Predicting radiation treatment planning evaluation parameter using artificial intelligence and machine learning

Frederick F. C. Ng, R. Jiang, J. Chow
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引用次数: 16

Abstract

Purpose: This study suggested a new method predicting the dose-volume parameter for radiation treatment planning evaluation using machine learning, and to evaluate the performance of different learning algorithms in the parameter prediction. Methods: Dose distribution index (DDI) for fifty prostate volumetric modulated arc therapy plans were calculated, and compared to results predicted by machine learning using algorithms, namely, linear regression, tree regression, support vector machine (SVM) and Gaussian process regression (GPR). Root mean square error (RMSE), prediction speed and training time were determined to evaluate the performance of each algorithm. Results: From the results, it is found that the square exponential GPR algorithm had the smallest RMSE, relatively high prediction speed and short training time of 0.0038, 4,100 observation/s and 0.18 s, respectively. All linear regression, SVM and GPR algorithms performed well according to their RMSE in the range of 0.0038–0.0193. However, RMSE of the medium and coarse tree regression algorithms were found larger than 0.03, showing that they are not suitable for predicting DDI in this study. Conclusion: Machine learning can be used to predict dose-volume parameter such as DDI in radiation treatment planning QA. Selection of a suitable machine learning algorithm is important to determine the parameter effectively.
利用人工智能和机器学习预测放射治疗计划评估参数
目的:本研究提出了一种利用机器学习预测放射治疗计划评估中剂量-体积参数的新方法,并评估不同学习算法在参数预测中的性能。方法:计算50种前列腺体积调制弧线治疗方案的剂量分布指数(DDI),并采用线性回归、树回归、支持向量机(SVM)和高斯过程回归(GPR)等算法与机器学习预测结果进行比较。通过确定均方根误差(RMSE)、预测速度和训练时间来评估每种算法的性能。结果:从结果来看,平方指数GPR算法的RMSE最小,预测速度较快,训练时间较短,分别为0.0038、4100观测/s和0.18 s。线性回归、SVM和GPR算法的RMSE均在0.0038 ~ 0.0193范围内,均表现良好。然而,发现中树和粗树回归算法的RMSE均大于0.03,表明它们不适合预测本研究中的DDI。结论:机器学习可用于预测放射治疗计划QA中的DDI等剂量-体积参数。选择合适的机器学习算法是有效确定参数的关键。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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