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Evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning

OBJECTIVE: We aimed to develop a machine learning algorithm to screen for depression and assess severity based on data from wearable devices. METHODS: We used a wearable device that calculates steps, energy expenditure, body movement, sleep time, heart rate, skin temperature, and ultraviolet light e...

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Autores principales: Tazawa, Yuuki, Liang, Kuo-ching, Yoshimura, Michitaka, Kitazawa, Momoko, Kaise, Yuriko, Takamiya, Akihiro, Kishi, Aiko, Horigome, Toshiro, Mitsukura, Yasue, Mimura, Masaru, Kishimoto, Taishiro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7005437/
https://www.ncbi.nlm.nih.gov/pubmed/32055728
http://dx.doi.org/10.1016/j.heliyon.2020.e03274
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author Tazawa, Yuuki
Liang, Kuo-ching
Yoshimura, Michitaka
Kitazawa, Momoko
Kaise, Yuriko
Takamiya, Akihiro
Kishi, Aiko
Horigome, Toshiro
Mitsukura, Yasue
Mimura, Masaru
Kishimoto, Taishiro
author_facet Tazawa, Yuuki
Liang, Kuo-ching
Yoshimura, Michitaka
Kitazawa, Momoko
Kaise, Yuriko
Takamiya, Akihiro
Kishi, Aiko
Horigome, Toshiro
Mitsukura, Yasue
Mimura, Masaru
Kishimoto, Taishiro
author_sort Tazawa, Yuuki
collection PubMed
description OBJECTIVE: We aimed to develop a machine learning algorithm to screen for depression and assess severity based on data from wearable devices. METHODS: We used a wearable device that calculates steps, energy expenditure, body movement, sleep time, heart rate, skin temperature, and ultraviolet light exposure. Depressed patients and healthy volunteers wore the device continuously for the study period. The modalities were compared hourly between patients and healthy volunteers. XGBoost was used to build machine learning models and 10-fold cross-validation was applied for the validation. RESULTS: Forty-five depressed patients and 41 healthy controls participated, creating a combined 5,250 days' worth of data. Heart rate, steps, and sleep were significantly different between patients and healthy volunteers in some comparisons. Similar differences were also observed longitudinally when patients' symptoms improved. Based on seven days' data, the model identified symptomatic patients with 0.76 accuracy and predicted Hamilton Depression Rating Scale-17 scores with a 0.61 correlation coefficient. Skin temperature, sleep time-related features, and the correlation of those modalities were the most significant features in machine learning. LIMITATIONS: The small number of subjects who participated in this study may have weakened the statistical significance of the study. There are differences in the demographic data among groups although we performed a correction for multiple comparisons. Validation in independent datasets was not performed, although 10-fold cross validation with the internal data was conducted. CONCLUSION: The results indicated that utilizing wearable devices and machine learning may be useful in identifying depression as well as assessing severity.
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spelling pubmed-70054372020-02-13 Evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning Tazawa, Yuuki Liang, Kuo-ching Yoshimura, Michitaka Kitazawa, Momoko Kaise, Yuriko Takamiya, Akihiro Kishi, Aiko Horigome, Toshiro Mitsukura, Yasue Mimura, Masaru Kishimoto, Taishiro Heliyon Article OBJECTIVE: We aimed to develop a machine learning algorithm to screen for depression and assess severity based on data from wearable devices. METHODS: We used a wearable device that calculates steps, energy expenditure, body movement, sleep time, heart rate, skin temperature, and ultraviolet light exposure. Depressed patients and healthy volunteers wore the device continuously for the study period. The modalities were compared hourly between patients and healthy volunteers. XGBoost was used to build machine learning models and 10-fold cross-validation was applied for the validation. RESULTS: Forty-five depressed patients and 41 healthy controls participated, creating a combined 5,250 days' worth of data. Heart rate, steps, and sleep were significantly different between patients and healthy volunteers in some comparisons. Similar differences were also observed longitudinally when patients' symptoms improved. Based on seven days' data, the model identified symptomatic patients with 0.76 accuracy and predicted Hamilton Depression Rating Scale-17 scores with a 0.61 correlation coefficient. Skin temperature, sleep time-related features, and the correlation of those modalities were the most significant features in machine learning. LIMITATIONS: The small number of subjects who participated in this study may have weakened the statistical significance of the study. There are differences in the demographic data among groups although we performed a correction for multiple comparisons. Validation in independent datasets was not performed, although 10-fold cross validation with the internal data was conducted. CONCLUSION: The results indicated that utilizing wearable devices and machine learning may be useful in identifying depression as well as assessing severity. Elsevier 2020-02-04 /pmc/articles/PMC7005437/ /pubmed/32055728 http://dx.doi.org/10.1016/j.heliyon.2020.e03274 Text en © 2020 The Authors. Published by Elsevier Ltd. http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Article
Tazawa, Yuuki
Liang, Kuo-ching
Yoshimura, Michitaka
Kitazawa, Momoko
Kaise, Yuriko
Takamiya, Akihiro
Kishi, Aiko
Horigome, Toshiro
Mitsukura, Yasue
Mimura, Masaru
Kishimoto, Taishiro
Evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning
title Evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning
title_full Evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning
title_fullStr Evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning
title_full_unstemmed Evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning
title_short Evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning
title_sort evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7005437/
https://www.ncbi.nlm.nih.gov/pubmed/32055728
http://dx.doi.org/10.1016/j.heliyon.2020.e03274
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