Combining Prosodic, Voice Quality and Lexical Features to Automatically
Detect Alzheimer's Disease
- URL: http://arxiv.org/abs/2011.09272v1
- Date: Wed, 18 Nov 2020 13:37:27 GMT
- Title: Combining Prosodic, Voice Quality and Lexical Features to Automatically
Detect Alzheimer's Disease
- Authors: Mireia Farr\'us, Joan Codina-Filb\`a
- Abstract summary: This paper is a contribution to the ADReSS Challenge, aiming at improving Alzheimer's automatic detection from spontaneous speech.
Recordings from 108 participants, which are age-, gender-, and AD condition-balanced, have been used as training set.
Both tasks have been performed extracting 28 features from speech based on prosody and voice quality.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Alzheimer's Disease (AD) is nowadays the most common form of dementia, and
its automatic detection can help to identify symptoms at early stages, so that
preventive actions can be carried out. Moreover, non-intrusive techniques based
on spoken data are crucial for the development of AD automatic detection
systems. In this light, this paper is presented as a contribution to the ADReSS
Challenge, aiming at improving AD automatic detection from spontaneous speech.
To this end, recordings from 108 participants, which are age-, gender-, and AD
condition-balanced, have been used as training set to perform two different
tasks: classification into AD/non-AD conditions, and regression over the
Mini-Mental State Examination (MMSE) scores. Both tasks have been performed
extracting 28 features from speech -- based on prosody and voice quality -- and
51 features from the transcriptions -- based on lexical and turn-taking
information. Our results achieved up to 87.5 % of classification accuracy using
a Random Forest classifier, and 4.54 of RMSE using a linear regression with
stochastic gradient descent over the provided test set. This shows promising
results in the automatic detection of Alzheimer's Disease through speech and
lexical features.
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