Purpose: Deep learning can be used to automatically digitize interstitial needles in high-dose-rate (HDR) brachytherapy for patients with cervical cancer. The aim of this study was to design a novel attention-gated deep-learning model, which may further improve the accuracy of and better differentiate needles. Methods and Materials: Seventeen patients with cervical cancer with 56 computed tomography-based interstitial HDR brachytherapy plans from the local hospital were retrospectively chosen with the local institutional review board's approval. Among them, 50 plans were randomly selected as the training set and the rest as the validation set. Spatial and channel attention gates (AGs) were added to 3-dimensional convolutional neural networks (CNNs) to highlight needle features and suppress irrelevant regions; this was supposed to facilitate convergence and improve accuracy of automatic needle digitization. Subsequently, the automatically digitized needles were exported to the Oncentra treatment planning system (Elekta Solutions AB, Stockholm, Sweden) for dose evaluation. The geometric and dosimetric accuracy of automatic needle digitization was compared among 3 methods: (1) clinically approved plans with manual needle digitization (ground truth); (2) the conventional deep-learning (CNN) method; and (3) the attention-added deep-learning (CNN + AG) method, in terms of the Dice similarity coefficient (DSC), tip and shaft positioning errors, dose distribution in the high-risk clinical target volume (HR-CTV), organs at risk, and soon. Results: The attention-gated CNN model was superior to CNN without AGs, with a greater DSC (approximately 94% for CNN + AG vs 89% for CNN). The needle tip and shaft errors of the CNN + AG method (1.1 mm and 1.8 mm, respectively) were also much smaller than those of the CNN method (2.0 mm and 3.3 mm, respectively). Finally, the dose difference for the HR-CTV D90 using the CNN + AG method was much more accurate than that using CNN (0.4% and 1.7%, respectively). Conclusions: The attention-added deep-learning model was successfully implemented for automatic needle digitization in HDR brachytherapy, with clinically acceptable geometric and dosimetric accuracy. Compared with conventional deep-learning neural networks, attention-gated deep learning may have superior performance and great clinical potential. (c) 2023 The Authors. Published by Elsevier Inc. on behalf of American Society for Radiation Oncology. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
基金:
CAS Key Laboratory of Health Informatics, Shenzhen Institute of Advanced Technology
(#2011DP173015); the Shenzhen Technology and Innovation Program
(JCYJ20210324110210029); and a clinical research grant from Peking
University Shenzhen Hospital (LCYJ2021018).
语种:
外文
WOS:
中科院(CAS)分区:
出版当年[2023]版:
无
最新[2025]版:
大类|4 区医学
小类|4 区肿瘤学4 区核医学
JCR分区:
出版当年[2022]版:
无
最新[2023]版:
Q2RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGINGQ3ONCOLOGY
第一作者机构:[1]Yale Univ, Sch Med, Dept Therapeut Radiol, New Haven, CT 06520 USA
共同第一作者:
通讯作者:
推荐引用方式(GB/T 7714):
Wang Yuenan,Jian Wanwei,Zhu Lin,et al.Attention-Gated Deep-Learning-Based Automatic Digitization of Interstitial Needles in High-Dose-Rate Brachytherapy for Cervical Cancer[J].ADVANCES IN RADIATION ONCOLOGY.2024,9(1):doi:10.1016/j.adro.2023.101340.
APA:
Wang, Yuenan,Jian, Wanwei,Zhu, Lin,Cai, Chunya,Zhang, Bailin&Wang, Xuetao.(2024).Attention-Gated Deep-Learning-Based Automatic Digitization of Interstitial Needles in High-Dose-Rate Brachytherapy for Cervical Cancer.ADVANCES IN RADIATION ONCOLOGY,9,(1)
MLA:
Wang, Yuenan,et al."Attention-Gated Deep-Learning-Based Automatic Digitization of Interstitial Needles in High-Dose-Rate Brachytherapy for Cervical Cancer".ADVANCES IN RADIATION ONCOLOGY 9..1(2024)