Zheng Linli, Wang Yu, Ma Jing, Wang Meiou, Liu Yang, Li Jin, Li Tao, Zhang Lan
Mental Health Center, West China Hospital, Sichuan University, Chengdu, China.
Affiliated Mental Health Centre and Hangzhou Seventh People's Hospital, Zhejiang University School of Medicine, Hangzhou, China.
Front Psychiatry. 2024 Jan 11;14:1326271. doi: 10.3389/fpsyt.2023.1326271. eCollection 2023.
Anorexia nervosa (AN) and bulimia nervosa (BN), two subtypes of eating disorders, often present diagnostic challenges due to their overlapping symptoms. Machine learning has proven its capacity to improve group classification without requiring researchers to specify variables. The study aimed to distinguish between AN and BN using machine learning models based on diffusion tensor images (DTI).
This is a cross-sectional study, drug-naive females diagnosed with anorexia nervosa (AN) and bulimia nervosa (BN) were included. Demographic data and DTI were collected for all patients. Features for machine learning included Fractional anisotropy (FA), axial diffusivity (AD), radial diffusivity (RD), and mean diffusivity (MD). Support vector machine was constructed by LIBSVM, MATLAB2013b, and FSL5.0.9 software.
A total of 58 female patients (24 AN, 34 BN) were included in this study. Statistical analysis revealed no significant differences in age, years of education, or course of illness between the two groups. AN patients had significantly lower BMI than BN patients. The AD model exhibited an area under the curve was 0.793 (accuracy: 75.86%, sensitivity: 66.67%, specificity: 88.23%), highlighting the left middle temporal gyrus (MTG_L) and the left superior temporal gyrus (STG_L) as differentiating brain regions. AN patients exhibited lower AD features in the STG_L and MTG_L than BN. Machine learning analysis indicated no significant differences in FA, MD, and RD values between AN and BN groups ( > 0.001).
Machine learning based on DTI could effectively distinguish between AN and BN, with MTG_L and STG_L potentially serving as neuroimaging biomarkers.
神经性厌食症(AN)和神经性贪食症(BN)是饮食失调的两种亚型,由于症状重叠,常常带来诊断挑战。机器学习已证明其能够在无需研究人员指定变量的情况下改善组间分类。本研究旨在使用基于扩散张量成像(DTI)的机器学习模型区分AN和BN。
这是一项横断面研究,纳入了未服用过药物、被诊断为神经性厌食症(AN)和神经性贪食症(BN)的女性。收集了所有患者的人口统计学数据和DTI。机器学习的特征包括分数各向异性(FA)、轴向扩散率(AD)、径向扩散率(RD)和平均扩散率(MD)。使用LIBSVM、MATLAB2013b和FSL5.0.9软件构建支持向量机。
本研究共纳入58例女性患者(24例AN,34例BN)。统计分析显示,两组在年龄、受教育年限或病程方面无显著差异。AN患者的BMI显著低于BN患者。AD模型的曲线下面积为0.793(准确率:75.86%,灵敏度:66.67%,特异性:88.23%),突出了左中颞回(MTG_L)和左上颞回(STG_L)作为区分脑区。AN患者在STG_L和MTG_L中的AD特征低于BN患者。机器学习分析表明,AN组和BN组之间的FA、MD和RD值无显著差异(>0.001)。
基于DTI的机器学习能够有效区分AN和BN,MTG_L和STG_L可能作为神经影像学生物标志物。