Department of Family, Population and Preventive Medicine, Stony Brook University, New York, New York.
Department of Applied Mathematics and Statistics, Stony Brook University, New York, New York.
Hum Brain Mapp. 2018 Nov;39(11):4420-4439. doi: 10.1002/hbm.24282. Epub 2018 Aug 16.
This study aimed to identify biomarkers of major depressive disorder (MDD), by relating neuroimage-derived measures to binary (MDD/control), ordinal (severe MDD/mild MDD/control), or continuous (depression severity) outcomes. To address MDD heterogeneity, factors (severity of psychic depression, motivation, anxiety, psychosis, and sleep disturbance) were also used as outcomes. A multisite, multimodal imaging (diffusion MRI [dMRI] and structural MRI [sMRI]) cohort (52 controls and 147 MDD patients) and several modeling techniques-penalized logistic regression, random forest, and support vector machine (SVM)-were used. An additional cohort (25 controls and 83 MDD patients) was used for validation. The optimally performing classifier (SVM) had a 26.0% misclassification rate (binary), 52.2 ± 1.69% accuracy (ordinal) and r = .36 correlation coefficient (p < .001, continuous). Using SVM, R values for prediction of any MDD factors were <10%. Binary classification in the external data set resulted in 87.95% sensitivity and 32.00% specificity. Though observed classification rates are too low for clinical utility, four image-based features contributed to accuracy across all models and analyses-two dMRI-based measures (average fractional anisotropy in the right cuneus and left insula) and two sMRI-based measures (asymmetry in the volume of the pars triangularis and the cerebellum) and may serve as a priori regions for future analyses. The poor accuracy of classification and predictive results found here reflects current equivocal findings and sheds light on challenges of using these modalities for MDD biomarker identification. Further, this study suggests a paradigm (e.g., multiple classifier evaluation with external validation) for future studies to avoid nongeneralizable results.
这项研究旨在通过将神经影像学测量结果与二元(MDD/对照)、有序(重度 MDD/轻度 MDD/对照)或连续(抑郁严重程度)结果相关联,来鉴定重度抑郁症(MDD)的生物标志物。为了解决 MDD 的异质性,还将严重程度的心理抑郁、动机、焦虑、精神病和睡眠障碍等因素作为结果。该研究使用了一个多地点、多模态成像(弥散磁共振成像 [dMRI] 和结构磁共振成像 [sMRI])队列(52 名对照者和 147 名 MDD 患者)和几种建模技术——惩罚逻辑回归、随机森林和支持向量机(SVM)。一个额外的队列(25 名对照者和 83 名 MDD 患者)用于验证。表现最佳的分类器(SVM)的错误分类率为 26.0%(二元)、52.2±1.69%(有序)和 r=0.36 相关系数(p<0.001,连续)。使用 SVM,预测任何 MDD 因素的 R 值均<10%。外部数据集的二元分类结果为 87.95%的敏感性和 32.00%的特异性。尽管观察到的分类率太低,无法用于临床应用,但四种基于图像的特征在所有模型和分析中都有助于提高准确性——两种基于 dMRI 的指标(右侧楔前叶和左侧岛叶的平均各向异性分数)和两种基于 sMRI 的指标(三角部和小脑体积的不对称性),并且可以作为未来分析的先验区域。分类和预测结果的准确性较差反映了目前对 MDD 生物标志物鉴定的不确定发现,并揭示了使用这些模式识别 MDD 生物标志物所面临的挑战。此外,这项研究提出了一种范例(例如,使用外部验证对多个分类器进行评估),以供未来的研究避免不可推广的结果。