Multi-institutional Validation of Two-Streamed Deep Learning Method for Automated Delineation of Esophageal Gross Tumor Volume using planning-CT and FDG-PETCT
Xianghua Ye, Dazhou Guo, Chen-kan Tseng, Jia Ge, Tsung-Min Hung,, Ping-Ching Pai, Yanping Ren, Lu Zheng, Xinli Zhu, Ling Peng, Ying Chen,, Xiaohua Chen, Chen-Yu Chou, Danni Chen, Jiaze Yu, Yuzhen Chen, Feiran Jiao,, Yi Xin, Lingyun Huang, Guotong Xie, Jing Xiao, Le Lu

TL;DR
This study validates a deep learning model for automated esophageal tumor volume delineation across multiple institutions, demonstrating high accuracy and reduced contouring time, supporting clinical adoption.
Contribution
The paper presents a multi-institutional validation of a two-streamed deep learning model for esophageal GTV segmentation, showing its generalizability and efficiency improvements.
Findings
High segmentation accuracy with mean Dice scores around 0.80-0.83.
88% of contours required only minor or no revisions.
Deep model assistance reduced contouring time by nearly 50%.
Abstract
Background: The current clinical workflow for esophageal gross tumor volume (GTV) contouring relies on manual delineation of high labor-costs and interuser variability. Purpose: To validate the clinical applicability of a deep learning (DL) multi-modality esophageal GTV contouring model, developed at 1 institution whereas tested at multiple ones. Methods and Materials: We collected 606 esophageal cancer patients from four institutions. 252 institution-1 patients had a treatment planning-CT (pCT) and a pair of diagnostic FDG-PETCT; 354 patients from other 3 institutions had only pCT. A two-streamed DL model for GTV segmentation was developed using pCT and PETCT scans of a 148 patient institution-1 subset. This built model had the flexibility of segmenting GTVs via only pCT or pCT+PETCT combined. For independent evaluation, the rest 104 institution-1 patients behaved as unseen internal…
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Taxonomy
TopicsEsophageal Cancer Research and Treatment · Radiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment
MethodsPerceptual control theoretic architecture
