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Hauptverfasser: Barberis, Mara, De Clercq, Pieter, Tamm, Bastiaan, Van hamme, Hugo, Vandermosten, Maaike
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2408.14082
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author Barberis, Mara
De Clercq, Pieter
Tamm, Bastiaan
Van hamme, Hugo
Vandermosten, Maaike
author_facet Barberis, Mara
De Clercq, Pieter
Tamm, Bastiaan
Van hamme, Hugo
Vandermosten, Maaike
contents Aphasia is a language disorder affecting one third of stroke patients. Current aphasia assessment does not consider natural speech due to the time consuming nature of manual transcriptions and a lack of knowledge on how to analyze such data. Here, we evaluate the potential of automatic speech recognition (ASR) to transcribe Dutch aphasic speech and the ability of natural speech features to detect aphasia. A picture-description task was administered and automatically transcribed in 62 persons with aphasia and 57 controls. Acoustic and linguistic features were semi-automatically extracted and provided as input to a support vector machine (SVM) classifier. Our ASR model obtained a WER of 24.5%, outperforming earlier ASR models for aphasia. The SVM shows high accuracy (86.6%) at the individual level, with fluency features as most dominant to detect aphasia. ASR and semi-automatic feature extraction can thus facilitate natural speech analysis in a time efficient manner in clinical practice.
format Preprint
id arxiv_https___arxiv_org_abs_2408_14082
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automatic recognition and detection of aphasic natural speech
Barberis, Mara
De Clercq, Pieter
Tamm, Bastiaan
Van hamme, Hugo
Vandermosten, Maaike
Neurons and Cognition
Aphasia is a language disorder affecting one third of stroke patients. Current aphasia assessment does not consider natural speech due to the time consuming nature of manual transcriptions and a lack of knowledge on how to analyze such data. Here, we evaluate the potential of automatic speech recognition (ASR) to transcribe Dutch aphasic speech and the ability of natural speech features to detect aphasia. A picture-description task was administered and automatically transcribed in 62 persons with aphasia and 57 controls. Acoustic and linguistic features were semi-automatically extracted and provided as input to a support vector machine (SVM) classifier. Our ASR model obtained a WER of 24.5%, outperforming earlier ASR models for aphasia. The SVM shows high accuracy (86.6%) at the individual level, with fluency features as most dominant to detect aphasia. ASR and semi-automatic feature extraction can thus facilitate natural speech analysis in a time efficient manner in clinical practice.
title Automatic recognition and detection of aphasic natural speech
topic Neurons and Cognition
url https://arxiv.org/abs/2408.14082