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Multiple indicators, multiple causes measurement error models

  • Texas A&M University
  • Radiation Effects Research Foundation Hiroshima

Research output: Contribution to journalArticlepeer-review

15 Scopus citations

Abstract

Multiple indicators, multiple causes (MIMIC) models are often employed by researchers studying the effects of an unobservable latent variable on a set of outcomes, when causes of the latent variable are observed. There are times, however, when the causes of the latent variable are not observed because measurements of the causal variable are contaminated by measurement error. The objectives of this paper are as follows: (i) to develop a novel model by extending the classical linear MIMIC model to allow both Berkson and classical measurement errors, defining the MIMIC measurement error (MIMIC ME) model; (ii) to develop likelihood-based estimation methods for the MIMIC ME model; and (iii) to apply the newly defined MIMIC ME model to atomic bomb survivor data to study the impact of dyslipidemia and radiation dose on the physical manifestations of dyslipidemia. As a by-product of our work, we also obtain a data-driven estimate of the variance of the classical measurement error associated with an estimate of the amount of radiation dose received by atomic bomb survivors at the time of their exposure.

Original languageEnglish
Pages (from-to)4469-4481
Number of pages13
JournalStatistics in Medicine
Volume33
Issue number25
DOIs
StatePublished - Nov 10 2014

Keywords

  • Atomic bomb survivor data
  • Berkson error
  • Dyslipidemia
  • Instrumental variables
  • Latent variables
  • Measurement error
  • MIMIC models

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