Solving the 'Goldilocks problem' in dementia clinical trials with multimodal AI
Andrew E. Welchman, Zoe Kourtzi

TL;DR
This paper discusses how AI can help solve the challenge of selecting the right patients for dementia clinical trials, improving treatment effectiveness and trial outcomes.
Contribution
The paper introduces multimodal AI as a novel solution to enhance patient stratification and precision treatment in dementia clinical trials.
Findings
AI-guided patient stratification can improve clinical trial outcomes and reduce costs.
Multimodal AI can identify dementia stages and subtypes more effectively.
Integration of AI into clinical workflows requires attention to model interpretability and ethical considerations.
Abstract
The development of effective therapeutics for Alzheimer’s Disease and related dementias (ADRD) has been hindered by patient heterogeneity and the limitations of current diagnostic tools. New treatments have no chance of working if given to patients who cannot benefit from them. This perspective explores how advances in Artificial Intelligence (AI), particularly multimodal machine learning, can solve the ‘Goldilocks problem’ of identifying patients for inclusion in clinical trials and support precision treatment in real-world healthcare settings. We examine the challenges of patient stratification, grounded by a conceptual framework of identifying each person’s stage and subtype of dementia. We review data from several clinical trials of Alzheimer’s disease therapeutics, to explore how AI-guided patient stratification can improve trial outcomes, reduce costs and improve recruitment.…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Dementia and Cognitive Impairment Research · Machine Learning in Healthcare
