About this Research Topic
The application of network science in the brain has promoted our understanding of structure and functional organization of the brain. Furthermore, studying the brain within this framework effectively reveals how neurological diseases affect brain organization. In this Research Topic, we seek to gather new findings on brain network construction, multimodal fusion, representation of network learning, and making inferences and predictions via brain networks. More specifically, the goal of this research topic is to promote the current understanding of the brain connectome via mathematical modelling, develop new and advanced methods to capture the graphical relationship between function and structure, effectively utilize the multi-modal data, and accurately learn the representation of the network in brain disorders, thereby promoting our understanding of the underlying configuration and dynamics of the brain.
Both original research and review articles are welcome. Studies should focus on major trends and challenges in this field. Potential subtopics include but are not limited to the following:
1. Machine/deep learning for brain network analysis.
2. Machine/deep learning for multiple network integration.
3. Neurological diseases or disorders mechanisms via brain network.
4. Artificial intelligence applications: graph neural network, graph kernel, etc.
5. Identification of neurological diseases or disorders.
6. Graphical relationship between function and structure of the brain.
7. Data-driven based brain network construction.
Keywords: Brain Network; Machine Learning; Neuro-disease Identification; Network Analysis; Multi-View; Graph Learning
Important Note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.