Predictors of pain in general ageing populations: results from a multi-country analysis based on ATHLOS harmonized database
Abstract Background Pain is a common symptom, often associated with neurological and musculoskeletal conditions, and experienced especially by females and by older people, and with increasing trends in general populations. Different risk factors for pain have been identified, but generally from stud...
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2020-05-01
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Series: | The Journal of Headache and Pain |
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Online Access: | http://link.springer.com/article/10.1186/s10194-020-01116-3 |
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record_format |
Article |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Alberto Raggi Matilde Leonardi Blanca Mellor-Marsá Maria V. Moneta Albert Sanchez-Niubo Stefanos Tyrovolas Iago Giné-Vázquez Josep M. Haro Somnath Chatterji Martin Bobak Jose L. Ayuso-Mateos Holger Arndt Muhammad Z. Hossin Jerome Bickenbach Seppo Koskinen Beata Tobiasz-Adamczyk Demosthenes Panagiotakos Barbara Corso |
spellingShingle |
Alberto Raggi Matilde Leonardi Blanca Mellor-Marsá Maria V. Moneta Albert Sanchez-Niubo Stefanos Tyrovolas Iago Giné-Vázquez Josep M. Haro Somnath Chatterji Martin Bobak Jose L. Ayuso-Mateos Holger Arndt Muhammad Z. Hossin Jerome Bickenbach Seppo Koskinen Beata Tobiasz-Adamczyk Demosthenes Panagiotakos Barbara Corso Predictors of pain in general ageing populations: results from a multi-country analysis based on ATHLOS harmonized database The Journal of Headache and Pain Pain Risk factors Headache disorders Musculoskeletal disorders Sleep Obesity |
author_facet |
Alberto Raggi Matilde Leonardi Blanca Mellor-Marsá Maria V. Moneta Albert Sanchez-Niubo Stefanos Tyrovolas Iago Giné-Vázquez Josep M. Haro Somnath Chatterji Martin Bobak Jose L. Ayuso-Mateos Holger Arndt Muhammad Z. Hossin Jerome Bickenbach Seppo Koskinen Beata Tobiasz-Adamczyk Demosthenes Panagiotakos Barbara Corso |
author_sort |
Alberto Raggi |
title |
Predictors of pain in general ageing populations: results from a multi-country analysis based on ATHLOS harmonized database |
title_short |
Predictors of pain in general ageing populations: results from a multi-country analysis based on ATHLOS harmonized database |
title_full |
Predictors of pain in general ageing populations: results from a multi-country analysis based on ATHLOS harmonized database |
title_fullStr |
Predictors of pain in general ageing populations: results from a multi-country analysis based on ATHLOS harmonized database |
title_full_unstemmed |
Predictors of pain in general ageing populations: results from a multi-country analysis based on ATHLOS harmonized database |
title_sort |
predictors of pain in general ageing populations: results from a multi-country analysis based on athlos harmonized database |
publisher |
BMC |
series |
The Journal of Headache and Pain |
issn |
1129-2369 1129-2377 |
publishDate |
2020-05-01 |
description |
Abstract Background Pain is a common symptom, often associated with neurological and musculoskeletal conditions, and experienced especially by females and by older people, and with increasing trends in general populations. Different risk factors for pain have been identified, but generally from studies with limited samples and a limited number of candidate predictors. The aim of this study is to evaluate the predictors of pain from a large set of variables and respondents. Methods We used part of the harmonized dataset of ATHLOS project, selecting studies and waves with a longitudinal course, and in which pain was absent at baseline and with no missing at follow-up. Predictors were selected based on missing distribution and univariable association with pain, and were selected from the following domains: Socio-demographic and economic characteristics, Lifestyle and health behaviours, Health status and functional limitations, Diseases, Physical measures, Cognition, personality and other psychological measures, and Social environment. Hierarchical logistic regression models were then applied to identify significant predictors. Results A total of 13,545 subjects were included of whom 5348 (39.5%) developed pain between baseline and the average 5.2 years’ follow-up. Baseline risk factors for pain were female gender (OR 1.34), engaging in vigorous exercise (OR 2.51), being obese (OR 1.36) and suffering from the loss of a close person (OR 1.88) whereas follow-up risk factors were low energy levels/fatigue (1.93), difficulties with walking (1.69), self-rated health referred as poor (OR 2.20) or average to moderate (OR 1.57) and presence of sleep problems (1.80). Conclusions Our results showed that 39.5% of respondents developed pain over a five-year follow-up period, that there are proximal and distal risk factors for pain, and that part of them are directly modifiable. Actions aimed at improving sleep, reducing weight among obese people and treating fatigue would positively impact on pain onset, and avoiding vigorous exercise should be advised to people aged 60 or over, in particular if female or obese. |
topic |
Pain Risk factors Headache disorders Musculoskeletal disorders Sleep Obesity |
url |
http://link.springer.com/article/10.1186/s10194-020-01116-3 |
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doaj-b6074118f7f94644ac73e9bc235313482020-11-25T02:40:33ZengBMCThe Journal of Headache and Pain1129-23691129-23772020-05-0121111210.1186/s10194-020-01116-3Predictors of pain in general ageing populations: results from a multi-country analysis based on ATHLOS harmonized databaseAlberto Raggi0Matilde Leonardi1Blanca Mellor-Marsá2Maria V. Moneta3Albert Sanchez-Niubo4Stefanos Tyrovolas5Iago Giné-Vázquez6Josep M. Haro7Somnath Chatterji8Martin Bobak9Jose L. Ayuso-Mateos10Holger Arndt11Muhammad Z. Hossin12Jerome Bickenbach13Seppo Koskinen14Beata Tobiasz-Adamczyk15Demosthenes Panagiotakos16Barbara Corso17Neurology, Public Health and Disability Unit, Fondazione IRCCS Istituto Neurologico Carlo BestaNeurology, Public Health and Disability Unit, Fondazione IRCCS Istituto Neurologico Carlo BestaParc Sanitari Sant Joan de Déu, Fundacion Sant Joan de DeuParc Sanitari Sant Joan de Déu, Fundacion Sant Joan de DeuParc Sanitari Sant Joan de Déu, Fundacion Sant Joan de DeuParc Sanitari Sant Joan de Déu, Fundacion Sant Joan de DeuParc Sanitari Sant Joan de Déu, Fundacion Sant Joan de DeuParc Sanitari Sant Joan de Déu, Fundacion Sant Joan de DeuInformation, Evidence and Research, World Health OrganizationResearch Department of Epidemiology and Public Health, University College LondonInstituto de Salud Carlos III, Centro de Investigación Biomédica en Red de Salud Mental, CIBERSAMSPRING TECHNO GMBH & Co. KGDepartment of Global Public Health, Karolinska InstituteDepartment of Health Sciences and Health Policy, University of LucerneFinnish Institute for Health and Welfare (THL)Department of Epidemiology and Population Studies, Faculty of Health Sciences, Jagiellonian University Medical CollegeDepartment of Nutrition and Dietetics, School of Health Science and Education, Harokopio UniversityNational Research Council, Neuroscience InstituteAbstract Background Pain is a common symptom, often associated with neurological and musculoskeletal conditions, and experienced especially by females and by older people, and with increasing trends in general populations. Different risk factors for pain have been identified, but generally from studies with limited samples and a limited number of candidate predictors. The aim of this study is to evaluate the predictors of pain from a large set of variables and respondents. Methods We used part of the harmonized dataset of ATHLOS project, selecting studies and waves with a longitudinal course, and in which pain was absent at baseline and with no missing at follow-up. Predictors were selected based on missing distribution and univariable association with pain, and were selected from the following domains: Socio-demographic and economic characteristics, Lifestyle and health behaviours, Health status and functional limitations, Diseases, Physical measures, Cognition, personality and other psychological measures, and Social environment. Hierarchical logistic regression models were then applied to identify significant predictors. Results A total of 13,545 subjects were included of whom 5348 (39.5%) developed pain between baseline and the average 5.2 years’ follow-up. Baseline risk factors for pain were female gender (OR 1.34), engaging in vigorous exercise (OR 2.51), being obese (OR 1.36) and suffering from the loss of a close person (OR 1.88) whereas follow-up risk factors were low energy levels/fatigue (1.93), difficulties with walking (1.69), self-rated health referred as poor (OR 2.20) or average to moderate (OR 1.57) and presence of sleep problems (1.80). Conclusions Our results showed that 39.5% of respondents developed pain over a five-year follow-up period, that there are proximal and distal risk factors for pain, and that part of them are directly modifiable. Actions aimed at improving sleep, reducing weight among obese people and treating fatigue would positively impact on pain onset, and avoiding vigorous exercise should be advised to people aged 60 or over, in particular if female or obese.http://link.springer.com/article/10.1186/s10194-020-01116-3PainRisk factorsHeadache disordersMusculoskeletal disordersSleepObesity |