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Inferring the landscape of recombination using recurrent neural networks

View ORCID ProfileJeffrey R. Adrion, Jared G. Galloway, View ORCID ProfileAndrew D. Kern
doi: https://doi.org/10.1101/662247
Jeffrey R. Adrion
1Institute of Ecology and Evolution, University of Oregon
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  • For correspondence: jadrion@uoregon.edu
Jared G. Galloway
1Institute of Ecology and Evolution, University of Oregon
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Andrew D. Kern
1Institute of Ecology and Evolution, University of Oregon
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Abstract

Accurately inferring the genome-wide landscape of recombination rates in natural populations is a central aim in genomics, as patterns of linkage influence everything from genetic mapping to understanding evolutionary history. Here we describe ReLERNN, a deep learning method for accurately estimating a genome-wide recombination landscape using as few as four samples. Rather than use summaries of linkage disequilibrium as its input, ReLERNN considers columns from a genotype alignment, which are then modeled as a sequence across the genome using a recurrent neural network. We demonstrate that ReLERNN improves accuracy and reduces bias relative to existing methods and maintains high accuracy in the face of demographic model misspecification. We apply ReLERNN to natural populations of African Drosophila melanogaster and show that genome-wide recombination landscapes, while largely correlated among populations, exhibit important population-specific differences. Lastly, we connect the inferred patterns of recombination with the frequencies of major inversions segregating in natural Drosophila populations.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC 4.0 International license.
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Posted August 16, 2019.
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Inferring the landscape of recombination using recurrent neural networks
Jeffrey R. Adrion, Jared G. Galloway, Andrew D. Kern
bioRxiv 662247; doi: https://doi.org/10.1101/662247
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Inferring the landscape of recombination using recurrent neural networks
Jeffrey R. Adrion, Jared G. Galloway, Andrew D. Kern
bioRxiv 662247; doi: https://doi.org/10.1101/662247

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