2023
DOI: 10.1002/acm2.14215
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Prediction of patient‐specific quality assurance for volumetric modulated arc therapy using radiomics‐based machine learning with dose distribution

Natsuki Ishizaka,
Tomotaka Kinoshita,
Madoka Sakai
et al.

Abstract: PurposeWe sought to develop machine learning models to predict the results of patient‐specific quality assurance (QA) for volumetric modulated arc therapy (VMAT), which were represented by several dose‐evaluation metrics—including the gamma passing rates (GPRs)—and criteria based on the radiomic features of 3D dose distribution in a phantom.MethodsA total of 4,250 radiomic features of 3D dose distribution in a cylindrical dummy phantom for 140 arcs from 106 clinical VMAT plans were extracted. We obtained the f… Show more

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“…Additionally, VMAT provides a better patient experience. Shorter treatment times, reduced side-effects and improved accuracy contribute to a better overall patient experience and can lead to increased satisfaction and compliance with treatment protocols (25).…”
Section: Comparison Of Dose Distribution In Postoperative Treatment P...mentioning
confidence: 99%
“…Additionally, VMAT provides a better patient experience. Shorter treatment times, reduced side-effects and improved accuracy contribute to a better overall patient experience and can lead to increased satisfaction and compliance with treatment protocols (25).…”
Section: Comparison Of Dose Distribution In Postoperative Treatment P...mentioning
confidence: 99%