TY - JOUR
T1 - Proceedings of the second Artificial Intelligence in Primary Immunodeficiency (AIPI) meeting
AU - Rivière, Jacques G
AU - Bastarache, Lisa
AU - Campos, Luiza C
AU - Carot-Sans, Gerard
AU - Chin, Aaron
AU - Chunara, Rumi
AU - Cunningham-Rundles, Charlotte
AU - Erra, Lorenzo
AU - Farmer, Jocelyn
AU - Garcelon, Nicolas
AU - Hsieh, Elena
AU - Leavis, Helen
AU - Lee, Seungwon
AU - Liu, Liangying
AU - Kusters, Maaike
AU - Lloyd, Brian C
AU - Martinson, Alexandra K
AU - Mester, Rachel
AU - Moore, Justin B
AU - Moshous, Despina
AU - Orange, Jordan S
AU - Parrish, Nefatia
AU - Parker, Sarah Henrickson
AU - Pasaniuc, Bogdan
AU - Peng, Xiao P
AU - Pergent, Martine
AU - Piera-Jiménez, Jordi
AU - Quinn, Jessica
AU - Ramesh, Sidharth
AU - Roberts, Kirk
AU - Robinson, Peter N
AU - Savova, Guergana
AU - Scalchunes, Christopher
AU - Seidel, Markus G
AU - Simoneau, Rachel
AU - Soler-Palacin, Pere
AU - Sullivan, Kathleen E
AU - Van Gijn, Marielle
AU - Wi, Chung-Il
AU - Zhou, Dawei
AU - Tenembaum, Vanessa
AU - Butte, Manish J
AU - Rider, Nicholas L
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2026/2
Y1 - 2026/2
N2 - The use of artificial intelligence (AI) in inborn errors of immunity offers transformative potential in diagnostics and disease management but faces multiple challenges that were discussed at the second Artificial Intelligence in Primary Immunodeficiency conference, held in New York City (March 19-22, 2025). The conference addressed 7 themes: predictive diagnostic algorithms, health equity, industry collaboration, advanced computational tools like large language models, patient-led AI initiatives, multiomics integration, and implementation science. Discussions highlighted the growing impact of AI on diagnostics, genomics, and health systems, emphasizing the need for high-quality, diverse datasets and ethical safeguards to ensure equitable application. Participants stressed that AI alone cannot resolve systemic inequities or delays in diagnosis. Challenges such as the lack of harmonized datasets, the complexity of integrating multiomics data, ethical concerns, and the difficulty of adapting solutions to low-resource settings were emphasized. Additionally, the use implementation science was pointed out as one of the major challenges to ensure applicability and scalability in real-world settings. This requires overcoming resistance to adoption, addressing infrastructure gaps, and ensuring regulatory compliance. Collaboration across academia, clinicians, patients, regulators, and industry is essential to ensure AI delivers equitable, lasting benefits for individuals with inborn errors of immunity.
AB - The use of artificial intelligence (AI) in inborn errors of immunity offers transformative potential in diagnostics and disease management but faces multiple challenges that were discussed at the second Artificial Intelligence in Primary Immunodeficiency conference, held in New York City (March 19-22, 2025). The conference addressed 7 themes: predictive diagnostic algorithms, health equity, industry collaboration, advanced computational tools like large language models, patient-led AI initiatives, multiomics integration, and implementation science. Discussions highlighted the growing impact of AI on diagnostics, genomics, and health systems, emphasizing the need for high-quality, diverse datasets and ethical safeguards to ensure equitable application. Participants stressed that AI alone cannot resolve systemic inequities or delays in diagnosis. Challenges such as the lack of harmonized datasets, the complexity of integrating multiomics data, ethical concerns, and the difficulty of adapting solutions to low-resource settings were emphasized. Additionally, the use implementation science was pointed out as one of the major challenges to ensure applicability and scalability in real-world settings. This requires overcoming resistance to adoption, addressing infrastructure gaps, and ensuring regulatory compliance. Collaboration across academia, clinicians, patients, regulators, and industry is essential to ensure AI delivers equitable, lasting benefits for individuals with inborn errors of immunity.
KW - -omics
KW - AI rare diseases
KW - AI scalability
KW - Artificial intelligence
KW - clinical decision support
KW - electronic health records
KW - health equity
KW - implementation science
KW - inborn errors of immunity
KW - large language models
KW - machine learning
KW - patient-centered AI
KW - primary immunodeficiency
UR - https://www.scopus.com/pages/publications/105018874504
U2 - 10.1016/j.jaci.2025.09.002
DO - 10.1016/j.jaci.2025.09.002
M3 - Article
C2 - 40972982
SN - 0091-6749
VL - 157
SP - 307
EP - 315
JO - The Journal of Allergy and Clinical Immunology
JF - The Journal of Allergy and Clinical Immunology
IS - 2
ER -