Predicting future changes in the work ability of individuals receiving a work disability benefit: weighted analysis of longitudinal data

OBJECTIVES: Weighted regression procedures can be an efficient solution for cohort studies that involve rare events or diseases, which can be difficult to predict, allowing for more accurate prediction of cases of interest. The aims of this study were to (i) predict changes in work ability at one ye...

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Main Authors: Ilse Louwerse, Maaike A Huysmans, Jolanda HJ van Rijssen, Frederieke G Schaafsma, Kristel HN Weerdesteijn, Allard J van der Beek, Johannes R Anema
Format: Article
Language:English
Published: Nordic Association of Occupational Safety and Health (NOROSH) 2020-03-01
Series:Scandinavian Journal of Work, Environment & Health
Subjects:
Online Access: https://www.sjweh.fi/show_abstract.php?abstract_id=3834
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spelling doaj-34fd779123e0461d842479f01af4e6e82021-04-20T12:41:50ZengNordic Association of Occupational Safety and Health (NOROSH)Scandinavian Journal of Work, Environment & Health0355-31401795-990X2020-03-0146216817610.5271/sjweh.38343834Predicting future changes in the work ability of individuals receiving a work disability benefit: weighted analysis of longitudinal dataIlse Louwerse0Maaike A HuysmansJolanda HJ van RijssenFrederieke G SchaafsmaKristel HN WeerdesteijnAllard J van der BeekJohannes R AnemaAmsterdam UMC, Vrije Universiteit Amsterdam, Department of Public and Occupational Health, Amsterdam Public Health research institute, Van der Boechorststraat 7, NL-1081 BT Amsterdam, The Netherlands.OBJECTIVES: Weighted regression procedures can be an efficient solution for cohort studies that involve rare events or diseases, which can be difficult to predict, allowing for more accurate prediction of cases of interest. The aims of this study were to (i) predict changes in work ability at one year after approval of the work disability benefit and (ii) explore whether weighted regression procedures could improve the accuracy of predicting claimants with the highest probability of experiencing a relevant change in work ability. METHODS: The study population consisted of 944 individuals who were granted a work disability benefit. Self-reported questionnaire data measured at baseline were linked with administrative data from Dutch Social Security Institute databases. Standard and weighted multinomial logit models were fitted to predict changes in the work ability score (WAS) at one-year follow-up. McNemar’s test was used to assess the difference between these models. RESULTS: A total of 208 (22%) claimants experienced an improvement in WAS. The standard multinomial logit model predicted a relevant improvement in WAS for only 9% of the claimants [positive predictive value (PPV) 62%]. The weighted model predicted significantly more cases, 14% (PPV 63%). Predictive variables were several physical and mental functioning factors, work status, wage loss, and WAS at baseline. CONCLUSION: This study showed that there are indications that weighted regression procedures can correctly identify more individuals who experience a relevant change in WAS compared to standard multinomial logit models. Our findings suggest that weighted analysis could be an effective method in epidemiology when predicting rare events or diseases. https://www.sjweh.fi/show_abstract.php?abstract_id=3834 work abilityprognosiswork disabilitylongitudinal datadisability benefitwork disability benefitweighted analysiswork disability allowanceweighted multinomial logit modelrare event
collection DOAJ
language English
format Article
sources DOAJ
author Ilse Louwerse
Maaike A Huysmans
Jolanda HJ van Rijssen
Frederieke G Schaafsma
Kristel HN Weerdesteijn
Allard J van der Beek
Johannes R Anema
spellingShingle Ilse Louwerse
Maaike A Huysmans
Jolanda HJ van Rijssen
Frederieke G Schaafsma
Kristel HN Weerdesteijn
Allard J van der Beek
Johannes R Anema
Predicting future changes in the work ability of individuals receiving a work disability benefit: weighted analysis of longitudinal data
Scandinavian Journal of Work, Environment & Health
work ability
prognosis
work disability
longitudinal data
disability benefit
work disability benefit
weighted analysis
work disability allowance
weighted multinomial logit model
rare event
author_facet Ilse Louwerse
Maaike A Huysmans
Jolanda HJ van Rijssen
Frederieke G Schaafsma
Kristel HN Weerdesteijn
Allard J van der Beek
Johannes R Anema
author_sort Ilse Louwerse
title Predicting future changes in the work ability of individuals receiving a work disability benefit: weighted analysis of longitudinal data
title_short Predicting future changes in the work ability of individuals receiving a work disability benefit: weighted analysis of longitudinal data
title_full Predicting future changes in the work ability of individuals receiving a work disability benefit: weighted analysis of longitudinal data
title_fullStr Predicting future changes in the work ability of individuals receiving a work disability benefit: weighted analysis of longitudinal data
title_full_unstemmed Predicting future changes in the work ability of individuals receiving a work disability benefit: weighted analysis of longitudinal data
title_sort predicting future changes in the work ability of individuals receiving a work disability benefit: weighted analysis of longitudinal data
publisher Nordic Association of Occupational Safety and Health (NOROSH)
series Scandinavian Journal of Work, Environment & Health
issn 0355-3140
1795-990X
publishDate 2020-03-01
description OBJECTIVES: Weighted regression procedures can be an efficient solution for cohort studies that involve rare events or diseases, which can be difficult to predict, allowing for more accurate prediction of cases of interest. The aims of this study were to (i) predict changes in work ability at one year after approval of the work disability benefit and (ii) explore whether weighted regression procedures could improve the accuracy of predicting claimants with the highest probability of experiencing a relevant change in work ability. METHODS: The study population consisted of 944 individuals who were granted a work disability benefit. Self-reported questionnaire data measured at baseline were linked with administrative data from Dutch Social Security Institute databases. Standard and weighted multinomial logit models were fitted to predict changes in the work ability score (WAS) at one-year follow-up. McNemar’s test was used to assess the difference between these models. RESULTS: A total of 208 (22%) claimants experienced an improvement in WAS. The standard multinomial logit model predicted a relevant improvement in WAS for only 9% of the claimants [positive predictive value (PPV) 62%]. The weighted model predicted significantly more cases, 14% (PPV 63%). Predictive variables were several physical and mental functioning factors, work status, wage loss, and WAS at baseline. CONCLUSION: This study showed that there are indications that weighted regression procedures can correctly identify more individuals who experience a relevant change in WAS compared to standard multinomial logit models. Our findings suggest that weighted analysis could be an effective method in epidemiology when predicting rare events or diseases.
topic work ability
prognosis
work disability
longitudinal data
disability benefit
work disability benefit
weighted analysis
work disability allowance
weighted multinomial logit model
rare event
url https://www.sjweh.fi/show_abstract.php?abstract_id=3834
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