4.5 Article

Computational methods to predict protein aggregation

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CURRENT BIOLOGY LTD
DOI: 10.1016/j.sbi.2022.102343

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资金

  1. Spanish Ministry of Science and Innovation [PID2019-105017RB-I00]
  2. ICREA, (ICREA-Academia 2020)
  3. EU [PhasAge/H2020- WIDESPREAD-2020-5]

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Protein aggregation is associated with diseases and industrial production. This article reviews computational tools for predicting and identifying protein aggregation.
In most cases, protein aggregation stems from the establishment of non-native intermolecular contacts. The formation of insoluble protein aggregates is associated with many human diseases and is a major bottleneck for the industrial production of protein-based therapeutics. Strikingly, fibrillar aggregates are naturally exploited for structural scaffolding or to generate molecular switches and can be artificially engineered to build up multi-functional nanomaterials. Thus, there is a high interest in rationalizing and forecasting protein aggregation. Here, we review the available computational toolbox to predict protein aggregation propensities, identify sequential or structural aggregation-prone regions, evaluate the impact of mutations on aggregation or recognize prion-like domains. We discuss the strengths and limitations of these algorithms and how they can evolve in the next future.

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