterized by progressive deterioration of memory and cognition. Mild cognitive impairment (MCI) has been implicated as a prodromal phase of AD. Although abnormal functional connectivity (FC) has been demonstrated in AD and MCI, the clinical differentiation of AD, MCI, and normal aging remains difficult, and the distinction between MCI and normal aging is especially problematic. We hypothesized that FC between the hippocampus and other brain structures is altered in AD and MCI, and that measurement of abnormal FC could have diagnostic utility for the classification of different AD stages.

METHODS

Elderly adults aged 60-85 years were assigned to AD, MCI, or normal control (NC) groups based on clinical criteria. Functional magnetic resonance scanning was completed by 119 subjects. Five dimension reduction/classification methods were applied, using hippocampus-derived FC strengths as input features. Classification performance of the five dimensionality reduction methods was compared between AD, MCI, and NC groups.

RESULTS

FCs between the hippocampus and left insula, left thalamus, cerebellum, right lingual gyrus, posterior cingulate cortex, and precuneus were significantly reduced in AD and MCI. Support vector machine learning coupled with sparse principal component analysis demonstrated the best discriminative performance, yielding classification accuracies of 82.02% (AD vs. NC), 81.33% (MCI vs. NC), and 81.08% (AD vs. MCI).

CONCLUSION

Hippocampus-seed-based FCs were significantly different between AD, MCI, and NC groups. FC assessment combined with widely used machine learning methods can improve AD differential diagnosis, and may be especially useful to distinguish MCI from normal aging.

摘要

目的

阿尔茨海默病(AD)是一种以记忆和认知功能进行性衰退为特征的神经退行性疾病。轻度认知障碍(MCI)被认为是AD的前驱阶段。尽管在AD和MCI中已证实存在异常功能连接(FC),但AD、MCI和正常衰老的临床鉴别仍然困难,MCI与正常衰老之间的区分尤其成问题。我们假设AD和MCI患者海马体与其他脑结构之间的FC发生改变,并且测量异常FC对不同AD阶段的分类可能具有诊断价值。

方法

根据临床标准,将60 - 85岁的老年人分为AD组、MCI组或正常对照组(NC)。119名受试者完成了功能磁共振扫描。应用五种降维/分类方法,将源自海马体的FC强度作为输入特征。比较了AD组、MCI组和NC组中五种降维方法的分类性能。

结果

AD组和MCI组中,海马体与左侧岛叶、左侧丘脑、小脑、右侧舌回、后扣带回皮质和楔前叶之间的FC显著降低。支持向量机学习结合稀疏主成分分析表现出最佳的判别性能,AD与NC的分类准确率为82.02%,MCI与NC的分类准确率为81.33%,AD与MCI的分类准确率为81.08%。

结论

AD组、MCI组和NC组之间基于海马体种子点的FC存在显著差异。FC评估结合广泛使用的机器学习方法可改善AD的鉴别诊断,可能对区分MCI与正常衰老特别有用。

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