Personalization of Large Foundation Models for Health Interventions
Stefan Konigorski, Johannes E. Vedder, Babajide Alamu Owoyele, \.Ibrahim \"Ozkan

TL;DR
This paper explores the potential and limitations of large foundation models in personalized healthcare, emphasizing the complementary role of N-of-1 trials for causal validation and proposing a hybrid framework to improve personalized treatment recommendations.
Contribution
It introduces a hybrid approach combining LFMs and N-of-1 trials to address personalization challenges and paradoxes in AI-driven healthcare.
Findings
LFMs excel at rapid hypothesis generation from population data.
N-of-1 trials provide causal validation for individuals.
The hybrid framework leverages both methods for better personalization.
Abstract
Large foundation models (LFMs) transform healthcare AI in prevention, diagnostics, and treatment. However, whether LFMs can provide truly personalized treatment recommendations remains an open question. Recent research has revealed multiple challenges for personalization, including the fundamental generalizability paradox: models achieving high accuracy in one clinical study perform at chance level in others, demonstrating that personalization and external validity exist in tension. This exemplifies broader contradictions in AI-driven healthcare: the privacy-performance paradox, scale-specificity paradox, and the automation-empathy paradox. As another challenge, the degree of causal understanding required for personalized recommendations, as opposed to mere predictive capacities of LFMs, remains an open question. N-of-1 trials -- crossover self-experiments and the gold standard for…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Artificial Intelligence in Healthcare and Education · Machine Learning in Healthcare
