End-to-End Deep Learning for Structural Brain Imaging: A Unified Framework

Authors

  • Yao Su Worcester Polytechnic Institute
  • Keqi Han Emory University
  • Mingjie Zeng Worcester Polytechnic Institute
  • Lichao Sun Lehigh University
  • Liang Zhan University of Pittsburgh
  • Carl Yang Emory University
  • Lifang He Lehigh University
  • Xiangnan Kong Worcester Polytechnic Institute

DOI:

https://doi.org/10.1609/aaaiss.v5i1.35548

Abstract

Brain imaging analysis is fundamental in neuroscience, providing valuable insights into brain structure and function. Traditional workflows follow a sequential pipeline—brain extraction, registration, segmentation, parcellation, network generation, and classification—treating each step as an independent task. These methods rely heavily on task-specific training data and expert intervention to correct intermediate errors, making them particularly burdensome for high-dimensional neuroimaging data, where annotations and quality control are costly and time-consuming. We introduce UniBrain, a unified end-to-end framework that integrates all processing steps into a single optimization process, allowing tasks to interact and refine each other. Unlike traditional approaches that require extensive task-specific annotations, UniBrain operates with minimal supervision, leveraging only low-cost labels (\ie classification and extraction) and a single labeled atlas. By jointly optimizing extraction, registration, segmentation, parcellation, network generation, and classification, UniBrain enhances both accuracy and computational efficiency while significantly reducing annotation effort. Experimental results demonstrate its superiority over existing methods across multiple tasks, offering a more scalable and reliable solution for neuroimaging analysis.

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Published

2025-05-28

How to Cite

Su, Y., Han, K., Zeng, M., Sun, L., Zhan, L., Yang, C., … Kong, X. (2025). End-to-End Deep Learning for Structural Brain Imaging: A Unified Framework. Proceedings of the AAAI Symposium Series, 5(1), 25–30. https://doi.org/10.1609/aaaiss.v5i1.35548

Issue

Section

AI for Health Symposium: Leveraging Artificial Intelligence to Revolutionize Healthcare (Short Papers)