Zhang Hao H, D'Souza Warren D, Shi Leyuan, Meyer Robert R
Industrial and Systems Engineering Department, University of Wisconsin, Madison, WI, USA.
Int J Radiat Oncol Biol Phys. 2009 Aug 1;74(5):1617-26. doi: 10.1016/j.ijrobp.2009.02.065.
To predict organ-at-risk (OAR) complications as a function of dose-volume (DV) constraint settings without explicit plan computation in a multiplan intensity-modulated radiotherapy (IMRT) framework.
Several plans were generated by varying the DV constraints (input features) on the OARs (multiplan framework), and the DV levels achieved by the OARs in the plans (plan properties) were modeled as a function of the imposed DV constraint settings. OAR complications were then predicted for each of the plans by using the imposed DV constraints alone (features) or in combination with modeled DV levels (plan properties) as input to machine learning (ML) algorithms. These ML approaches were used to model two OAR complications after head-and-neck and prostate IMRT: xerostomia, and Grade 2 rectal bleeding. Two-fold cross-validation was used for model verification and mean errors are reported.
Errors for modeling the achieved DV values as a function of constraint settings were 0-6%. In the head-and-neck case, the mean absolute prediction error of the saliva flow rate normalized to the pretreatment saliva flow rate was 0.42% with a 95% confidence interval of (0.41-0.43%). In the prostate case, an average prediction accuracy of 97.04% with a 95% confidence interval of (96.67-97.41%) was achieved for Grade 2 rectal bleeding complications.
ML can be used for predicting OAR complications during treatment planning allowing for alternative DV constraint settings to be assessed within the planning framework.
在多计划调强放射治疗(IMRT)框架中,在不进行明确计划计算的情况下,预测危及器官(OAR)并发症与剂量体积(DV)约束设置的函数关系。
通过改变OAR上的DV约束(输入特征)生成多个计划(多计划框架),并将计划中OAR达到的DV水平(计划属性)建模为所施加DV约束设置的函数。然后,通过单独使用所施加的DV约束(特征)或与建模的DV水平(计划属性)相结合作为机器学习(ML)算法的输入,对每个计划的OAR并发症进行预测。这些ML方法用于对头颈部和前列腺IMRT后的两种OAR并发症进行建模:口干症和2级直肠出血。采用两重交叉验证进行模型验证,并报告平均误差。
将达到的DV值建模为约束设置函数的误差为0-6%。在头颈部病例中,归一化至治疗前唾液流速的唾液流速平均绝对预测误差为0.42%,95%置信区间为(0.41-0.43%)。在前列腺病例中,2级直肠出血并发症的平均预测准确率为97.04%,95%置信区间为(96.67-97.41%)。
ML可用于在治疗计划期间预测OAR并发症,从而在计划框架内评估替代DV约束设置。