Medical and health sciences | Natural sciences | University of Oslo

Cognate and non-cognate antibody-antigen complexes: confidence scores

Antibody-antigen binding prediction remains a central challenge for AI-driven therapeutic discovery, particularly in discriminating cognate interactions from structurally plausible but incorrect pairings. We present a controlled, AI-method- and antibody-format-agnostic evaluation framework that measures binding specificity under realistic conditions. Using 106 experimentally determined single-chain antibody (nanobody)-antigen complexes and 11,130 shuffled non-cognate pairings, we benchmarked publicly-available state-of-the-art structure prediction methods (AlphaFold3, Boltz-2, Chai-1). Although the methods tested often generated geometrically plausible complexes, internal confidence metrics (ipTM) frequently failed to discriminate correct from incorrect pairings. Increased sampling improved structural refinement but not pairing discrimination, indicating that computational resources are better allocated across independent seeds and explicit negative controls. We conclude that internal confidence scores are not inherently calibrated to binding specificity and require validation against realistic decoys. To enable community benchmarking and method development, we release ~1.8 million AI-generated complex structures and guidance for the benchmarks ahead along with the confidence scores for each prediction.

Eva Smorodina, Klara Kropivšek Brumat, Montader AliDOI : 10.11582/2026.owjnnp5qLicense: Creative Commons Attribution 4.0
1.9 TBHuman health and safety, Health
AntibodyAntibody SpecificityAntigen-Antibody ComplexStructure predictionSynthetic Data

Descriptive

Field

Value

Theme

Subjects

Type

dataset

Language

English

Status

Projects

    Dataset Size (MB)

    1863554.123649

    State

    active

    Last Modified

    2026-04-16T12:46:01

    Identifiers

    Field

    Value

    Identifier

    9f1b7a69-e062-4c21-a490-8d42bb826212

    Other Identifier/DOI

    10.11582/2026.owjnnp5q

    Personnel (first name, last name, organisation, email)

    Field

    Value

    Contact points

    Contact point 1

    Type

    person

    First name

    Eva

    Last name

    Smorodina

    Organisation

    University of Oslo

    Email

    ribes.ev@gmail.com

    ORCID

    0000-0002-5457-5163

    Name

    Acronym

    Contact email

    Homepage URL

    ROR

    Contact point 2

    Type

    person

    First name

    Victor

    Last name

    Greiff

    Organisation

    University of Oslo

    Email

    victor.greiff@medisin.uio.no

    ORCID

    0000-0003-2622-5032

    Name

    Acronym

    Contact email

    Homepage URL

    ROR

    Creators

    Creator 1

    Type

    person

    First name

    Eva

    Last name

    Smorodina

    Organisation

    University of Oslo

    Email

    ribes.ev@gmail.com

    ORCID

    0000-0002-5457-5163

    Name

    Acronym

    Contact email

    Homepage URL

    ROR

    Creator 2

    Type

    person

    First name

    Klara

    Last name

    Kropivšek Brumat

    Organisation

    University of Nova Gorica

    Email

    klara.kropivsek@gmail.com

    ORCID

    0000-0003-1866-4094

    Name

    Acronym

    Contact email

    Homepage URL

    ROR

    Creator 3

    Type

    person

    First name

    Montader

    Last name

    Ali

    Organisation

    University of Cambridge

    Email

    ma986@cam.ac.uk

    ORCID

    0009-0004-9022-3896

    Name

    Acronym

    Contact email

    Homepage URL

    ROR

    Contributors

    Dataset owner

    Owner 1

    Publisher

    NIRD RDA

    Constraints

    Field

    Value

    License

    CC-BY-4.0

    Access Rights

    public

    Extent

    Field

    Value

    Spatial

    Temporal

    Reference Dates

    Field

    Value

    Release date

    2026-04-16T12:46:00.816355

    Related URLs

    Field

    Value

    Related Resources

    Related Resource 2

    Versioning Info

    Field

    Value

    Version

    1

    Version notes

    V1: confidence scores of AlphaFold3, Boltz-2, and Chai-1

    Has Version

    Is version of

    Version type

    latest