...
首页> 外文期刊>NPJ schizophrenia. >Electroconvulsive therapy-induced brain functional connectivity predicts therapeutic efficacy in patients with schizophrenia: a multivariate pattern recognition study
【24h】

Electroconvulsive therapy-induced brain functional connectivity predicts therapeutic efficacy in patients with schizophrenia: a multivariate pattern recognition study

机译:电痉挛治疗诱导的脑功能连通性预测精神分裂症患者的治疗效果:一项多变量模式识别研究

获取原文
           

摘要

Previous studies suggested that electroconvulsive therapy can influence regional metabolism and dopamine signaling, thereby alleviating symptoms of schizophrenia. It remains unclear what patients may benefit more from the treatment. The present study sought to identify biomarkers that predict the electroconvulsive therapy response in individual patients. Thirty-four schizophrenia patients and 34 controls were included in this study. Patients were scanned prior to treatment and after 6?weeks of treatment with antipsychotics only ( n =?16) or a combination of antipsychotics and electroconvulsive therapy ( n =?13). Subject-specific intrinsic connectivity networks were computed for each subject using a group information-guided independent component analysis technique. Classifiers were built to distinguish patients from controls and quantify brain states based on intrinsic connectivity networks. A general linear model was built on the classification scores of first scan (referred to as baseline classification scores) to predict treatment response. Classifiers built on the default mode network, the temporal lobe network, the language network, the corticostriatal network, the frontal-parietal network, and the cerebellum achieved a cross-validated classification accuracy of 83.82%, with specificity of 91.18% and sensitivity of 76.47%. After the electroconvulsive therapy, psychosis symptoms of the patients were relieved and classification scores of the patients were decreased. Moreover, the baseline classification scores were predictive for the treatment outcome. Schizophrenia patients exhibited functional deviations in multiple intrinsic connectivity networks which were able to distinguish patients from healthy controls at an individual level. Patients with lower classification scores prior to treatment had better treatment outcome, indicating that the baseline classification scores before treatment is a good predictor for treatment outcome.
机译:先前的研究表明,电惊厥疗法可影响局部代谢和多巴胺信号传导,从而减轻精神分裂症的症状。尚不清楚哪些患者可以从治疗中受益更多。本研究试图确定可预测个体患者电惊厥治疗反应的生物标志物。这项研究包括了34例精神分裂症患者和34例对照。在治疗前和治疗6周后,仅使用抗精神病药(n = 16)或将抗精神病药和电惊厥疗法联合使用(n = 13)对患者进行扫描。使用组信息引导的独立组件分析技术,为每个主题计算了特定于主题的固有连接网络。建立了分类器,以根据固有的连接网络将患者与对照区分开并量化脑部状态。在第一次扫描的分类评分(称为基线分类评分)上建立了通用的线性模型,以预测治疗反应。基于默认模式网络,颞叶网络,语言网络,皮层神经网络,额叶顶叶网络和小脑的分类器实现了交叉验证的分类准确性,为83.82%,特异性为91.18%,敏感性为76.47。 %。电抽搐治疗后,患者的精神病症状得到缓解,患者的分类评分降低。此外,基线分类评分可预测治疗效果。精神分裂症患者在多个内在的连通性网络中表现出功能偏差,从而能够在个体水平上将患者与健康对照区分开。治疗前分类评分较低的患者有较好的治疗效果,表明治疗前基线分类评分是治疗效果的良好预测指标。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号