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In radiotherapy for cancer patients, an indispensable process is to delineate organs-at-risk (OARs) and tumors. However, it is the most time-consuming step as manual delineation is always required from radiation oncologists. Herein, we propose a lightweight deep learning framework for radiotherapy treatment planning (RTP), named RTP-Net, to promote an automatic, rapid, and precise initialization of whole-body OARs and tumors. Briefly, the framework implements a cascade coarse-to-fine segmentation, with adaptive module for both small and large organs, and attention mechanisms for organs and boundaries. Our experiments show three merits: 1) Extensively evaluates on 67 delineation tasks on a large-scale dataset of 28,581 cases; 2) Demonstrates comparable or superior accuracy with an average Dice of 0.95; 3) Achieves near real-time delineation in most tasks with <2 s. This framework could be utilized to accelerate the contouring process in the All-in-One radiotherapy scheme, and thus greatly shorten the turnaround time of patients.
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Feng Shi
Weigang Hu
Jiaojiao Wu
SHILAP Revista de lepidopterología
Nature Communications
ShanghaiTech University
Shanghai Medical College of Fudan University
Fudan University Shanghai Cancer Center
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Shi et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69da7eb9114855a51268422f — DOI: https://doi.org/10.1038/s41467-022-34257-x