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帕金森病静息脑活动的频率特异性变化:一种机器学习方法。

Frequency-Specific Changes of Resting Brain Activity in Parkinson's Disease: A Machine Learning Approach.

作者信息

Tian Zhi-Yao, Qian Long, Fang Lei, Peng Xue-Hua, Zhu Xiao-Hu, Wu Min, Wang Wen-Zhi, Zhang Wen-Han, Zhu Bai-Qi, Wan Miao, Hu Xin, Shao Jianbo

机构信息

Medical Imaging Center of Wuhan Children's Hospital, Wuhan Maternal and Child Healthcare Hospital, Tongji Medical College, Huazhong University of Science & Technology, 430000 Wuhan, Hubei, China.

MRI Research, GE Healthcare, Beijing 10076, China.

出版信息

Neuroscience. 2020 Jun 1;436:170-183. doi: 10.1016/j.neuroscience.2020.01.049. Epub 2020 Feb 12.

Abstract

The application of resting state functional MRI (RS-fMRI) in Parkinson's disease (PD) was widely performed using standard statistical tests, however, the machine learning (ML) approach has not yet been investigated in PD using RS-fMRI. In current study, we utilized the mean regional amplitude values as the features in patients with PD (n = 72) and in healthy controls (HC, n = 89). The t-test and linear support vector machine were employed to select the features and make prediction, respectively. Three frequency bins (Slow-5: 0.0107-0.0286 Hz; Slow-4: 0.0286-0.0821 Hz; conventional: 0.01-0.08 Hz) were analyzed. Our results showed that the Slow-4 may provide important information than Slow-5 in PD, and it had almost identical classification performance compared with the Combined (Slow-5 and Slow-4) and conventional frequency bands. Similar with previous neuroimaging studies in PD, the discriminative regions were mainly included the disrupted motor system, aberrant visual cortex, dysfunction of paralimbic/limbic and basal ganglia networks. The lateral parietal lobe, such as right inferior parietal lobe (IPL) and supramarginal gyrus (SMG), was detected as the discriminative features exclusively in Slow-4. Our findings, at the first time, indicated that the ML approach is a promising choice for detecting abnormal regions in PD, and a multi-frequency scheme would provide us more specific information.

摘要

静息态功能磁共振成像(RS-fMRI)在帕金森病(PD)中的应用大多采用标准统计测试,然而,尚未有研究在帕金森病中使用RS-fMRI采用机器学习(ML)方法。在本研究中,我们将平均区域振幅值作为特征应用于帕金森病患者(n = 72)和健康对照者(HC,n = 89)。分别采用t检验和线性支持向量机来选择特征并进行预测。分析了三个频率区间(慢5:0.0107 - 0.0286Hz;慢4:0.0286 - 0.0821Hz;传统:0.01 - 0.08Hz)。我们的结果表明,在帕金森病中,慢4可能比慢5提供更重要的信息,并且与联合(慢5和慢4)及传统频段相比,其分类性能几乎相同。与先前关于帕金森病的神经影像学研究相似,鉴别区域主要包括受损的运动系统、异常的视觉皮层、边缘旁/边缘和基底神经节网络功能障碍。外侧顶叶,如右侧顶下小叶(IPL)和缘上回(SMG),仅在慢4中被检测为鉴别特征。我们的研究结果首次表明,机器学习方法是检测帕金森病异常区域的一个有前景的选择,并且多频率方案将为我们提供更具体的信息。

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