Login / Signup

Flexible parametric approach to classical measurement error variance estimation without auxiliary data.

Aurélie BertrandIngrid Van KeilegomCatherine Legrand
Published in: Biometrics (2018)
Measurement error in the continuous covariates of a model generally yields bias in the estimators. It is a frequent problem in practice, and many correction procedures have been developed for different classes of models. However, in most cases, some information about the measurement error distribution is required. When neither validation nor auxiliary data (e.g., replicated measurements) are available, this specification turns out to be tricky. In this article, we develop a flexible likelihood-based procedure to estimate the variance of classical additive error of Gaussian distribution, without additional information, when the covariate has compact support. The performance of this estimator is investigated both in an asymptotic way and through finite sample simulations. The usefulness of the obtained estimator when using the simulation extrapolation (SIMEX) algorithm, a widely used correction method, is then analyzed in the Cox proportional hazards model through other simulations. Finally, the whole procedure is illustrated on real data.
Keyphrases
  • electronic health record
  • big data
  • machine learning
  • molecular dynamics
  • healthcare
  • health information
  • deep learning
  • data analysis
  • quality improvement
  • mass spectrometry
  • social media