Yang Yifeng, Hu Liangyun, Chen Yang, Gu Weidong, Xie Yuanzhong, Nie Shengdong
School of Health Science and Engineering, University of Shanghai for Science and Technology, No. 516 Military 21 Road, Yangpu District, Shanghai, 200093, People's Republic of China.
Department of Medical Imaging, Huadong Hospital, Fudan University, Shanghai, 200040, People's Republic of China.
J Imaging Inform Med. 2025 Apr;38(2):1062-1075. doi: 10.1007/s10278-024-01235-2. Epub 2024 Sep 10.
This study aimed to identify sex-specific imaging biomarkers for Parkinson's disease (PD) based on multiple MRI morphological features by using machine learning methods. Participants were categorized into female and male subgroups, and various structural morphological features were extracted. An ensemble Lasso (EnLasso) method was employed to identify a stable optimal feature subset for each sex-based subgroup. Eight typical classifiers were adopted to construct classification models for PD and HC, respectively, to validate whether models specific to sex subgroups could bolster the precision of PD identification. Finally, statistical analysis and correlation tests were carried out on significant brain region features to identify potential sex-specific imaging biomarkers. The best model (MLP) based on the female subgroup and male subgroup achieved average classification accuracy of 92.83% and 92.11%, respectively, which were better than that of the model based on the overall samples (86.88%) and the overall model incorporating gender factor (87.52%). In addition, the most discriminative feature of PD among males was the lh 6r (FD), but among females, it was the lh PreS (GI). The findings indicate that the sex-specific PD diagnosis model yields a significantly higher classification performance compared to previous models that included all participants. Additionally, the male subgroup exhibited a greater number of brain region changes than the female subgroup, suggesting sex-specific differences in PD risk markers. This study underscore the importance of stratifying data by sex and offer insights into sex-specific variations in PD phenotypes, which could aid in the development of precise and personalized diagnostic approaches in the early stages of the disease.
本研究旨在通过机器学习方法,基于多种MRI形态学特征识别帕金森病(PD)的性别特异性影像生物标志物。参与者被分为女性和男性亚组,并提取各种结构形态学特征。采用集成套索(EnLasso)方法为每个基于性别的亚组识别稳定的最优特征子集。分别采用8种典型分类器构建PD组和健康对照组(HC)的分类模型,以验证性别亚组特异性模型是否能提高PD识别的准确性。最后,对显著脑区特征进行统计分析和相关性检验,以识别潜在的性别特异性影像生物标志物。基于女性亚组和男性亚组的最佳模型(多层感知器)的平均分类准确率分别为92.83%和92.11%,优于基于总体样本的模型(86.88%)和纳入性别因素的总体模型(87.52%)。此外,男性中PD最具鉴别力的特征是左半球6区(FD),而女性中则是左半球前扣带回(GI)。研究结果表明,与之前纳入所有参与者的模型相比,性别特异性PD诊断模型具有显著更高的分类性能。此外,男性亚组的脑区变化数量多于女性亚组,表明PD风险标志物存在性别特异性差异。本研究强调了按性别对数据进行分层的重要性,并为PD表型的性别特异性差异提供了见解,这有助于在疾病早期开发精确和个性化的诊断方法。