Danish Research Centre for Magnetic Resonance, Copenhagen University Hospital, Hvidovre, Denmark.
Int J Neuropsychopharmacol. 2013 Jul;16(6):1195-204. doi: 10.1017/S1461145712001253. Epub 2012 Nov 20.
Since working memory deficits in schizophrenia have been linked to negative symptoms, we tested whether features of the one could predict the treatment outcome in the other. Specifically, we hypothesized that working memory-related functional connectivity at pre-treatment can predict improvement of negative symptoms in antipsychotic-treated patients. Fourteen antipsychotic-naive patients with first-episode schizophrenia were clinically assessed before and after 7 months of quetiapine monotherapy. At baseline, patients underwent functional magnetic resonance imaging while performing a verbal n-back task. Spatial independent component analysis identified task-modulated brain networks. A linear support vector machine was trained with these components to discriminate six patients who showed improvement in negative symptoms from eight non-improvers. Classification accuracy and significance was estimated by leave-one-out cross-validation and permutation tests, respectively. Two frontoparietal and one default mode network components predicted negative symptom improvement with a classification accuracy of 79% (p = 0.003). Discriminating features were found in the frontoparietal networks but not the default mode network. These preliminary data suggest that functional patterns at baseline can predict negative symptom treatment-response in schizophrenia. This information may be used to stratify patients into subgroups thereby facilitating personalized treatment.
由于精神分裂症的工作记忆缺陷与阴性症状有关,我们测试了一种症状的特征是否可以预测另一种症状的治疗效果。具体来说,我们假设治疗前与工作记忆相关的功能连接可以预测抗精神病药物治疗患者阴性症状的改善。14 名首发精神分裂症的抗精神病药物初治患者在接受喹硫平单药治疗 7 个月前后进行了临床评估。在基线时,患者在执行口头 n-back 任务时进行了功能磁共振成像。空间独立成分分析确定了任务调节的大脑网络。使用这些组件,通过线性支持向量机对 6 名阴性症状改善的患者和 8 名非改善的患者进行分类。通过留一法交叉验证和置换检验分别估计分类准确性和显著性。两个额顶叶和一个默认模式网络组件以 79%的分类准确性预测了阴性症状的改善(p=0.003)。在额顶叶网络中发现了有区别的特征,但在默认模式网络中没有。这些初步数据表明,基线时的功能模式可以预测精神分裂症阴性症状的治疗反应。该信息可用于将患者分层为亚组,从而促进个性化治疗。