Lab of Neural Engineering & Rehabilitation, Department of Biomedical Engineering, College of Precision Instruments and Optoelectronics Engineering, Tianjin University, Tianjin, China.
Tianjin International Joint Research Center for Neural Engineering, Academy of Medical Engineering and Translational Medicine, Tianjin University, Tianjin, China.
J Affect Disord. 2022 Jan 15;297:542-552. doi: 10.1016/j.jad.2021.10.122. Epub 2021 Oct 29.
The diagnosis of subclinical depression (SD) currently relies exclusively on subjective clinical scores and structured interviews, which shares great similarities with major depression (MD) and increases the risk of misdiagnosis of SD and MD. This study aimed to develop a method of disease classification for SD and MD by resting-state functional features using radiomics strategy.
Twenty-six SD, 36 MD subjects and 33 well-matched healthy controls (HC) were recruited and underwent resting-state functional magnetic resonance imaging (rs-fMRI). A novel radiomics analysis was proposed to discriminate SD from MD. Multi-scale brain functional features were extracted to explore a comprehensive representation of functional characteristics. A two-level feature selection strategy and support vector machine (SVM) were employed for classification.
The overall classification accuracy among SD, MD and HC groups was 84.21%. Particularly, the model excellently distinguished SD from MD with 96.77% accuracy, 100% sensitivity, and 92.31% specificity. Moreover, features with high discriminative power to distinguish SD from MD showed a strong association with default mode network, frontoparietal network, affective network, and visual network regions.
The sample size was relatively small, which may limit the application in clinical translation to some extent.
These findings demonstrated that a valid radiomics approach based on functional measures can discriminate SD from MD with a high classification performance, facilitating an objective and reliable diagnosis individually in clinical practice. Features with high discriminative power may provide insight into a profound understanding of the brain functional impairments and pathophysiology of SD and MD.
目前,亚临床抑郁症(SD)的诊断完全依赖于主观临床评分和结构化访谈,这与重度抑郁症(MD)非常相似,增加了 SD 和 MD 误诊的风险。本研究旨在通过静息态功能特征利用放射组学策略为 SD 和 MD 开发一种疾病分类方法。
招募了 26 例 SD、36 例 MD 患者和 33 名匹配良好的健康对照组(HC),并进行了静息态功能磁共振成像(rs-fMRI)检查。提出了一种新的放射组学分析方法,用于区分 SD 和 MD。提取多尺度脑功能特征,以探索功能特征的综合表现。采用两级特征选择策略和支持向量机(SVM)进行分类。
SD、MD 和 HC 组的整体分类准确率为 84.21%。特别是,该模型对 SD 与 MD 的区分具有 96.77%的准确率、100%的敏感性和 92.31%的特异性。此外,具有高区分能力的特征与默认模式网络、额顶网络、情感网络和视觉网络区域具有很强的相关性。
样本量相对较小,这可能在一定程度上限制了其在临床转化中的应用。
这些发现表明,基于功能测量的有效的放射组学方法可以区分 SD 和 MD,具有较高的分类性能,有助于在临床实践中对个体进行客观可靠的诊断。具有高区分能力的特征可能为深入了解 SD 和 MD 的大脑功能障碍和病理生理学提供一些见解。