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Related Concept Videos

Protein Networks02:26

Protein Networks

An organism can have thousands of different proteins, and these proteins must cooperate to ensure the health of an organism. Proteins bind to other proteins and form complexes to carry out their functions. Many proteins interact with multiple other proteins creating a complex network of protein interactions.
These interactions can be represented through maps depicting protein-protein interaction networks, represented as nodes and edges. Nodes are circles that are representative of a protein,...
Protein Networks02:26

Protein Networks

An organism can have thousands of different proteins, and these proteins must cooperate to ensure the health of an organism. Proteins bind to other proteins and form complexes to carry out their functions. Many proteins interact with multiple other proteins creating a complex network of protein interactions.
These interactions can be represented through maps depicting protein-protein interaction networks, represented as nodes and edges. Nodes are circles that are representative of a protein,...
Protein-protein Interfaces02:04

Protein-protein Interfaces

Many proteins form complexes to carry out their functions, making protein-protein interactions (PPIs) essential for an organism's survival. Most PPIs are stabilized by numerous weak noncovalent chemical forces. The physical shape of the interfaces determines the way two proteins interact. Many globular proteins have closely-matching shapes on their surfaces, which form a large number of weak bonds. Additionally, many PPIs occur between two helices or between a surface cleft and a polypeptide...
Protein-Protein Interfaces02:04

Protein-Protein Interfaces

Many proteins form complexes to carry out their functions, making protein-protein interactions (PPIs) essential for an organism's survival. Most PPIs are stabilized by numerous weak noncovalent chemical forces. The physical shape of the interfaces determines the way two proteins interact. Many globular proteins have closely-matching shapes on their surfaces, which form a large number of weak bonds. Additionally, many PPIs occur between two helices or between a surface cleft and a polypeptide...
Protein Complexes with Interchangeable Parts01:57

Protein Complexes with Interchangeable Parts

Groups of proteins may form a complex where each protein in this complex has a different role in the overall execution of the complex’s function. Often some of the proteins in the complex can be replaced by a closely related variant to give a complex that contains many of the same components yet is functionally distinct.
The SCF ubiquitin ligase is a protein complex of five individual proteins. This complex attaches ubiquitin to other target proteins to mark them for degradation. In order to...
Protein Complexes with Interchangeable Parts01:57

Protein Complexes with Interchangeable Parts

Groups of proteins may form a complex where each protein in this complex has a different role in the overall execution of the complex’s function. Often some of the proteins in the complex can be replaced by a closely related variant to give a complex that contains many of the same components yet is functionally distinct.
The SCF ubiquitin ligase is a protein complex of five individual proteins. This complex attaches ubiquitin to other target proteins to mark them for degradation. In order to...

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Related Experiment Video

Updated: Jun 5, 2026

A Protocol for Computer-Based Protein Structure and Function Prediction
16:41

A Protocol for Computer-Based Protein Structure and Function Prediction

Published on: November 3, 2011

SCOP-KHNET: An Interpretable Hybrid Network for Protein Structural Class Prediction.

Saikat Dhibar1, Rima Karmakar1, Biman Jana1

  • 1School of Chemical Sciences, Indian Association for the Cultivation of Science, Jadavpur, Kolkata-700032, India.

The Journal of Physical Chemistry Letters
|June 4, 2026
PubMed
Summary
This summary is machine-generated.

SCOP-KHNET accurately predicts protein structural classes using sequence data with 99.7% accuracy. This novel K-mer hybrid network method surpasses existing approaches and large language models, offering enhanced interpretability for protein structure prediction.

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An Integrated Approach for Microprotein Identification and Sequence Analysis
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An Integrated Approach for Microprotein Identification and Sequence Analysis

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Last Updated: Jun 5, 2026

A Protocol for Computer-Based Protein Structure and Function Prediction
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Published on: November 3, 2011

Application of I TASSER, trRosetta, UCSF Chimera, HADDOCK server, and HEX loria for De Novo and In Silico Design of Proteins
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An Integrated Approach for Microprotein Identification and Sequence Analysis
09:37

An Integrated Approach for Microprotein Identification and Sequence Analysis

Published on: July 12, 2022

Area of Science:

  • Computational Biology and Bioinformatics
  • Structural Bioinformatics
  • Machine Learning in Biology

Background:

  • Next-generation sequencing generates vast protein sequences lacking structural annotations.
  • Accurate prediction of protein structural classes from sequence is essential but challenging.
  • Existing machine learning (ML) methods often suffer from poor generalization, feature engineering limitations, and lack of interpretability.

Purpose of the Study:

  • To develop an accurate and interpretable method for predicting protein structural classes solely from sequence information.
  • To overcome the limitations of existing ML-based protein structure prediction techniques.

Main Methods:

  • Developed SCOP-KHNET (SCOP K-mer Hybrid Network), integrating multiple ML models with an optimized weighted strategy.
  • Employed the K-mer sliding window approach for sequence feature extraction.
  • Utilized kernel Shapley additive explanations (KernelSHAP) for feature interpretability.

Main Results:

  • SCOP-KHNET achieved 99.7% accuracy in predicting the four structural classes of proteins on an independent SCOP 2.08 dataset.
  • Demonstrated superior performance compared to all existing protein structural-class prediction methods.
  • Outperformed the large language model ESM-2 in predicting protein structural classes.

Conclusions:

  • SCOP-KHNET offers a highly accurate and robust method for protein structural class prediction from sequence data.
  • The method provides crucial structural insights through interpretable feature identification via KernelSHAP.
  • This advancement addresses the critical need for efficient structural annotation of rapidly growing protein sequence data.