Why Confidence Intervals Should be Used in Reporting Studies of Complete Populations
RESEARCH ARTICLE

Why Confidence Intervals Should be Used in Reporting Studies of Complete Populations

The Open Public Health Journal 04 Oct 2012 RESEARCH ARTICLE DOI: 10.2174/1874944501205010052

Abstract

Public-health reports sometimes leave out confidence intervals when data are presented for an entire popula-tion. A rationale cited for this practice is that population statistics are measurements rather than estimates; hence there is no need to consider random error because the statistics show exactly what occurred. We argue that this reason does not justify leaving out interval estimates. Targeting intervention in areas with high disease rates can be justified only on the assumption that the excess would continue in those areas; in that case, at the very least, we need to allow for random fluc-tuations over time. Thus, we recommend that interval estimates be reported even when the entire population is observed.

Keywords: bias, confidence intervals, population studies, random error.