Jia Yulong, Yang Beining, Xin Haotian, Qi Qunya, Wang Yu, Lin Liyuan, Xie Yingying, Huang Chaoyang, Lu Jie, Qin Wen, Chen Nan
Department of Radiology and Nuclear Medicine, Xuanwu Hospital, Capital Medical University, Beijing, 100053, China.
Beijing Key Laboratory of Magnetic Resonance Imaging and Brain Informatics, No. 45 Chang-chun St, Beijing, 100053, Xicheng District, China.
J Imaging Inform Med. 2024 Nov 4. doi: 10.1007/s10278-024-01313-5.
PTSD is a complex mental health condition triggered by individuals' traumatic experiences, with long-term and broad impacts on sufferers' psychological health and quality of life. Despite decades of research providing partial understanding of the pathobiological aspects of PTSD, precise neurobiological markers and imaging indicators remain challenging to pinpoint. This study employed VBM analysis and machine learning algorithms to investigate structural brain changes in PTSD patients. Data were sourced ADNI-DoD database for PTSD cases and from the ADNI database for healthy controls. Various machine learning models, including SVM, RF, and LR, were utilized for classification. Additionally, the VICI was proposed to enhance model interpretability, incorporating SHAP analysis. The association between PTSD risk genes and VICI values was also explored through gene expression data analysis. Among the tested machine learning algorithms, RF emerged as the top performer, achieving high accuracy in classifying PTSD patients. Structural brain abnormalities in PTSD patients were predominantly observed in prefrontal areas compared to healthy controls. The proposed VICI demonstrated classification efficacy comparable to the optimized RF model, indicating its potential as a simplified diagnostic tool. Analysis of gene expression data revealed significant associations between PTSD risk genes and VICI values, implicating synaptic integrity and neural development regulation. This study reveals neuroimaging and genetic characteristics of PTSD, highlighting the potential of VBM analysis and machine learning models in diagnosis and prognosis. The VICI offers a promising approach to enhance model interpretability and guide clinical decision-making. These findings contribute to a better understanding of the pathophysiological mechanisms of PTSD and provide new avenues for future diagnosis and treatment.
创伤后应激障碍(PTSD)是一种由个体创伤经历引发的复杂心理健康状况,对患者的心理健康和生活质量具有长期且广泛的影响。尽管数十年的研究对PTSD的病理生物学方面有了部分了解,但精确的神经生物学标志物和影像学指标仍难以确定。本研究采用基于体素的形态学测量(VBM)分析和机器学习算法来研究PTSD患者的脑结构变化。数据来源于ADNI-DoD数据库中的PTSD病例以及ADNI数据库中的健康对照。使用了包括支持向量机(SVM)、随机森林(RF)和逻辑回归(LR)在内的各种机器学习模型进行分类。此外,还提出了可视化重要性因果影响(VICI)以增强模型的可解释性,并纳入了SHAP分析。还通过基因表达数据分析探索了PTSD风险基因与VICI值之间的关联。在测试的机器学习算法中,RF表现最佳,在对PTSD患者进行分类时具有较高的准确性。与健康对照相比,PTSD患者的脑结构异常主要出现在前额叶区域。所提出的VICI显示出与优化后的RF模型相当的分类效能,表明其作为一种简化诊断工具的潜力。基因表达数据分析揭示了PTSD风险基因与VICI值之间的显著关联,涉及突触完整性和神经发育调节。本研究揭示了PTSD的神经影像学和遗传特征,突出了VBM分析和机器学习模型在诊断和预后方面的潜力。VICI为增强模型可解释性和指导临床决策提供了一种有前景的方法。这些发现有助于更好地理解PTSD的病理生理机制,并为未来的诊断和治疗提供新途径。