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运用人工神经网络预测动态调强放射治疗过程中多叶准直器的个体位置偏差。

Prediction of the individual multileaf collimator positional deviations during dynamic IMRT delivery priori with artificial neural network.

机构信息

Department of Radiation Oncology, American University of Beirut Medical Center, Riad El-Solh, 1107 2020, Beirut, Lebanon.

Department of Medical Physics, Al-Neelain University, Khartoum, 11121, Sudan.

出版信息

Med Phys. 2020 Apr;47(4):1421-1430. doi: 10.1002/mp.14014. Epub 2020 Jan 30.

Abstract

PURPOSES

Multileaf collimator (MLC) positional accuracy during dynamic intensity modulation radiotherapy (IMRT) delivery is crucial for safe and accurate patient treatment. The deviations of individual leaf positions from its intended positions can lead to errors in the dose delivered to the patient and hence may adversely affect the treatment outcome. In this study, we propose a state-of-the-art machine learning (ML) method based on an artificial neural network (ANN) for accurately predicting the MLC leaf positional deviations during the dynamic IMRT treatment delivery priori using log file data.

METHODS

Data of ten patients treated with sliding window dynamic IMRT delivery were retrospectively retrieved from a single-institution database. The patients' plans were redelivered with no patient on the couch using a Varian linear accelerator equipped with a Millennium 120 HD MLC system. Then the machine recorded log files data, a total of over 400 files containing 360 800 control points, were collected. A total of 14 parameters were extracted from the planning data in the log files such as leaf planned positions, dose fraction, leaf velocity, leaf moving status, leaf gap, and others. Next, we developed a feed-forward ANN architecture mapping the input parameters with the output to predict the MLC leaf positional deviations during the delivery priori. The proposed model was trained on 70% of the total data using the delivered leaf positional data as a target response. The trained model was then validated and tested on 30% of the available data. The model accuracy was evaluated using the mean squared error (MSE), regression plot, and error histogram.

RESULTS

The deviations between the individual MLC planned and delivered positions can reach up to a few millimeters, with a maximum deviation of 1.2 mm. The predicted leaf positions at control points closely matched the delivered positions for all MLC leaves during the treatment delivery. The ANN model achieved a maximum MSE of 0.0001 mm (root MSE of 0.0097 mm) in predicting the leaf positions at control points of test data for each leaf. The correlation coefficient, that measures the goodness of fit, was perfect (R = 0.999) in all plots indicating an excellent agreement between the predicted and delivered MLC positions for the training, validation, and test data.

CONCLUSIONS

We successfully demonstrated a proposed ANN-based method capable of accurately predicting the individual MLC leaf positional deviations during the dynamic IMRT delivery priori. Our ML model based on ANN outperformed the reported accuracy in the literature of various ML models. The results of this study could be extended to actual application in the dose calculation/optimization, hence enhancing the gamma passing rate for patient-specific IMRT quality assurance.

摘要

目的

在动态强度调制放疗(IMRT)治疗中,多叶准直器(MLC)的位置精度对于安全准确的患者治疗至关重要。单个叶片位置与其预期位置的偏差可能导致患者接受的剂量出现误差,从而可能对治疗结果产生不利影响。在这项研究中,我们提出了一种基于人工神经网络(ANN)的最先进的机器学习(ML)方法,用于使用日志文件数据在动态 IMRT 治疗前准确预测 MLC 叶片位置偏差。

方法

从单个机构数据库中回顾性检索了 10 名接受滑动窗口动态 IMRT 治疗的患者的数据。使用配备有瓦里安直线加速器的 Millennium 120 HD MLC 系统,在没有患者在治疗台上的情况下重新输送患者计划。然后,机器记录日志文件数据,总共收集了超过 400 个文件,包含 360800 个控制点。从日志文件中的计划数据中提取了 14 个参数,例如叶片计划位置、剂量分数、叶片速度、叶片移动状态、叶片间隙等。接下来,我们开发了一个前馈 ANN 架构,将输入参数映射到输出,以在治疗前预测 MLC 叶片位置偏差。使用交付的叶片位置数据作为目标响应,在总数据的 70%上训练模型。然后在可用数据的 30%上验证和测试训练好的模型。使用均方误差(MSE)、回归图和误差直方图评估模型的准确性。

结果

个别 MLC 计划和交付位置之间的偏差可达到几毫米,最大偏差为 1.2 毫米。在治疗过程中,所有 MLC 叶片的控制点的预测叶片位置与交付位置非常吻合。ANN 模型在预测每个叶片测试数据控制点的叶片位置时达到了最大 MSE 为 0.0001 毫米(根均方误差为 0.0097 毫米)。相关系数(衡量拟合度的指标)在所有图中均为完美(R=0.999),表明训练、验证和测试数据的预测和交付 MLC 位置之间具有极好的一致性。

结论

我们成功地证明了一种基于 ANN 的方法能够准确预测动态 IMRT 治疗前的单个 MLC 叶片位置偏差。我们基于 ANN 的 ML 模型的性能优于文献中报道的各种 ML 模型的精度。这项研究的结果可以扩展到剂量计算/优化的实际应用中,从而提高特定于患者的 IMRT 质量保证的伽马通过率。

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