Computational approaches for the reconstruction of optic nerve fibers along the visual pathway from medical images: a comprehensive review

Front Neurosci. 2023 May 26:17:1191999. doi: 10.3389/fnins.2023.1191999. eCollection 2023.

Abstract

Optic never fibers in the visual pathway play significant roles in vision formation. Damages of optic nerve fibers are biomarkers for the diagnosis of various ophthalmological and neurological diseases; also, there is a need to prevent the optic nerve fibers from getting damaged in neurosurgery and radiation therapy. Reconstruction of optic nerve fibers from medical images can facilitate all these clinical applications. Although many computational methods are developed for the reconstruction of optic nerve fibers, a comprehensive review of these methods is still lacking. This paper described both the two strategies for optic nerve fiber reconstruction applied in existing studies, i.e., image segmentation and fiber tracking. In comparison to image segmentation, fiber tracking can delineate more detailed structures of optic nerve fibers. For each strategy, both conventional and AI-based approaches were introduced, and the latter usually demonstrates better performance than the former. From the review, we concluded that AI-based methods are the trend for optic nerve fiber reconstruction and some new techniques like generative AI can help address the current challenges in optic nerve fiber reconstruction.

Keywords: artificial intelligence; fiber tracking; image segmentation; medical image analysis; optic nerve fiber; visual pathway.

Publication types

  • Review

Grants and funding

This work was supported in part by the National Natural Science Foundation of China (Grant Nos. 62101236 and 82102189), General Program of National Natural Science Foundation of China (Grant No. 82272086), Guangdong Provincial Department of Education (Grant No. 2020ZDZX3043), Guangdong Provincial Key Laboratory (Grant No. 2020B121201001), Shenzhen Natural Science Fund (JCYJ20200109140820699), and the Stable Support Plan Program (20200925174052004).