Abstract

Background: Alzheimer’s disease (AD) has paramount importance due to its rising prevalence, the impact on the patient and society, and the related healthcare costs. However, current diagnostic techniques are not designed for frequent mass screening, delaying therapeutic intervention and worsening prognoses. To be able to detect AD at an early stage, ideally at a pre-clinical stage, speech analysis emerges as a simple low-cost non-invasive procedure. Objectives: In this work it is our objective to do a systematic review about speech-based detection and classification of Alzheimer’s Disease with the purpose of identifying the most effective algorithms and best practices. Methods: A systematic literature search was performed from Jan 2015 up to May 2020 using ScienceDirect, PubMed and DBLP. Articles were screened by title, abstract and full text as needed. A manual complementary search among the references of the included papers was also performed. Inclusion criteria and search strategies were defined a priori. Results: We were able: to identify the main resources that can support the development of decision support systems for AD, to list speech features that are correlated with the linguistic and acoustic footprint of the disease, to recognize the data models that can provide robust results and to observe the performance indicators that were reported. Discussion: A computational system with the adequate elements combination, based on the identified best-practices, can point to a whole new diagnostic approach, leading to better insights about AD symptoms and its disease patterns, creating conditions to promote a longer life span as well as an improvement in patient quality of life. The clinically relevant results that were identified can be used to establish a reference system and help to define research guidelines for future developments.

Highlights

  • IntroductionAlzheimer’s Disease (AD) is currently the most common cause of dementia from neurodegeneration all over the world, contributing to 60–70% of all cases

  • Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations

  • This review aims to recognize best and common practices, and bring together the most important aspects when developing such systems, covering acoustic levels and linguistic levels as phonological, semantic, morphosyntactic and pragmatic

Read more

Summary

Introduction

Alzheimer’s Disease (AD) is currently the most common cause of dementia from neurodegeneration all over the world, contributing to 60–70% of all cases. In a systematic review, encompassing neuropsychological measures [7], categorical fluency tests for language, covering executive control ability and verbal ability, showed the highest performance when discriminating between healthy controls and Alzheimer’s, and measures. Objectives: In this work it is our objective to do a systematic review about speech-based detection and classification of Alzheimer’s. Results: We were able: to identify the main resources that can support the development of decision support systems for AD, to list speech features that are correlated with the linguistic and acoustic footprint of the disease, to recognize the data models that can provide robust results and to observe the performance indicators that were reported

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call