A Logspline Estimation for a Linear Regression Model with an Interval-Censored Continuous Covariate |
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Authors: | Yujiao Yang Song Xu |
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Institution: | 1. Department of Statistics and Actuarial Science, East China Normal University, Shanghai, P. R. China;2. Department of Mathematics, Huainan Normal University, Huainan, P. R. China |
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Abstract: | The study of a linear regression model with an interval-censored covariate, which was motivated by an acquired immunodeficiency syndrome (AIDS) clinical trial, was first proposed by Gómez et al. They developed a likelihood approach, together with a two-step conditional algorithm, to estimate the regression coefficients in the model. However, their method is inapplicable when the interval-censored covariate is continuous. In this article, we propose a novel and fast method to treat the continuous interval-censored covariate. By using logspline density estimation, we impute the interval-censored covariate with a conditional expectation. Then, the ordinary least-squares method is applied to the linear regression model with the imputed covariate. To assess the performance of the proposed method, we compare our imputation with the midpoint imputation and the semiparametric hierarchical method via simulations. Furthermore, an application to the AIDS clinical trial is presented. |
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Keywords: | Interval-censored covariate Linear regression models Logspline density Noninformative censoring |
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