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Predictive quality assurance of a linear accelerator based on the machine performance check application using statistical process control and ARIMA forecast modeling

机译:基于机器性能检查应用使用统计过程控制和ARIMA预测建模的基于机器性能检查应用的线性加速器的预测质量保证

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Purpose A predictive linac quality assurance system based on the output of the Machine Performance Check (MPC) application was developed using statistical process control and autoregressive integrated moving average forecast modeling. The aim of this study is to demonstrate the feasibility of predictive quality assurance based on MPC tests that allow proactive preventative maintenance procedures to be carried out to better ensure optimal linac performance and minimize downtime. Method and Materials Daily MPC data were acquired for a total of 490 measurements. The initial 85% of data were used in prediction model learning with the autoregressive integrated moving average technique and in calculating upper and lower control limits for statistical process control analysis. The remaining 15% of data were used in testing the accuracy of the predictions of the proposed system. Two types of prediction were studied, namely, one‐step‐ahead values for predicting the next day's quality assurance results and six‐step‐ahead values for predicting up to a week ahead. Results that fall within the upper and lower control limits indicate a normal stage of machine performance, while the tolerance, determined from AAPM TG‐142, is the clinically required performance. The gap between the control limits and the clinical tolerances (as the warning stage) provides a window of opportunity for rectifying linac performance issues before they become clinically significant. The accuracy of the predictive model was tested using the root‐mean‐square error, absolute error, and average accuracy rate for all MPC test parameters. Results The accuracy of the predictive model is considered high (average root‐mean‐square error and absolute error for all parameters of less than 0.05). The average accuracy rate for indicating the normal/warning stages was higher than 85.00%. Conclusion Predictive quality assurance with the MPC will allow preventative maintenance, which could lead to improved linac performance and a reduction in unscheduled linac downtime.
机译:目的,使用统计过程控制和自回归综合移动平均预测建模开发了一种基于机器性能检查(MPC)应用的输出的预测LINAC质量保证系统。本研究的目的是展示基于MPC测试的预测质量保证的可行性,以便进行主动预防性维护程序,以便更好地确保最佳的LINAC性能并最大限度地减少停机时间。方法和材料每日MPC数据都被收购,总共490次测量。初始85%的数据用于预测模型学习与自回归积分移动平均技术,并计算统计过程控制分析的上下控制限制。其余15%的数据用于测试所提出的系统的预测的准确性。研究了两种类型的预测,即预测第二天的质量保证结果和六步预测的一步值,以预测未来一周。落入上部和下部控制限制内的结果表示机器性能的正常阶段,而由AAPM TG-142确定的公差是临床所需的性能。控制限制与临床公差之间的差距(作为警告阶段)为在临床上显着之前,提供了整改线路性能问题的机会窗口。使用根均方误差,绝对误差和所有MPC测试参数的平均精度率测试预测模型的准确性。结果预测模型的准确性被认为是高(平均根均方误差和小于0.05的所有参数的绝对误差)。表示正常/警告阶段的平均精度率高于85.00%。结论与MPC的预测质量保证将允许预防性维护,这可能导致LINAC性能提高,减少未安排的LINAC停机。

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