| Literature DB >> 33421919 |
Yucheng Tang1, Riqiang Gao2, Ho Hin Lee2, Shizhong Han3, Yunqiang Chen3, Dashan Gao3, Vishwesh Nath2, Camilo Bermudez4, Michael R Savona5, Richard G Abramson5, Shunxing Bao2, Ilwoo Lyu2, Yuankai Huo2, Bennett A Landman6.
Abstract
Deep learning for three dimensional (3D) abdominal organ segmentation on high-resolution computed tomography (CT) is a challenging topic, in part due to the limited memory provide by graphics processing units (GPU) and large number of parameters and in 3D fully convolutional networks (FCN). Two prevalent strategies, lower resolution with wider field of view and higher resolution with limited field of view, have been explored but have been presented with varying degrees of success. In this paper, we propose a novel patch-based network with random spatial initialization and statistical fusion on overlapping regions of interest (ROIs). We evaluate the proposed approach using three datasets consisting of 260 subjects with varying numbers of manual labels. Compared with the canonical "coarse-to-fine" baseline methods, the proposed method increases the performance on multi-organ segmentation from 0.799 to 0.856 in terms of mean DSC score (p-value < 0.01 with paired t-test). The effect of different numbers of patches is evaluated by increasing the depth of coverage (expected number of patches evaluated per voxel). In addition, our method outperforms other state-of-the-art methods in abdominal organ segmentation. In conclusion, the approach provides a memory-conservative framework to enable 3D segmentation on high-resolution CT. The approach is compatible with many base network structures, without substantially increasing the complexity during inference. Given a CT scan with at high resolution, a low-res section (left panel) is trained with multi-channel segmentation. The low-res part contains down-sampling and normalization in order to preserve the complete spatial information. Interpolation and random patch sampling (mid panel) is employed to collect patches. The high-dimensional probability maps are acquired (right panel) from integration of all patches on field of views.Entities:
Keywords: 3D CT; Abdominal organ segmentation; Coarse to fine; High resolution; Network fusion
Mesh:
Year: 2020 PMID: 33421919 PMCID: PMC9087814 DOI: 10.1016/j.media.2020.101894
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 13.828