Mikolas P, Melicher T, Skoch A, Matejka M, Slovakova A, Bakstein E, Hajek T, Spaniel F
Psychiatric Hospital Bohnice,Prague,Czech Republic.
3rd Faculty of Medicine,Charles University,Prague,Czech Republic.
Psychol Med. 2016 Oct;46(13):2695-704. doi: 10.1017/S0033291716000878. Epub 2016 Jul 25.
Early diagnosis of schizophrenia could improve the outcomes and limit the negative effects of untreated illness. Although participants with schizophrenia show aberrant functional connectivity in brain networks, these between-group differences have a limited diagnostic utility. Novel methods of magnetic resonance imaging (MRI) analyses, such as machine learning (ML), may help bring neuroimaging from the bench to the bedside. Here, we used ML to differentiate participants with a first episode of schizophrenia-spectrum disorder (FES) from healthy controls based on resting-state functional connectivity (rsFC).
We acquired resting-state functional MRI data from 63 patients with FES who were individually matched by age and sex to 63 healthy controls. We applied linear kernel support vector machines (SVM) to rsFC within the default mode network, the salience network and the central executive network.
The SVM applied to the rsFC within the salience network distinguished the FES from the control participants with an accuracy of 73.0% (p = 0.001), specificity of 71.4% and sensitivity of 74.6%. The classification accuracy was not significantly affected by medication dose, or by the presence of psychotic symptoms. The functional connectivity within the default mode or the central executive networks did not yield classification accuracies above chance level.
Seed-based functional connectivity maps can be utilized for diagnostic classification, even early in the course of schizophrenia. The classification was probably based on trait rather than state markers, as symptoms or medications were not significantly associated with classification accuracy. Our results support the role of the anterior insula/salience network in the pathophysiology of FES.
精神分裂症的早期诊断可以改善预后并限制未治疗疾病的负面影响。尽管精神分裂症患者在脑网络中表现出异常的功能连接,但这些组间差异的诊断效用有限。磁共振成像(MRI)分析的新方法,如机器学习(ML),可能有助于将神经影像学从实验室应用到临床。在此,我们使用ML基于静息态功能连接(rsFC)将首次发作精神分裂症谱系障碍(FES)患者与健康对照区分开来。
我们从63例FES患者中获取了静息态功能MRI数据,这些患者在年龄和性别上与63名健康对照进行了个体匹配。我们将线性核支持向量机(SVM)应用于默认模式网络、突显网络和中央执行网络内的rsFC。
应用于突显网络内rsFC的SVM区分FES患者和对照参与者的准确率为73.0%(p = 0.001),特异性为71.4%,敏感性为74.6%。分类准确率不受药物剂量或精神病性症状的存在的显著影响。默认模式或中央执行网络内的功能连接未产生高于机遇水平的分类准确率。
基于种子点的功能连接图可用于诊断分类,即使在精神分裂症病程早期。分类可能基于特质而非状态标记,因为症状或药物治疗与分类准确率无显著关联。我们的结果支持前脑岛/突显网络在FES病理生理学中的作用。