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RESEARCH PRODUCT

Inferring heterozygosity from ancient and low coverage genomes

Joachim BurgerChristoph LeuenbergerChristian SellVivian LinkVivian LinkAthanasios KousathanasAthanasios KousathanasDaniel WegmannDaniel Wegmann

subject

Male0301 basic medicineHeterozygotePopulationGenomicsInvestigationsBiologyGenome03 medical and health sciences0302 clinical medicineGeneticsheterozygosityHumanslow coverageDNA AncienteducationPopulation and Evolutionary Geneticsancient DNA030304 developmental biologyGeneticsWhole genome sequencing0303 health scienceseducation.field_of_studyGenetic diversityBase SequenceGenome HumanGenetic Carrier ScreeningChromosome MappingGenetic VariationContrast (statistics)Coverage dataSequence Analysis DNApostmortem damageVariable (computer science)Genetics Population030104 developmental biologyAncient DNAEvolutionary biologybase recalibrationSoftware030217 neurology & neurosurgeryReference genome

description

Abstract While genetic diversity can be quantified accurately from high coverage sequencing data, it is often desirable to obtain such estimates from data with low coverage, either to save costs or because of low DNA quality, as is observed for ancient samples. Here, we introduce a method to accurately infer heterozygosity probabilistically from sequences with average coverage <1× of a single individual. The method relaxes the infinite sites assumption of previous methods, does not require a reference sequence, except for the initial alignment of the sequencing data, and takes into account both variable sequencing errors and potential postmortem damage. It is thus also applicable to nonmodel organisms and ancient genomes. Since error rates as reported by sequencing machines are generally distorted and require recalibration, we also introduce a method to accurately infer recalibration parameters in the presence of postmortem damage. This method does not require knowledge about the underlying genome sequence, but instead works with haploid data (e.g., from the X-chromosome from mammalian males) and integrates over the unknown genotypes. Using extensive simulations we show that a few megabasepairs of haploid data are sufficient for accurate recalibration, even at average coverages as low as 1×. At similar coverages, our method also produces very accurate estimates of heterozygosity down to 10−4 within windows of about 1 Mbp. We further illustrate the usefulness of our approach by inferring genome-wide patterns of diversity for several ancient human samples, and we found that 3000–5000-year-old samples showed diversity patterns comparable to those of modern humans. In contrast, two European hunter-gatherer samples exhibited not only considerably lower levels of diversity than modern samples, but also highly distinct distributions of diversity along their genomes. Interestingly, these distributions were also very different between the two samples, supporting earlier conclusions of a highly diverse and structured population in Europe prior to the arrival of farming.

https://doi.org/10.1101/046748