Herndon J E, Harrell F E
Department of Community and Family Medicine, Duke University Medical Center, Durham, North Carolina 27710, USA.
Stat Med. 1995 Oct 15;14(19):2119-29. doi: 10.1002/sim.4780141906.
We incorporate a cubic spline function where the tails are linearly constrained, as the baseline hazard, into the proportional hazards model. We show estimation of covariable coefficients and survival probabilities with this model to be as efficient statistically as with the Cox proportional hazards model when covariables are fixed. Examples show that the inclusion of time-dependent covariables defined as step functions into the restricted cubic spline proportional hazards model reduces computation time by a factor of 213 over the Cox model. Advantages of the spline model also include flexibility of the hazard, smooth survival curves, and confidence limits for the survival and hazard estimates when there are time-dependent covariables present.
我们将一个三次样条函数纳入比例风险模型,其中尾部采用线性约束作为基线风险。我们证明,当协变量固定时,该模型对协变量系数和生存概率的估计在统计上与Cox比例风险模型一样有效。实例表明,在受限三次样条比例风险模型中纳入定义为阶梯函数的时间相依协变量,与Cox模型相比,计算时间减少了213倍。样条模型的优点还包括风险的灵活性、平滑的生存曲线,以及在存在时间相依协变量时生存和风险估计的置信区间。