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Proteins are involved in several cellular processes and biochemical reactions. Analyzing a specific protein of interest requires it to be isolated from the other proteins in the cell. This is achieved by overexpressing the specific gene in a suitable host to produce large quantities of the target protein. A tag or label is recombined with the gene to produce a fusion protein containing the target protein and the tag. The tags on these fusion proteins can then be used for easy detection and...
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Proteins are one of the most abundant organic molecules in living systems and have the most diverse range of functions of all macromolecules. Proteins may be structural, regulatory, contractile, or protective. They may serve in transport, storage, or membranes; or they may be toxins or enzymes. Their structures, like their functions, vary greatly. They are all, however, amino acid polymers arranged in a linear sequence.
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Proteins perform many mechanical functions in a cell. These proteins can be classified into two general categories- proteins that generate mechanical forces and proteins that are subjected to mechanical forces. Proteins providing mechanical support to the structure of the cell, such as keratin, are subjected to mechanical force, whereas proteins involved in cell movement and transport of molecules across cell membranes, such as an ion pump, are examples of generating mechanical force. 
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Investigating Protein Sequence-structure-dynamics Relationships with Bio3D-web
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DeepMVD: A Novel Multiview Dynamic Feature Fusion Model for Accurate Protein Function Prediction.

Chaolin Song1,2,3, Shiwen He1,4, Yurong Qian2,3,5,6

  • 1School of Software, Xinjiang University, Urumqi 830091, China.

Journal of Chemical Information and Modeling
|March 7, 2025
PubMed
Summary
This summary is machine-generated.

DeepMVD, a novel deep learning model, improves protein function prediction by fusing multilevel sequence features. This approach significantly outperforms existing methods on the CAFA4 dataset for biological process, molecular function, and cellular component terminology.

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Area of Science:

  • Bioinformatics
  • Computational Biology
  • Genomics

Background:

  • Proteins are essential macromolecules involved in numerous biological processes.
  • Accurate protein function prediction is crucial for understanding biological systems.
  • Existing methods often fail to fully utilize multilevel attribute features from protein sequences.

Purpose of the Study:

  • To develop a novel deep learning model, DeepMVD, for enhanced protein function prediction.
  • To effectively integrate multilevel attribute features from protein sequences.
  • To improve the accuracy of protein function prediction using sequence data.

Main Methods:

  • Proposed DeepMVD, a deep learning model utilizing dynamic fusion of multiview features.
  • Employed specialized modules for extracting unique features from each data view.
  • Utilized an adaptive fusion mechanism for optimal integration of extracted features.

Main Results:

  • DeepMVD demonstrated significant performance improvements over state-of-the-art models on the CAFA4 dataset.
  • Achieved highest Fmax scores for Biological Process (BP) (0.523), Molecular Function (MF) (0.712), and Cellular Component (CC) (0.740) terminology.
  • Ablation studies confirmed the robustness and effectiveness of the DeepMVD model.

Conclusions:

  • DeepMVD offers a powerful new approach for protein function prediction by effectively leveraging multilevel sequence features.
  • The model's ability to dynamically fuse multiview features leads to superior prediction accuracy.
  • The findings provide a valuable tool for advancing research in bioinformatics and computational biology.