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Predictive time-series modeling using artificial neural networks for Linac beam symmetry: an empirical study

机译:直线加速器对称性的人工神经网络预测时间序列建模:一项实证研究

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摘要

Over half of cancer patients receive radiotherapy as partial or full cancer treatment. Daily quality assurance (QA) of radiotherapy in cancer treatment closely monitors the performance of the medical linear accelerator (Linac) and is critical for continuous improvement of patient safety and quality of care. Cumulative longitudinal QA measurements are valuable for understanding the behavior of the Linac and allow physicists to identify trends in the output and take preventive actions. In this study, artificial neural networks (ANNs) and autoregressive moving average (ARMA) time-series prediction modeling techniques were both applied to 5-year daily Linac QA data. Verification tests and other evaluations were then performed for all models. Preliminary results showed that ANN time-series predictive modeling has more advantages over ARMA techniques for accurate and effective applicability in the dosimetry and QA field.
机译:超过一半的癌症患者接受放射疗法作为部分或全部癌症治疗。癌症治疗中放射治疗的每日质量保证(QA)密切监视医用线性加速器(Linac)的性能,对于持续改善患者安全性和护理质量至关重要。累积的纵向QA测量值对于了解直线加速器的行为非常有价值,并使物理学家能够确定输出趋势并采取预防措施。在这项研究中,人工神经网络(ANN)和自回归移动平均(ARMA)时间序列预测建模技术都应用于5年每日直线加速器质量保证数据。然后对所有模型进行验证测试和其他评估。初步结果表明,ANN时间序列预测建模在剂量学和QA领域的准确有效应用方面比ARMA技术更具优势。

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