mvmapper: Interactive spatial mapping of genetic structures |
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Authors: | Julian R. Dupuis Forest T. Bremer Thibaut Jombart Sheina B. Sim Scott M. Geib |
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Affiliation: | 1. Daniel K. Inouye U.S. Pacific Basin Agricultural Research Center, U.S. Department of Agriculture‐Agricultural Research Service, Hilo, HI, USA;2. Department of Plant and Environmental Protection Services, University of Hawai'i at Mānoa, Honolulu, HI, USA;3. Department of Infectious Disease Epidemiology, MRC Centre for Outbreak Analysis and Modelling, School of Public Health, Imperial College, London, UK |
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Abstract: | Characterizing genetic structure across geographic space is a fundamental challenge in population genetics. Multivariate statistical analyses are powerful tools for summarizing genetic variability, but geographic information and accompanying metadata are not always easily integrated into these methods in a user‐friendly fashion. Here, we present a deployable Python‐based web‐tool, mvmapper , for visualizing and exploring results of multivariate analyses in geographic space. This tool can be used to map results of virtually any multivariate analysis of georeferenced data, and routines for exporting results from a number of standard methods have been integrated in the R package adegenet , including principal components analysis (PCA), spatial PCA, discriminant analysis of principal components, principal coordinates analysis, nonmetric dimensional scaling and correspondence analysis. mvmapper 's greatest strength is facilitating dynamic and interactive exploration of the statistical and geographic frameworks side by side, a task that is difficult and time‐consuming with currently available tools. Source code and deployment instructions, as well as a link to a hosted instance of mvmapper , can be found at https://popphylotools.github.io/mvMapper/ . |
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Keywords: | data visualization multivariate analyses ordinations in reduced space population genetics Python software |
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