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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.
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Transformers can provide desired voltages to a circuit by modifying the number of turns in the secondary windings.
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In scenarios involving parallel transformers with disparate ratings, developing per-unit models requires accommodating off-nominal turns ratios. This situation arises when the selected base voltages are not proportional to the transformer’s voltage ratings. Consider a transformer where the rated voltages are related by the term a. If the chosen voltage bases satisfy a relationship involving term b, term c is defined as the ratio of these bases. This ratio is then substituted into the...
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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...
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Kinetics describes the rate and path by which a reaction occurs. In contrast, thermodynamics deals with state functions and describes the properties, behavior, and components of a system. It is not concerned with the path taken by the process and cannot address the rate at which a reaction occurs. Although it does provide information about what can happen during a reaction process, it does not describe the detailed steps of what appears on an atomic or a molecular level. On the other hand,...
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A Protocol for Computer-Based Protein Structure and Function Prediction
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HNetGO: protein function prediction via heterogeneous network transformer.

Xiaoshuai Zhang1, Huannan Guo2, Fan Zhang3

  • 1School of Computer Science and Technology, Harbin Institute of Technology (Shenzhen), Shenzhen, Guangdong 518055, China.

Briefings in Bioinformatics
|October 20, 2023
PubMed
Summary
This summary is machine-generated.

HNetGO enhances protein function prediction by integrating sequence similarity and protein interactions using a novel heterogeneous network and pretraining model. This approach improves accuracy, especially for cellular component and molecular function annotations.

Keywords:
gene ontologygraph neural networkheterogeneous networkprotein function annotation

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Area of Science:

  • Bioinformatics
  • Computational Biology
  • Genomics

Background:

  • Protein function annotation is crucial for understanding molecular life post-genome.
  • Integrating multisource data improves protein function prediction, but existing methods face challenges with feature engineering and model integration.
  • Deep learning models often overlook unlabeled sequence data, limiting their feature extraction capabilities.

Purpose of the Study:

  • To develop an end-to-end protein function annotation model, HNetGO.
  • To leverage heterogeneous networks for integrating protein sequence similarity and protein-protein interaction data.
  • To utilize pretraining models for extracting semantic features from protein sequences.

Main Methods:

  • HNetGO employs a heterogeneous network to combine protein sequence similarity and protein-protein interaction information.
  • A pretraining model is used to extract semantic features from protein sequences.
  • An attention-based graph neural network extracts node-level features from the heterogeneous network for function prediction.

Main Results:

  • HNetGO achieves state-of-the-art performance on the human dataset.
  • The model demonstrates superior accuracy in predicting protein functions related to cellular components.
  • Significant improvements were observed in predicting molecular functions.

Conclusions:

  • HNetGO offers an effective end-to-end solution for protein function annotation.
  • The integration of heterogeneous networks and pretraining models advances protein function prediction.
  • The model shows strong potential for biological research, particularly in understanding cellular and molecular functions.