Beyond Black-Box AI: Interpretable Hybrid Systems for Dementia Care
Journal:
arXiv
Published Date:
Jul 2, 2025
Abstract
The recent boom of large language models (LLMs) has re-ignited the hope that
artificial intelligence (AI) systems could aid medical diagnosis. Yet despite
dazzling benchmark scores, LLM assistants have yet to deliver measurable
improvements at the bedside. This scoping review aims to highlight the areas
where AI is limited to make practical contributions in the clinical setting,
specifically in dementia diagnosis and care.
Standalone machine-learning models excel at pattern recognition but seldom
provide actionable, interpretable guidance, eroding clinician trust. Adjacent
use of LLMs by physicians did not result in better diagnostic accuracy or
speed. Key limitations trace to the data-driven paradigm: black-box outputs
which lack transparency, vulnerability to hallucinations, and weak causal
reasoning. Hybrid approaches that combine statistical learning with expert
rule-based knowledge, and involve clinicians throughout the process help bring
back interpretability. They also fit better with existing clinical workflows,
as seen in examples like PEIRS and ATHENA-CDS.
Future decision-support should prioritise explanatory coherence by linking
predictions to clinically meaningful causes. This can be done through
neuro-symbolic or hybrid AI that combines the language ability of LLMs with
human causal expertise. AI researchers have addressed this direction, with
explainable AI and neuro-symbolic AI being the next logical steps in further
advancement in AI. However, they are still based on data-driven knowledge
integration instead of human-in-the-loop approaches. Future research should
measure success not only by accuracy but by improvements in clinician
understanding, workflow fit, and patient outcomes. A better understanding of
what helps improve human-computer interactions is greatly needed for AI systems
to become part of clinical practice.