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Nature Computational Science
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January 13, 2024
Rapid protein model refinement by deep learning
Osama Abdin, Philip M Kim
Current Opinion in Structural Biology
|
March 7, 2025
Language models for protein design
Jin Sub Lee, Osama Abdin, Philip M Kim
Communications Biology
|
May 26, 2022
PepNN: a deep attention model for the identification of peptide binding sites
Osama Abdin, Satra Nim, Han Wen, et al.
Trends in Pharmacological Sciences
|
January 20, 2023
Computational and artificial intelligence-based methods for antibody development
Jisun Kim, Matthew McFee, Qiao Fang, et al.
Nature Biotechnology
|
January 26, 2023
A universal deep-learning model for zinc finger design enables transcription factor reprogramming
David M Ichikawa, Osama Abdin, Nader Alerasool, et al.
Science (New York, N.Y.)
|
July 10, 2025
Scalable emulation of protein equilibrium ensembles with generative deep learning
Sarah Lewis, Tim Hempel, José Jiménez-Luna, et al.
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of 1
Search research articles
Search
Showing results (1-10 of 6) with videos related to
Sort By:
Page
of 1
Nature Computational Science
|
January 13, 2024
Rapid protein model refinement by deep learning
Osama Abdin, Philip M Kim
Current Opinion in Structural Biology
|
March 7, 2025
Language models for protein design
Jin Sub Lee, Osama Abdin, Philip M Kim
Communications Biology
|
May 26, 2022
PepNN: a deep attention model for the identification of peptide binding sites
Osama Abdin, Satra Nim, Han Wen, et al.
Trends in Pharmacological Sciences
|
January 20, 2023
Computational and artificial intelligence-based methods for antibody development
Jisun Kim, Matthew McFee, Qiao Fang, et al.
Nature Biotechnology
|
January 26, 2023
A universal deep-learning model for zinc finger design enables transcription factor reprogramming
David M Ichikawa, Osama Abdin, Nader Alerasool, et al.
Science (New York, N.Y.)
|
July 10, 2025
Scalable emulation of protein equilibrium ensembles with generative deep learning
Sarah Lewis, Tim Hempel, José Jiménez-Luna, et al.
Page
of 1