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Automatic Assessment of Aphasic Speech Sensed by Audio Sensors for Classification into Aphasia Severity Levels to Recommend Speech Therapies

Aphasia is a type of speech disorder that can cause speech defects in a person. Identifying the severity level of the aphasia patient is critical for the rehabilitation process. In this research, we identify ten aphasia severity levels motivated by specific speech therapies based on the presence or...

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Autores principales: Herath, Herath Mudiyanselage Dhammike Piyumal Madhurajith, Weraniyagoda, Weraniyagoda Arachchilage Sahanaka Anuththara, Rajapaksha, Rajapakshage Thilina Madhushan, Wijesekara, Patikiri Arachchige Don Shehan Nilmantha, Sudheera, Kalupahana Liyanage Kushan, Chong, Peter Han Joo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9501827/
https://www.ncbi.nlm.nih.gov/pubmed/36146316
http://dx.doi.org/10.3390/s22186966
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author Herath, Herath Mudiyanselage Dhammike Piyumal Madhurajith
Weraniyagoda, Weraniyagoda Arachchilage Sahanaka Anuththara
Rajapaksha, Rajapakshage Thilina Madhushan
Wijesekara, Patikiri Arachchige Don Shehan Nilmantha
Sudheera, Kalupahana Liyanage Kushan
Chong, Peter Han Joo
author_facet Herath, Herath Mudiyanselage Dhammike Piyumal Madhurajith
Weraniyagoda, Weraniyagoda Arachchilage Sahanaka Anuththara
Rajapaksha, Rajapakshage Thilina Madhushan
Wijesekara, Patikiri Arachchige Don Shehan Nilmantha
Sudheera, Kalupahana Liyanage Kushan
Chong, Peter Han Joo
author_sort Herath, Herath Mudiyanselage Dhammike Piyumal Madhurajith
collection PubMed
description Aphasia is a type of speech disorder that can cause speech defects in a person. Identifying the severity level of the aphasia patient is critical for the rehabilitation process. In this research, we identify ten aphasia severity levels motivated by specific speech therapies based on the presence or absence of identified characteristics in aphasic speech in order to give more specific treatment to the patient. In the aphasia severity level classification process, we experiment on different speech feature extraction techniques, lengths of input audio samples, and machine learning classifiers toward classification performance. Aphasic speech is required to be sensed by an audio sensor and then recorded and divided into audio frames and passed through an audio feature extractor before feeding into the machine learning classifier. According to the results, the mel frequency cepstral coefficient (MFCC) is the most suitable audio feature extraction method for the aphasic speech level classification process, as it outperformed the classification performance of all mel-spectrogram, chroma, and zero crossing rates by a large margin. Furthermore, the classification performance is higher when 20 s audio samples are used compared with 10 s chunks, even though the performance gap is narrow. Finally, the deep neural network approach resulted in the best classification performance, which was slightly better than both K-nearest neighbor (KNN) and random forest classifiers, and it was significantly better than decision tree algorithms. Therefore, the study shows that aphasia level classification can be completed with accuracy, precision, recall, and F1-score values of 0.99 using MFCC for 20 s audio samples using the deep neural network approach in order to recommend corresponding speech therapy for the identified level. A web application was developed for English-speaking aphasia patients to self-diagnose the severity level and engage in speech therapies.
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spelling pubmed-95018272022-09-24 Automatic Assessment of Aphasic Speech Sensed by Audio Sensors for Classification into Aphasia Severity Levels to Recommend Speech Therapies Herath, Herath Mudiyanselage Dhammike Piyumal Madhurajith Weraniyagoda, Weraniyagoda Arachchilage Sahanaka Anuththara Rajapaksha, Rajapakshage Thilina Madhushan Wijesekara, Patikiri Arachchige Don Shehan Nilmantha Sudheera, Kalupahana Liyanage Kushan Chong, Peter Han Joo Sensors (Basel) Article Aphasia is a type of speech disorder that can cause speech defects in a person. Identifying the severity level of the aphasia patient is critical for the rehabilitation process. In this research, we identify ten aphasia severity levels motivated by specific speech therapies based on the presence or absence of identified characteristics in aphasic speech in order to give more specific treatment to the patient. In the aphasia severity level classification process, we experiment on different speech feature extraction techniques, lengths of input audio samples, and machine learning classifiers toward classification performance. Aphasic speech is required to be sensed by an audio sensor and then recorded and divided into audio frames and passed through an audio feature extractor before feeding into the machine learning classifier. According to the results, the mel frequency cepstral coefficient (MFCC) is the most suitable audio feature extraction method for the aphasic speech level classification process, as it outperformed the classification performance of all mel-spectrogram, chroma, and zero crossing rates by a large margin. Furthermore, the classification performance is higher when 20 s audio samples are used compared with 10 s chunks, even though the performance gap is narrow. Finally, the deep neural network approach resulted in the best classification performance, which was slightly better than both K-nearest neighbor (KNN) and random forest classifiers, and it was significantly better than decision tree algorithms. Therefore, the study shows that aphasia level classification can be completed with accuracy, precision, recall, and F1-score values of 0.99 using MFCC for 20 s audio samples using the deep neural network approach in order to recommend corresponding speech therapy for the identified level. A web application was developed for English-speaking aphasia patients to self-diagnose the severity level and engage in speech therapies. MDPI 2022-09-14 /pmc/articles/PMC9501827/ /pubmed/36146316 http://dx.doi.org/10.3390/s22186966 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Herath, Herath Mudiyanselage Dhammike Piyumal Madhurajith
Weraniyagoda, Weraniyagoda Arachchilage Sahanaka Anuththara
Rajapaksha, Rajapakshage Thilina Madhushan
Wijesekara, Patikiri Arachchige Don Shehan Nilmantha
Sudheera, Kalupahana Liyanage Kushan
Chong, Peter Han Joo
Automatic Assessment of Aphasic Speech Sensed by Audio Sensors for Classification into Aphasia Severity Levels to Recommend Speech Therapies
title Automatic Assessment of Aphasic Speech Sensed by Audio Sensors for Classification into Aphasia Severity Levels to Recommend Speech Therapies
title_full Automatic Assessment of Aphasic Speech Sensed by Audio Sensors for Classification into Aphasia Severity Levels to Recommend Speech Therapies
title_fullStr Automatic Assessment of Aphasic Speech Sensed by Audio Sensors for Classification into Aphasia Severity Levels to Recommend Speech Therapies
title_full_unstemmed Automatic Assessment of Aphasic Speech Sensed by Audio Sensors for Classification into Aphasia Severity Levels to Recommend Speech Therapies
title_short Automatic Assessment of Aphasic Speech Sensed by Audio Sensors for Classification into Aphasia Severity Levels to Recommend Speech Therapies
title_sort automatic assessment of aphasic speech sensed by audio sensors for classification into aphasia severity levels to recommend speech therapies
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9501827/
https://www.ncbi.nlm.nih.gov/pubmed/36146316
http://dx.doi.org/10.3390/s22186966
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