Huang, Fangfang, Huang, Yuan, Guo, Siying, Chang, Xiaoyi, Chen, Yuqi, Wang, Mingzhu, Wang, Yingfang, and Ren, Shuai
• Studies using brain effective connectivity to identify mental illness were reviewed. • Thirty-five papers were included through systematic literature search. • Methods applied to build diagnosis models and the performance were summarized. • Limitations, challenges and future directions were discussed. Brain effective connectivity (EC) is a functional measurement that reflects the causal effects and topological relationships of neural activities. Recent research has increasingly focused on the classification for mental illnesses and healthy controls using brain EC; however, no comprehensive reviews have synthesized these studies. Therefore, the aim of this review is to thoroughly examine the existing literature on constructing diagnosis model for mental illnesses using brain EC. We first conducted a systematical literature search and thirty-five papers met the inclusion criteria. Subsequently, we summarized the approaches for estimating EC, the classification and validation methods used, the accuracies of models, and the main findings. Finally, we discussed the limitations of current research and the challenges in future research. These summaries and discussion provide references for future research on mental illnesses identification based on brain EC. [ABSTRACT FROM AUTHOR]