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Deep Learning Approach for Imputation of Missing Values in Actigraphy Data: Algorithm Development Study

BACKGROUND: Data collected by an actigraphy device worn on the wrist or waist can provide objective measurements for studies related to physical activity; however, some data may contain intervals where values are missing. In previous studies, statistical methods have been applied to impute missing v...

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Autores principales: Jang, Jong-Hwan, Choi, Junggu, Roh, Hyun Woong, Son, Sang Joon, Hong, Chang Hyung, Kim, Eun Young, Kim, Tae Young, Yoon, Dukyong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7413283/
https://www.ncbi.nlm.nih.gov/pubmed/32445459
http://dx.doi.org/10.2196/16113
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author Jang, Jong-Hwan
Choi, Junggu
Roh, Hyun Woong
Son, Sang Joon
Hong, Chang Hyung
Kim, Eun Young
Kim, Tae Young
Yoon, Dukyong
author_facet Jang, Jong-Hwan
Choi, Junggu
Roh, Hyun Woong
Son, Sang Joon
Hong, Chang Hyung
Kim, Eun Young
Kim, Tae Young
Yoon, Dukyong
author_sort Jang, Jong-Hwan
collection PubMed
description BACKGROUND: Data collected by an actigraphy device worn on the wrist or waist can provide objective measurements for studies related to physical activity; however, some data may contain intervals where values are missing. In previous studies, statistical methods have been applied to impute missing values on the basis of statistical assumptions. Deep learning algorithms, however, can learn features from the data without any such assumptions and may outperform previous approaches in imputation tasks. OBJECTIVE: The aim of this study was to impute missing values in data using a deep learning approach. METHODS: To develop an imputation model for missing values in accelerometer-based actigraphy data, a denoising convolutional autoencoder was adopted. We trained and tested our deep learning–based imputation model with the National Health and Nutrition Examination Survey data set and validated it with the external Korea National Health and Nutrition Examination Survey and the Korean Chronic Cerebrovascular Disease Oriented Biobank data sets which consist of daily records measuring activity counts. The partial root mean square error and partial mean absolute error of the imputed intervals (partial RMSE and partial MAE, respectively) were calculated using our deep learning–based imputation model (zero-inflated denoising convolutional autoencoder) as well as using other approaches (mean imputation, zero-inflated Poisson regression, and Bayesian regression). RESULTS: The zero-inflated denoising convolutional autoencoder exhibited a partial RMSE of 839.3 counts and partial MAE of 431.1 counts, whereas mean imputation achieved a partial RMSE of 1053.2 counts and partial MAE of 545.4 counts, the zero-inflated Poisson regression model achieved a partial RMSE of 1255.6 counts and partial MAE of 508.6 counts, and Bayesian regression achieved a partial RMSE of 924.5 counts and partial MAE of 605.8 counts. CONCLUSIONS: Our deep learning–based imputation model performed better than the other methods when imputing missing values in actigraphy data.
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spelling pubmed-74132832020-08-20 Deep Learning Approach for Imputation of Missing Values in Actigraphy Data: Algorithm Development Study Jang, Jong-Hwan Choi, Junggu Roh, Hyun Woong Son, Sang Joon Hong, Chang Hyung Kim, Eun Young Kim, Tae Young Yoon, Dukyong JMIR Mhealth Uhealth Original Paper BACKGROUND: Data collected by an actigraphy device worn on the wrist or waist can provide objective measurements for studies related to physical activity; however, some data may contain intervals where values are missing. In previous studies, statistical methods have been applied to impute missing values on the basis of statistical assumptions. Deep learning algorithms, however, can learn features from the data without any such assumptions and may outperform previous approaches in imputation tasks. OBJECTIVE: The aim of this study was to impute missing values in data using a deep learning approach. METHODS: To develop an imputation model for missing values in accelerometer-based actigraphy data, a denoising convolutional autoencoder was adopted. We trained and tested our deep learning–based imputation model with the National Health and Nutrition Examination Survey data set and validated it with the external Korea National Health and Nutrition Examination Survey and the Korean Chronic Cerebrovascular Disease Oriented Biobank data sets which consist of daily records measuring activity counts. The partial root mean square error and partial mean absolute error of the imputed intervals (partial RMSE and partial MAE, respectively) were calculated using our deep learning–based imputation model (zero-inflated denoising convolutional autoencoder) as well as using other approaches (mean imputation, zero-inflated Poisson regression, and Bayesian regression). RESULTS: The zero-inflated denoising convolutional autoencoder exhibited a partial RMSE of 839.3 counts and partial MAE of 431.1 counts, whereas mean imputation achieved a partial RMSE of 1053.2 counts and partial MAE of 545.4 counts, the zero-inflated Poisson regression model achieved a partial RMSE of 1255.6 counts and partial MAE of 508.6 counts, and Bayesian regression achieved a partial RMSE of 924.5 counts and partial MAE of 605.8 counts. CONCLUSIONS: Our deep learning–based imputation model performed better than the other methods when imputing missing values in actigraphy data. JMIR Publications 2020-07-23 /pmc/articles/PMC7413283/ /pubmed/32445459 http://dx.doi.org/10.2196/16113 Text en ©Jong-Hwan Jang, Junggu Choi, Hyun Woong Roh, Sang Joon Son, Chang Hyung Hong, Eun Young Kim, Tae Young Kim, Dukyong Yoon. Originally published in JMIR mHealth and uHealth (http://mhealth.jmir.org), 23.07.2020. 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 mHealth and uHealth, is properly cited. The complete bibliographic information, a link to the original publication on http://mhealth.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Jang, Jong-Hwan
Choi, Junggu
Roh, Hyun Woong
Son, Sang Joon
Hong, Chang Hyung
Kim, Eun Young
Kim, Tae Young
Yoon, Dukyong
Deep Learning Approach for Imputation of Missing Values in Actigraphy Data: Algorithm Development Study
title Deep Learning Approach for Imputation of Missing Values in Actigraphy Data: Algorithm Development Study
title_full Deep Learning Approach for Imputation of Missing Values in Actigraphy Data: Algorithm Development Study
title_fullStr Deep Learning Approach for Imputation of Missing Values in Actigraphy Data: Algorithm Development Study
title_full_unstemmed Deep Learning Approach for Imputation of Missing Values in Actigraphy Data: Algorithm Development Study
title_short Deep Learning Approach for Imputation of Missing Values in Actigraphy Data: Algorithm Development Study
title_sort deep learning approach for imputation of missing values in actigraphy data: algorithm development study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7413283/
https://www.ncbi.nlm.nih.gov/pubmed/32445459
http://dx.doi.org/10.2196/16113
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