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The Effect of Creative Tasks on Electrocardiogram: Using Linear and Nonlinear Features in Combination with Classification Approaches

机译:创新任务对心电图的影响:结合线性和非线性特征与分类方法

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Objective: Interest in the subject of creativity and its impacts on human life is growing extensively. However, only a few surveys pay attention to the relation between creativity and physiological changes. This paper presents a novel approach to distinguish between creativity states from electrocardiogram signals. Nineteen linear and nonlinear features of the cardiac signal were extracted to detect creativity states. Method: ECG signals of 52 participants were recorded while doing three tasks of Torrance Tests of Creative Thinking (TTCT/ figural B). To remove artifacts, notch filter 50 Hz and Chebyshev II were applied. According to TTCT scores, participants were categorized into the high and low creativity groups: Participants with scores higher than 70 were assigned into the high creativity group and those with scores less than 30 were considered as low creativity group. Some linear and nonlinear features were extracted from the ECGs. Then, Support Vector Machine (SVM) and Adaptive Neuro-Fuzzy Inference System (ANFIS) were used to classify the groups.Results: Applying the Wilcoxon test, significant differences were observed between rest and each three tasks of creativity. However, better discrimination was performed between rest and the first task. In addition, there were no statistical differences between the second and third task of the test. The results indicated that the SVM effectively detects all the three tasks from the rest, particularly the task 1 and reached the maximum accuracy of 99.63% in the linear analysis. In addition, the high creative group was separated from the low creative group with the accuracy of 98.41%.Conclusion: the combination of SVM classifier with linear features can be useful to show the relation between creativity and physiological changes.
机译:目标:人们对创造力及其对人类生活的影响的兴趣正在广泛增长。但是,只有少数调查关注创造力和生理变化之间的关系。本文提出了一种从心电图信号区分创造力状态的新颖方法。提取了心脏信号的19个线性和非线性特征以检测创造力状态。方法:在进行三项创造性思维托伦斯测验(TTCT /图B)时记录52名参与者的心电图信号。为了去除伪影,应用了50 Hz陷波滤波器和Chebyshev II。根据TTCT得分,将参与者分为高创造力和低创造力组:得分高于70的参与者被分配到高创造力组,而得分低于30的参与者被视为低创造力组。从ECG中提取了一些线性和非线性特征。然后,使用支持向量机(SVM)和自适应神经模糊推理系统(ANFIS)对各组进行分类。结果:应用Wilcoxon检验,发现休息与创造力的每三个任务之间存在显着差异。但是,在休息和第一任务之间进行了更好的区分。此外,第二项和第三项测试之间没有统计学差异。结果表明,SVM有效地检测了其余三个任务,特别是任务1,在线性分析中达到了99.63%的最大准确度。另外,高创意组与低创意组的准确率达到98.41%。结论:支持向量机分类器与线性特征的结合可以有效地揭示创意与生理变化的关系。

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