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HMMploidy: inference of ploidy levels from short-read sequencing data
2022
Peer Community Journal
The inference of ploidy levels from genomic data is important to understand molecular mechanisms underpinning genome evolution. However, current methods based on allele frequency and sequencing depth variation do not have power to infer ploidy levels at low-and mid-depth sequencing data, as they do not account for data uncertainty. Here we introduce HMMploidy, a novel tool that leverages the information from multiple samples and combines the information from sequencing depth and genotype
doi:10.24072/pcjournal.178
fatcat:4exgyoerebdstjpqhw6yprl7ki