| Literature DB >> 30798219 |
Hyeonsoo Moon1, Yuankai Huo2, Richard G Abramson3, Richard Alan Peters4, Albert Assad5, Tamara K Moyo6, Michael R Savona7, Bennett A Landman8.
Abstract
Delineation of Computed Tomography (CT) abdominal anatomical structure, specifically spleen segmentation, is useful for not only measuring tissue volume and biomarkers but also for monitoring interventions. Recently, segmentation algorithms using deep learning have been widely used to reduce time humans spend to label CT data. However, the computerized segmentation has two major difficulties: managing intermediate results (e.g., resampled scans, 2D sliced image for deep learning), and setting up the system environments and packages for autonomous execution. To overcome these issues, we propose an automated pipeline for the abdominal spleen segmentation. This pipeline provides an end-to-end synthesized process that allows users to avoid installing any packages and to deal with the intermediate results locally. The pipeline has three major stages: pre-processing of input data, segmentation of spleen using deep learning, 3D reconstruction with the generated labels by matching the segmentation results with the original image dimensions, which can then be used later and for display or demonstration. Given the same volume scan, the approach described here takes about 50 s on average whereas the manual segmentation takes about 30 min on the average. Even if it includes all subsidiary processes such as preprocessing and necessary setups, the whole pipeline process requires on the average 20 min from beginning to end.Entities:
Keywords: Clinical trial; DICOM; Deep learning; Docker; End-to-end automation; Image processing; Spleen segmentation
Mesh:
Year: 2019 PMID: 30798219 PMCID: PMC7086455 DOI: 10.1016/j.compbiomed.2019.01.018
Source DB: PubMed Journal: Comput Biol Med ISSN: 0010-4825 Impact factor: 4.589