Bhattacharya Debanjali, Sinha Neelam
Department of Artificial Intelligence, Amrita School of Artifical Intelligence, Bengaluru, Amrita Vishwa Vidyapeetham, Bangalore, 560035, India.
International Institute of Information Technology, Bangalore, 560100, India.
Med Biol Eng Comput. 2025 Jun 2. doi: 10.1007/s11517-025-03389-9.
Recent advances in neuroimaging have enabled studies in functional connectivity (FC) of human brain, alongside investigation of the neuronal basis of cognition. One important FC study is the representation of vision in human brain. The release of publicly available dataset "BOLD5000" has made it possible to study the brain dynamics during visual tasks in greater detail. In this paper, a comprehensive analysis of fMRI time series (TS) has been performed to explore different types of visual brain networks (VBN). The novelty of this work lies in (1) constructing VBN with consistently significant direct connectivity using both marginal and partial correlation, which is further analyzed using graph theoretic measures, and (2) classification of VBNs as formed by image complexity-specific TS, using graphical features. In image complexity-specific VBN classification, XGBoost yields average accuracy in the range of 86.5 to 91.5% for positively correlated VBN, which is 2% greater than that using negative correlation. This result not only reflects the distinguishing graphical characteristics of each image complexity-specific VBN, but also highlights the importance of studying both correlated and anti-correlated VBN to understand how differently brain functions while viewing different complexities of real-world images.
神经影像学的最新进展使得对人类大脑功能连接(FC)的研究成为可能,同时也能对认知的神经基础进行研究。一项重要的FC研究是人类大脑中视觉的表征。公开可用数据集“BOLD5000”的发布使得更详细地研究视觉任务期间的大脑动态成为可能。在本文中,对功能磁共振成像时间序列(TS)进行了全面分析,以探索不同类型的视觉脑网络(VBN)。这项工作的新颖之处在于:(1)使用边际和偏相关性构建具有一致显著直接连接性的VBN,并使用图论方法对其进行进一步分析;(2)使用图形特征将VBN分类为由图像复杂性特定TS形成的网络。在图像复杂性特定的VBN分类中,对于正相关的VBN,XGBoost的平均准确率在86.5%至91.5%之间,比使用负相关性时高出2%。这一结果不仅反映了每个图像复杂性特定VBN独特的图形特征,还强调了研究相关和反相关VBN对于理解在观看不同复杂程度的真实世界图像时大脑功能差异的重要性。