Leveraging Pretrained Representations with Task-related Keywords for Alzheimer's Disease Detection
With the global population aging rapidly, Alzheimer's disease (AD) is particularly prominent in older adults, which has an insidious onset and leads to a gradual, irreversible deterioration in cognitive domains (memory, communication, etc.). Speech-based AD detection opens up the possibility of...
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Zusammenfassung: | With the global population aging rapidly, Alzheimer's disease (AD) is
particularly prominent in older adults, which has an insidious onset and leads
to a gradual, irreversible deterioration in cognitive domains (memory,
communication, etc.). Speech-based AD detection opens up the possibility of
widespread screening and timely disease intervention. Recent advances in
pre-trained models motivate AD detection modeling to shift from low-level
features to high-level representations. This paper presents several efficient
methods to extract better AD-related cues from high-level acoustic and
linguistic features. Based on these features, the paper also proposes a novel
task-oriented approach by modeling the relationship between the participants'
description and the cognitive task. Experiments are carried out on the ADReSS
dataset in a binary classification setup, and models are evaluated on the
unseen test set. Results and comparison with recent literature demonstrate the
efficiency and superior performance of proposed acoustic, linguistic and
task-oriented methods. The findings also show the importance of semantic and
syntactic information, and feasibility of automation and generalization with
the promising audio-only and task-oriented methods for the AD detection task. |
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DOI: | 10.48550/arxiv.2303.08019 |