Proceedings from the inaugural Artificial Intelligence in Primary Immune Deficiencies (AIPID) conference

J Allergy Clin Immunol. 2024 Mar;153(3):637-642. doi: 10.1016/j.jaci.2024.01.002. Epub 2024 Jan 13.

Abstract

Here, we summarize the proceedings of the inaugural Artificial Intelligence in Primary Immune Deficiencies conference, during which experts and advocates gathered to advance research into the applications of artificial intelligence (AI), machine learning, and other computational tools in the diagnosis and management of inborn errors of immunity (IEIs). The conference focused on the key themes of expediting IEI diagnoses, challenges in data collection, roles of natural language processing and large language models in interpreting electronic health records, and ethical considerations in implementation. Innovative AI-based tools trained on electronic health records and claims databases have discovered new patterns of warning signs for IEIs, facilitating faster diagnoses and enhancing patient outcomes. Challenges in training AIs persist on account of data limitations, especially in cases of rare diseases, overlapping phenotypes, and biases inherent in current data sets. Furthermore, experts highlighted the significance of ethical considerations, data protection, and the necessity for open science principles. The conference delved into regulatory frameworks, equity in access, and the imperative for collaborative efforts to overcome these obstacles and harness the transformative potential of AI. Concerted efforts to successfully integrate AI into daily clinical immunology practice are still needed.

Keywords: Artificial intelligence; diagnosis; electronic health records; ethics; inborn errors of immunity; large language models; machine learning; natural language processing.

MeSH terms

  • Artificial Intelligence*
  • Data Collection
  • Humans
  • Machine Learning
  • Natural Language Processing
  • Primary Immunodeficiency Diseases*