Nanobodies are antigen-binding proteins of great interest as diagnostics and therapeutics. Accurate and fast characterization of their complementarity-determining regions (CDRs) is crucial to uncover the principles guiding their design. Yet, this task remains challenging, as random recombination and somatic mutations generate highly diverse CDR sequences that escape motif-based or structure-prediction approaches currently used to identify them. To overcome this hurdle, we employed two independent strategies that converged on the same conclusion. At the sequence level, we developed a deep learning model to identify nanobody CDRs directly from the primary sequence. At the structural level, we applied an energy decomposition method, revealing CDRs as residues highly uncoupled to the rest of the fold. Explainability analyses showed the network captured intrinsic CDR properties, which notably aligned with these energy values. CDRs emerge as fuzzy regions capable of adopting diverse conformational ensembles, from which a preferred state is selected upon antigen binding. This finding supports a model where chaos in both sequence and structure appears adaptive and disorder emerges as the hallmark of nanobody CDRs. This work aims to advance the definition of rules for the design of antigen binding regions, paving the way for the next-generation immune diagnostics and therapeutics.

Adaptive Disorder as the Hallmark of Nanobodies Antigen-Binding Loops

Bagordo, Davide
Formal Analysis
;
Trèves, Gauthier
Formal Analysis
;
Santorsola, Mariangela
Membro del Collaboration Group
;
Colombo, Giorgio
Conceptualization
;
Lescai, Francesco
Conceptualization
2026-01-01

Abstract

Nanobodies are antigen-binding proteins of great interest as diagnostics and therapeutics. Accurate and fast characterization of their complementarity-determining regions (CDRs) is crucial to uncover the principles guiding their design. Yet, this task remains challenging, as random recombination and somatic mutations generate highly diverse CDR sequences that escape motif-based or structure-prediction approaches currently used to identify them. To overcome this hurdle, we employed two independent strategies that converged on the same conclusion. At the sequence level, we developed a deep learning model to identify nanobody CDRs directly from the primary sequence. At the structural level, we applied an energy decomposition method, revealing CDRs as residues highly uncoupled to the rest of the fold. Explainability analyses showed the network captured intrinsic CDR properties, which notably aligned with these energy values. CDRs emerge as fuzzy regions capable of adopting diverse conformational ensembles, from which a preferred state is selected upon antigen binding. This finding supports a model where chaos in both sequence and structure appears adaptive and disorder emerges as the hallmark of nanobody CDRs. This work aims to advance the definition of rules for the design of antigen binding regions, paving the way for the next-generation immune diagnostics and therapeutics.
2026
Immunology incorporates cellular and molecular studies in immunology, as well as clinical research in immunopathology, infectious disease, autoimmunity, and allergy. Host-pathogen interactions in infectious disease, as well as experimental therapeutic applications of immunomodulating agents are also considered. Resources dealing primarily with the biology of microbial, viral, or parasitic pathogens are excluded and are covered in the Microbiology category.
Molecular Biology & Genetics considers all aspects of basic and applied genetics, including molecular genetics, prokaryotic and eukaryotic gene expression, mechanisms of mutagenesis, structure, function and regulation of genetic material. Also included are resources concerned with clinical genetics, patterns of inheritance, genetic cause, and screening and treatment of disease. Resources dealing specifically with developmentally regulated gene expression, or with signal transduction pathways that modulate gene expression at the cellular level are excluded and are covered in the Cell and Developmental Biology category.
Inglese
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https://pubs.acs.org/doi/10.1021/acs.jcim.6c00716
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info:eu-repo/semantics/article
262
Bagordo, Davide; Trèves, Gauthier; Santorsola, Mariangela; Colombo, Giorgio; Lescai, Francesco
1 Contributo su Rivista::1.1 Articolo in rivista
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/1551337
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