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An ensemble-based Cox proportional hazards regression framework for predicting survival in metastatic castration-resistant prostate cancer (mCRPC) patients

机译:基于集合的Cox比例风险回归框架可预测转移性去势抵抗性前列腺癌(mCRPC)患者的生存

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摘要

From March through August 2015, nearly 60 teams from around the world participated in the Prostate Cancer Dream Challenge (PCDC). Participating teams were faced with the task of developing prediction models for patient survival and treatment discontinuation using baseline clinical variables collected on metastatic castrate-resistant prostate cancer (mCRPC) patients in the comparator arm of four phase III clinical trials. In total, over 2,000 mCRPC patients treated with first-line docetaxel comprised the training and testing data sets used in this challenge. In this paper we describe: (a) the sub-challenges comprising the PCDC, (b) the statistical metrics used to benchmark prediction performance, (c) our analytical approach, and finally (d) our team’s overall performance in this challenge. Specifically, we discuss our curated, ad-hoc, feature selection (CAFS) strategy for identifying clinically important risk-predictors, the ensemble-based Cox proportional hazards regression framework used in our final submission, and the adaptation of our modeling framework based on the results from the intermittent leaderboard rounds. Strong predictors of patient survival were successfully identified utilizing our model building approach. Several of the identified predictors were new features created by our team via strategically merging collections of weak predictors. In each of the three intermittent leaderboard rounds, our prediction models scored among the top four models across all participating teams and our final submission ranked 9 th place overall with an integrated area under the curve (iAUC) of 0.7711 computed in an independent test set. While the prediction performance of teams placing between 2 nd- 10 th (iAUC: 0.7710-0.7789) was better than the current gold-standard prediction model for prostate cancer survival, the top-performing team, FIMM-UTU significantly outperformed all other contestants with an iAUC of 0.7915.  In summary, our ensemble-based Cox regression framework with CAFS resulted in strong overall performance for predicting prostate cancer survival and represents a promising approach for future prediction problems.
机译:从2015年3月到2015年8月,来自全球的近60个团队参加了前列腺癌梦挑战赛(PCDC)。参与小组的任务是使用四项III期临床试验的比较组中收集的针对转移性去势抵抗性前列腺癌(mCRPC)患者的基线临床变量,开发患者生存和治疗终止的预测模型。一线多西紫杉醇治疗的2,000多名mCRPC患者总共包含了用于该挑战的训练和测试数据集。在本文中,我们描述:(a)包含PCDC的子挑战,(b)用于对预测性能进行基准测试的统计指标,(c)我们的分析方法,最后(d)我们团队在此挑战中的整体表现。具体来说,我们讨论了精选的临时特征选择(CAFS)策略,用于确定具有临床意义的重要风险预测因素,最终提交中使用的基于集合的Cox比例风险回归框架以及基于模型的适应性调整间歇性排行榜结果。利用我们的模型构建方法,可以成功地确定患者生存的强大预测指标。其中一些已确定的预测变量是我们团队通过战略性地合并弱预测变量集合而创建的新功能。在这三个间歇性排行榜回合中,我们的预测模型在所有参与团队的前四名模型中得分,并且最终提交的结果在整体上排名第9位,其曲线下积分(iAUC)为0.7711在独立的测试集中进行计算。虽然位于第2 -10 之间的团队的预测性能(iAUC:0.7710-0.7789)优于当前的前列腺癌生存金标准预测模型,表现最好的团队FIMM-UTU的iAUC为0.7915,明显优于其他所有参赛者。综上所述,我们基于整体的基于CAFS的Cox回归框架在预测前列腺癌存活率方面具有很强的整体性能,并代表了解决未来预测问题的有前途的方法。

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