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相关概念视频

Protein Folding01:25

Protein Folding

7.8K
Proteins are chains of amino acids linked together by peptide bonds. Upon synthesis, a protein folds into a three-dimensional conformation, critical to its biological function. Interactions between its constituent amino acids guide protein folding, and hence the protein structure is primarily dependent on its amino acid sequence.
Protein Structure Is Critical to Its Biological Function
Proteins perform a wide range of biological functions such as catalyzing chemical reactions, providing...
7.8K
Molecular Chaperones and Protein Folding03:00

Molecular Chaperones and Protein Folding

17.7K
The native conformation of a protein is formed by interactions between the side chains of its constituent amino acids. When the amino acids cannot form these interactions, the protein cannot fold by itself and needs chaperones. Notably, chaperones do not relay any additional information required for the folding of polypeptides; the native conformation of a protein is determined solely by its amino acid sequence. Chaperones catalyze protein folding without being a part of the folded protein.
The...
17.7K
Amyloid Fibrils03:03

Amyloid Fibrils

9.2K
Amyloid fibrils are aggregates of misfolded proteins.  Under most circumstances, misfolded proteins are either refolded by chaperone proteins or degraded by the proteasome. However, in the case of a mutation or a disease, these proteins can accumulate to form large clusters and often further assemble to form elongated fibers, called fibrils. 
Amyloid deposits were observed as early as 1639 in the liver and the spleen.   In 1854, Rudolph Virchow performed iodine staining,...
9.2K
Protein Folding Quality Check in the RER01:29

Protein Folding Quality Check in the RER

3.7K
ER is the primary site for the maturation and folding of soluble and transmembrane secretory proteins. The calnexin cycle is a specific chaperone system that folds and assesses the confirmation of N-glycosylated proteins before they can exit the ER lumen. The primary players of this quality check pipeline are the lectins, ER-resident chaperones, and a glucosyl transferase enzyme. In case the calnexin system in the lumen fails to salvage a misfolded protein, it is transported to the cytoplasm...
3.7K
Protein Organization01:24

Protein Organization

6.2K
Proteins are polymers of amino acid residues. They are versatile and responsible for different cellular functions, including DNA replication, molecular transport, catalysis, and structural support. Proteins have a hierarchical structure comprising at least three levels of organization: primary, secondary, and tertiary structure. Some large proteins have a quaternary structure where individual protein subunits are linked together.
The primary structure of a protein is its amino acid sequence....
6.2K
Conserved Binding Sites01:49

Conserved Binding Sites

4.2K
Many proteins’ biological role depends on their interactions with their ligands, small molecules that bind to specific locations on the protein known as ligand-binding sites. Ligand-binding sites are often conserved among homologous proteins as these sites are critical for protein function.
Binding sites are often located in large pockets, and if their location on a protein’s surface is unknown, it can be predicted using various approaches. The energetic method computationally...
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相关实验视频

Updated: Jun 5, 2025

A Protocol for Computer-Based Protein Structure and Function Prediction
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A Protocol for Computer-Based Protein Structure and Function Prediction

Published on: November 3, 2011

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使用生成模型预测绝对蛋白质折叠稳定性.

Matteo Cagiada1, Sergey Ovchinnikov2, Kresten Lindorff-Larsen1

  • 1Linderstrøm-Lang Centre for Protein Science, Department of Biology, University of Copenhagen, Copenhagen, Denmark.

Protein science : a publication of the Protein Society
|December 14, 2024
PubMed
概括
此摘要是机器生成的。

预测绝对蛋白质稳定性现在使用蛋白质序列的生成模型更加可行. 这种新方法对中小蛋白质具有很高的准确性,有助于未来的蛋白质设计和稳定性研究.

关键词:
机器学习是机器学习.蛋白质折叠 蛋白质的折叠蛋白质的稳定性 蛋白质的稳定性热力学 热力学 热力学

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Using Caenorhabditis elegans as a Model System to Study Protein Homeostasis in a Multicellular Organism
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Optimization of Synthetic Proteins: Identification of Interpositional Dependencies Indicating Structurally and/or Functionally Linked Residues
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相关实验视频

Last Updated: Jun 5, 2025

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Using Caenorhabditis elegans as a Model System to Study Protein Homeostasis in a Multicellular Organism
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Using Caenorhabditis elegans as a Model System to Study Protein Homeostasis in a Multicellular Organism

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Optimization of Synthetic Proteins: Identification of Interpositional Dependencies Indicating Structurally and/or Functionally Linked Residues
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科学领域:

  • 计算生物学是一种计算生物学.
  • 蛋白质工程是一种蛋白质工程.
  • 生物物理学的生物物理.

背景情况:

  • 从氨基酸替代中预测蛋白质稳定性的变化正在进步,但预测绝对蛋白质稳定性仍然具有挑战性.
  • 当前的方法在确定蛋白质的内在稳定性时,往往难以准确.

研究的目的:

  • 开发和验证一个生成模型来预测蛋白质的绝对稳定性.
  • 评估模型在一组多样化的天然蛋白质中的性能.

主要方法:

  • 利用蛋白质序列的生成模型来预测蛋白质的绝对稳定性.
  • 在一系列天然的中小型蛋白质 (高达150个氨基酸) 上进行基准预测的准确性.

主要成果:

  • 在绝对稳定性预测中达到1.5kcal/mol的平均误差.
  • 在绝对稳定性预测中获得0.7的相关系数.
  • 在各种天然蛋白质序列上证明了模型的有效性.

结论:

  • 生成模型为预测绝对蛋白质稳定性提供了一个有希望的方法.
  • 开发的模型为蛋白质稳定性评估提供了一个简单,易于使用的工具.
  • 未来的工作可能会扩展这种方法来预测形态自由能量.