Optimal sample selection applied to information rich, dense data

J Pharmacokinet Pharmacodyn. 2024 Feb;51(1):33-37. doi: 10.1007/s10928-023-09883-7. Epub 2023 Aug 10.

Abstract

Dense data can be classified into superdense information-poor data (type 1 dense data) and dense information-rich data (type 2 dense data). Arbitrary, random, or optimal thinning may be applied to type 1 dense data to minimise computational burden and statistical issues (such as autocorrelation). In contrast, a prospective or retrospective optimal design can be applied to type 2 dense data to maximise information gain from limited resources (capital and/or time). Here we describe a retrospective optimal selection strategy for quantification of unbound drug concentration from a discrete set of plasma samples where the total drug concentration has been measured.

Keywords: Dense data; Optimal design; Sample selection.

Publication types

  • Letter

MeSH terms

  • Prospective Studies*
  • Retrospective Studies