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1.
bioRxiv ; 2024 Jul 16.
Artículo en Inglés | MEDLINE | ID: mdl-38559192

RESUMEN

A fundamental goal in population genetics is to understand how variation is arrayed over natural landscapes. From first principles we know that common features such as heterogeneous population densities and barriers to dispersal should shape genetic variation over space, however there are few tools currently available that can deal with these ubiquitous complexities. Geographically referenced single nucleotide polymorphism (SNP) data are increasingly accessible, presenting an opportunity to study genetic variation across geographic space in myriad species. We present a new inference method that uses geo-referenced SNPs and a deep neural network to estimate spatially heterogeneous maps of population density and dispersal rate. Our neural network trains on simulated input and output pairings, where the input consists of genotypes and sampling locations generated from a continuous space population genetic simulator, and the output is a map of the true demographic parameters. We benchmark our tool against existing methods and discuss qualitative differences between the different approaches; in particular, our program is unique because it infers the magnitude of both dispersal and density as well as their variation over the landscape, and it does so using SNP data. Similar methods are constrained to estimating relative migration rates, or require identity by descent blocks as input. We applied our tool to empirical data from North American grey wolves, for which it estimated mostly reasonable demographic parameters, but was affected by incomplete spatial sampling. Genetic based methods like ours complement other, direct methods for estimating past and present demography, and we believe will serve as valuable tools for applications in conservation, ecology, and evolutionary biology. An open source software package implementing our method is available from https://github.com/kr-colab/mapNN .

2.
Mol Ecol Resour ; 24(7): e14005, 2024 Oct.
Artículo en Inglés | MEDLINE | ID: mdl-39152666

RESUMEN

A fundamental goal in population genetics is to understand how variation is arrayed over natural landscapes. From first principles we know that common features such as heterogeneous population densities and barriers to dispersal should shape genetic variation over space, however there are few tools currently available that can deal with these ubiquitous complexities. Geographically referenced single nucleotide polymorphism (SNP) data are increasingly accessible, presenting an opportunity to study genetic variation across geographic space in myriad species. We present a new inference method that uses geo-referenced SNPs and a deep neural network to estimate spatially heterogeneous maps of population density and dispersal rate. Our neural network trains on simulated input and output pairings, where the input consists of genotypes and sampling locations generated from a continuous space population genetic simulator, and the output is a map of the true demographic parameters. We benchmark our tool against existing methods and discuss qualitative differences between the different approaches; in particular, our program is unique because it infers the magnitude of both dispersal and density as well as their variation over the landscape, and it does so using SNP data. Similar methods are constrained to estimating relative migration rates, or require identity-by-descent blocks as input. We applied our tool to empirical data from North American grey wolves, for which it estimated mostly reasonable demographic parameters, but was affected by incomplete spatial sampling. Genetic based methods like ours complement other, direct methods for estimating past and present demography, and we believe will serve as valuable tools for applications in conservation, ecology and evolutionary biology. An open source software package implementing our method is available from https://github.com/kr-colab/mapNN.


Asunto(s)
Genética de Población , Redes Neurales de la Computación , Polimorfismo de Nucleótido Simple , Animales , Genética de Población/métodos , Lobos/genética , Lobos/clasificación , Densidad de Población , Demografía/métodos , Genotipo
3.
Mob DNA ; 12(1): 4, 2021 Jan 23.
Artículo en Inglés | MEDLINE | ID: mdl-33485368

RESUMEN

BACKGROUND: Transposable element (TE) sequences are classified into families based on the reconstructed history of replication, and into subfamilies based on more fine-grained features that are often intended to capture family history. We evaluate the reliability of annotation with common subfamilies by assessing the extent to which subfamily annotation is reproducible in replicate copies created by segmental duplications in the human genome, and in homologous copies shared by human and chimpanzee. RESULTS: We find that standard methods annotate over 10% of replicates as belonging to different subfamilies, despite the fact that they are expected to be annotated as belonging to the same subfamily. Point mutations and homologous recombination appear to be responsible for some of this discordant annotation (particularly in the young Alu family), but are unlikely to fully explain the annotation unreliability. CONCLUSIONS: The surprisingly high level of disagreement in subfamily annotation of homologous sequences highlights a need for further research into definition of TE subfamilies, methods for representing subfamily annotation confidence of TE instances, and approaches to better utilizing such nuanced annotation data in downstream analysis.

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