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Validation Requirements for AI-based Intervention-Evaluation in Aging and Longevity Research and Practice

Authors :
Fuellen, Georg
Kulaga, Anton
Lobentanzer, Sebastian
Unfried, Maximilian
Avelar, Roberto
Palmer, Daniel
Kennedy, Brian K.
Publication Year :
2024

Abstract

The field of aging and longevity research is overwhelmed by vast amounts of data, calling for the use of Artificial Intelligence (AI), including Large Language Models (LLMs), for the evaluation of geroprotective interventions. Such evaluations should be correct, useful, comprehensive, explainable, and they should consider causality, interdisciplinarity, adherence to standards, longitudinal data and known aging biology. In particular, comprehensive analyses should go beyond comparing data based on canonical biomedical databases, suggesting the use of AI to interpret changes in biomarkers and outcomes. Our requirements motivate the use of LLMs with Knowledge Graphs and dedicated workflows employing, e.g., Retrieval-Augmented Generation. While naive trust in the responses of AI tools can cause harm, adding our requirements to LLM queries can improve response quality, calling for benchmarking efforts and justifying the informed use of LLMs for advice on longevity interventions.<br />Comment: 11 pages, 1 Figure, 1 Table

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.15264
Document Type :
Working Paper