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Improving the Prediction of Transcription Factor Binding Sites To
Improving the prediction of transcription factor binding sites to aid the interpretation of non-coding single nucleotide variants. Narayan Jayaram Research Department of Structural and Molecular Biology University College London A thesis submitted to University College London for the degree of Doctor of Philosophy 1 Declaration I, Narayan Jayaram confirm that the work presented in this thesis is my own. Where information has been derived from other sources, I confirm that this has been indicated in the thesis. Narayan Jayaram 2 Abstract Single nucleotide variants (SNVs) that occur in transcription factor binding sites (TFBSs) can disrupt the binding of transcription factors and alter gene expression which can cause inherited diseases and act as driver SNVs in cancer. The identification of SNVs in TFBSs has historically been challenging given the limited number of experimentally characterised TFBSs. The recent ENCODE project has resulted in the availability of ChIP-Seq data that provides genome wide sets of regions bound by transcription factors. These data have the potential to improve the identification of SNVs in TFBSs. However, as the ChIP-Seq data identify a broader range of DNA in which a transcription factor binds, computational prediction is required to identify the precise TFBS. Prediction of TFBSs involves scanning a DNA sequence with a Position Weight Matrix (PWM) using a pattern matching tool. This thesis focusses on the prediction of TFBSs by: (a) evaluating a set of locally-installable pattern-matching tools and identifying the best performing tool (FIMO), (b) using the ENCODE ChIP-Seq data to evaluate a set of de novo motif discovery tools that are used to derive PWMs which can handle large volumes of data, (c) identifying the best performing tool (rGADEM), (d) using rGADEM to generate a set of PWMs from the ENCODE ChIP-Seq data and (e) by finally checking that the selection of the best pattern matching tool is not unduly influenced by the choice of PWMs. -
Applied Category Theory for Genomics – an Initiative
Applied Category Theory for Genomics { An Initiative Yanying Wu1,2 1Centre for Neural Circuits and Behaviour, University of Oxford, UK 2Department of Physiology, Anatomy and Genetics, University of Oxford, UK 06 Sept, 2020 Abstract The ultimate secret of all lives on earth is hidden in their genomes { a totality of DNA sequences. We currently know the whole genome sequence of many organisms, while our understanding of the genome architecture on a systematic level remains rudimentary. Applied category theory opens a promising way to integrate the humongous amount of heterogeneous informations in genomics, to advance our knowledge regarding genome organization, and to provide us with a deep and holistic view of our own genomes. In this work we explain why applied category theory carries such a hope, and we move on to show how it could actually do so, albeit in baby steps. The manuscript intends to be readable to both mathematicians and biologists, therefore no prior knowledge is required from either side. arXiv:2009.02822v1 [q-bio.GN] 6 Sep 2020 1 Introduction DNA, the genetic material of all living beings on this planet, holds the secret of life. The complete set of DNA sequences in an organism constitutes its genome { the blueprint and instruction manual of that organism, be it a human or fly [1]. Therefore, genomics, which studies the contents and meaning of genomes, has been standing in the central stage of scientific research since its birth. The twentieth century witnessed three milestones of genomics research [1]. It began with the discovery of Mendel's laws of inheritance [2], sparked a climax in the middle with the reveal of DNA double helix structure [3], and ended with the accomplishment of a first draft of complete human genome sequences [4]. -
A Community Proposal to Integrate Structural
F1000Research 2020, 9(ELIXIR):278 Last updated: 11 JUN 2020 OPINION ARTICLE A community proposal to integrate structural bioinformatics activities in ELIXIR (3D-Bioinfo Community) [version 1; peer review: 1 approved, 3 approved with reservations] Christine Orengo1, Sameer Velankar2, Shoshana Wodak3, Vincent Zoete4, Alexandre M.J.J. Bonvin 5, Arne Elofsson 6, K. Anton Feenstra 7, Dietland L. Gerloff8, Thomas Hamelryck9, John M. Hancock 10, Manuela Helmer-Citterich11, Adam Hospital12, Modesto Orozco12, Anastassis Perrakis 13, Matthias Rarey14, Claudio Soares15, Joel L. Sussman16, Janet M. Thornton17, Pierre Tuffery 18, Gabor Tusnady19, Rikkert Wierenga20, Tiina Salminen21, Bohdan Schneider 22 1Structural and Molecular Biology Department, University College, London, UK 2Protein Data Bank in Europe, European Molecular Biology Laboratory, European Bioinformatics Institute, Hinxton, CB10 1SD, UK 3VIB-VUB Center for Structural Biology, Brussels, Belgium 4Department of Oncology, Lausanne University, Swiss Institute of Bioinformatics, Lausanne, Switzerland 5Bijvoet Center, Faculty of Science – Chemistry, Utrecht University, Utrecht, 3584CH, The Netherlands 6Science for Life Laboratory, Stockholm University, Solna, S-17121, Sweden 7Dept. Computer Science, Center for Integrative Bioinformatics VU (IBIVU), Vrije Universiteit, Amsterdam, 1081 HV, The Netherlands 8Luxembourg Centre for Systems Biomedicine, University of Luxembourg, Belvaux, L-4367, Luxembourg 9Bioinformatics center, Department of Biology, University of Copenhagen, Copenhagen, DK-2200, -
SD Gross BFI0403
Janet Thornton Bioinformatician avant la lettre Michael Gross B ioinformatics is very much a buzzword of our time, with new courses and institutes dedicated to it sprouting up almost everywhere. Most significantly, the flood of genome data has raised the gen- eral awareness of the need to deve-lop new computational approaches to make sense of all the raw information collected. Professor Janet Thornton, the current director of the European Bioinformatics Institute (EBI), an EMBL outpost based at the Hinxton campus near Cambridge, has been in the field even before there was a word for it. Coming to structural biology with a physics degree from the University of Nottingham, she was already involved with computer-generated structural im- ages in the 1970s, when personal comput- ers and user-friendly programs had yet to be invented. The Early Years larities. Within 15 minutes, the software From there to the EBI, her remarkable Janet Thornton can check all 2.4 billion possible re- career appears to be organised in lationships and pick the ones relevant decades. During the 1970s, she did doc- software to compare structures to each to the question at hand. In comparison toral and post-doctoral research at other, recognise known folds and spot to publicly available bioinformatics the Molecular Biophysics Laboratory in new ones. Such work provides both packages such as Blast or Psiblast, Oxford and at the National Institute for fundamental insights into the workings Biopendium can provide an additional Medical Research in Mill Hill, near Lon- of evolution on a molecular level, and 30 % of annotation, according to Inphar- don. -
Enhanced Representation of Natural Product Metabolism in Uniprotkb
H OH metabolites OH Article Diverse Taxonomies for Diverse Chemistries: Enhanced Representation of Natural Product Metabolism in UniProtKB Marc Feuermann 1,* , Emmanuel Boutet 1,* , Anne Morgat 1 , Kristian B. Axelsen 1, Parit Bansal 1, Jerven Bolleman 1 , Edouard de Castro 1, Elisabeth Coudert 1, Elisabeth Gasteiger 1,Sébastien Géhant 1, Damien Lieberherr 1, Thierry Lombardot 1,†, Teresa B. Neto 1, Ivo Pedruzzi 1, Sylvain Poux 1, Monica Pozzato 1, Nicole Redaschi 1 , Alan Bridge 1 and on behalf of the UniProt Consortium 1,2,3,4,‡ 1 Swiss-Prot Group, SIB Swiss Institute of Bioinformatics, CMU, 1 Michel-Servet, CH-1211 Geneva 4, Switzerland; [email protected] (A.M.); [email protected] (K.B.A.); [email protected] (P.B.); [email protected] (J.B.); [email protected] (E.d.C.); [email protected] (E.C.); [email protected] (E.G.); [email protected] (S.G.); [email protected] (D.L.); [email protected] (T.L.); [email protected] (T.B.N.); [email protected] (I.P.); [email protected] (S.P.); [email protected] (M.P.); [email protected] (N.R.); [email protected] (A.B.); [email protected] (U.C.) 2 European Molecular Biology Laboratory, European Bioinformatics Institute (EMBL-EBI), Wellcome Trust Genome Campus, Hinxton, Cambridge CB10 1SD, UK 3 Protein Information Resource, University of Delaware, 15 Innovation Way, Suite 205, Newark, DE 19711, USA 4 Protein Information Resource, Georgetown University Medical Center, 3300 Whitehaven Street NorthWest, Suite 1200, Washington, DC 20007, USA * Correspondence: [email protected] (M.F.); [email protected] (E.B.); Tel.: +41-22-379-58-75 (M.F.); +41-22-379-49-10 (E.B.) † Current address: Centre Informatique, Division Calcul et Soutien à la Recherche, University of Lausanne, CH-1015 Lausanne, Switzerland. -
The EMBL-European Bioinformatics Institute the Hub for Bioinformatics in Europe
The EMBL-European Bioinformatics Institute The hub for bioinformatics in Europe Blaise T.F. Alako, PhD [email protected] www.ebi.ac.uk What is EMBL-EBI? • Part of the European Molecular Biology Laboratory • International, non-profit research institute • Europe’s hub for biological data, services and research The European Molecular Biology Laboratory Heidelberg Hamburg Hinxton, Cambridge Basic research Structural biology Bioinformatics Administration Grenoble Monterotondo, Rome EMBO EMBL staff: 1500 people Structural biology Mouse biology >60 nationalities EMBL member states Austria, Belgium, Croatia, Denmark, Finland, France, Germany, Greece, Iceland, Ireland, Israel, Italy, Luxembourg, the Netherlands, Norway, Portugal, Spain, Sweden, Switzerland and the United Kingdom Associate member state: Australia Who we are ~500 members of staff ~400 work in services & support >53 nationalities ~120 focus on basic research EMBL-EBI’s mission • Provide freely available data and bioinformatics services to all facets of the scientific community in ways that promote scientific progress • Contribute to the advancement of biology through basic investigator-driven research in bioinformatics • Provide advanced bioinformatics training to scientists at all levels, from PhD students to independent investigators • Help disseminate cutting-edge technologies to industry • Coordinate biological data provision throughout Europe Services Data and tools for molecular life science www.ebi.ac.uk/services Browse our services 9 What services do we provide? Labs around the -
Functional Effects Detailed Research Plan
GeCIP Detailed Research Plan Form Background The Genomics England Clinical Interpretation Partnership (GeCIP) brings together researchers, clinicians and trainees from both academia and the NHS to analyse, refine and make new discoveries from the data from the 100,000 Genomes Project. The aims of the partnerships are: 1. To optimise: • clinical data and sample collection • clinical reporting • data validation and interpretation. 2. To improve understanding of the implications of genomic findings and improve the accuracy and reliability of information fed back to patients. To add to knowledge of the genetic basis of disease. 3. To provide a sustainable thriving training environment. The initial wave of GeCIP domains was announced in June 2015 following a first round of applications in January 2015. On the 18th June 2015 we invited the inaugurated GeCIP domains to develop more detailed research plans working closely with Genomics England. These will be used to ensure that the plans are complimentary and add real value across the GeCIP portfolio and address the aims and objectives of the 100,000 Genomes Project. They will be shared with the MRC, Wellcome Trust, NIHR and Cancer Research UK as existing members of the GeCIP Board to give advance warning and manage funding requests to maximise the funds available to each domain. However, formal applications will then be required to be submitted to individual funders. They will allow Genomics England to plan shared core analyses and the required research and computing infrastructure to support the proposed research. They will also form the basis of assessment by the Project’s Access Review Committee, to permit access to data. -
Tunca Doğan , Alex Bateman , Maria J. Martin Your Choice
(—THIS SIDEBAR DOES NOT PRINT—) UniProt Domain Architecture Alignment: A New Approach for Protein Similarity QUICK START (cont.) DESIGN GUIDE Search using InterPro Domain Annotation How to change the template color theme This PowerPoint 2007 template produces a 44”x44” You can easily change the color theme of your poster by going to presentation poster. You can use it to create your research 1 1 1 the DESIGN menu, click on COLORS, and choose the color theme of poster and save valuable time placing titles, subtitles, text, Tunca Doğan , Alex Bateman , Maria J. Martin your choice. You can also create your own color theme. and graphics. European Molecular Biology Laboratory, European Bioinformatics Institute (EMBL-EBI), We provide a series of online tutorials that will guide you Wellcome Trust Genome Campus, Hinxton, Cambridge CB10 1SD, UK through the poster design process and answer your poster Correspondence: [email protected] production questions. To view our template tutorials, go online to PosterPresentations.com and click on HELP DESK. ABSTRACT METHODOLOGY RESULTS & DISCUSSION When you are ready to print your poster, go online to InterPro Domains, DAs and DA Alignment PosterPresentations.com Motivation: Similarity based methods have been widely used in order to Generation of the Domain Architectures: You can also manually change the color of your background by going to VIEW > SLIDE MASTER. After you finish working on the master be infer the properties of genes and gene products containing little or no 1) Collect the hits for each protein from InterPro. Domain annotation coverage Overlap domain hits problem in Need assistance? Call us at 1.510.649.3001 difference b/w domain databases: the InterPro database: sure to go to VIEW > NORMAL to continue working on your poster. -
Evolution and Function of Drososphila Melanogaster Cis-Regulatory Sequences
Evolution and Function of Drososphila melanogaster cis-regulatory Sequences By Aaron Hardin A dissertation submitted in partial satisfaction of the requirements for the degree of Doctor of Philosophy in Molecular and Cell Biology in the Graduate Division of the University of California, Berkeley Committee in charge: Professor Michael Eisen, Chair Professor Doris Bachtrog Professor Gary Karpen Professor Lior Pachter Fall 2013 Evolution and Function of Drososphila melanogaster cis-regulatory Sequences This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License 2013 by Aaron Hardin 1 Abstract Evolution and Function of Drososphila melanogaster cis-regulatory Sequences by Aaron Hardin Doctor of Philosophy in Molecular and Cell Biology University of California, Berkeley Professor Michael Eisen, Chair In this work, I describe my doctoral work studying the regulation of transcription with both computational and experimental methods on the natural genetic variation in a population. This works integrates an investigation of the consequences of polymorphisms at three stages of gene regulation in the developing fly embryo: the diversity at cis-regulatory modules, the integration of transcription factor binding into changes in chromatin state and the effects of these inputs on the final phenotype of embryonic gene expression. i I dedicate this dissertation to Mela Hardin who has been here for me at all times, even when we were apart. ii Contents List of Figures iv List of Tables vi Acknowledgments vii 1 Introduction1 2 Within Species Diversity in cis-Regulatory Modules6 2.1 Introduction....................................6 2.2 Results.......................................8 2.2.1 Genome wide diversity in transcription factor binding sites......8 2.2.2 Genome wide purifying selection on cis-regulatory modules......9 2.3 Discussion.....................................9 2.4 Methods for finding polymorphisms...................... -
Bioinformatics Approaches to Identify Pain Mediators, Novel Lncrnas and Distinct Modalities of Neuropathic Pain
Bioinformatics approaches to identify pain mediators, novel LncRNAs and distinct modalities of neuropathic pain by Georgios Baskozos A thesis submitted to University College London for the degree of Doctor of Philosophy Institute of Structural and Molecular Biology University College London September 2016 1 Declaration I, Georgios Baskozos, confirm that the work presented in this thesis is my own. Where information has been derived from other sources, I confirm that this has been indicated in the thesis. ……………………………………… Georgios Baskozos 29 September 2016 2 Abstract This thesis presents a number of studies in the general subject of bioinformatics and functional genomics. The studies were made in collaboration with experimental scientists of the London Pain Consortium (LPC), an initiative that has promoted collaborations between experimental and computational scientists to further understanding of pain. The studies are mainly concerned with the molecular biology of pain and deal with data gathered from high throughput technologies aiming to assess the transcriptional changes involved in well induced pain states, both from animal models of pain and human patients. We have analysed next generation sequencing data (NGS data) in order to assess the transcriptional changes in rodent’s dorsal root ganglions under well induced pain states. We have also developed a customised computational pipeline to analyse RNA- sequencing data in order to identify novel Long non-coding RNAs (LncRNAs), which may function as mediators of neuropathic pain. Our analyses detected hundreds of novel LncRNAs significantly dysregulated between sham-operated animals and animal models of pain. In addition, in order to gain valuable insights into neuropathic pain, including both its molecular signature, somatosensory profiles and clusters of individuals related to pain severity, we analysed clinical data together with data obtained from quality of life pain-questionnaires. -
Molecular Genetics & Genomics
page 46 Lab Times 5-2010 Ranking Illustration: Christina Ullman Publication Analysis 1997-2008 Molecular Genetics & Genomics Under the premise of a “narrow” definition of the field, Germany and England co-dominated European molecular genetics/genomics. The most frequently citated sub-fields were bioinformatical genomics, epigenetics, RNA biology and DNA repair. irst of all, a little science history (you’ll soon see why). As and expression. That’s where so-called computational biology is well known, in the 1950s genetics went molecular – and and systems biology enter research into basic genetic problems. Fdid not just become molecular genetics but rather molec- Given that development, it is not easy to answer the question ular bio logy. In 1963, however, Sydney Brenner wrote in his fa- what “molecular genetics & genomics” today actually is – and, mous letter to Max Perutz: “[...] I have long felt that the future of in particular, what is it in the context of our publication analy- molecular biology lies in the extension of research to other fields sis of the field? It is obvious that, as for example science historian of biology, notably development and the nervous system.” He Robert Olby put it, a “wide” definition can be distinguished from appeared not to be alone with this view and, as a consequence, a “narrow” definition of the field. The wide definition includes along with Brenner many of the leading molecular biologists all fields, into which molecular biology has entered as an exper- from the classical period redirected their research agendas, utilis- imental and theoretical paradigm. The “narrow” definition, on ing the newly developed molecular techniques to investigate un- the other hand, still tries to maintain the status as an explicit bio- solved problems in other fields. -
Prolango: Protein Function Prediction Using Neural~ Machine
ProLanGO: Protein Function Prediction Using Neural Machine Translation Based on a Recurrent Neural Network Renzhi Cao Colton Freitas Department of Computer Science Department of Computer Science Pacific Lutheran University Pacific Lutheran University Tacoma, WA 98447 Tacoma, WA 98447 [email protected] [email protected] Leong Chan Miao Sun School of Business Baidu Inc. Pacific Lutheran University 1195 Bordeaux Dr, Sunnyvale, CA 94089, USA Tacoma, WA 98447 [email protected] [email protected] Haiqing Jiang Zhangxin Chen Hiretual Inc. School of electronic engineering San Jose, CA 95131, USA University of Electronic Science and Technology of China [email protected] Chengdu, 610051, China [email protected] Abstract With the development of next generation sequencing techniques, it is fast and cheap to determine protein sequences but relatively slow and expensive to extract useful information from protein sequences because of limitations of traditional biological experimental techniques. Protein function prediction has been a long standing challenge to fill the gap between the huge amount of protein sequences and the known function. In this paper, we propose a novel method to convert the protein function problem into a language translation problem by the new proposed protein sequence language “ProLan” to the protein function language “GOLan”, and build a neural machine translation model based on recurrent neural networks to translate “ProLan” language to “GOLan” language. We blindly tested our method by attending the latest third Critical Assessment of Function Annotation (CAFA arXiv:1710.07016v1 [q-bio.QM] 19 Oct 2017 3) in 2016, and also evaluate the performance of our methods on selected proteins whose function was released after CAFA competition.