Deep learning for segmentation in radiation therapy planning: a review

Volume: 65, Issue: 5, Pages: 578 - 595
Published: Jul 26, 2021
Abstract
Segmentation of organs and structures, as either targets or organs-at-risk, has a significant influence on the success of radiation therapy. Manual segmentation is a tedious and time-consuming task for clinicians, and inter-observer variability can affect the outcomes of radiation therapy. The recent hype over deep neural networks has added many powerful auto-segmentation methods as variations of convolutional neural networks (CNN). This paper...
Paper Details
Title
Deep learning for segmentation in radiation therapy planning: a review
Published Date
Jul 26, 2021
Volume
65
Issue
5
Pages
578 - 595
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