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Monte Carlo Methods Applied in Health Research

  • J. A. Pereira
  • L. Mendes
  • A. Costa
  • T. A. Oliveira
Chapter
Part of the The Springer Series on Demographic Methods and Population Analysis book series (PSDE, volume 46)

Abstract

The root surface area of the tooth (RSA) is an important prognostic factor in the field of dentistry. The estimation of RSA from routine clinical data, such as tooth length (TL) and mesiodistal diameter of crown (MDC), is of interest because provides clinicians with information to decide objectively without additional costs. The aim of the paper is to determine the sample size for a regression analysis of RSA on TL and MDC using both power and parameter accuracy perspectives with Monte Carlo (MC) methods, as describe by Beaujean (2014).

A random sample of 5 lower second premolar teeth were scanned in X-ray microtomograph. The respective RSA were obtained through the planimetric method where the TL and MDC were measured on 1:1 photographs. The model of interest was defined as RSA = β0+ β1TL+ β2MDC, in accordance with the research question. The sample size was determined based on the model of interest and strength of the relations among the variables using the MC methods. The packages lavaan and simsem of R software were used to define the model and to run the simulations.

A sample size of 37 was calculated meeting the criteria for Monte Carlo data quality proposed by Muthén and Muthén (2002).

Keywords

Root surface area Sample size Monte Carlo methods 

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Copyright information

© Springer International Publishing AG, part of Springer Nature 2018

Authors and Affiliations

  • J. A. Pereira
    • 1
    • 2
  • L. Mendes
    • 1
  • A. Costa
    • 3
  • T. A. Oliveira
    • 4
  1. 1.Faculdade de Medicina Dentária da Universidade do Porto, Departamento de PeriodontologiaPortoPortugal
  2. 2.MBBUniversidade AbertaLisboaPortugal
  3. 3.Universidad Nacional de Educacion a DistanciaMadridSpain
  4. 4.CEAUL and Universidade AbertaLisboaPortugal

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