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Identifying abstinent heroin addicts on the basis of single channel’s ERP and behavioral data in the gambling task

机译:在赌博任务中识别单通道的ERP和行为数据的基础上识别围困的海洛因瘾君子

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In the attentional bias and cognitive processing relating to the abstinent heroin addicts (AHAs), there were considerable studies about event related potentials (ERP) and behavioral data. However, the large amount of data lead to longer data processing time, and few studies were done on single channel data about AHA. This study investigated whether single channel's data can be used to identify AHAs from healthy controls (HCs) accurately. Two groups of age-, education-, and gender-matched adults (22 AHAs, 21 HCs) performed on the gambling task. ERP features and behavior features were used to classify. For discriminating AHAs and HCs, ReliefF and SVM-RFE were applied for feature selection, and Particle Swarm Optimization (PSO) and Genetic Algorithm (GA) were used to search the optimal classification model of Support Vector Machine (SVM). We analyzed the statistical significance of all the features and obtained the classification result of different stimulation conditions. In statistics, we found that AHAs were significantly different from HCs in the amplitude of P300, ERP's mean value and ERP's variance under the monetary stimulation. For large money stimulation, P300 power in delta band and N100 power in delta band had significant difference between AHAs and HCs. Combining feature sorting algorithms and optimization algorithms, the results indicated that optimal performance was achieved by using ReliefF and GA. Use the above method, the best accuracy is 86.04% in four kind (+99, +9, -9, -99) of stimulation. This is the first study that used single channel's ERP data to identify AHAs with HCs, our study provided a new insight and objective method for the rapid diagnosis of AHAs.
机译:在与抢断海洛因成瘾者(AHAs)有关的注意偏见和认知处理中,关于事件相关电位(ERP)和行为数据存在相当大的研究。然而,大量数据导致数据处理时间更长,并且在关于AHA的单通道数据上完成了很少的研究。本研究调查了单频道的数据是否可用于准确地识别来自健康控制(HCS)的AHA。两组年龄,教育和性别匹配的成年人(22 AHA,21 HCS)对赌博任务进行了。 ERP功能和行为功能用于分类。为了区分AHAS和HCS,施加Relieff和SVM-RFE用于特征选择,并且使用粒子群优化(PSO)和遗传算法(GA)来搜索支持向量机(SVM)的最佳分类模型。我们分析了所有特征的统计学意义,并获得了不同刺激条件的分类结果。在统计数据中,我们发现AHA与P300的幅度中的HCS显着不同,ERP在货币刺激下的平均值和ERP的差异。对于大量资金刺激,Delta Band中的P300功率和Delta Band中的N100功率在AHA和HC之间具有显着差异。结合特征排序算法和优化算法,结果表明通过使用Relieff和Ga实现最佳性能。使用上述方法,最佳精度为4种(+99,+9,-9,-99)的86.04%。这是第一项研究,它使用单通道的ERP数据识别HCS的AHAS,我们的研究提供了一种新的洞察力和客观方法,可以快速诊断AHAS。

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