Back to Search Start Over

Comprehensive and clinically accurate head and neck cancer organs-at-risk delineation on a multi-institutional study

Authors :
Xianghua Ye
Dazhou Guo
Jia Ge
Senxiang Yan
Yi Xin
Yuchen Song
Yongheng Yan
Bing-shen Huang
Tsung-Min Hung
Zhuotun Zhu
Ling Peng
Yanping Ren
Rui Liu
Gong Zhang
Mengyuan Mao
Xiaohua Chen
Zhongjie Lu
Wenxiang Li
Yuzhen Chen
Lingyun Huang
Jing Xiao
Adam P. Harrison
Le Lu
Chien-Yu Lin
Dakai Jin
Tsung-Ying Ho
Source :
Nature communications. 13(1)
Publication Year :
2021

Abstract

Accurate organ-at-risk (OAR) segmentation is critical to reduce radiotherapy complications. Consensus guidelines recommend delineating over 40 OARs in the head-and-neck (H&N). However, prohibitive labor costs cause most institutions to delineate a substantially smaller subset of OARs, neglecting the dose distributions of other OARs. Here, we present an automated and highly effective stratified OAR segmentation (SOARS) system using deep learning that precisely delineates a comprehensive set of 42 H&N OARs. We train SOARS using 176 patients from an internal institution and independently evaluate it on 1327 external patients across six different institutions. It consistently outperforms other state-of-the-art methods by at least 3–5% in Dice score for each institutional evaluation (up to 36% relative distance error reduction). Crucially, multi-user studies demonstrate that 98% of SOARS predictions need only minor or no revisions to achieve clinical acceptance (reducing workloads by 90%). Moreover, segmentation and dosimetric accuracy are within or smaller than the inter-user variation.

Details

ISSN :
20411723
Volume :
13
Issue :
1
Database :
OpenAIRE
Journal :
Nature communications
Accession number :
edsair.doi.dedup.....cb292918ce2cf54c6dffb4ee9b20b001