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Table 1 Characteristics of included meta-analyses and ITS studies

From: Comparison of statistical methods used to meta-analyse results from interrupted time series studies: an empirical study

  

Meta-analyses

(N = 17)

n (%) or median (IQR)

Discipline/Topica

Public health

15 (88)

Crime

2 (12)

Interruption target

Population

10 (59)

Organisation

5 (30)

Individualb

1 (6)

Combination

1 (1)

Interruption typesa

Policy change

12 (71)

Practice change

5 (39)

Communication (campaign)

3 (18)

Educational method

3 (18)

Exposure

2 (12)

Outcome typesa

Rate

6 (35)

Count

5 (29)

Proportion

2 (12)

Combination c

2 (12)

Continuous

1 (6)

Probability

1 (6)

Number of ITS studies

Per meta-analysis

11 (5, 15)

Number of time series datapoints

ITS level (N = 282)

52 (27, 61)

Meta-analysis leveld

40 (22, 53)

Autocorrelatione

ITS level (N = 282)

0.22 (0.00, 0.48)

Meta-analysis leveld

0.17 (0.13, 0.42)

Time interval for time series datapoints

Month

11 (65)

Year

4 (24)

4-weeks

1 (6)

Day

1 (6)

  1. ITS interrupted time series, IQR interquartile range, PW Prais-Winsten, REML restricted maximum likelihood
  2. aMultiple response options possible therefore percentages sum to greater than 100%
  3. bInterruptions classified as ‘individual-level interruption’ were the intervention directed at an individual (e.g., delivery of a vaccine), however, the measurements were still aggregated over units of time (e.g., number of vaccinations each year)
  4. cCombination indicates where reviewers combined multiple data types (e.g., combining studies using proportion and rate outcomes)
  5. dThe average number of datapoints and autocorrelation were calculated across the series included in each meta-analysis. These averages were then summarised across the meta-analyses using the median and IQR
  6. eAutocorrelation estimated using REML (or PW where REML failed to converge)