
Mo Liu
· Assistant ProfessorUniversity of North Carolina at Chapel Hill · Statistics
Active 1987–2024
Research topics
- Computer Science
- Artificial Intelligence
- Machine Learning
- Psychology
- Neuroscience
- Theoretical computer science
- Psychiatry
Selected publications
IEEE Transactions on Medical Imaging · 2021 · 177 citations
- Computer Science
- Artificial Intelligence
- Computer Science
Brain connectivity alterations associated with mental disorders have been widely reported in both functional MRI (fMRI) and diffusion MRI (dMRI). However, extracting useful information from the vast amount of information afforded by brain networks remains a great challenge. Capturing network topology, graph convolutional networks (GCNs) have demonstrated to be superior in learning network representations tailored for identifying specific brain disorders. Existing graph construction techniques generally rely on a specific brain parcellation to define regions-of-interest (ROIs) to construct networks, often limiting the analysis into a single spatial scale. In addition, most methods focus on the pairwise relationships between the ROIs and ignore high-order associations between subjects. In this letter, we propose a mutual multi-scale triplet graph convolutional network (MMTGCN) to analyze functional and structural connectivity for brain disorder diagnosis. We first employ several templates with different scales of ROI parcellation to construct coarse-to-fine brain connectivity networks for each subject. Then, a triplet GCN (TGCN) module is developed to learn functional/structural representations of brain connectivity networks at each scale, with the triplet relationship among subjects explicitly incorporated into the learning process. Finally, we propose a template mutual learning strategy to train different scale TGCNs collaboratively for disease classification. Experimental results on 1,160 subjects from three datasets with fMRI or dMRI data demonstrate that our MMTGCN outperforms several state-of-the-art methods in identifying three types of brain disorders.
A Survey on Deep Learning for Neuroimaging-Based Brain Disorder Analysis
Frontiers in Neuroscience · 2020 · 217 citations
- Artificial Intelligence
- Computer Science
- Neuroscience
Deep learning has recently been used for the analysis of neuroimages, such as structural magnetic resonance imaging (MRI), functional MRI, and positron emission tomography (PET), and it has achieved significant performance improvements over traditional machine learning in computer-aided diagnosis of brain disorders. This paper reviews the applications of deep learning methods for neuroimaging-based brain disorder analysis. We first provide a comprehensive overview of deep learning techniques and popular network architectures by introducing various types of deep neural networks and recent developments. We then review deep learning methods for computer-aided analysis of four typical brain disorders, including Alzheimer's disease, Parkinson's disease, Autism spectrum disorder, and Schizophrenia, where the first two diseases are neurodegenerative disorders and the last two are neurodevelopmental and psychiatric disorders, respectively. More importantly, we discuss the limitations of existing studies and present possible future directions.
Recent grants
Multi-Site Neuroimage Harmonization for Personalized Brain Disorder Analysis
NIH · $1.4M · 2022–2025
NIH · $3.0M · 2022
Frequent coauthors
- 172 shared
Dinggang Shen
- 76 shared
Daoqiang Zhang
Nanjing University of Aeronautics and Astronautics
- 48 shared
Pew‐Thian Yap
University of North Carolina at Chapel Hill
- 33 shared
Yuqi Fang
North China University of Science and Technology
- 28 shared
Mingliang Wang
Nanjing University of Information Science and Technology
- 28 shared
Lishan Qiao
Shandong Jianzhu University
- 28 shared
Dongren Yao
Harvard University
- 26 shared
Guy G. Potter
Education
- 2015
PhD
Nanjing University of Aeronautics and Astronautics
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