Assessment of the deep learning-based gamma passing rate prediction system for 1.5 T magnetic resonance-guided linear accelerator

Ryota Tozuka, Noriyuki Kadoya,Kazuhiro Arai, Kiyokazu Sato,Keiichi Jingu

Radiological Physics and Technology(2024)

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摘要
Measurement-based verification is impossible for the patient-specific quality assurance (QA) of online adaptive magnetic resonance imaging-guided radiotherapy (oMRgRT) because the patient remains on the couch throughout the session. We assessed a deep learning (DL) system for oMRgRT to predict the gamma passing rate (GPR). This study collected 125 verification plans [reference plan (RP), 100; adapted plan (AP), 25] from patients with prostate cancer treated using Elekta Unity. Based on our previous study, we employed a convolutional neural network that predicted the GPRs of nine pairs of gamma criteria from 1
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关键词
Deep learning,Patient QA,MR-Linac,Unity,Prostate,Online ART
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