Publication | Closed Access
A Penalized Likelihood Approach for Arbitrarily Censored and Truncated Data: Application to Age-Specific Incidence of Dementia
140
Citations
21
References
1998
Year
Parameter EstimationCos ModelPenalized LikelihoodPenalized Likelihood ApproachBiostatisticsNeurologyAging-associated DiseasePublic HealthEstimation TheoryStatisticsTruncated DataDensity EstimationGeriatricsEstimation StatisticVascular DementiaFunctional Data AnalysisEpidemiologyDementiaAge-specific IncidenceStatistical InferenceMedicineLeft TruncationSemi-nonparametric Estimation
The Cos model is the model of choice when analyzing survival data presenting only right censoring and left truncation. There is a need for methods that can accommodate more complex observation schemes involving general censoring and truncation. In addition, it is important in many epidemiological applications to have a smooth estimate of the hazard function. We show that the penalized likelihood approach gives a solution to these problems. The solution of the maximum of the penalized likelihood is approximated on a basis of splines. The smoothing parameter is estimated using approximate cross-validation; confidence bands can be given. A simulation study shows that this approach gives better results than the smoothed Nelson-Aalen estimator. We apply this method to the analysis of data from a large cohort study on cerebral aging. The age-specific incidence of dementia is estimated and risk factors of dementia studied.
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