ML-Based Analysis to Identify Speech Features Relevant in Predicting Alzheimer's Disease
Yash Kumar, Piyush Maheshwari, Shreyansh Joshi, Veeky Baths

TL;DR
This study uses machine learning and neural networks to analyze speech patterns from interviews, identifying key linguistic features that can predict Alzheimer's disease with high accuracy, aiding early diagnosis.
Contribution
The paper introduces a novel application of ML models to classify AD based on speech features and identifies specific linguistic markers linked to the disease.
Findings
Neural networks achieved up to 92.05% accuracy in binary classification.
Key speech features like '%_PRESP' and '%_3S' are significant indicators for AD.
Models outperform traditional classifiers in predicting Alzheimer's from speech data.
Abstract
Alzheimer's disease (AD) is a neurodegenerative disease that affects nearly 50 million individuals across the globe and is one of the leading causes of deaths globally. It is projected that by 2050, the number of people affected by the disease would more than double. Consequently, the growing advancements in technology beg the question, can technology be used to predict Alzheimer's for a better and early diagnosis? In this paper, we focus on this very problem. Specifically, we have trained both ML models and neural networks to predict and classify participants based on their speech patterns. We computed a number of linguistic variables using DementiaBank's Pitt Corpus, a database consisting of transcripts of interviews with subjects suffering from multiple neurodegenerative diseases. We then trained both binary classifiers, as well as multiclass classifiers to distinguish AD from normal…
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Taxonomy
TopicsMental Health via Writing
