Dementia Insights: A Context-Based MultiModal Approach
Journal:
arXiv
Published Date:
Mar 3, 2025
Abstract
Dementia, a progressive neurodegenerative disorder, affects memory,
reasoning, and daily functioning, creating challenges for individuals and
healthcare systems. Early detection is crucial for timely interventions that
may slow disease progression. Large pre-trained models (LPMs) for text and
audio, such as Generative Pre-trained Transformer (GPT), Bidirectional Encoder
Representations from Transformers (BERT), and Contrastive Language-Audio
Pretraining (CLAP), have shown promise in identifying cognitive impairments.
However, existing studies generally rely heavily on expert-annotated datasets
and unimodal approaches, limiting robustness and scalability. This study
proposes a context-based multimodal method, integrating both text and audio
data using the best-performing LPMs in each modality. By incorporating
contextual embeddings, our method improves dementia detection performance.
Additionally, motivated by the effectiveness of contextual embeddings, we
further experimented with a context-based In-Context Learning (ICL) as a
complementary technique. Results show that GPT-based embeddings, particularly
when fused with CLAP audio features, achieve an F1-score of $83.33\%$,
surpassing state-of-the-art dementia detection models. Furthermore, raw text
data outperforms expert-annotated datasets, demonstrating that LPMs can extract
meaningful linguistic and acoustic patterns without extensive manual labeling.
These findings highlight the potential for scalable, non-invasive diagnostic
tools that reduce reliance on costly annotations while maintaining high
accuracy. By integrating multimodal learning with contextual embeddings, this
work lays the foundation for future advancements in personalized dementia
detection and cognitive health research.