Xiao Pan, Li Qin, Gui Honge, Xu Bintao, Zhao Xiaole, Wang Hongyu, Tao Li, Chen Huiyue, Wang Hansheng, Lv Fajin, Luo Tianyou, Cheng Oumei, Luo Jin, Man Yun, Xiao Zheng, Fang Weidong
Department of Radiology, The First Affiliated Hospital of Chongqing Medical University, No. 1 Youyi Road, Yuzhong District, Chongqing, 400016, China.
Department of Neurology, The First Affiliated Hospital of Chongqing Medical University, Chongqing, China.
Neurol Sci. 2024 Sep;45(9):4323-4334. doi: 10.1007/s10072-024-07472-1. Epub 2024 Mar 25.
Essential tremor (ET) and Parkinson's disease (PD) are the two most prevalent movement disorders, sharing several overlapping tremor clinical features. Although growing evidence pointed out that changes in similar brain network nodes are associated with these two diseases, the brain network topological properties are still not very clear.
The combination of graph theory analysis with machine learning (ML) algorithms provides a promising way to reveal the topological pathogenesis in ET and tremor-dominant PD (tPD).
Topological metrics were extracted from Resting-state functional images of 86 ET patients, 86 tPD patients, and 86 age- and sex-matched healthy controls (HCs). Three steps were conducted to feature dimensionality reduction and four frequently used classifiers were adopted to discriminate ET, tPD, and HCs.
A support vector machine classifier achieved the best classification performance of four classifiers for discriminating ET, tPD, and HCs with 89.0% mean accuracy (mACC) and was used for binary classification. Particularly, the binary classification performances among ET vs. tPD, ET vs. HCs, and tPD vs. HCs were with 94.2% mACC, 86.0% mACC, and 86.3% mACC, respectively. The most power discriminative features were mainly located in the default, frontal-parietal, cingulo-opercular, sensorimotor, and cerebellum networks. Correlation analysis results showed that 2 topological features negatively and 1 positively correlated with clinical characteristics.
These results demonstrated that combining topological metrics with ML algorithms could not only achieve high classification accuracy for discrimination ET, tPD, and HCs but also help to reveal the potential brain topological network pathogenesis in ET and tPD.
特发性震颤(ET)和帕金森病(PD)是两种最常见的运动障碍,具有一些重叠的震颤临床特征。尽管越来越多的证据指出,相似脑网络节点的变化与这两种疾病相关,但脑网络拓扑特性仍不太清楚。
将图论分析与机器学习(ML)算法相结合,为揭示ET和震颤为主型PD(tPD)的拓扑发病机制提供了一种有前景的方法。
从86例ET患者、86例tPD患者以及86例年龄和性别匹配的健康对照(HCs)的静息态功能图像中提取拓扑指标。进行了三个步骤以进行特征降维,并采用四种常用分类器来区分ET、tPD和HCs。
支持向量机分类器在区分ET、tPD和HCs的四种分类器中表现出最佳分类性能,平均准确率(mACC)为89.0%,并用于二元分类。特别是,ET与tPD、ET与HCs以及tPD与HCs之间的二元分类性能分别为94.2% mACC、86.0% mACC和86.3% mACC。最具鉴别力的特征主要位于默认网络、额顶叶网络、扣带回-脑岛网络、感觉运动网络和小脑网络。相关性分析结果表明,2个拓扑特征与临床特征呈负相关,1个呈正相关。
这些结果表明,将拓扑指标与ML算法相结合不仅可以实现对ET、tPD和HCs的高分类准确率,还有助于揭示ET和tPD潜在的脑拓扑网络发病机制。