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An efficient penalized estimation approach for semiparametric linear transformation models with interval-censored data.

Minggen LuYan LiuChin-Shang LiJianguo Sun
Published in: Statistics in medicine (2022)
We consider efficient estimation of flexible transformation models with interval-censored data. To reduce the dimension of semiparametric models, the unknown monotone function is approximated via a monotone B-spline. A penalization technique is used to provide computationally efficient estimation of all parameters. To accomplish model fitting and inference, an easy to implement nested iterative expectation-maximization (EM) algorithm is developed for estimation, and a simple variance-covariance estimation approach is proposed which makes large-sample inference for the regression parameters possible. Theoretically, we show that the estimator of the unknown monotone increasing function achieves the optimal rate of convergence, and the estimators of the regression parameters are asymptotically normal and efficient under the appropriate selection of the order of the smoothing parameter and the knots of the spline space. The proposed penalized procedure is assessed through extensive numerical experiments and implemented in R package PenIC. The proposed methodology is further illustrated via a signal tandmobiel study.
Keyphrases
  • machine learning
  • big data
  • magnetic resonance
  • magnetic resonance imaging
  • artificial intelligence
  • neural network
  • image quality
  • dual energy