Document detail
ID

oai:HAL:hal-03114532v2

Topic
Surveillance Influenza Sick-leave Outbreak detection MESH: Absenteeism* MESH: Epidemics* MESH: Sick Leave* MESH: Workplace MESH: France / epidemiology MESH: Humans MESH: Incidence MESH: Influenza, Human / epidemiol... MESH: Influenza, Human / virology MESH: Insurance, Health MESH: Middle Aged MESH: Models, Statistical MESH: Public Health Surveillance /... MESH: Retrospective Studies MESH: Sensitivity and Specificity MESH: Sentinel Surveillance* [SDV.SPEE]Life Sciences [q-bio]/Sa... [SDV.MHEP.MI]Life Sciences [q-bio]... [STAT.ME]Statistics [stat]/Methodo...
Author
Duchemin, Tom Bastard, Jonathan Ante-Testard, Pearl Anne Assab, Rania Daouda, Oumou Salama Duval, Audrey Garsi, Jérôme-Philippe Lounissi, Radowan Nekkab, Narimane Neynaud, Helene Smith, David Dab, William Jean, Kévin Temime, Laura Hocine, Mounia
Langue
en
Editor

HAL CCSD;BioMed Central

Category

sciences: life sciences

Year

2021

listing date

12/15/2023

Keywords
detected average using french data mesh sick leave detection outbreaks influenza
Metrics

Abstract

International audience; Background: Workplace absenteeism increases significantly during influenza epidemics.

Sick leave records may facilitate more timely detection of influenza outbreaks, as trends in increased sick leave may precede alerts issued by sentinel surveillance systems by days or weeks.

Sick leave data have not been comprehensively evaluated in comparison to traditional surveillance methods.

The aim of this paper is to study the performance and the feasibility of using a detection system based on sick leave data to detect influenza outbreaks.

Methods: Sick leave records were extracted from private French health insurance data, covering on average 209, 932 companies per year across a wide range of sizes and sectors.

We used linear regression to estimate the weekly number of new sick leave spells between 2016 and 2017 in 12 French regions, adjusting for trend, seasonality and worker leaves on historical data from 2010 to 2015.

Outbreaks were detected using a 95%-prediction interval.

This method was compared to results from the French Sentinelles network, a gold-standard primary care surveillance system currently in place.

Results: Using sick leave data, we detected 92% of reported influenza outbreaks between 2016 and 2017, on average 5.88 weeks prior to outbreak peaks.

Compared to the existing Sentinelles model, our method had high sensitivity (89%) and positive predictive value (86%), and detected outbreaks on average 2.5 weeks earlier.

Conclusion: Sick leave surveillance could be a sensitive, specific and timely tool for detection of influenza outbreaks.

Duchemin, Tom,Bastard, Jonathan,Ante-Testard, Pearl Anne,Assab, Rania,Daouda, Oumou Salama,Duval, Audrey,Garsi, Jérôme-Philippe,Lounissi, Radowan,Nekkab, Narimane,Neynaud, Helene,Smith, David,Dab, William,Jean, Kévin,Temime, Laura,Hocine, Mounia, 2021, Monitoring sick leave data for early detection of influenza outbreaks, HAL CCSD;BioMed Central

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