...
【24h】

Attentional bias in MDD: ERP components analysis and classification using a dot-probe task

机译:MDD中的注意力偏差:使用DOT探测任务进行ERP组件分析和分类

获取原文
获取原文并翻译 | 示例
           

摘要

Background and ObjectiveStrands of evidence have supported existence of negative attentional bias in patients with depression. This study aimed to assess the behavioral and electrophysiological signatures of attentional bias in major depressive disorder (MDD) and explore whether ERP components contain valuable information for discriminating between MDD patients and healthy controls (HCs). MethodsElectroencephalography data were collected from 17 patients with MDD and 17 HCs in a dot-probe task, with emotional-neutral pairs as experimental materials. Fourteen features related to ERP waveform shape were generated. Then, Correlated Feature Selection (CFS), ReliefF and GainRatio (GR) were applied for feature selection. For discriminating between MDDs and HCs,k-nearest neighbor (KNN), C4.5, Sequential Minimal Optimization (SMO) and Logistic Regression (LR) were used. ResultsBehaviorally, MDD patients showed significantly shorter reaction time (RT) to valid than invalid sad trials, with significantly higher bias score for sad-neutral pairs. Analysis of split-half reliability in RT indices indicated a strong reliability in RT, while coefficients of RT bias scores neared zero. These behavioral effects were supported by ERP results. MDD patients had higher P300 amplitude with the probe replacing a sad face than a neutral face, indicating difficult attention disengagement from negative emotional faces. Meanwhile, data mining analysis based on ERP components suggested that CFS was the best feature selection algorithm. Especially for the P300 induced by valid sad trials, the classification accuracy of CFS combination with any classifier was above 85%, and the KNN (k?=?3) classifier achieved the highest accuracy (94%). ConclusionsMDD patients show difficulty in attention disengagement from negative stimuli, reflected by P300. The CFS over other methods leads to a good overall performance in most cases, especially when KNN classifier is used for P300 component classification, illustrating that ERP component may be applied as a tool for auxiliary diagnosis of depression.
机译:证据的背景和特视人支持抑郁症患者负面注意偏差的存在。本研究旨在评估主要抑郁症(MDD)中注意力偏差的行为和电生理学签名,并探索ERP组件是否包含有价值的信息,以区分MDD患者和健康对照(HCS)。从DOT探针任务中的17例MDD和17个HCS中收集方法施法数据,以情绪中性对为实验材料。生成与ERP波形形状相关的十四个功能。然后,应用相关特征选择(CFS),Relieff和GainRatio(GR)用于特征选择。为了区分MDDS和HCS,使用K-最近邻(KNN),C4.5,顺序最小优化(SMO)和逻辑回归(LR)。结果表明,MDD患者的反应时间(RT)明显较短,而不是无效的悲伤试验,对于悲伤中性对的偏差分数明显高。 RT Indices中的分裂半可靠性分析表明RT的强度具有很强的可靠性,而RT偏置分数的系数靠近零。 ERP结果支持这些行为效应。 MDD患者的P300振幅具有更高的P300振幅,探头更换悲伤的面孔而不是中性面部,表明负面情绪面孔的难以注意的脱离。同时,基于ERP组件的数据挖掘分析表明CFS是最佳特征选择算法。特别是对于通过有效悲伤试验引起的P300,CFS与任何分类器的分类精度高于85%,KNN(k?=Δ3)分类器获得最高精度(94%)。结论MDD患者难以注意脱离负刺激,由P300反映。在大多数情况下,其他方法的CFS导致良好的整体性能,特别是当KNN分类器用于P300分量分类时,ERP组件可以作为辅助诊断的工具应用。

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