Identification and analysis of putative allergens in Edible mushroom (Agaricus bisporus)
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Abstract
Allergies result from abnormal immune responses to otherwise harmless proteins.
In recent years, the incidence of food allergies has increased significantly,
necessitating improved methods for allergen identification and risk assessment.
While conventional allergen detection methods rely on clinical or laboratorybased protocols, computational approaches offer a faster and scalable alternative
for preliminary allergenicity screening. Agaricus bisporus var. burnetti, a widely
consumed edible mushroom, remains understudied with respect to its allergenic
potential. This study employs a multi-layered in silico strategy to evaluate the
allergenicity of Agaricus bisporus proteins using peptide frequency analysis,
epitope mapping, and structural modeling.
RESULTS
Putative allergens were first shortlisted through sequence-based homology
screening using FASTA and BLAST, identifying proteins with >50% identity to
known allergens in the AllergenOnline database. Amino acid, dipeptide,
tripeptide, and tetrapeptide compositions of the full proteome (11,675 proteins),
55 putative allergens, and 2,334 known allergens were compared.
Physicochemical property-based predictions from AllergenFP, AlgPred, and
AllerTOP further validated the allergenicity of several candidates. 3D structures
of key putative allergens were modeled using SWISS-MODEL. Protein-peptide
docking simulations conducted via ClusPro 2.0 identified strong binding
affinities between modeled epitopes and known IgE-binding domains. Functional
classification using Uniprot and GO annotations revealed biological relevance of
candidate proteins in stress and defense-related pathways. Peptidomic profiling
revealed distinct enrichment of specific short peptides in the allergen datasets
relative to the proteome. Linear B-cell epitopes were retrieved from IEDB and
matched against putative allergens to uncover immunologically relevant motifs.
CONCLUSION
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This study demonstrates that in silico analysis can reliably identify and
characterize putative allergens in Agaricus bisporus var. burnetti from the rest of
the proteome. Peptide-level enrichment analysis, epitope mapping, and structurebased validation collectively provide a novel framework for early-stage
allergenicity screening in novel food proteins.
Keywords: Agaricus bisporus var. burnetti; allergy; food allergy; fungal allergens;
peptide enrichment; in silico allergen prediction; cross-reactivity; B-cell epitopes.
