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Isotonic estimation of survival under a misattribution of cause of death

机译:等渗估计死因归因于死亡

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Several authors have indicated that incorrectly classified cause of death for prostate cancer survivors may have played a role in the observed recent peak and decline of prostate cancer mortality. Motivated by the suggestion we studied a competing risks model where other cause of death may be misattributed as a death of interest. We first consider a naive approach using unconstrained nonparametric maximum likelihood estimation (NPMLE), and then present the constrained NPMLE where the survival function is forced to be monotonic. Surprising observations were made as we studied their small-sample and asymptotic properties in continuous and discrete situations. Contrary to the common belief that the non-monotonicity of a survival function NPMLE is a small-sample problem, the constrained NPMLE is asymptotically biased in the continuous setting. Other isotonic approaches, the supremum (SUP) method and the Pooled-Adjacent-Violators (PAV) algorithm, and the EM algorithm are also considered. We found that the EM algorithm is equivalent to the constrained NPMLE. Both SUP method and PAV algorithm deliver consistent and asymptotically unbiased estimator. All methods behave well asymptotically in the discrete time setting. Data from the Surveillance, Epidemiology and End Results (SEER) database are used to illustrate the proposed estimators.
机译:几位作者指出,前列腺癌幸存者的错误归类死亡原因可能在最近观察到的前列腺癌死亡率高峰和下降中发挥了作用。根据该建议,我们研究了竞争性风险模型,其中其他死亡原因可能被误认为是利益性死亡。我们首先考虑使用不受约束的非参数最大似然估计(NPMLE)的天真的方法,然后提出受约束的NPMLE,其中生存函数被强制为单调的。在研究连续和离散情况下的小样本和渐近性质时,我们做出了令人惊讶的观察。与普遍认为生存函数NPMLE的非单调性是一个小样本问题相反,受约束的NPMLE在连续环境中渐近地偏置。还考虑了其​​他等渗方法,至尊(SUP)方法,合并相邻违反者(PAV)算法和EM算法。我们发现,EM算法等效于约束NPMLE。 SUP方法和PAV算法均提供一致且渐近的无偏估计量。在离散时间设置中,所有方法的渐近性都很好。来自监视,流行病学和最终结果(SEER)数据库的数据用于说明拟议的估计量。

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