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dc.contributor.authorAndermann, Tobias
dc.date.accessioned2020-11-20T15:46:22Z
dc.date.available2020-11-20T15:46:22Z
dc.date.issued2020-11-20
dc.identifier.isbn978-91-8009-136-7
dc.identifier.isbn978-91-8009-137-4
dc.identifier.otherhttp://hdl.handle.net/2077/66848
dc.identifier.urihttp://hdl.handle.net/2077/66848
dc.description.abstractDuring the recent decades the field of evolutionary biology has entered the era of big data, which has transformed the field into an increasingly computational discipline. In this thesis I present novel computational method developments, including their application in empirical case studies. The presented chapters are divided into three fields of computational biology: genomics, Bayesian statistics, and machine learning. While these are not mutually exclusive categories, they do represent different domains of methodological expertise. Within the field of genomics, I focus on the computational processing and analysis of DNA data produced with target capture, a pre-sequencing enrichment method commonly used in phylogenetic studies. I demonstrate on an empirical case study how common computational processing workflows introduce biases into the phylogenetic results, and I present an improved workflow to address these issues. Next I introduce a novel computational pipeline for the processing of target capture data, intended for general use. In an in-depth review paper on the topic of target capture, I provide general guidelines and considerations for successfully carrying out a target capture project. Within the context of Bayesian statistics, I develop a new computer program to predict future extinctions, which utilizes custom-made Bayesian components. I apply this program in a separate chapter to model future extinctions of mammals, and contrast these predictions with estimates of past extinction rates, produced from fossil data by a set of different recently developed Bayesian algorithms. Finally, I touch upon newly emerging machine learning algorithms and investigate how these can be improved in their utility for biological problems, particularly by explicitly modeling uncertainty in the predictions made by these models. The presented empirical results shed new light onto our understanding of the evolutionary dynamics of different organism groups and showcase the utility of the methods and workflows developed in this thesis. To make these methodological advancements accessible for the whole research community, I embed them into well documented open-access programs. This will hopefully foster the use of these methods in future studies, and contribute to more informed decision-making when applying computational methods to a given biological problem.sv
dc.language.isoengsv
dc.relation.haspartAndermann, Tobias, Alexandre M. Fernandes, Urban Olsson, Mats Töpel, Bernard Pfeil, Bengt Oxelman, Alexandre Aleixo, Brant C. Faircloth, and Alexandre Antonelli. 2019. “Allele Phasing Greatly Improves the Phylogenetic Utility of Ultraconserved Elements.” Systematic Biology 68 (1): 32–46. ::doi::10.1093/sysbio/syy039sv
dc.relation.haspartAndermann, Tobias, Ángela Cano, Alexander Zizka, Christine D. Bacon, and Alexandre Antonelli. 2018. “SECAPR—a Bioinformatics Pipeline for the Rapid and User-Friendly Processing of Targeted Enriched Illumina Sequences, from Raw Reads to Alignments.” PeerJ 6 (July): e5175. ::doi::10.7717/peerj.5175sv
dc.relation.haspartAndermann, Tobias, Maria Fernanda Torres Jiménez, Pável Matos- Maraví, Romina Batista, José L. Blanco-Pastor, A. Lovisa S. Gustafsson, Logan Kistler, Isabel M. Liberal, Bengt Oxelman, Christine D. Bacon, and Alexandre Antonelli. 2020. “A Guide to Carrying Out a Phylogenomic Target Sequence Capture Project.” Frontiers in Genetics 10. ::doi::10.3389/fgene.2019.01407sv
dc.relation.haspartAndermann, Tobias, Søren Faurby, Robert Cooke, Daniele Silvestro, and Alexandre Antonelli. 2020. “iucn_sim: A New Program to Simulate Future Extinctions Based on IUCN Threat Status.” Ecography (in print). ::doi::10.1111/ecog.05110sv
dc.relation.haspartAndermann, Tobias, Søren Faurby, Samuel T. Turvey, Alexandre Antonelli, and Daniele Silvestro. 2020. “The Past and Future Human Impact on Mammalian Diversity.” Science Advances 6 (36): eabb2313. ::doi::10.1126/sciadv.abb2313sv
dc.relation.haspartSilvestro, Daniele, and Tobias Andermann. 2020. “Prior Choice Affects Ability of Bayesian Neural Networks to Identify Unknowns.” ArXiv Preprint arXiv:2005.04987. http://arxiv.org/abs/2005.04987.sv
dc.subjectcomputational biologysv
dc.subjectbioinformaticssv
dc.subjectphylogeneticssv
dc.subjectneural networkssv
dc.subjectNGSsv
dc.subjecttarget capturesv
dc.subjectIllumina sequencingsv
dc.subjectfossilssv
dc.subjectIUCN conservation statussv
dc.subjectextinction ratessv
dc.titleAdvancing Evolutionary Biology: Genomics, Bayesian Statistics, and Machine Learningsv
dc.typeTextswe
dc.type.svepDoctoral thesiseng
dc.gup.mailtobias.andermann@bioenv.gu.sesv
dc.type.degreeDoctor of Philosophysv
dc.gup.originUniversity of Gothenburg. Faculty of Sciencesv
dc.gup.departmentDepartment of Biological and Environmental Sciences ; Institutionen för biologi och miljövetenskapsv
dc.gup.defenceplaceFredagen den 18 december 2020, kl. 14.00, Hörsalen, Botanhuset, Institutionen för Biologi och Miljövetenskap, Carl Skottsbergs gata 22B, Göteborgsv
dc.gup.defencedate2020-12-18
dc.gup.dissdb-fakultetMNF


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