MKado: a toolkit for McDonald-Kreitman tests of natural selection
Rivera-Colon, A. G.; Rehmann, C. T.; Kern, A. D.
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SummaryMKado is a Python toolkit for performing McDonald-Kreitman (MK) tests of natural selection from aligned coding sequences. It implements the standard MK test as well as a wide variety of its extensions and related statistics, including a number of methods for estimating the fraction of adaptive substitutions () while accounting for slightly deleterious mutations, with a unified command-line interface and Python API. MKado supports parallel batch processing of thousands of genes with near-linear scaling, and provides publication-ready visualizations including volcano plots and asymptotic curves. Availability and ImplementationMKado is freely available at https://github.com/kr-colab/mkado under the MIT license. Full documentation is available at https://mkado.readthedocs.io. MKado is implemented in Python and installable via pip. Contactadkern@uoregon.edu
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