z-logo
open-access-imgOpen Access
A simulation study of microevolutionary inferences by spatial autocorrelation analysis
Author(s) -
Sokal Robert R.,
Oden Neal L.,
Thomson Barbara A.
Publication year - 1997
Publication title -
biological journal of the linnean society
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.906
H-Index - 112
eISSN - 1095-8312
pISSN - 0024-4066
DOI - 10.1111/j.1095-8312.1997.tb01484.x
Subject(s) - panmixia , biology , selection (genetic algorithm) , statistics , autocorrelation , linear discriminant analysis , spatial analysis , microevolution , data set , set (abstract data type) , bivariate analysis , statistical hypothesis testing , evolutionary biology , mathematics , artificial intelligence , population , computer science , gene flow , genetic variation , genetics , demography , sociology , gene , programming language
To explore the extent to which microevolutionary inference can be made using spatial autocorrelation analysis of gene frequency surfaces, we simulated sets of surfaces for nine evolutionary scenarios, and subjected spatially‐based summary statistics of these to linear discriminant analysis. Scenarios varied the amounts of dispersion, selection, migration, and deme sizes, and included: panmixia, drift, intrusion, and stepping‐stone models with 0–2 migrations, 0–2 selection gradients, and migration plus selection. To discover how weak evolutionary forces could be and still allow discrimination, each scenario had both a strong and a weak configuration. Discriminant rules were calculated using one collection of data (the training set) consisting of 250 sets of 15 surfaces for each of the nine scenarios. Misclassification rates were verified against a second, entirely new set of data (the test set) equal in size. Test set misclassification rates for the 20 best discriminating variables ranged from 39.3% (weak) to 3.6% (strong), far lower than the expected rate of 88.9% absent any discriminating ability. Misclassification was highest when discriminating the number of migrational events or the presence or number of selection events. Discrimination of drift and panmixia from the other scenarios was perfect. A subsequent subjective analysis of a subset of the data by one of us yielded comparable, although somewhat higher, misclassification rates. Judging by these results, spatial autocorrelation variables describing sets of gene frequency surfaces permit some microevolutionary inferences.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here