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Lifestyle and chronic kidney disease: A machine learning modeling study

BACKGROUND: Individual lifestyle varies in the real world, and the comparative efficacy of lifestyles to preserve renal function remains indeterminate. We aimed to systematically compare the effects of lifestyles on chronic kidney disease (CKD) incidence, and establish a lifestyle scoring system for...

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Autores principales: Luo, Wenjin, Gong, Lilin, Chen, Xiangjun, Gao, Rufei, Peng, Bin, Wang, Yue, Luo, Ting, Yang, Yi, Kang, Bing, Peng, Chuan, Ma, Linqiang, Mei, Mei, Liu, Zhiping, Li, Qifu, Yang, Shumin, Wang, Zhihong, Hu, Jinbo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9355159/
https://www.ncbi.nlm.nih.gov/pubmed/35938107
http://dx.doi.org/10.3389/fnut.2022.918576
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author Luo, Wenjin
Gong, Lilin
Chen, Xiangjun
Gao, Rufei
Peng, Bin
Wang, Yue
Luo, Ting
Yang, Yi
Kang, Bing
Peng, Chuan
Ma, Linqiang
Mei, Mei
Liu, Zhiping
Li, Qifu
Yang, Shumin
Wang, Zhihong
Hu, Jinbo
author_facet Luo, Wenjin
Gong, Lilin
Chen, Xiangjun
Gao, Rufei
Peng, Bin
Wang, Yue
Luo, Ting
Yang, Yi
Kang, Bing
Peng, Chuan
Ma, Linqiang
Mei, Mei
Liu, Zhiping
Li, Qifu
Yang, Shumin
Wang, Zhihong
Hu, Jinbo
author_sort Luo, Wenjin
collection PubMed
description BACKGROUND: Individual lifestyle varies in the real world, and the comparative efficacy of lifestyles to preserve renal function remains indeterminate. We aimed to systematically compare the effects of lifestyles on chronic kidney disease (CKD) incidence, and establish a lifestyle scoring system for CKD risk identification. METHODS: Using the data of the UK Biobank cohort, we included 470,778 participants who were free of CKD at the baseline. We harnessed the light gradient boosting machine algorithm to rank the importance of 37 lifestyle factors (such as dietary patterns, physical activity (PA), sleep, psychological health, smoking, and alcohol) on the risk of CKD. The lifestyle score was calculated by a combination of machine learning and the Cox proportional-hazards model. A CKD event was defined as an estimated glomerular filtration rate <60 ml/min/1.73 m(2), mortality and hospitalization due to chronic renal failure, and self-reported chronic renal failure, initiated renal replacement therapy. RESULTS: During a median of the 11-year follow-up, 13,555 participants developed the CKD event. Bread, walking time, moderate activity, and vigorous activity ranked as the top four risk factors of CKD. A healthy lifestyle mainly consisted of whole grain bread, walking, moderate physical activity, oat cereal, and muesli, which have scored 12, 12, 10, 7, and 7, respectively. An unhealthy lifestyle mainly included white bread, tea >4 cups/day, biscuit cereal, low drink temperature, and processed meat, which have scored −12, −9, −7, −4, and −3, respectively. In restricted cubic spline regression analysis, a higher lifestyle score was associated with a lower risk of CKD event (p for linear relation < 0.001). Compared to participants with the lifestyle score < 0, participants scoring 0–20, 20–40, 40–60, and >60 exhibited 25, 42, 55, and 70% lower risk of CKD event, respectively. The C-statistic of the age-adjusted lifestyle score for predicting CKD events was 0.710 (0.703–0.718). CONCLUSION: A lifestyle scoring system for CKD prevention was established. Based on the system, individuals could flexibly choose healthy lifestyles and avoid unhealthy lifestyles to prevent CKD.
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spelling pubmed-93551592022-08-06 Lifestyle and chronic kidney disease: A machine learning modeling study Luo, Wenjin Gong, Lilin Chen, Xiangjun Gao, Rufei Peng, Bin Wang, Yue Luo, Ting Yang, Yi Kang, Bing Peng, Chuan Ma, Linqiang Mei, Mei Liu, Zhiping Li, Qifu Yang, Shumin Wang, Zhihong Hu, Jinbo Front Nutr Nutrition BACKGROUND: Individual lifestyle varies in the real world, and the comparative efficacy of lifestyles to preserve renal function remains indeterminate. We aimed to systematically compare the effects of lifestyles on chronic kidney disease (CKD) incidence, and establish a lifestyle scoring system for CKD risk identification. METHODS: Using the data of the UK Biobank cohort, we included 470,778 participants who were free of CKD at the baseline. We harnessed the light gradient boosting machine algorithm to rank the importance of 37 lifestyle factors (such as dietary patterns, physical activity (PA), sleep, psychological health, smoking, and alcohol) on the risk of CKD. The lifestyle score was calculated by a combination of machine learning and the Cox proportional-hazards model. A CKD event was defined as an estimated glomerular filtration rate <60 ml/min/1.73 m(2), mortality and hospitalization due to chronic renal failure, and self-reported chronic renal failure, initiated renal replacement therapy. RESULTS: During a median of the 11-year follow-up, 13,555 participants developed the CKD event. Bread, walking time, moderate activity, and vigorous activity ranked as the top four risk factors of CKD. A healthy lifestyle mainly consisted of whole grain bread, walking, moderate physical activity, oat cereal, and muesli, which have scored 12, 12, 10, 7, and 7, respectively. An unhealthy lifestyle mainly included white bread, tea >4 cups/day, biscuit cereal, low drink temperature, and processed meat, which have scored −12, −9, −7, −4, and −3, respectively. In restricted cubic spline regression analysis, a higher lifestyle score was associated with a lower risk of CKD event (p for linear relation < 0.001). Compared to participants with the lifestyle score < 0, participants scoring 0–20, 20–40, 40–60, and >60 exhibited 25, 42, 55, and 70% lower risk of CKD event, respectively. The C-statistic of the age-adjusted lifestyle score for predicting CKD events was 0.710 (0.703–0.718). CONCLUSION: A lifestyle scoring system for CKD prevention was established. Based on the system, individuals could flexibly choose healthy lifestyles and avoid unhealthy lifestyles to prevent CKD. Frontiers Media S.A. 2022-07-22 /pmc/articles/PMC9355159/ /pubmed/35938107 http://dx.doi.org/10.3389/fnut.2022.918576 Text en Copyright © 2022 Luo, Gong, Chen, Gao, Peng, Wang, Luo, Yang, Kang, Peng, Ma, Mei, Liu, Li, Yang, Wang and Hu. https://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 Nutrition
Luo, Wenjin
Gong, Lilin
Chen, Xiangjun
Gao, Rufei
Peng, Bin
Wang, Yue
Luo, Ting
Yang, Yi
Kang, Bing
Peng, Chuan
Ma, Linqiang
Mei, Mei
Liu, Zhiping
Li, Qifu
Yang, Shumin
Wang, Zhihong
Hu, Jinbo
Lifestyle and chronic kidney disease: A machine learning modeling study
title Lifestyle and chronic kidney disease: A machine learning modeling study
title_full Lifestyle and chronic kidney disease: A machine learning modeling study
title_fullStr Lifestyle and chronic kidney disease: A machine learning modeling study
title_full_unstemmed Lifestyle and chronic kidney disease: A machine learning modeling study
title_short Lifestyle and chronic kidney disease: A machine learning modeling study
title_sort lifestyle and chronic kidney disease: a machine learning modeling study
topic Nutrition
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9355159/
https://www.ncbi.nlm.nih.gov/pubmed/35938107
http://dx.doi.org/10.3389/fnut.2022.918576
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