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Regression analysis with multiplicative and time-varying additive regression coefficients with examples from breast and colon cancer.

机译:用乘积和时变加性回归系数进行回归分析,并以乳腺癌和结肠癌为例。

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Regression analysis may be used to simplify the representation of mortality rates when there are many significant prognostic covariates or to adjust for confounding effects. The principal request of the regression model in this range of use is to have unbiased parameter estimates. A model with constant multiplicative and time-varying additive regression coefficients is discussed. The model allows some covariate effects to be multiplicative while allowing others to have a time-varying additive effect. Thus, it is a mix of classical Cox regression and Aalen's additive risk model. A major characteristic of cancer mortality rates, in contrast to general mortality rates, is that hazard rates, after a potentially initial increase, decrease, although not always tending to zero. Cancer diseases, like breast and colon cancer, have significantly increased cause-specific mortality rates even 20 years after diagnosis. Another major feature in cancer survival analysis is that many covariate effects are time-varying. Some covariate effects, like age at diagnosis, may only be significant for a limited time after diagnosis. Furthermore, some treatment procedures may initially decrease the mortality, while the long-term effect may be opposite. A third issue is that average covariate effects are very often not multiplicative. Estimation is carried out iteratively; the cumulative additive regression functions are estimated non-parametrically using a least-squares method and the multiplicative parameters are estimated from the partial likelihood. The method is applied on 3201 female breast cancer and 1372 male colon cancer patients. Copyright 2003 John Wiley & Sons, Ltd.
机译:当有许多重要的预后协变量时,可以使用回归分析来简化死亡率的表示或调整混杂效应。在此使用范围内,回归模型的主要要求是具有无偏参数估计。讨论了具有常数乘积和时变加性回归系数的模型。该模型允许某些协变量效应是可乘的,同时允许其他协变量具有随时间变化的加性效应。因此,它是经典Cox回归和Aalen加性风险模型的混合。与一般死亡率相反,癌症死亡率的主要特征是,尽管潜在危险率最初增加,但危险率却降低了,尽管并不总是趋于零。甚至在诊断后20年,像乳腺癌和结肠癌这样的癌症疾病也显着提高了特定原因的死亡率。癌症生存分析的另一个主要特征是许多协变量效应随时间变化。一些协变量效应,例如诊断时的年龄,可能仅在诊断后的有限时间内才有意义。此外,某些治疗程序可能最初会降低死亡率,而长期效果可能相反。第三个问题是平均协变量效应通常不是可乘的。估计是迭代执行的;累积加性回归函数是使用最小二乘法非参数估计的,而乘法参数是根据偏似然性估计的。该方法适用于3201例女性乳腺癌和1372例男性结肠癌患者。版权所有2003 John Wiley&Sons,Ltd.

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