Speech Analysis by Natural Language Processing Techniques: A Possible Tool for Very Early Detection of Cognitive Decline?

Background: The discovery of early, non-invasive biomarkers for the identification of “preclinical” or “pre-symptomatic” Alzheimer's disease and other dementias is a key issue in the field, especially for research purposes, the design of preventive clinical trials, and drafting population-based...

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Main Authors: Daniela Beltrami, Gloria Gagliardi, Rema Rossini Favretti, Enrico Ghidoni, Fabio Tamburini, Laura Calzà
Format: Article
Language:English
Published: Frontiers Media S.A. 2018-11-01
Series:Frontiers in Aging Neuroscience
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fnagi.2018.00369/full
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author Daniela Beltrami
Daniela Beltrami
Gloria Gagliardi
Gloria Gagliardi
Rema Rossini Favretti
Enrico Ghidoni
Fabio Tamburini
Laura Calzà
Laura Calzà
spellingShingle Daniela Beltrami
Daniela Beltrami
Gloria Gagliardi
Gloria Gagliardi
Rema Rossini Favretti
Enrico Ghidoni
Fabio Tamburini
Laura Calzà
Laura Calzà
Speech Analysis by Natural Language Processing Techniques: A Possible Tool for Very Early Detection of Cognitive Decline?
Frontiers in Aging Neuroscience
cognitive decline
language
Natural Language Processing
preclinical Alzheimer
speech analysis
mild cognitive impairment
author_facet Daniela Beltrami
Daniela Beltrami
Gloria Gagliardi
Gloria Gagliardi
Rema Rossini Favretti
Enrico Ghidoni
Fabio Tamburini
Laura Calzà
Laura Calzà
author_sort Daniela Beltrami
title Speech Analysis by Natural Language Processing Techniques: A Possible Tool for Very Early Detection of Cognitive Decline?
title_short Speech Analysis by Natural Language Processing Techniques: A Possible Tool for Very Early Detection of Cognitive Decline?
title_full Speech Analysis by Natural Language Processing Techniques: A Possible Tool for Very Early Detection of Cognitive Decline?
title_fullStr Speech Analysis by Natural Language Processing Techniques: A Possible Tool for Very Early Detection of Cognitive Decline?
title_full_unstemmed Speech Analysis by Natural Language Processing Techniques: A Possible Tool for Very Early Detection of Cognitive Decline?
title_sort speech analysis by natural language processing techniques: a possible tool for very early detection of cognitive decline?
publisher Frontiers Media S.A.
series Frontiers in Aging Neuroscience
issn 1663-4365
publishDate 2018-11-01
description Background: The discovery of early, non-invasive biomarkers for the identification of “preclinical” or “pre-symptomatic” Alzheimer's disease and other dementias is a key issue in the field, especially for research purposes, the design of preventive clinical trials, and drafting population-based health care policies. Complex behaviors are natural candidates for this. In particular, recent studies have suggested that speech alterations might be one of the earliest signs of cognitive decline, frequently noticeable years before other cognitive deficits become apparent. Traditional neuropsychological language tests provide ambiguous results in this context. In contrast, the analysis of spoken language productions by Natural Language Processing (NLP) techniques can pinpoint language modifications in potential patients. This interdisciplinary study aimed at using NLP to identify early linguistic signs of cognitive decline in a population of elderly individuals.Methods: We enrolled 96 participants (age range 50–75): 48 healthy controls (CG) and 48 cognitively impaired participants: 16 participants with single domain amnestic Mild Cognitive Impairment (aMCI), 16 with multiple domain MCI (mdMCI) and 16 with early Dementia (eD). Each subject underwent a brief neuropsychological screening composed by MMSE, MoCA, GPCog, CDT, and verbal fluency (phonemic and semantic). The spontaneous speech during three tasks (describing a complex picture, a typical working day and recalling a last remembered dream) was then recorded, transcribed and annotated at various linguistic levels. A multidimensional parameter computation was performed by a quantitative analysis of spoken texts, computing rhythmic, acoustic, lexical, morpho-syntactic, and syntactic features.Results: Neuropsychological tests showed significant differences between controls and mdMCI, and between controls and eD participants; GPCog, MoCA, PF, and SF also discriminated between controls and aMCI. In the linguistic experiments, a number of features regarding lexical, acoustic and syntactic aspects were significant in differentiating between mdMCI, eD, and CG (non-parametric statistical analysis). Some features, mainly in the acoustic domain also discriminated between CG and aMCI.Conclusions: Linguistic features of spontaneous speech transcribed and analyzed by NLP techniques show significant differences between controls and pathological states (not only eD but also MCI) and seems to be a promising approach for the identification of preclinical stages of dementia. Long duration follow-up studies are needed to confirm this assumption.
topic cognitive decline
language
Natural Language Processing
preclinical Alzheimer
speech analysis
mild cognitive impairment
url https://www.frontiersin.org/article/10.3389/fnagi.2018.00369/full
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spelling doaj-7695d32b8fd9400982f0d6b38e42589d2020-11-24T21:04:00ZengFrontiers Media S.A.Frontiers in Aging Neuroscience1663-43652018-11-011010.3389/fnagi.2018.00369414837Speech Analysis by Natural Language Processing Techniques: A Possible Tool for Very Early Detection of Cognitive Decline?Daniela Beltrami0Daniela Beltrami1Gloria Gagliardi2Gloria Gagliardi3Rema Rossini Favretti4Enrico Ghidoni5Fabio Tamburini6Laura Calzà7Laura Calzà8Interdepartmental Centre for Industrial Research in Health Sciences and Technologies, University of Bologna, Bologna, ItalyClinical Neuropsychology Unit, Arcispedale S. Maria Nuova di Reggio Emilia, Reggio Emilia, ItalyInterdepartmental Centre for Industrial Research in Health Sciences and Technologies, University of Bologna, Bologna, ItalyDepartment of Classical Philology and Italian Studies, University of Bologna, Bologna, ItalyDepartment of Classical Philology and Italian Studies, University of Bologna, Bologna, ItalyClinical Neuropsychology Unit, Arcispedale S. Maria Nuova di Reggio Emilia, Reggio Emilia, ItalyDepartment of Classical Philology and Italian Studies, University of Bologna, Bologna, ItalyInterdepartmental Centre for Industrial Research in Health Sciences and Technologies, University of Bologna, Bologna, ItalyDepartment of Pharmacy and Biotechnology, University of Bologna, Bologna, ItalyBackground: The discovery of early, non-invasive biomarkers for the identification of “preclinical” or “pre-symptomatic” Alzheimer's disease and other dementias is a key issue in the field, especially for research purposes, the design of preventive clinical trials, and drafting population-based health care policies. Complex behaviors are natural candidates for this. In particular, recent studies have suggested that speech alterations might be one of the earliest signs of cognitive decline, frequently noticeable years before other cognitive deficits become apparent. Traditional neuropsychological language tests provide ambiguous results in this context. In contrast, the analysis of spoken language productions by Natural Language Processing (NLP) techniques can pinpoint language modifications in potential patients. This interdisciplinary study aimed at using NLP to identify early linguistic signs of cognitive decline in a population of elderly individuals.Methods: We enrolled 96 participants (age range 50–75): 48 healthy controls (CG) and 48 cognitively impaired participants: 16 participants with single domain amnestic Mild Cognitive Impairment (aMCI), 16 with multiple domain MCI (mdMCI) and 16 with early Dementia (eD). Each subject underwent a brief neuropsychological screening composed by MMSE, MoCA, GPCog, CDT, and verbal fluency (phonemic and semantic). The spontaneous speech during three tasks (describing a complex picture, a typical working day and recalling a last remembered dream) was then recorded, transcribed and annotated at various linguistic levels. A multidimensional parameter computation was performed by a quantitative analysis of spoken texts, computing rhythmic, acoustic, lexical, morpho-syntactic, and syntactic features.Results: Neuropsychological tests showed significant differences between controls and mdMCI, and between controls and eD participants; GPCog, MoCA, PF, and SF also discriminated between controls and aMCI. In the linguistic experiments, a number of features regarding lexical, acoustic and syntactic aspects were significant in differentiating between mdMCI, eD, and CG (non-parametric statistical analysis). Some features, mainly in the acoustic domain also discriminated between CG and aMCI.Conclusions: Linguistic features of spontaneous speech transcribed and analyzed by NLP techniques show significant differences between controls and pathological states (not only eD but also MCI) and seems to be a promising approach for the identification of preclinical stages of dementia. Long duration follow-up studies are needed to confirm this assumption.https://www.frontiersin.org/article/10.3389/fnagi.2018.00369/fullcognitive declinelanguageNatural Language Processingpreclinical Alzheimerspeech analysismild cognitive impairment