Shi Dafa, Yao Xiang, Li Yanfei, Zhang Haoran, Wang Guangsong, Wang Siyuan, Ren Ke
Department of Radiology, Xiang'an Hospital of Xiamen University, School of Medicine, Xiamen University, Xiamen, 361002, China.
Brain Imaging Behav. 2022 Oct;16(5):2150-2163. doi: 10.1007/s11682-022-00685-y. Epub 2022 Jun 1.
To investigate the value of combining amplitude of low-frequency fluctuations-based radiomics and the support vector machine classifier method in distinguishing patients with Parkinson's disease from healthy controls. A total of 123 patients with Parkinson's disease and 90 healthy controls from three centers with functional and structural MRI images were included in this study. We extracted radiomics features using the Brainnetome 246 atlas from the mean amplitude of low-frequency fluctuations maps. Two-sample t-tests and recursive feature elimination combined with support vector machine method were applied for feature selection and dimensionality reduction. We used support vector machine classifier to construct model and identify the discriminative features. The automated anatomical labeling 90 atlas and fivefold cross-validation were used to evaluate the robustness and generalization of the classifier. We found our model obtained a high classification performance with an accuracy of 78.07%, and AUC, sensitivity, and specificity of 0.8597, 78.80%, and 76.08%, respectively. We detected 7 discriminative brain subregions. The fivefold cross-validation and automated anatomical labeling 90 atlas also got high classification accuracy, and we found Brainnetome 246 atlas achieved a higher classification performance than the automated anatomical labeling 90 atlas both with tenfold and fivefold cross-validation. Our findings may help the early diagnosis of Parkinson's disease and provide support for research on Parkinson's disease mechanisms and clinical evaluation.
探讨基于低频波动幅度的放射组学与支持向量机分类器方法相结合在区分帕金森病患者与健康对照中的价值。本研究纳入了来自三个中心的123例帕金森病患者和90例健康对照,获取了其功能和结构MRI图像。我们使用Brainnetome 246图谱从低频波动图的平均幅度中提取放射组学特征。采用两样本t检验和递归特征消除结合支持向量机方法进行特征选择和降维。我们使用支持向量机分类器构建模型并识别判别性特征。使用自动解剖标记90图谱和五折交叉验证来评估分类器的稳健性和泛化能力。我们发现我们的模型获得了较高的分类性能,准确率为78.07%,AUC、敏感性和特异性分别为0.8597、78.80%和76.08%。我们检测到7个有判别意义的脑区亚区。五折交叉验证和自动解剖标记90图谱也获得了较高的分类准确率,并且我们发现Brainnetome 246图谱在十折和五折交叉验证中均比自动解剖标记90图谱具有更高的分类性能。我们的研究结果可能有助于帕金森病的早期诊断,并为帕金森病机制研究和临床评估提供支持。