Enhancing patient‐specific quality assurance for VMAT for breast cancer treatment: A machine learning approach for gamma passing rate (GPR) prediction

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2025
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American English
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Wiley
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Abstract

Background: Modern radiation therapy for breast cancer has significantly advanced with the adoption of volumetric modulated arc therapy (VMAT), offering enhanced precision and improved treatment efficiency.

Purpose: To ensure the accuracy and precision of such complex treatments, a robust patient-specific quality assurance (PSQA) protocol is essential. This study investigates the potential of machine learning (ML) models to predict gamma passing rates (GPR), a key metric in PSQA.

Methods: A dataset comprising 863 VMAT plans was used to develop and compare seven ML models: Histogram-based gradient boosting regressor, random forest regressor, extra trees regressor, gradient boosting regressor, linear regression, AdaBoost regressor, and Multi-layer perceptron regressor. These models incorporated anatomical, dosimetric, and plan complexity features.

Results: Among the evaluated models, the extra trees regressor (ETR), random forest regressor (RFR), and gradient boosting regressor (GBR) demonstrated the best performance, achieving mean absolute errors (MAEs) of 0.51%, 0.52%, and 0.51%, and mean squared errors (MSEs) of 0.0051%, 0.0051%, and 0.0052%, respectively, on the validation dataset.

Conclusions: This study highlights the promise of ML-based approaches in streamlining PSQA processes, thereby supporting the quality assurance of breast cancer treatments using VMAT.

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Djoumessi Zamo FC, Colliaux A, Blot-Lafond V, Moyo N, Njeh CF. Enhancing patient-specific quality assurance for VMAT for breast cancer treatment: A machine learning approach for gamma passing rate (GPR) prediction. J Appl Clin Med Phys. 2025;26(9):e70251. doi:10.1002/acm2.70251
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Journal of Applied Clinical Medical Physics
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PMC
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