Inference of the Cultural Transmission of Reproductive Success from human genomic data: ABC and machine learning methods - Laboratoire de recherche en informatique. Équipe: Bioinformatique
Poster De Conférence Année : 2022

Inference of the Cultural Transmission of Reproductive Success from human genomic data: ABC and machine learning methods

Résumé

The Cultural Transmission of Reproductive Success (CTRS) is one of the various cultural processes that can impact human genetic evolution. In this process, individuals from large families have more children on average. Here, we develop and evaluate methods to infer this process from genomic data, using two approaches: (1) Approximate Bayesian computation, which uses summary statistics computed on inferred genealogies from genomic data and (2) deep neural networks, which are directly trained on genomic data. These methods rely on large simulated datasets incorporating varying levels of CTRS. Both competing approaches show a good ability to infer CTRS on genomic data and worth investigating under more complex evolutionary histories.
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Dates et versions

hal-04011855 , version 1 (08-11-2024)

Identifiants

  • HAL Id : hal-04011855 , version 1

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Arnaud Quelin, Jérémy Guez, Ferdinand Petit, Flora Jay, Frederic Austerlitz. Inference of the Cultural Transmission of Reproductive Success from human genomic data: ABC and machine learning methods. Junior Conference on DataScience and Engeneering 2022, Sep 2022, Palaiseau, France. ⟨hal-04011855⟩
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