Sector of Employment and Mortality: A Cohort Based on Different Administrative Archives.

Lisa Bauleo, Stefania Massari, Claudio Gariazzo, Paola Michelozzi, Luca Dei Bardi, Nicolas Zengarini, Sara Maio, Massimo Stafoggia, Marina Davoli, Giovanni Viegi, Alessandro Marinaccio, Giulia Cesaroni, BIGEPI Collaborative Group
Author Information
  1. Lisa Bauleo: Department of Epidemiology-Lazio Regional Health Service, ASL Roma 1, 00147 Rome, Italy. ORCID
  2. Stefania Massari: Department of Occupational and Environmental Medicine, Epidemiology and Hygiene, Italian National Institute for Insurance against Accidents at Work (INAIL), 00143 Rome, Italy. ORCID
  3. Claudio Gariazzo: Department of Occupational and Environmental Medicine, Epidemiology and Hygiene, Italian National Institute for Insurance against Accidents at Work (INAIL), 00143 Rome, Italy. ORCID
  4. Paola Michelozzi: Department of Epidemiology-Lazio Regional Health Service, ASL Roma 1, 00147 Rome, Italy.
  5. Luca Dei Bardi: Department of Epidemiology-Lazio Regional Health Service, ASL Roma 1, 00147 Rome, Italy.
  6. Nicolas Zengarini: Regional Public Health Observatory (SEPI), ASL TO3, 10095 Grugliasco, Italy.
  7. Sara Maio: Institute of Clinical Physiology, CNR, 56124 Pisa, Italy.
  8. Massimo Stafoggia: Department of Epidemiology-Lazio Regional Health Service, ASL Roma 1, 00147 Rome, Italy.
  9. Marina Davoli: Department of Epidemiology-Lazio Regional Health Service, ASL Roma 1, 00147 Rome, Italy.
  10. Giovanni Viegi: Institute of Clinical Physiology, CNR, 56124 Pisa, Italy. ORCID
  11. Alessandro Marinaccio: Department of Occupational and Environmental Medicine, Epidemiology and Hygiene, Italian National Institute for Insurance against Accidents at Work (INAIL), 00143 Rome, Italy. ORCID
  12. Giulia Cesaroni: Department of Epidemiology-Lazio Regional Health Service, ASL Roma 1, 00147 Rome, Italy. ORCID

Abstract

Administrative data can be precious in connecting information from different sectors. For the first time, we used data from the National Social Insurance Agency (INPS) to investigate the association between the occupational sectors and both non-accidental and accidental mortality. We retrieved information on occupational sectors from 1974 to 2011 for private sector workers included in the 2011 census cohort of Rome. We classified the occupational sectors into 25 categories and analyzed occupational exposure as ever/never have been employed in a sector or as the lifetime prevalent sector. We followed the subjects from the census reference day (9 October 2011) to 31 December 2019. We calculated age-standardized mortality rates for each occupational sector, separately in men and women. We used Cox regression to investigate the association between the occupational sectors and mortality, producing hazard ratios (HRs) and 95% confidence intervals (95%CI). We analyzed 910,559 30+-year-olds (53% males) followed for 7 million person-years. During the follow-up, 59,200 and 2560 died for non-accidental and accidental causes, respectively. Several occupational sectors showed high mortality risks in men in age-adjusted models: food and tobacco production with HR = 1.16 (95%CI: 1.09-8.22), metal processing (HR = 1.66, 95%CI: 1.21-11.8), footwear and wood (HR = 1.19, 95%CI: 1.11-1.28), construction (HR = 1.15, 95%CI: 1.12-1.18), hotels, camping, bars, and restaurants (HR = 1.16, 95%CI: 1.11-1.21) and cleaning (HR = 1.42, 95%CI: 1.33-1.52). In women, the sectors that showed higher mortality than the others were hotels, camping, bars, and restaurants (HR = 1.17, 95%CI: 1.10-1.25) and cleaning services (HR = 1.23, 95%CI: 1.17-1.30). Metal processing and construction sectors showed elevated accidental mortality risks in men. Social Insurance Agency data have the potential to characterize high-risk sectors and identify susceptible groups in the population.

Keywords

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MeSH Term

Male
Humans
Female
Occupational Diseases
Death
Employment
Occupational Exposure

Word Cloud

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