Sample size and statistical power in the hierarchical analysis of variance: applications in morphometry of the nervous system

J Neurosci Methods. 1989 Sep;29(3):231-9. doi: 10.1016/0165-0270(89)90147-7.

Abstract

Analysis of variance is commonly used in morphometry in order to ascertain differences in parameters between several populations. Failure to detect significant differences between populations (type II error) may be due to suboptimal sampling and lead to erroneous conclusions; the concept of statistical power allows one to avoid such failures by means of an adequate sampling. Several examples are given in the morphometry of the nervous system, showing the use of the power of a hierarchical analysis of variance test for the choice of appropriate sample and subsample sizes. In the first case chosen, neuronal densities in the human visual cortex, we find the number of observations to be of little effect. For dendritic spine densities in the visual cortex of mice and humans, the effect is somewhat larger. A substantial effect is shown in our last example, dendritic segmental lengths in monkey lateral geniculate nucleus. It is in the nature of the hierarchical model that sample size is always more important than subsample size. The relative weight to be attributed to subsample size thus depends on the relative magnitude of the between observations variance compared to the between individuals variance.

Publication types

  • Comparative Study

MeSH terms

  • Aging
  • Analysis of Variance
  • Animals
  • Callitrichinae
  • Cell Count
  • Dendrites / ultrastructure
  • Geniculate Bodies / ultrastructure
  • Humans
  • Mice
  • Nervous System / ultrastructure*
  • Neurons / ultrastructure
  • Visual Cortex / ultrastructure