NetSurfP‐2.0: Improved prediction of protein structural features by integrated deep learning

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This paper, published in 1950, received 382 indexed citations. Written by Michael Schantz Klausen, Martin Closter Jespersen, Henrik Nielsen, Kamilla Kjærgaard Jensen, Vanessa Jurtz, Casper Kaae Sønderby, Morten Otto Alexander Sommer, Ole Winther, Morten Nielsen and Bent Petersen covering the research area of Molecular Biology and Materials Chemistry. It is primarily cited by scholars working on Molecular Biology (307 citations), Materials Chemistry (48 citations) and Computational Theory and Mathematics (39 citations). Published in Proteins Structure Function and Bioinformatics.

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Fields of papers citing NetSurfP‐2.0: Improved prediction of protein structural features by integrated deep learning

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Physical SciencesHealth SciencesLife SciencesSocial Sciences

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This paper is also available at doi.org/10.1002/prot.25674.

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