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NGS technologies present a fast and cheap generation of genomic data. Nevertheless, ancestral genome inference is not so straightforward due to complex evolutionary processes acting on this material such as inversions, translocations, and other genome rearrangements that, in addition to their implicit complexity, can co-occur and confound ancestral inferences. Recently, models of genome evolution that accommodate such complex genomic events are emerging. This letter explores these novel evolutionary models and proposes their incorporation into robust statistical approaches based on computer simulations, such as approximate Bayesian computation, that may produce a more realistic evolutionary analysis of genomic data. Advantages and pitfalls in using these analytical methods are discussed. Potential applications of these ancestral genomic inferences are also pointed out.
Genome, Models, Genetic, Population genetics, High-Throughput Nucleotide Sequencing, Bayes Theorem, Genomics, Sequence Analysis, DNA, Genome evolution, Evolution, Molecular, Molecular evolution, Approximate Bayesian computation, Computer Simulation, Computer simulations
Genome, Models, Genetic, Population genetics, High-Throughput Nucleotide Sequencing, Bayes Theorem, Genomics, Sequence Analysis, DNA, Genome evolution, Evolution, Molecular, Molecular evolution, Approximate Bayesian computation, Computer Simulation, Computer simulations
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