首页> 外文会议>Machine Learning and Applications, 2009. ICMLA '09 >Using Bayesian Logistic Regression with High-Order Interactions to Model Radiation-Induced Toxicities Following Radiotherapy
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Using Bayesian Logistic Regression with High-Order Interactions to Model Radiation-Induced Toxicities Following Radiotherapy

机译:使用具有高阶交互作用的贝叶斯Logistic回归对放疗后辐射诱发的毒性进行建模

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Radiotherapy treatments of cancer patients are planned using dose-volume constraints. These constraints limit the volume of organs receiving a given threshold dose. We propose a new framework to predict radiation-induced toxicities and evaluate dosimetric constraints using Bayesian logistic regression with high-order interactions. The predictive power of 2 sets of rectal dose-volume constraints proposed in the recent literature was evaluated using follow-up data from the RT01 prostate radiotherapy trial. Toxicities considered were rectal bleeding and loose stools. Furthermore we derived a new type of geometrical dosimetric constraint and assessed the predictive power. % using the Bayesian logistic regression model. Bayesian logistic regression with high-order interactions using dosimetric constraints successfully predicted radiation-induced rectal bleeding and loose stools. Literature-based dose-volume constraints had less predictive power than our new type of geometrical constraint. Imposing the latter type of constraints when generating a treatment plan would be beneficial for outcome.
机译:使用剂量-体积限制来计划癌症患者的放射治疗。这些限制限制了接受给定阈值剂量的器官的体积。我们提出了一个新的框架来预测辐射诱发的毒性并使用具有高阶相互作用的贝叶斯逻辑回归来评估剂量学约束。使用RT01前列腺放射治疗试验的后续数据评估了最近文献中提出的2组直肠剂量限制的预测能力。考虑的毒性是直肠出血和大便稀疏。此外,我们推导了一种新型的几何剂量约束,并评估了预测能力。 %使用贝叶斯逻辑回归模型。利用剂量学约束进行高阶相互作用的贝叶斯逻辑回归成功地预测了辐射引起的直肠出血和大便稀疏。基于文献的剂量-体积约束比我们的新型几何约束具有较小的预测能力。在生成治疗计划时强加后者类型的约束将有利于结果。

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