%0 Journal Article %T A survey of brain functional network extraction methods using fMRI data. %A Du Y %A Fang S %A He X %A Calhoun VD %J Trends Neurosci %V 0 %N 0 %D 2024 Jun 20 %M 38906797 %F 16.978 %R 10.1016/j.tins.2024.05.011 %X Functional network (FN) analyses play a pivotal role in uncovering insights into brain function and understanding the pathophysiology of various brain disorders. This paper focuses on classical and advanced methods for deriving brain FNs from functional magnetic resonance imaging (fMRI) data. We systematically review their foundational principles, advantages, shortcomings, and interrelations, encompassing both static and dynamic FN extraction approaches. In the context of static FN extraction, we present hypothesis-driven methods such as region of interest (ROI)-based approaches as well as data-driven methods including matrix decomposition, clustering, and deep learning. For dynamic FN extraction, both window-based and windowless methods are surveyed with respect to the estimation of time-varying FN and the subsequent computation of FN states. We also discuss the scope of application of the various methods and avenues for future improvements.