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A machine learning approach to the accurate prediction of multi-leaf collimator positional errors

机译:一种精确预测多叶准直器位置误差的机器学习方法

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Discrepancies between planned and delivered movements of multi-leaf collimators (MLCs) are an important source of errors in dose distributions during radiotherapy. In this work we used machine learning techniques to train models to predict these discrepancies, assessed the accuracy of the model predictions, and examined the impact these errors have on quality assurance (QA) procedures and dosimetry. Predictive leaf motion parameters for the models were calculated from the plan files, such as leaf position and velocity, whether the leaf was moving towards or away from the isocenter of the MLC, and many others. Differences in positions between synchronized DICOM-RT planning files and DynaLog files reported during QA delivery were used as a target response for training of the models. The final model is capable of predicting MLC positions during delivery to a high degree of accuracy. For moving MLC leaves, predicted positions were shown to be significantly closer to delivered positions than were planned positions. By incorporating predicted positions into dose calculations in the TPS, increases were shown in gamma passing rates against measured dose distributions recorded during QA delivery. For instance, head and neck plans with 1%/2 mm gamma criteria had an average increase in passing rate of 4.17% (SD = 1.54%). This indicates that the inclusion of predictions during dose calculation leads to a more realistic representation of plan delivery. To assess impact on the patient, dose volumetric histograms (DVH) using delivered positions were calculated for comparison with planned and predicted DVHs. In all cases, predicted dose volumetric parameters were in closer agreement to the delivered parameters than were the planned parameters, particularly for organs at risk on the periphery of the treatment area. By incorporating the predicted positions into the TPS, the treatment planner is given a more realistic view of the dose distribution as it will truly be delivered to the patient.
机译:多叶准直器(MLC)的计划动作和交付动作之间的差异是放射治疗期间剂量分布错误的重要来源。在这项工作中,我们使用机器学习技术来训练模型以预测这些差异,评估模型预测的准确性,并检查这些错误对质量保证(QA)程序和剂量测定的影响。从计划文件计算模型的预测叶片运动参数,例如叶片位置和速度,叶片是否朝向或远离MLC的等角点以及其他许多方面。 QA交付期间报告的同步DICOM-RT计划文件和DynaLog文件之间的位置差异被用作模型训练的目标响应。最终模型能够在交付过程中高度准确地预测MLC位置。对于移动的MLC叶片,预测位置比计划位置显着更接近交付位置。通过将预测位置并入TPS的剂量计算中,伽玛通过率相对于QA交付期间记录的测量剂量分布显示出增加。例如,具有1%/ 2 mm伽玛标准的头颈计划的通过率平均增加4.17%(SD = 1.54%)。这表明在剂量计算过程中纳入预测结果可以更真实地表示计划交付情况。为了评估对患者的影响,计算了使用输送位置的剂量体积直方图(DVH),以与计划和预测的DVH进行比较。在所有情况下,预测的剂量体积参数与计划的参数都与计划的参数更接近,特别是对于治疗区域外围有风险的器官。通过将预测位置合并到TPS中,治疗计划人员可以更真实地了解剂量分布,因为它可以真正地交付给患者。

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