基于机器学习算法的男性精神分裂症患者暴力行为的 sMRI 预测。
Prediction of violence in male schizophrenia using sMRI, based on machine learning algorithms.
机构信息
Anhui Mental Health Center; Affiliated Psychological Hospital of Anhui Medical University; Hefei Fourth People's Hospital; Anhui Clinical Research Center for Mental Disorders, Hefei, 230022, Anhui, China.
Anhui Province Maternity & Child Health Hospital, Hefei, 230022, Anhui, China.
出版信息
BMC Psychiatry. 2022 Nov 1;22(1):676. doi: 10.1186/s12888-022-04331-1.
BACKGROUND
Violent behavior in patients with schizophrenia (SCZ) is a major social problem. The early identification of SCZ patients with violence can facilitate implementation of targeted intervention.
METHODS
A total of 57 male SCZ patients were recruited into this study. The general linear model was utilized to compare differences in structural magnetic resonance imaging (sMRI) including gray matter volume, cortical surface area, and cortical thickness between 30 SCZ patients who had exhibited violence and 27 SCZ patients without a history of violence. Based on machine learning algorithms, the different sMRI features between groups were integrated into the models for prediction of violence in SCZ patients.
RESULTS
After controlling for the whole brain volume and age, the general linear model showed significant reductions in right bankssts thickness, inferior parietal thickness as well as left frontal pole volume in the patients with SCZ and violence relative to those without violence. Among seven machine learning algorithms, Support Vector Machine (SVM) have better performance in differentiating patients with violence from those without violence, with its balanced accuracy and area under curve (AUC) reaching 0.8231 and 0.841, respectively.
CONCLUSIONS
Patients with SCZ who had a history of violence displayed reduced cortical thickness and volume in several brain regions. Based on machine learning algorithms, structural MRI features are useful to improve predictive ability of SCZ patients at particular risk of violence.
背景
精神分裂症(SCZ)患者的暴力行为是一个主要的社会问题。早期识别具有暴力倾向的 SCZ 患者有助于实施针对性干预。
方法
本研究共纳入 57 名男性 SCZ 患者。采用一般线性模型比较 30 名有暴力行为的 SCZ 患者和 27 名无暴力行为史的 SCZ 患者之间结构磁共振成像(sMRI)的灰质体积、皮质表面积和皮质厚度的差异。基于机器学习算法,将组间不同的 sMRI 特征整合到 SCZ 患者暴力预测模型中。
结果
在控制全脑体积和年龄后,一般线性模型显示,有暴力行为的 SCZ 患者右侧岛盖部厚度、下顶叶厚度以及左侧额极体积明显低于无暴力行为的患者。在七种机器学习算法中,支持向量机(SVM)在区分有暴力行为和无暴力行为的患者方面表现出更好的性能,其均衡准确性和曲线下面积(AUC)分别达到 0.8231 和 0.841。
结论
有暴力行为史的 SCZ 患者大脑多个区域的皮质厚度和体积减少。基于机器学习算法,结构 MRI 特征可提高特定暴力风险的 SCZ 患者的预测能力。