Cargando…

Screening of Mild Cognitive Impairment Through Conversations With Humanoid Robots: Exploratory Pilot Study

BACKGROUND: The rising number of patients with dementia has become a serious social problem worldwide. To help detect dementia at an early stage, many studies have been conducted to detect signs of cognitive decline by prosodic and acoustic features. However, many of these methods are not suitable f...

Descripción completa

Detalles Bibliográficos
Autores principales: Yoshii, Kenta, Kimura, Daiki, Kosugi, Akihiro, Shinkawa, Kaoru, Takase, Toshiro, Kobayashi, Masatomo, Yamada, Yasunori, Nemoto, Miyuki, Watanabe, Ryohei, Ota, Miho, Higashi, Shinji, Nemoto, Kiyotaka, Arai, Tetsuaki, Nishimura, Masafumi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9883738/
https://www.ncbi.nlm.nih.gov/pubmed/36637896
http://dx.doi.org/10.2196/42792
_version_ 1784879569229053952
author Yoshii, Kenta
Kimura, Daiki
Kosugi, Akihiro
Shinkawa, Kaoru
Takase, Toshiro
Kobayashi, Masatomo
Yamada, Yasunori
Nemoto, Miyuki
Watanabe, Ryohei
Ota, Miho
Higashi, Shinji
Nemoto, Kiyotaka
Arai, Tetsuaki
Nishimura, Masafumi
author_facet Yoshii, Kenta
Kimura, Daiki
Kosugi, Akihiro
Shinkawa, Kaoru
Takase, Toshiro
Kobayashi, Masatomo
Yamada, Yasunori
Nemoto, Miyuki
Watanabe, Ryohei
Ota, Miho
Higashi, Shinji
Nemoto, Kiyotaka
Arai, Tetsuaki
Nishimura, Masafumi
author_sort Yoshii, Kenta
collection PubMed
description BACKGROUND: The rising number of patients with dementia has become a serious social problem worldwide. To help detect dementia at an early stage, many studies have been conducted to detect signs of cognitive decline by prosodic and acoustic features. However, many of these methods are not suitable for everyday use as they focus on cognitive function or conversational speech during the examinations. In contrast, conversational humanoid robots are expected to be used in the care of older people to help reduce the work of care and monitoring through interaction. OBJECTIVE: This study focuses on early detection of mild cognitive impairment (MCI) through conversations between patients and humanoid robots without a specific examination, such as neuropsychological examination. METHODS: This was an exploratory study involving patients with MCI and cognitively normal (CN) older people. We collected the conversation data during neuropsychological examination (Mini-Mental State Examination [MMSE]) and everyday conversation between a humanoid robot and 94 participants (n=47, 50%, patients with MCI and n=47, 50%, CN older people). We extracted 17 types of prosodic and acoustic features, such as the duration of response time and jitter, from these conversations. We conducted a statistical significance test for each feature to clarify the speech features that are useful when classifying people into CN people and patients with MCI. Furthermore, we conducted an automatic classification experiment using a support vector machine (SVM) to verify whether it is possible to automatically classify these 2 groups by the features identified in the statistical significance test. RESULTS: We obtained significant differences in 5 (29%) of 17 types of features obtained from the MMSE conversational speech. The duration of response time, the duration of silent periods, and the proportion of silent periods showed a significant difference (P<.001) and met the reference value r=0.1 (small) of the effect size. Additionally, filler periods (P<.01) and the proportion of fillers (P=.02) showed a significant difference; however, these did not meet the reference value of the effect size. In contrast, we obtained significant differences in 16 (94%) of 17 types of features obtained from the everyday conversations with the humanoid robot. The duration of response time, the duration of speech periods, jitter (local, relative average perturbation [rap], 5-point period perturbation quotient [ppq5], difference of difference of periods [ddp]), shimmer (local, amplitude perturbation quotient [apq]3, apq5, apq11, average absolute differences between the amplitudes of consecutive periods [dda]), and F0cov (coefficient of variation of the fundamental frequency) showed a significant difference (P<.001). In addition, the duration of response time, the duration of silent periods, the filler period, and the proportion of fillers showed significant differences (P<.05). However, only jitter (local) met the reference value r=0.1 (small) of the effect size. In the automatic classification experiment for the classification of participants into CN and MCI groups, the results showed 66.0% accuracy in the MMSE conversational speech and 68.1% accuracy in everyday conversations with the humanoid robot. CONCLUSIONS: This study shows the possibility of early and simple screening for patients with MCI using prosodic and acoustic features from everyday conversations with a humanoid robot with the same level of accuracy as the MMSE.
format Online
Article
Text
id pubmed-9883738
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-98837382023-01-29 Screening of Mild Cognitive Impairment Through Conversations With Humanoid Robots: Exploratory Pilot Study Yoshii, Kenta Kimura, Daiki Kosugi, Akihiro Shinkawa, Kaoru Takase, Toshiro Kobayashi, Masatomo Yamada, Yasunori Nemoto, Miyuki Watanabe, Ryohei Ota, Miho Higashi, Shinji Nemoto, Kiyotaka Arai, Tetsuaki Nishimura, Masafumi JMIR Form Res Original Paper BACKGROUND: The rising number of patients with dementia has become a serious social problem worldwide. To help detect dementia at an early stage, many studies have been conducted to detect signs of cognitive decline by prosodic and acoustic features. However, many of these methods are not suitable for everyday use as they focus on cognitive function or conversational speech during the examinations. In contrast, conversational humanoid robots are expected to be used in the care of older people to help reduce the work of care and monitoring through interaction. OBJECTIVE: This study focuses on early detection of mild cognitive impairment (MCI) through conversations between patients and humanoid robots without a specific examination, such as neuropsychological examination. METHODS: This was an exploratory study involving patients with MCI and cognitively normal (CN) older people. We collected the conversation data during neuropsychological examination (Mini-Mental State Examination [MMSE]) and everyday conversation between a humanoid robot and 94 participants (n=47, 50%, patients with MCI and n=47, 50%, CN older people). We extracted 17 types of prosodic and acoustic features, such as the duration of response time and jitter, from these conversations. We conducted a statistical significance test for each feature to clarify the speech features that are useful when classifying people into CN people and patients with MCI. Furthermore, we conducted an automatic classification experiment using a support vector machine (SVM) to verify whether it is possible to automatically classify these 2 groups by the features identified in the statistical significance test. RESULTS: We obtained significant differences in 5 (29%) of 17 types of features obtained from the MMSE conversational speech. The duration of response time, the duration of silent periods, and the proportion of silent periods showed a significant difference (P<.001) and met the reference value r=0.1 (small) of the effect size. Additionally, filler periods (P<.01) and the proportion of fillers (P=.02) showed a significant difference; however, these did not meet the reference value of the effect size. In contrast, we obtained significant differences in 16 (94%) of 17 types of features obtained from the everyday conversations with the humanoid robot. The duration of response time, the duration of speech periods, jitter (local, relative average perturbation [rap], 5-point period perturbation quotient [ppq5], difference of difference of periods [ddp]), shimmer (local, amplitude perturbation quotient [apq]3, apq5, apq11, average absolute differences between the amplitudes of consecutive periods [dda]), and F0cov (coefficient of variation of the fundamental frequency) showed a significant difference (P<.001). In addition, the duration of response time, the duration of silent periods, the filler period, and the proportion of fillers showed significant differences (P<.05). However, only jitter (local) met the reference value r=0.1 (small) of the effect size. In the automatic classification experiment for the classification of participants into CN and MCI groups, the results showed 66.0% accuracy in the MMSE conversational speech and 68.1% accuracy in everyday conversations with the humanoid robot. CONCLUSIONS: This study shows the possibility of early and simple screening for patients with MCI using prosodic and acoustic features from everyday conversations with a humanoid robot with the same level of accuracy as the MMSE. JMIR Publications 2023-01-13 /pmc/articles/PMC9883738/ /pubmed/36637896 http://dx.doi.org/10.2196/42792 Text en ©Kenta Yoshii, Daiki Kimura, Akihiro Kosugi, Kaoru Shinkawa, Toshiro Takase, Masatomo Kobayashi, Yasunori Yamada, Miyuki Nemoto, Ryohei Watanabe, Miho Ota, Shinji Higashi, Kiyotaka Nemoto, Tetsuaki Arai, Masafumi Nishimura. Originally published in JMIR Formative Research (https://formative.jmir.org), 13.01.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Formative Research, is properly cited. The complete bibliographic information, a link to the original publication on https://formative.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Yoshii, Kenta
Kimura, Daiki
Kosugi, Akihiro
Shinkawa, Kaoru
Takase, Toshiro
Kobayashi, Masatomo
Yamada, Yasunori
Nemoto, Miyuki
Watanabe, Ryohei
Ota, Miho
Higashi, Shinji
Nemoto, Kiyotaka
Arai, Tetsuaki
Nishimura, Masafumi
Screening of Mild Cognitive Impairment Through Conversations With Humanoid Robots: Exploratory Pilot Study
title Screening of Mild Cognitive Impairment Through Conversations With Humanoid Robots: Exploratory Pilot Study
title_full Screening of Mild Cognitive Impairment Through Conversations With Humanoid Robots: Exploratory Pilot Study
title_fullStr Screening of Mild Cognitive Impairment Through Conversations With Humanoid Robots: Exploratory Pilot Study
title_full_unstemmed Screening of Mild Cognitive Impairment Through Conversations With Humanoid Robots: Exploratory Pilot Study
title_short Screening of Mild Cognitive Impairment Through Conversations With Humanoid Robots: Exploratory Pilot Study
title_sort screening of mild cognitive impairment through conversations with humanoid robots: exploratory pilot study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9883738/
https://www.ncbi.nlm.nih.gov/pubmed/36637896
http://dx.doi.org/10.2196/42792
work_keys_str_mv AT yoshiikenta screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT kimuradaiki screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT kosugiakihiro screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT shinkawakaoru screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT takasetoshiro screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT kobayashimasatomo screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT yamadayasunori screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT nemotomiyuki screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT watanaberyohei screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT otamiho screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT higashishinji screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT nemotokiyotaka screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT araitetsuaki screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy
AT nishimuramasafumi screeningofmildcognitiveimpairmentthroughconversationswithhumanoidrobotsexploratorypilotstudy