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Title: | Pangenome-based genome inference using long read sequencing data |
Authors: | Marschall, Tobias PANI, SAMARENDRA Dept. of Biology 20171095 |
Keywords: | Pangenomics Computational Biology Genomics Methods Development Genotyping Structural Variations |
Issue Date: | May-2022 |
Citation: | 91 |
Abstract: | Long read sequence data provide a unique opportunity for genotyping by covering structural variants and providing linkage information. The linkage information is crucial for phasing diploid organisms like humans since it provides information on which alleles lie of the same haplotype. The existing methods which use long reads to genotype rely on a single linear reference genome. They suffer from “reference bias”, the inability to analyse samples that contain alleles not defined in the reference. Pangenome reference models rectify that by producing genome graphs that consist of allele information from multiple individuals/populations. We have developed an HMM that genotypes variants using noisy long read data and a pangenome reference. This is the first method to use both long reads and a pangenome reference and has great potential for application due to the increasing availability of long-read data and high-quality genome samples which can be utilised in the pangenome. We benchmark the model against the tool PanGenie, which genotypes variants using short-read data and a pangenome reference at low read coverage values. The model outperforms PanGenie at genotyping single nucleotide polymorphism and small indels but suffers for indels of size more than 20bp. We create case studies to identify possible issues with the model by visualising the data at incorrectly genotyped positions. Runtime analysis of the model shows that the model is not tractable for high coverages, and parallel processing is required to process the entire genome. |
URI: | http://dr.iiserpune.ac.in:8080/xmlui/handle/123456789/6844 |
Appears in Collections: | MS THESES |
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File | Description | Size | Format | |
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20171095_Thesis.pdf | 6.25 MB | Adobe PDF | View/Open Request a copy |
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