Improving the Use of Mortality Data in Public Health: A Comparison of Garbage Code Redistribution Models

Am J Public Health. 2020 Feb;110(2):222-229. doi: 10.2105/AJPH.2019.305439. Epub 2019 Dec 19.

Abstract

Objectives. To describe and compare 3 garbage code (GC) redistribution models: naïve Bayes classifier (NB), coarsened exact matching (CEM), and multinomial logistic regression (MLR).Methods. We analyzed Taiwan Vital Registration data (2008-2016) using a 2-step approach. First, we used non-GC death records to evaluate 3 different prediction models (NB, CEM, and MLR), incorporating individual-level information on multiple causes of death (MCDs) and demographic characteristics. Second, we applied the best-performing model to GC death records to predict the underlying causes of death. We conducted additional simulation analyses for evaluating the predictive performance of models.Results. When we did not account for MCDs, all 3 models presented high average misclassification rates in GC assignment (NB, 81%; CEM, 86%; MLR, 81%). In the presence of MCD information, NB and MLR exhibited significant improvement in assignment accuracy (19% and 17% misclassification rate, respectively). Furthermore, CEM without a variable selection procedure resulted in a substantially higher misclassification rate (40%).Conclusions. Comparing potential GC redistribution approaches provides guidance for obtaining better estimates of cause-of-death distribution and highlights the significance of MCD information for vital registration system reform.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Cause of Death
  • Death Certificates*
  • Female
  • Humans
  • Male
  • Models, Statistical*
  • Mortality / trends*
  • Public Health*
  • Taiwan
  • Vital Statistics