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Modifiable Lifestyle Factors and Cognitive Function in Older People: A Cross-Sectional Observational Study

Background: The development of evidence-based interventions for delaying or preventing cognitive impairment is an important challenge. Most previous studies using self-report questionnaires face problems with reliability and consistency due to recall bias or misclassification among older people. The...

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Autores principales: Kimura, Noriyuki, Aso, Yasuhiro, Yabuuchi, Kenichi, Ishibashi, Masato, Hori, Daiji, Sasaki, Yuuki, Nakamichi, Atsuhito, Uesugi, Souhei, Fujioka, Hideyasu, Iwao, Shintaro, Jikumaru, Mika, Katayama, Tetsuji, Sumi, Kaori, Eguchi, Atsuko, Nonaka, Satoshi, Kakumu, Masakazu, Matsubara, Etsuro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6491512/
https://www.ncbi.nlm.nih.gov/pubmed/31068892
http://dx.doi.org/10.3389/fneur.2019.00401
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author Kimura, Noriyuki
Aso, Yasuhiro
Yabuuchi, Kenichi
Ishibashi, Masato
Hori, Daiji
Sasaki, Yuuki
Nakamichi, Atsuhito
Uesugi, Souhei
Fujioka, Hideyasu
Iwao, Shintaro
Jikumaru, Mika
Katayama, Tetsuji
Sumi, Kaori
Eguchi, Atsuko
Nonaka, Satoshi
Kakumu, Masakazu
Matsubara, Etsuro
author_facet Kimura, Noriyuki
Aso, Yasuhiro
Yabuuchi, Kenichi
Ishibashi, Masato
Hori, Daiji
Sasaki, Yuuki
Nakamichi, Atsuhito
Uesugi, Souhei
Fujioka, Hideyasu
Iwao, Shintaro
Jikumaru, Mika
Katayama, Tetsuji
Sumi, Kaori
Eguchi, Atsuko
Nonaka, Satoshi
Kakumu, Masakazu
Matsubara, Etsuro
author_sort Kimura, Noriyuki
collection PubMed
description Background: The development of evidence-based interventions for delaying or preventing cognitive impairment is an important challenge. Most previous studies using self-report questionnaires face problems with reliability and consistency due to recall bias or misclassification among older people. Therefore, objective measurement of lifestyle components is needed to confirm the relationships between lifestyle factors and cognitive function. Aims: The current study examined the relationship between lifestyle factors collected with wearable sensors and cognitive function among community-dwelling older people using machine learning. Methods: In total, 855 participants (mean age: 73.8 years) wore a wristband sensor for 7.8 days on average every 3 months. Various lifestyle parameters were measured, including walking steps, conversation time, total sleep time (TST), sleep efficiency, time awake after sleep onset, awakening count, napping time, and heart rate. Random forest (RF) regression analysis was used to examine the relationships between total daily sensing data and Mini-Mental State Examination (MMSE) scores. Confounding factor analysis was conducted with models that were adjusted and unadjusted for demographic and vascular risk factors, and selected variables were assessed as risk and protective factors using partial dependence plots (PDPs). Results: Lifestyle data were collected for 31.3 ± 7.1 days per year using wristband sensors. RF regression analysis adjusted for age, gender, and education levels selected four variables, including number of walking steps, conversation time, TST, and heart rate. Moreover, walking steps, conversation time, and heart rate remained after RF regression analysis adjusted for demographic and vascular risk factors. Number of walking steps, conversation time, and heart rate were categorized as protective factors, whereas TST was categorized as a risk factor for cognitive function. Although PDPs of number of walking steps and heart rate revealed continuously increased MMSE scores, those of conversation time and TST and revealed that the tendency in the graph was reversed at the boundary of a particular threshold (321.1 min for conversation time, 434.1 min for TST). Conclusions: Lifestyle factors, such as physical activity, sleep, and social activity appear to be associated with cognitive function among older people. Physical activity and appropriate durations of sleep and conversation are important for cognitive function.
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spelling pubmed-64915122019-05-08 Modifiable Lifestyle Factors and Cognitive Function in Older People: A Cross-Sectional Observational Study Kimura, Noriyuki Aso, Yasuhiro Yabuuchi, Kenichi Ishibashi, Masato Hori, Daiji Sasaki, Yuuki Nakamichi, Atsuhito Uesugi, Souhei Fujioka, Hideyasu Iwao, Shintaro Jikumaru, Mika Katayama, Tetsuji Sumi, Kaori Eguchi, Atsuko Nonaka, Satoshi Kakumu, Masakazu Matsubara, Etsuro Front Neurol Neurology Background: The development of evidence-based interventions for delaying or preventing cognitive impairment is an important challenge. Most previous studies using self-report questionnaires face problems with reliability and consistency due to recall bias or misclassification among older people. Therefore, objective measurement of lifestyle components is needed to confirm the relationships between lifestyle factors and cognitive function. Aims: The current study examined the relationship between lifestyle factors collected with wearable sensors and cognitive function among community-dwelling older people using machine learning. Methods: In total, 855 participants (mean age: 73.8 years) wore a wristband sensor for 7.8 days on average every 3 months. Various lifestyle parameters were measured, including walking steps, conversation time, total sleep time (TST), sleep efficiency, time awake after sleep onset, awakening count, napping time, and heart rate. Random forest (RF) regression analysis was used to examine the relationships between total daily sensing data and Mini-Mental State Examination (MMSE) scores. Confounding factor analysis was conducted with models that were adjusted and unadjusted for demographic and vascular risk factors, and selected variables were assessed as risk and protective factors using partial dependence plots (PDPs). Results: Lifestyle data were collected for 31.3 ± 7.1 days per year using wristband sensors. RF regression analysis adjusted for age, gender, and education levels selected four variables, including number of walking steps, conversation time, TST, and heart rate. Moreover, walking steps, conversation time, and heart rate remained after RF regression analysis adjusted for demographic and vascular risk factors. Number of walking steps, conversation time, and heart rate were categorized as protective factors, whereas TST was categorized as a risk factor for cognitive function. Although PDPs of number of walking steps and heart rate revealed continuously increased MMSE scores, those of conversation time and TST and revealed that the tendency in the graph was reversed at the boundary of a particular threshold (321.1 min for conversation time, 434.1 min for TST). Conclusions: Lifestyle factors, such as physical activity, sleep, and social activity appear to be associated with cognitive function among older people. Physical activity and appropriate durations of sleep and conversation are important for cognitive function. Frontiers Media S.A. 2019-04-24 /pmc/articles/PMC6491512/ /pubmed/31068892 http://dx.doi.org/10.3389/fneur.2019.00401 Text en Copyright © 2019 Kimura, Aso, Yabuuchi, Ishibashi, Hori, Sasaki, Nakamichi, Uesugi, Fujioka, Iwao, Jikumaru, Katayama, Sumi, Eguchi, Nonaka, Kakumu and Matsubara. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neurology
Kimura, Noriyuki
Aso, Yasuhiro
Yabuuchi, Kenichi
Ishibashi, Masato
Hori, Daiji
Sasaki, Yuuki
Nakamichi, Atsuhito
Uesugi, Souhei
Fujioka, Hideyasu
Iwao, Shintaro
Jikumaru, Mika
Katayama, Tetsuji
Sumi, Kaori
Eguchi, Atsuko
Nonaka, Satoshi
Kakumu, Masakazu
Matsubara, Etsuro
Modifiable Lifestyle Factors and Cognitive Function in Older People: A Cross-Sectional Observational Study
title Modifiable Lifestyle Factors and Cognitive Function in Older People: A Cross-Sectional Observational Study
title_full Modifiable Lifestyle Factors and Cognitive Function in Older People: A Cross-Sectional Observational Study
title_fullStr Modifiable Lifestyle Factors and Cognitive Function in Older People: A Cross-Sectional Observational Study
title_full_unstemmed Modifiable Lifestyle Factors and Cognitive Function in Older People: A Cross-Sectional Observational Study
title_short Modifiable Lifestyle Factors and Cognitive Function in Older People: A Cross-Sectional Observational Study
title_sort modifiable lifestyle factors and cognitive function in older people: a cross-sectional observational study
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6491512/
https://www.ncbi.nlm.nih.gov/pubmed/31068892
http://dx.doi.org/10.3389/fneur.2019.00401
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