Abstract

Current methods for early diagnosis of Alzheimer's Dementia include structured questionnaires, structured interviews, and various cognitive tests. Language difficulties are a major problem in dementia as linguistic skills break down. Current methods do not provide robust tools to capture the true nature of language deficits in spontaneous speech. Early detection of Alzheimer's Dementia (AD) from spontaneous speech overcomes the limitations of earlier approaches as it is less time consuming, can be done at home, and is relatively inexpensive. In this work, we re-implement the existing NLP methods, which used CNN-LSTM architectures and targeted features from conversational transcripts. Our work sheds light on why the accuracy of these models drops to 72.92% on the ADReSS dataset, whereas, they gave state of the art results on the DementiaBank dataset. Further, we build upon these language input-based recurrent neural networks by devising an end-to-end deep learning-based solution that performs a binary classification of Alzheimer's Dementia from the spontaneous speech of the patients. We utilize the ADReSS dataset for all our implementations and explore the deep learning-based methods of combining acoustic features into a common vector using recurrent units. Our approach of combining acoustic features using the Speech-GRU improves the accuracy by 2% in comparison to acoustic baselines. When further enriched by targeted features, the Speech-GRU performs better than acoustic baselines by 6.25%. We propose a bi-modal approach for AD classification and discuss the merits and opportunities of our approach.

Highlights

  • Alzheimer’s disease and related dementia disorders constitute a significant cause of disability and dependency among older adults worldwide and are among the costliest diseases in society

  • ADReSS dataset (Luz et al, 2020) tries to mitigate these issues, and we use the ADReSS dataset in our work. We address this by proposing a network that can train on speech segments using recurrent units and can be integrated with existing language-based deep learning models, which can be enriched with targeted features

  • We notice the difference between Alzheimer’s Dementia (AD) classification accuracy (0.8384 and 0.8820, respectively) achieved in Karlekar et al (2018) and Di Palo and Parde (2019) on the complete Dementia Bank dataset and the AD classification accuracy achieved (0.6875 and 0.7292, respectively) by re-implementing those methods on ADReSS dataset

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Summary

Introduction

Alzheimer’s disease and related dementia disorders constitute a significant cause of disability and dependency among older adults worldwide and are among the costliest diseases in society. By 2030, it is estimated that the global cost of dementia could grow to US$ 2 trillion, which could overwhelm health and social care systems (Wimo et al, 2017). Alzheimer’s Dementia (AD) is an irreversible brain disease that results in a gradual decrease in an individual’s cognitive functioning. The main risk factor for AD is age, and its highest incidence is amongst the elderly. If detected early, we can slow down or halt the degeneration with appropriate medication. Current methods of diagnosis usually involve lengthy medical evaluations, including lengthy

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