Bhaumik Runa, Jenkins Lisanne M, Gowins Jennifer R, Jacobs Rachel H, Barba Alyssa, Bhaumik Dulal K, Langenecker Scott A
Biostatistical Research Center, The University of Illinois at Chicago, United States.
Cognitive Neuroscience Center, The University of Illinois at Chicago, United States.
Neuroimage Clin. 2016 Mar 2;16:390-398. doi: 10.1016/j.nicl.2016.02.018. eCollection 2017.
Understanding abnormal resting-state functional connectivity of distributed brain networks may aid in probing and targeting mechanisms involved in major depressive disorder (MDD). To date, few studies have used resting state functional magnetic resonance imaging (rs-fMRI) to attempt to discriminate individuals with MDD from individuals without MDD, and to our knowledge no investigations have examined a remitted (r) population. In this study, we examined the efficiency of support vector machine (SVM) classifier to successfully discriminate rMDD individuals from healthy controls (HCs) in a narrow early-adult age range. We empirically evaluated four feature selection methods including multivariate Least Absolute Shrinkage and Selection Operator (LASSO) and Elastic Net feature selection algorithms. Our results showed that SVM classification with Elastic Net feature selection achieved the highest classification accuracy of 76.1% (sensitivity of 81.5% and specificity of 68.9%) by leave-one-out cross-validation across subjects from a dataset consisting of 38 rMDD individuals and 29 healthy controls. The highest discriminating functional connections were between the left amygdala, left posterior cingulate cortex, bilateral dorso-lateral prefrontal cortex, and right ventral striatum. These appear to be key nodes in the etiopathophysiology of MDD, within and between default mode, salience and cognitive control networks. This technique demonstrates early promise for using rs-fMRI connectivity as a putative neurobiological marker capable of distinguishing between individuals with and without rMDD. These methods may be extended to periods of risk prior to illness onset, thereby allowing for earlier diagnosis, prevention, and intervention.
了解分布式脑网络异常的静息态功能连接性,可能有助于探究和定位重度抑郁症(MDD)所涉及的机制。迄今为止,很少有研究使用静息态功能磁共振成像(rs-fMRI)来试图区分患有MDD的个体和未患MDD的个体,据我们所知,尚无研究对已缓解(r)人群进行过调查。在本研究中,我们考察了支持向量机(SVM)分类器在狭窄的成年早期年龄范围内成功区分rMDD个体与健康对照(HC)的效率。我们实证评估了四种特征选择方法,包括多变量最小绝对收缩和选择算子(LASSO)以及弹性网络特征选择算法。我们的结果表明,采用弹性网络特征选择的SVM分类在对一个由38名rMDD个体和29名健康对照组成的数据集中的受试者进行留一法交叉验证时,实现了76.1%的最高分类准确率(敏感性为81.5%,特异性为68.9%)。最高的区分功能连接存在于左侧杏仁核、左侧后扣带回皮层、双侧背外侧前额叶皮层和右侧腹侧纹状体之间。这些似乎是MDD病因病理生理学中的关键节点,存在于默认模式、显著性和认知控制网络内部及之间。这项技术显示出利用rs-fMRI连接性作为一种能够区分有无rMDD个体的假定神经生物学标志物的早期前景。这些方法可能会扩展到疾病发作前的风险期,从而实现更早的诊断、预防和干预。