Litcius/Paper detail

Guidelines for standardizing the application of discriminant analysis of principal components to genotype data

Joshua A. Thia

2022Molecular Ecology Resources91 citationsDOIOpen Access PDF

Abstract

Abstract Despite the popularity of discriminant analysis of principal components (DAPC) for studying population structure, there has been little discussion of best practice for this method. In this work, I provide guidelines for standardizing the application of DAPC to genotype data sets. An often overlooked fact is that DAPC generates a model describing genetic differences among a set of populations defined by a researcher. Appropriate parameterization of this model is critical for obtaining biologically meaningful results. I show that the number of leading PC axes used as predictors of among‐population differences, p axes , should not exceed the k −1 biologically informative PC axes that are expected for k effective populations in a genotype data set. This k −1 criterion for p axes specification is more appropriate compared to the widely used proportional variance criterion , which often results in a choice of p axes ≫ k −1. DAPC parameterized with no more than the leading k −1 PC axes: (i) is more parsimonious; (ii) captures maximal among‐population variation on biologically relevant predictors; (iii) is less sensitive to unintended interpretations of population structure; and (iv) is more generally applicable to independent sample sets. Assessing model fit should be routine practice and aids interpretation of population structure. It is imperative that researchers articulate their study goals, that is, testing a priori expectations vs. studying de novo inferred populations, because this has implications on how their DAPC results should be interpreted. The discussion and practical recommendations in this work provide the molecular ecology community with a roadmap for using DAPC in population genetic investigations.

Topics & Concepts

PopulationPrincipal component analysisBiologySet (abstract data type)Principal (computer security)Linear discriminant analysisEvolutionary biologyA priori and a posterioriData setGenotypeInterpretation (philosophy)StatisticsComputer scienceDemographyGeneticsMathematicsEpistemologySociologyPhilosophyGeneOperating systemProgramming languageGenetic diversity and population structureGenetic Mapping and Diversity in Plants and AnimalsGenetics and Plant Breeding
Guidelines for standardizing the application of discriminant analysis of principal components to genotype data | Litcius