2017 8th IEEE International Conference on Cognitive Infocommunications (CogInfoCom) 2017
DOI: 10.1109/coginfocom.2017.8268212
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Automatic detection of linguistic indicators as a means of early detection of Alzheimer's disease and of related dementias: A computational linguistics analysis

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Cited by 29 publications
(17 citation statements)
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“…Our study investigates and combines two types of connected speech measures, namely linguistic features and n-gram vocabulary spaces, as an attempt to optimize the automatic identification of different dementia etiologies. Linguistic features have widely been employed to reveal dementia stages in previous studies [23,30,38,[53][54][55][56]; nevertheless, our study focused on one linguistic perspective that is lexicosyntactic features as being recommended for further investigations by other researchers for its established association with early cognitive decline [25,26]. N-gram vocabulary spaces, on the other hand, have recently attracted several NLP studies on dementia detection [24,38,39,57].…”
Section: ) Feature Engineeringmentioning
confidence: 99%
See 1 more Smart Citation
“…Our study investigates and combines two types of connected speech measures, namely linguistic features and n-gram vocabulary spaces, as an attempt to optimize the automatic identification of different dementia etiologies. Linguistic features have widely been employed to reveal dementia stages in previous studies [23,30,38,[53][54][55][56]; nevertheless, our study focused on one linguistic perspective that is lexicosyntactic features as being recommended for further investigations by other researchers for its established association with early cognitive decline [25,26]. N-gram vocabulary spaces, on the other hand, have recently attracted several NLP studies on dementia detection [24,38,39,57].…”
Section: ) Feature Engineeringmentioning
confidence: 99%
“…More recently, studies using automatic or semiautomatic methods for language and speech analysis have asserted that linguistic analysis can characterize early AD and MCI [22][23][24]. Specifically, as stated by Ball et al [25] and asserted by Rentoumim et al [26], lexical and syntactic (i.e., lexicosyntactic) processing in people with language disorders has revealed promising outcomes, highlighting the necessity of additional investigations for more effective lexicosyntactic biomarkers and techniques.…”
Section: Introduction and Motiviationmentioning
confidence: 99%
“…Automatic speech-based tools can also use lexical and conversation analysisinspired features derived from transcripts of recorded data [8] in conversations led by neurologists or intelligent virtual agents. As another example, the CogAware tool [9] provides textual analysis for transcripts of individuals describing the "cookie theft" picture [10] in order to automatically detect whether they are originated from a patient with dementia or a cognitively normal individual.…”
Section: Introductionmentioning
confidence: 99%
“…In recent years, an almost exponential increase has been documented in the number of investigations aimed at shedding light on speech analysis as a non-invasive biomarker of AD [15]. Since the first lines appeared, 78% have been based on the use of conventional parameters; mainly duration of deaf or sound segments, pitch, amplitude and periodicity, as well as others obtained from analysis of the frequency and cepstral domains [16][17][18]. Also, concepts such as speech quality or Emotional Temperature (ET) have been defined.…”
Section: Introductionmentioning
confidence: 99%