Přehled o publikaci
2024
AggreProt: a web server for predicting and engineering aggregation prone regions in proteins
PLANAS IGLESIAS, Joan; Simeon BORKO; Jan SWIATKOWSKI; Matej ELIAS; Martin HAVLÁSEK et al.Basic information
Original name
AggreProt: a web server for predicting and engineering aggregation prone regions in proteins
Authors
PLANAS IGLESIAS, Joan; Simeon BORKO; Jan SWIATKOWSKI; Matej ELIAS; Martin HAVLÁSEK; Ondrej SALAMON; Ekaterina GRAKOVA; Antonín KUNKA; Tomas MARTINOVIC; Jiří DAMBORSKÝ; Jan MARTINOVIC and David BEDNÁŘ
Edition
Nucleic Acids Research, Oxford, Oxford University Press, 2024, 0305-1048
Other information
Language
English
Type of outcome
Article in a journal
Country of publisher
United Kingdom of Great Britain and Northern Ireland
Confidentiality degree
is not subject to a state or trade secret
References:
Marked to be transferred to RIV
Yes
RIV identification code
RIV/00216224:14310/24:00136705
Organization
Přírodovědecká fakulta – Repository – Repository
UT WoS
EID Scopus
Keywords in English
SECONDARY STRUCTURE; BETA; DATABASE; DESIGN
Links
EF17_043/0009632, research and development project. LM2018140, research and development project. LM2023055, research and development project. LM2023069, research and development project. LX22NPO5107, research and development project. 857560, interní kód Repo. e-INFRA CZ II, large research infrastructures.
Changed: 5/3/2026 00:50, RNDr. Daniel Jakubík
Abstract
In the original language
Recombinant proteins play pivotal roles in numerous applications including industrial biocatalysts or therapeutics. Despite the recent progress in computational protein structure prediction, protein solubility and reduced aggregation propensity remain challenging attributes to design. Identification of aggregation-prone regions is essential for understanding misfolding diseases or designing efficient protein-based technologies, and as such has a great socio-economic impact. Here, we introduce AggreProt, a user-friendly webserver that automatically exploits an ensemble of deep neural networks to predict aggregation-prone regions (APRs) in protein sequences. Trained on experimentally evaluated hexapeptides, AggreProt compares to or outperforms state-of-the-art algorithms on two independent benchmark datasets. The server provides per-residue aggregation profiles along with information on solvent accessibility and transmembrane propensity within an intuitive interface with interactive sequence and structure viewers for comprehensive analysis. We demonstrate AggreProt efficacy in predicting differential aggregation behaviours in proteins on several use cases, which emphasize its potential for guiding protein engineering strategies towards decreased aggregation propensity and improved solubility. The webserver is freely available and accessible at https://loschmidt.chemi.muni.cz/aggreprot/.