2024
DOI: 10.3389/fdata.2024.1462745
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Unsupervised machine learning model for detecting anomalous volumetric modulated arc therapy plans for lung cancer patients

Peng Huang,
Jiawen Shang,
Yuhan Fan
et al.

Abstract: PurposeVolumetric modulated arc therapy (VMAT) is a new treatment modality in modern radiotherapy. To ensure the quality of the radiotherapy plan, a physics plan review is routinely conducted by senior clinicians; however, this process is less efficient and less accurate. In this study, a multi-task AutoEncoder (AE) is proposed to automate anomaly detection of VMAT plans for lung cancer patients.MethodsThe feature maps are first extracted from a VMAT plan. Then, a multi-task AE is trained based on the input of… Show more

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