Research Institute of Biomedical Engineering, Xi'an Jiaotong University, Xi'an, China.
Comput Methods Programs Biomed. 2011 Dec;104(3):410-7. doi: 10.1016/j.cmpb.2010.10.002. Epub 2010 Dec 3.
In this paper, a novel P300-based concealed information test (CIT) method was proposed to improve the efficiency of differentiating deception and truth-telling. Thirty subjects including the guilty and innocent performed the paradigm based on three types of stimuli. In order to reduce the influence from the occasional variability of cognitive states on the CIT, several single-trials from Pz in probe stimuli within each subject were first averaged. Then the three groups of features were extracted from these averaged single-trials. Finally, two classes of feature samples were used to train a support vector machine (SVM) classifier. Meanwhile, the optimal number of averaged Pz waveforms and some other parameter values in the classifiers were determined by the cross validation procedures. Results show that if choosing accuracy of 90% as a detecting standard of P3 component to classify a subject's status (guilty or innocent), our method can achieve individual diagnostic rate of 100%. The individual diagnostic rate of our method was higher than the results of the other related reports. The presented method improves efficiency of CIT, and is more practical, lower fatigue and less countermeasure behavior in comparison with previous report methods, which could extend the laboratory study to the practical application.
本文提出了一种新的基于 P300 的隐藏信息测试 (CIT) 方法,以提高区分欺骗和真实的效率。三十名包括有罪和无罪的受试者进行了基于三种刺激的范式。为了减少认知状态的偶尔变化对 CIT 的影响,首先对每个受试者的探测刺激中的 Pz 中的几个单试进行平均。然后从这些平均单试中提取三组特征。最后,使用两类特征样本来训练支持向量机 (SVM) 分类器。同时,通过交叉验证程序确定最佳的平均 Pz 波数量和分类器中的其他一些参数值。结果表明,如果选择 P3 成分的准确率为 90%作为分类受试者状态(有罪或无罪)的检测标准,我们的方法可以达到 100%的个体诊断率。与之前的报告方法相比,我们的方法的个体诊断率更高。与之前的报告方法相比,本方法提高了 CIT 的效率,更实用,疲劳度更低,对策行为更少,可将实验室研究扩展到实际应用。