Readings

Delta method and bootstrap in linear mixed models to estimate a proportion when no event is observed: application to intralesional resection in bone tumor surgery

Francq, B. G., & Cartiaux, O. (2016). Delta method and bootstrap in linear mixed models to estimate a proportion when no event is observed: application to intralesional resection in bone tumor surgery. Statistics in Medicine. https://doi.org/10.1002/sim.6939

  • Estimation of rare proportions
    • could be useful for my work
    • I wonder how many zeroes can be in the data for this method to work
      • that will be my main question at the moment
  • Give the example of adverse events in clinical trials
    • here, many adverse events will have 0 counts
  • Provide a toy example of estimating probabilities of height thresholds in small samples
    • expect different probabilities from different thresholds
    • clearly due to ordering of heights
  • the problem with the existing methods is that they give the same interval for different thresholds
    • e.g. when when two observations fall below a threshold
      • here they have different values, but give a 0 value anyway
      • so they should have different intervals due to the different values
  • first extension is the delta method on the z-score
    • using the observed values, calculate sample mean and sd, and z-score
    • find variance of the z-score using delta method
    • then confidence interval of z-score gets transformed for the probability confidence interval
  • can also be used on the cdf of z
    • this has problems with intervals though
  • standard nonparametric bootstrap doesn\’t work
    • if you have no events, none will be in the bootstrap resamples!