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A genetic algorithm for variable selection in logistic regression analysis of radiotherapy treatment outcomes.

机译:用于放射治疗结果的逻辑回归分析中变量选择的遗传算法。

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A given outcome of radiotherapy treatment can be modeled by analyzing its correlation with a combination of dosimetric, physiological, biological, and clinical factors, through a logistic regression fit of a large patient population. The quality of the fit is measured by the combination of the predictive power of this particular set of factors and the statistical significance of the individual factors in the model. We developed a genetic algorithm (GA), in which a small sample of all the possible combinations of variables are fitted to the patient data. New models are derived from the best models, through crossover and mutation operations, and are in turn fitted. The process is repeated until the sample converges to the combination of factors that best predicts the outcome. The GA was tested on a data set that investigated the incidence of lung injury in NSCLC patients treated with 3DCRT. The GA identified a model with two variables as the best predictor of radiation pneumonitis: the V30 (p=0.048) and the ongoing use of tobacco at the time of referral (p=0.074). This two-variable model was confirmed as the best model by analyzing all possible combinations of factors. In conclusion, genetic algorithms provide a reliable and fast way to select significant factors in logistic regression analysis of large clinical studies.
机译:放射治疗的给定结果可以通过大量患者群体的逻辑回归拟合,通过分析其与剂量学,生理,生物学和临床因素的相关性,来进行建模。拟合的质量是通过将这组特定因素的预测能力与模型中各个因素的统计显着性相结合来衡量的。我们开发了一种遗传算法(GA),其中将所有可能的变量组合的一小部分样本拟合到患者数据中。新模型通过交叉和变异操作从最佳模型中衍生而来,然后进行拟合。重复该过程,直到样品收敛到最能预测结果的因素组合为止。 GA在一个数据集上进行了测试,该数据集调查了3DCRT治疗的NSCLC患者的肺损伤发生率。遗传算法确定了一个模型,该模型具有两个变量可以作为放射性肺炎的最佳预测指标:V30(p = 0.048)和转诊时正在使用的烟草(p = 0.074)。通过分析所有可能的因素组合,此二变量模型被确认为最佳模型。总之,遗传算法为大型临床研究的逻辑回归分析中选择重要因素提供了一种可靠,快速的方法。

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