학술논문

A topological encoding convolutional neural network for segmentation of 3D multiphoton images of brain vasculature using persistent homology
Document Type
Conference
Source
2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW) Computer Vision and Pattern Recognition Workshops (CVPRW),2020 IEEE/CVF Conference on. :4262-4271 Jun, 2020
Subject
Computing and Processing
Image segmentation
Three-dimensional displays
Biological system modeling
Computer vision
Computer architecture
Biomedical imaging
Language
ISSN
2160-7516
Abstract
The clinical evidence suggests that cognitive disorders are associated with vasculature dysfunction and decreased blood flow in the brain. Hence, a functional understanding of the linkage between brain functionality and the vascular network is essential. However, methods to systematically and quantitatively describe and compare structures as complex as brain blood vessels are lacking. 3D imaging modalities such as multiphoton microscopy enables researchers to capture the network of brain vasculature with high spatial resolutions. Nonetheless, image processing and inference are some of the bottlenecks for biomedical research involving imaging, and any advancement in this area impacts many research groups. Here, we propose a topological encoding convolutional neural network based on persistent homology to segment 3D multiphoton images of brain vasculature. We demonstrate that our model outperforms state-of-the-art models in terms of the Dice coefficient and it is comparable in terms of other metrics such as sensitivity. Additionally, the topological characteristics of our model’s segmentation results mimic manual ground truth. Our code and model are open source at https://github.com/mhaft/DeepVess.