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Clinical and multiple gene expression variables in survival analysis of breast cancer: Analysis with the hypertabastic survival model

机译:乳腺癌生存分析中的临床和多基因表达变量:超高脂生存模型的分析

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Background We explore the benefits of applying a new proportional hazard model to analyze survival of breast cancer patients. As a parametric model, the hypertabastic survival model offers a closer fit to experimental data than Cox regression, and furthermore provides explicit survival and hazard functions which can be used as additional tools in the survival analysis. In addition, one of our main concerns is utilization of multiple gene expression variables. Our analysis treats the important issue of interaction of different gene signatures in the survival analysis. Methods The hypertabastic proportional hazards model was applied in survival analysis of breast cancer patients. This model was compared, using statistical measures of goodness of fit, with models based on the semi-parametric Cox proportional hazards model and the parametric log-logistic and Weibull models. The explicit functions for hazard and survival were then used to analyze the dynamic behavior of hazard and survival functions. Results The hypertabastic model provided the best fit among all the models considered. Use of multiple gene expression variables also provided a considerable improvement in the goodness of fit of the model, as compared to use of only one. By utilizing the explicit survival and hazard functions provided by the model, we were able to determine the magnitude of the maximum rate of increase in hazard, and the maximum rate of decrease in survival, as well as the times when these occurred. We explore the influence of each gene expression variable on these extrema. Furthermore, in the cases of continuous gene expression variables, represented by a measure of correlation, we were able to investigate the dynamics with respect to changes in gene expression. Conclusions We observed that use of three different gene signatures in the model provided a greater combined effect and allowed us to assess the relative importance of each in determination of outcome in this data set. These results point to the potential to combine gene signatures to a greater effect in cases where each gene signature represents some distinct aspect of the cancer biology. Furthermore we conclude that the hypertabastic survival models can be an effective survival analysis tool for breast cancer patients.
机译:背景我们探讨了应用新的比例风险模型分析乳腺癌患者生存的益处。与Cox回归相比,超参数化生存模型作为一种参数模型,与实验数据更接近,并且提供了明确的生存和危害功能,可以用作生存分析中的其他工具。另外,我们主要关注的问题之一是利用多个基因表达变量。我们的分析处理了生存分析中不同基因签名相互作用的重要问题。方法将高乳比例风险模型用于乳腺癌患者的生存分析。使用拟合优度的统计量度将该模型与基于半参数Cox比例风险模型,参数对数逻辑模型和Weibull模型的模型进行了比较。然后使用危险和生存的显式函数来分析危险和生存函数的动态行为。结果在所有考虑的模型中,超重模型提供了最佳拟合。与仅使用一个基因表达变量相比,使用多个基因表达变量还大大改善了模型的拟合度。通过使用模型提供的显式生存和危险函数,我们能够确定最大危险增加率,最大存活率下降幅度以及发生这些事件的时间。我们探索了每个基因表达变量对这些极端的影响。此外,在以相关度量表示的连续基因表达变量的情况下,我们能够研究基因表达变化的动态变化。结论我们观察到,在模型中使用三种不同的基因签名提供了更大的综合效果,并使我们能够评估每种对确定该数据集中结果的相对重要性。这些结果表明,在每种基因签名代表癌症生物学某些独特方面的情况下,将基因签名组合起来产生更大效果的潜力。此外,我们得出的结论是,高代谢生存模型可以成为乳腺癌患者的有效生存分析工具。

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