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放疗结果的多变量建模,包括剂量体积和临床因素。

Multivariable modeling of radiotherapy outcomes, including dose-volume and clinical factors.

作者信息

El Naqa Issam, Bradley Jeffrey, Blanco Angel I, Lindsay Patricia E, Vicic Milos, Hope Andrew, Deasy Joseph O

机构信息

Department of Radiation Oncology, Washington University, St. Louis, MO 63110, USA.

出版信息

Int J Radiat Oncol Biol Phys. 2006 Mar 15;64(4):1275-86. doi: 10.1016/j.ijrobp.2005.11.022.

Abstract

PURPOSE

The probability of a specific radiotherapy outcome is typically a complex, unknown function of dosimetric and clinical factors. Current models are usually oversimplified. We describe alternative methods for building multivariable dose-response models.

METHODS

Representative data sets of esophagitis and xerostomia are used. We use a logistic regression framework to approximate the treatment-response function. Bootstrap replications are performed to explore variable selection stability. To guard against under/overfitting, we compare several analytical and data-driven methods for model-order estimation. Spearman's coefficient is used to evaluate performance robustness. Novel graphical displays of variable cross correlations and bootstrap selection are demonstrated.

RESULTS

Bootstrap variable selection techniques improve model building by reducing sample size effects and unveiling variable cross correlations. Inference by resampling and Bayesian approaches produced generally consistent guidance for model order estimation. The optimal esophagitis model consisted of 5 dosimetric/clinical variables. Although the xerostomia model could be improved by combining clinical and dose-volume factors, the improvement would be small.

CONCLUSIONS

Prediction of treatment response can be improved by mixing clinical and dose-volume factors. Graphical tools can mitigate the inherent complexity of multivariable modeling. Bootstrap-based variable selection analysis increases the reliability of reported models. Statistical inference methods combined with Spearman's coefficient provide an efficient approach to estimating optimal model order.

摘要

目的

特定放疗结果的概率通常是剂量学和临床因素的复杂未知函数。当前模型通常过于简化。我们描述了构建多变量剂量反应模型的替代方法。

方法

使用食管炎和口干症的代表性数据集。我们使用逻辑回归框架来近似治疗反应函数。进行自助重复抽样以探索变量选择的稳定性。为防止欠拟合/过拟合,我们比较了几种用于模型阶数估计的分析方法和数据驱动方法。使用斯皮尔曼系数来评估性能稳健性。展示了变量交叉相关性和自助选择的新型图形显示。

结果

自助变量选择技术通过减少样本量效应和揭示变量交叉相关性来改进模型构建。通过重采样和贝叶斯方法进行的推断为模型阶数估计提供了大致一致的指导。最佳食管炎模型由5个剂量学/临床变量组成。虽然通过结合临床和剂量体积因素可以改进口干症模型,但改进幅度较小。

结论

通过混合临床和剂量体积因素可以改善治疗反应的预测。图形工具可以减轻多变量建模的固有复杂性。基于自助的变量选择分析提高了所报告模型的可靠性。统计推断方法与斯皮尔曼系数相结合提供了一种估计最佳模型阶数的有效方法。

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