UniProt: the Universal Protein Knowledgebase in 2023

Alex Bateman,Maria-Jesus Martin,Sandra Orchard,Michele Magrane,Shadab Ahmad,Emanuele Alpi,Emily H Bowler-Barnett,Ramona Britto,Hema Bye-A-Jee,Austra Cukura,Paul Denny,Tunca Dogan,ThankGod Ebenezer,Jun Fan,Penelope Garmiri,Leonardo Jose da Costa Gonzales,Emma Hatton-Ellis,Abdulrahman Hussein, Alexandr Ignatchenko,Giuseppe Insana,Rizwan Ishtiaq,Vishal Joshi,Dushyanth Jyothi,Swaathi Kandasaamy,Antonia Lock,Aurelien Luciani, Marija Lugaric,Jie Luo,Yvonne Lussi,Alistair MacDougall,Fabio Madeira,Mahdi Mahmoudy, Alok Mishra, Katie Moulang,Andrew Nightingale,Sangya Pundir,Guoying Qi,Shriya Raj, Pedro Raposo,Daniel L Rice,Rabie Saidi, Rafael Santos,Elena Speretta,James Stephenson, Prabhat Totoo,Edward Turner, Nidhi Tyagi, Preethi Vasudev,Kate Warner,Xavier Watkins,Rossana Zaru,Hermann Zellner,Alan J Bridge,Lucila Aimo, Ghislaine Argoud-Puy,Andrea H Auchincloss,Kristian B Axelsen,Parit Bansal,Delphine Baratin, Teresa M Batista Neto,Marie-Claude Blatter,Jerven T Bolleman,Emmanuel Boutet,Lionel Breuza, Blanca Cabrera Gil,Cristina Casals-Casas,Kamal Chikh Echioukh,Elisabeth Coudert,Beatrice Cuche,Edouard de Castro,Anne Estreicher,Maria L Famiglietti,Marc Feuermann,Elisabeth Gasteiger,Pascale Gaudet,Sebastien Gehant,Vivienne Gerritsen,Arnaud Gos,Nadine Gruaz,Chantal Hulo,Nevila Hyka-Nouspikel,Florence Jungo,Arnaud Kerhornou,Philippe Le Mercier,Damien Lieberherr,Patrick Masson,Anne Morgat,Venkatesh Muthukrishnan, Salvo Paesano,Ivo Pedruzzi, Sandrine Pilbout, Lucille Pourcel,Sylvain Poux,Monica Pozzato,Manuela Pruess,Nicole Redaschi,Catherine Rivoire,Christian J A Sigrist, Karin Sonesson,Shyamala Sundaram,Cathy H Wu,Cecilia N Arighi, Leslie Arminski,Chuming Chen,Yongxing Chen,Hongzhan Huang,Kati Laiho,Peter McGarvey,Darren A Natale,Karen Ross,C R Vinayaka,Qinghua Wang,Yuqi Wang,Jian Zhang

Nucleic Acids Research(2022)

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摘要
Abstract The aim of the UniProt Knowledgebase is to provide users with a comprehensive, high-quality and freely accessible set of protein sequences annotated with functional information. In this publication we describe enhancements made to our data processing pipeline and to our website to adapt to an ever-increasing information content. The number of sequences in UniProtKB has risen to over 227 million and we are working towards including a reference proteome for each taxonomic group. We continue to extract detailed annotations from the literature to update or create reviewed entries, while unreviewed entries are supplemented with annotations provided by automated systems using a variety of machine-learning techniques. In addition, the scientific community continues their contributions of publications and annotations to UniProt entries of their interest. Finally, we describe our new website (https://www.uniprot.org/), designed to enhance our users’ experience and make our data easily accessible to the research community. This interface includes access to AlphaFold structures for more than 85% of all entries as well as improved visualisations for subcellular localisation of proteins.
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universal protein knowledgebase
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