| Literature DB >> 34344304 |
A L Donaldson1,2,3, J L Hardstaff4,5, J P Harris4,5, R Vivancos5,6, S J O'Brien4,5.
Abstract
BACKGROUND: Syndromic surveillance systems are an essential component of public health surveillance and can provide timely detection of infectious disease cases and outbreaks. Whilst surveillance systems are generally embedded within healthcare, there is increasing interest in novel data sources for monitoring trends in illness, such as over-the-counter purchases, internet-based health searches and worker absenteeism. This systematic review considers the utility of school attendance registers in the surveillance of infectious disease outbreaks and occurrences amongst children.Entities:
Keywords: Children; Infectious disease; Outbreaks; School absence; School attendance registers; Syndromic surveillance
Mesh:
Year: 2021 PMID: 34344304 PMCID: PMC8330200 DOI: 10.1186/s12879-021-06444-6
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Fig. 1Flow diagram of study selection
Fig. 2Year and country of publication of included studies. *Studies published pre-2000 comprised of one study published in 1995
Description of included studies
| Author | Year of Publication | Country | Organism/ syndrome | Prospective or retrospective | School ages | Sample size | Specificity of absence | Frequency of data submissions |
|---|---|---|---|---|---|---|---|---|
| Aldridge et al [ | 2016 | UK | Seasonal influenza | Prospective | 11-16 yrs | 27 schools | Medical a | Weekly |
| Besculides et al [ | 2005 | USA | Seasonal influenza | Retrospective | 5-18 yrs | 1160 schools | All cause | Daily |
| Bollaerts et al. [ | 2010 | Belgium | Pandemic influenza | Prospective | 3-18 yrs | ~ 1 million pupils | Illness | Weekly |
| Chu et al [ | 2013 | Canada | Pandemic influenza | Retrospective | 4-14 yrs | 8 PHUs b | Variable | Not specified |
| Crawford et al [ | 2011 | USA | Pandemic influenza | Prospective | 5-12 yrs | 80 schools | All cause | Daily |
| Kara et al [ | 2012 | UK | Pandemic influenza | Retrospective | 4-18 yrs | 373 schools | Illness | Weekly |
| Kightlinger et al [ | 2013 | USA | Pandemic influenza | Prospective | 5-18 yrs | 187 schools | Illness | Weekly |
| Kom Mogto et al [ | 2012 | Canada | Pandemic influenza | Prospective | 6-17 yrs | 3432 schools | Syndrome-specific | Daily |
| Lenaway et al [ | 1995 | USA | Seasonal influenza | Prospective | 5-18 yrs | 44 schools | Illness | Weekly |
| Ma et al [ | 2015 | Sweden | Seasonal influenza | Retrospective | 6-16 yrs. c | 500 schools | Illness | Not specified |
| Mann et al [ | 2011 | USA | Pandemic influenza | Prospective | 5-18 yrs | 349 schools | All cause | Daily |
| Mook et al [ | 2007 | UK | Seasonal influenza | Prospective | 4-16 yrs | 11 schools | Illness | Daily |
| Schmidt et al [ | 2010 | UK | Seasonal influenza | Retrospective | 5-11 yrs | 6 schools | Illness | Not specified |
| Suzue et al [ | 2012 | Japan | Pandemic influenza | Retrospective | 3-18 yrs | 142 schools | Syndrome specific | Daily |
| Williams et al. [ | 2013 | USA | Pandemic influenza | Prospective | 5-17 yrs | 216 schools | All cause + syndrome specific | Weekly |
a Medical absences include illness absence and absence to attend medical appointments
b Public Health Units (PHUs) varied in size and were broadly divided into large PHUs (population > 400,000) and small PHUs (population ≤ 400,000). Each PHU had a custom surveillance system to measure school absenteeism, collecting data on all cause absenteeism (8 PHUs), illness absenteeism (1 PHU) and respiratory illness absence (1 PHU) from schools within their area
c Not clearly specified. The school ages noted are for compulsory education in the country of study
Outbreak definitions used within included studies
| First Author & year of publication | Outbreak threshold / alert | Time period of breach |
|---|---|---|
| Chu 2013 [ | Exceedance based on C2-MEDIUM methoda OR > 5% all-cause absenteeismb | Single day Single day |
| Kom Mogto 2012 [ | ≥10% ILI-related absenteeism | Single day |
| Lenaway 1995 [ | > 7.5% illness absence | Single week average |
| Mann 2011 [ | ≥8% all-cause absenteeism AND 1 SD above 30 day mean | Single day |
| Suzue 2012c [ | > 2% ILI-related absenteeism | Single day |
| Williams 2013 [ | > 10% all-cause absenteeism > 5% ILI-related absenteeism | 2 or more consecutive school days |
a C2-MEDIUM method calculates the mean and standard deviation (SD) from −9 to −3 days before the day of interest. Threshold is an exceedance of the expected value by three standard deviations
b Not clearly stated, assumed from description of methods
c Threshold used to detect start and end of pandemic
Fig. 3Percentage of illness absenteeism at baseline and peak during influenza season or outbreak, with 95% confidence intervals. *No published confidence interval; (A) 2011/12 estimate; (B) 2012/13 estimate; (C) 4–11 year olds; (D) 11–16 year olds