Zhao Renjie, Zhang Tao, Zhou Shichao, Huang Liya
Bell Honors School, Nanjing University of Posts and Telecommunications, Nanjing 210023, China.
School of Materials Science and Engineering, Nanjing University of Posts and Telecommunications, Nanjing 210023, China.
Brain Sci. 2022 Aug 30;12(9):1159. doi: 10.3390/brainsci12091159.
Emotion analysis has emerged as one of the most prominent study areas in the field of Brain Computer Interface (BCI) due to the critical role that the human brain plays in the creation of human emotions. In this study, a Multi-objective Immunogenetic Community Division Algorithm Based on Memetic Framework (MFMICD) was suggested to study different emotions from the perspective of brain networks. To improve convergence and accuracy, MFMICD incorporates the unique immunity operator based on the traditional genetic algorithm and combines it with the taboo search algorithm. Based on this approach, we examined how the structure of people's brain networks alters in response to different emotions using the electroencephalographic emotion database. The findings revealed that, in positive emotional states, more brain regions are engaged in emotion dominance, the information exchange between local modules is more frequent, and various emotions cause more varied patterns of brain area interactions than in negative brain states. A brief analysis of the connections between different emotions and brain regions shows that MFMICD is reliable in dividing emotional brain functional networks into communities.
由于人类大脑在人类情绪产生中所起的关键作用,情绪分析已成为脑机接口(BCI)领域最突出的研究领域之一。在本研究中,提出了一种基于模因框架的多目标免疫遗传社区划分算法(MFMICD),从脑网络的角度研究不同的情绪。为了提高收敛性和准确性,MFMICD在传统遗传算法的基础上引入了独特的免疫算子,并将其与禁忌搜索算法相结合。基于这种方法,我们使用脑电图情绪数据库研究了人们的脑网络结构如何因不同情绪而改变。研究结果表明,在积极情绪状态下,更多的脑区参与情绪主导,局部模块之间的信息交换更频繁,与消极脑状态相比,各种情绪导致的脑区交互模式更加多样。对不同情绪与脑区之间联系的简要分析表明,MFMICD在将情绪脑功能网络划分为社区方面是可靠的。