TY - JOUR
T1 - ConnectomeDiffuser: Generative AI Enables Brain Network Construction From Diffusion Tensor Imaging
AU - Chen, Xuhang
AU - Shen, Yanyan
AU - Mahmud, Mufti
AU - Kwok-Po Ng, Michael
AU - Tsang, Kim Fung
AU - Wang, Shanshan
AU - Pun, Chi Man
AU - Wang, Shuqiang
N1 - This work was supported in part by the National Natural Science Foundations of China under Grant 62172403 and Grant 12326614; in part by the National Key Research and Development Program of China under Grant 2023YFC2506902; and in part by the Science and Technology Development Fund, Macau, SAR, under Grant 0141/2023/RIA2 and Grant 0193/2023/RIA3. The work of Michael Kwok-Po Ng was supported in part by the National Key Research and Development Program of China under Grant 2024YFE0202900, in part by RGC GRF under Grant 12300125, and in part by Joint NSFC and RGC under Grant N-HKU769/21.
PY - 2025/8
Y1 - 2025/8
N2 - Brain network analysis plays a crucial role in diagnosing and monitoring neurodegenerative disorders such as Alzheimer’s disease (AD). Existing approaches for constructing structural brain networks from diffusion tensor imaging (DTI) often rely on specialized toolkits that suffer from inherent limitations: operator subjectivity, labor-intensive workflows, and restricted capacity to capture complex topological features and disease-specific biomarkers. To overcome these challenges and advance computational neuroimaging instrumentation, ConnectomeDiffuser is proposed as a novel diffusion-based framework for automated end-to-end brain network construction from DTI. The proposed model combines three key components: (1) a Template Network that extracts topological features from 3D DTI scans using Riemannian geometric principles, (2) a diffusion model that generates comprehensive brain networks with enhanced topological fidelity, and (3) a Graph Convolutional Network classifier that incorporates disease-specific markers to improve diagnostic accuracy. ConnectomeDiffuser demonstrates superior performance by capturing a broader range of structural connectivity and pathology-related information, enabling more sensitive analysis of individual variations in brain networks. Experimental validation on datasets representing two distinct neurodegenerative conditions demonstrates significant performance improvements over other brain network methods. This work contributes to the advancement of instrumentation in the context of neurological disorders, providing clinicians and researchers with a robust, generalizable measurement framework that facilitates more accurate diagnosis, deeper mechanistic understanding, and improved therapeutic monitoring of neurodegenerative diseases such as AD.
AB - Brain network analysis plays a crucial role in diagnosing and monitoring neurodegenerative disorders such as Alzheimer’s disease (AD). Existing approaches for constructing structural brain networks from diffusion tensor imaging (DTI) often rely on specialized toolkits that suffer from inherent limitations: operator subjectivity, labor-intensive workflows, and restricted capacity to capture complex topological features and disease-specific biomarkers. To overcome these challenges and advance computational neuroimaging instrumentation, ConnectomeDiffuser is proposed as a novel diffusion-based framework for automated end-to-end brain network construction from DTI. The proposed model combines three key components: (1) a Template Network that extracts topological features from 3D DTI scans using Riemannian geometric principles, (2) a diffusion model that generates comprehensive brain networks with enhanced topological fidelity, and (3) a Graph Convolutional Network classifier that incorporates disease-specific markers to improve diagnostic accuracy. ConnectomeDiffuser demonstrates superior performance by capturing a broader range of structural connectivity and pathology-related information, enabling more sensitive analysis of individual variations in brain networks. Experimental validation on datasets representing two distinct neurodegenerative conditions demonstrates significant performance improvements over other brain network methods. This work contributes to the advancement of instrumentation in the context of neurological disorders, providing clinicians and researchers with a robust, generalizable measurement framework that facilitates more accurate diagnosis, deeper mechanistic understanding, and improved therapeutic monitoring of neurodegenerative diseases such as AD.
KW - Brain network construction
KW - diffusion model
KW - diffusion tensor imaging
KW - graph convolutional network
UR - https://www.scopus.com/pages/publications/105012304613
U2 - 10.1109/TCE.2025.3592925
DO - 10.1109/TCE.2025.3592925
M3 - Journal article
AN - SCOPUS:105012304613
SN - 0098-3063
VL - 71
SP - 7835
EP - 7847
JO - IEEE Transactions on Consumer Electronics
JF - IEEE Transactions on Consumer Electronics
IS - 3
ER -