Close Menu
  • Home
  • AI News
  • AI Startups
  • Deep Learning
  • Interviews
  • Machine-Learning
  • Robotics

Subscribe to Updates

Get the latest creative news from FooBar about art, design and business.

What's Hot

Vouched Launches “Know Your Agent” Verification to Convey Belief and Id to the Subsequent Era of AI Brokers

May 22, 2025

Diligent Acquires Vault, Ushering in a New Period of AI-powered Ethics and Compliance

May 22, 2025

5 Frequent Immediate Engineering Errors Novices Make

May 22, 2025
Facebook X (Twitter) Instagram
Smart Homez™
Facebook X (Twitter) Instagram Pinterest YouTube LinkedIn TikTok
SUBSCRIBE
  • Home
  • AI News
  • AI Startups
  • Deep Learning
  • Interviews
  • Machine-Learning
  • Robotics
Smart Homez™
Home»Deep Learning»Researchers from the College of Washington Developed a Deep Studying Methodology for Protein Sequence Design that Explicitly Fashions the Full Non-Protein Atomic Context
Deep Learning

Researchers from the College of Washington Developed a Deep Studying Methodology for Protein Sequence Design that Explicitly Fashions the Full Non-Protein Atomic Context

By February 4, 2024Updated:February 4, 2024No Comments3 Mins Read
Facebook Twitter Pinterest LinkedIn Tumblr Reddit WhatsApp Email
Researchers from the College of Washington Developed a Deep Studying Methodology for Protein Sequence Design that Explicitly Fashions the Full Non-Protein Atomic Context
Share
Facebook Twitter LinkedIn Pinterest WhatsApp Email


A group of researchers from the College of Washington has collaborated to handle the challenges within the protein sequence design methodology through the use of a deep learning-based protein sequence design methodology, LigandMPNN. The mannequin targets enzymes and small molecule binder and sensor designs. Present bodily primarily based approaches like Rosetta and deep learning-based fashions like ProteinMPNN are unable to mannequin non-protein atoms and molecules explicitly, which limitation hinders the correct design of protein sequences that work together with small molecules, nucleotides, and metals.

The talked about strategies neglect the specific consideration of non-protein atoms and molecules, which is essential for the design of enzymes, protein-DNA/RNA interactions, and protein-small molecule and protein-metal binders. The proposed answer, LigandMPNN, builds upon the ProteinMPNN structure however explicitly incorporates the complete non-protein atomic context. LigandMPNN introduces protein-ligand graphs, leveraging neural networks to mannequin interactions and encode ligand atom geometries. The modification results in LigandMPNN to generate sequences and side-chain conformations tailor-made to particular non-protein contexts.

LigandMPNN employs a graph-based method, treating protein residues as nodes and incorporating nearest neighbor edges primarily based on Cα-Cα distances. The mannequin introduces protein-ligand graphs to seize interactions, with protein residues and ligand atoms as nodes and edges representing geometric relationships. The ligand graph enhances info switch to the protein via ligand-protein edges. 

The experiment demonstrated LigandMPNN and its side-chain packing higher efficiency in comparison with Rosetta and ProteinMPNN, with larger sequence restoration for residues interacting with small molecules, nucleotides, and metals with 20-30% extra accuracy and exhibits its effectiveness in detailed structural design. LigandMPNN additionally beats the prevailing fashions in pace and effectivity. LigandMPNN is roughly 250 occasions quicker than Rosetta.

In conclusion, LigandMPNN fills a crucial hole in present protein sequence design strategies by explicitly together with non-protein atoms and molecules. The graph-based method of LigandMPNN showcases a noticeable enchancment within the efficiency, resulting in larger sequence restoration and superior side-chain packing accuracy round small molecules, nucleotides, and metals. LigandMPNN carried out exceptionally in designing small molecule and DNA-binding proteins with excessive affinity and specificity, which might vastly assist protein engineering.


Take a look at the Paper. All credit score for this analysis goes to the researchers of this venture. Additionally, don’t overlook to observe us on Twitter and Google Information. Be a part of our 36k+ ML SubReddit, 41k+ Fb Group, Discord Channel, and LinkedIn Group.

For those who like our work, you’ll love our e-newsletter..

Don’t Neglect to affix our Telegram Channel



Pragati Jhunjhunwala is a consulting intern at MarktechPost. She is at the moment pursuing her B.Tech from the Indian Institute of Expertise(IIT), Kharagpur. She is a tech fanatic and has a eager curiosity within the scope of software program and knowledge science functions. She is at all times studying concerning the developments in several subject of AI and ML.


🎯 [FREE AI WEBINAR] ‘Utilizing ANN for Vector Search at Pace & Scale (Demo on AWS)’ (Feb 5, 2024)



Related Posts

Microsoft Researchers Introduces BioEmu-1: A Deep Studying Mannequin that may Generate Hundreds of Protein Buildings Per Hour on a Single GPU

February 24, 2025

What’s Deep Studying? – MarkTechPost

January 15, 2025

Researchers from NVIDIA, CMU and the College of Washington Launched ‘FlashInfer’: A Kernel Library that Offers State-of-the-Artwork Kernel Implementations for LLM Inference and Serving

January 5, 2025
Misa
Trending
Interviews

Vouched Launches “Know Your Agent” Verification to Convey Belief and Id to the Subsequent Era of AI Brokers

By Editorial TeamMay 22, 20250

The chief in AI Id Verification launches KnowThat.ai, an Agent Repute Listing, as a part…

Diligent Acquires Vault, Ushering in a New Period of AI-powered Ethics and Compliance

May 22, 2025

5 Frequent Immediate Engineering Errors Novices Make

May 22, 2025

How AI is Ushering in a New Period of Robotic Surgical procedure

May 21, 2025
Stay In Touch
  • Facebook
  • Twitter
  • Pinterest
  • Instagram
  • YouTube
  • Vimeo
Our Picks

Vouched Launches “Know Your Agent” Verification to Convey Belief and Id to the Subsequent Era of AI Brokers

May 22, 2025

Diligent Acquires Vault, Ushering in a New Period of AI-powered Ethics and Compliance

May 22, 2025

5 Frequent Immediate Engineering Errors Novices Make

May 22, 2025

How AI is Ushering in a New Period of Robotic Surgical procedure

May 21, 2025

Subscribe to Updates

Get the latest creative news from SmartMag about art & design.

The Ai Today™ Magazine is the first in the middle east that gives the latest developments and innovations in the field of AI. We provide in-depth articles and analysis on the latest research and technologies in AI, as well as interviews with experts and thought leaders in the field. In addition, The Ai Today™ Magazine provides a platform for researchers and practitioners to share their work and ideas with a wider audience, help readers stay informed and engaged with the latest developments in the field, and provide valuable insights and perspectives on the future of AI.

Our Picks

Vouched Launches “Know Your Agent” Verification to Convey Belief and Id to the Subsequent Era of AI Brokers

May 22, 2025

Diligent Acquires Vault, Ushering in a New Period of AI-powered Ethics and Compliance

May 22, 2025

5 Frequent Immediate Engineering Errors Novices Make

May 22, 2025
Trending

How AI is Ushering in a New Period of Robotic Surgical procedure

May 21, 2025

Gaxos Labs Launches UnGPT.ai Setting a New Customary in Humanized AI

May 21, 2025

Onapsis Unveils Main Platform Enhancements at SAP Sapphire

May 21, 2025
Facebook X (Twitter) Instagram YouTube LinkedIn TikTok
  • About Us
  • Advertising Solutions
  • Privacy Policy
  • Terms
  • Podcast
Copyright © The Ai Today™ , All right reserved.

Type above and press Enter to search. Press Esc to cancel.