» Articles » PMID: 15095767

Interrupted Time Series Designs in Health Technology Assessment: Lessons from Two Systematic Reviews of Behavior Change Strategies

Overview
Date 2004 Apr 21
PMID 15095767
Citations 262
Authors
Affiliations
Soon will be listed here.
Abstract

Objectives: In an interrupted time series (ITS) design, data are collected at multiple instances over time before and after an intervention to detect whether the intervention has an effect significantly greater than the underlying secular trend. We critically reviewed the methodological quality of ITS designs using studies included in two systematic reviews (a review of mass media interventions and a review of guideline dissemination and implementation strategies).

Methods: Quality criteria were developed, and data were abstracted from each study. If the primary study analyzed the ITS design inappropriately, we reanalyzed the results by using time series regression.

Results: Twenty mass media studies and thirty-eight guideline studies were included. A total of 66% of ITS studies did not rule out the threat that another event could have occurred at the point of intervention. Thirty-three studies were reanalyzed, of which eight had significant preintervention trends. All of the studies were considered "effective" in the original report, but approximately half of the reanalyzed studies showed no statistically significant differences.

Conclusions: We demonstrated that ITS designs are often analyzed inappropriately, underpowered, and poorly reported in implementation research. We have illustrated a framework for appraising ITS designs, and more widespread adoption of this framework would strengthen reviews that use ITS designs.

Citing Articles

Outcomes Following a Mental Health Care Intervention for Children in the Emergency Department: A Nonrandomized Clinical Trial.

Newton A, Thull-Freedman J, Xie J, Lightbody T, Woods J, Stang A JAMA Netw Open. 2025; 8(2):e2461972.

PMID: 40009377 PMC: 11866027. DOI: 10.1001/jamanetworkopen.2024.61972.


Evaluation of a Clinical Decision Support System for Imaging Requests: A Cluster Randomized Clinical Trial.

Dijk S, Wollny C, Barkhausen J, Jansen O, Mildenberger P, Halfmann M JAMA. 2025; .

PMID: 39928308 PMC: 11811869. DOI: 10.1001/jama.2024.27853.


The impact of the BreastScreen NSW transition from film to digital mammography, 2002-2016: a linked population health data analysis.

Farber R, Houssami N, McGeechan K, Barratt A, Bell K Med J Aust. 2025; 222(2):82-90.

PMID: 39800865 PMC: 11787811. DOI: 10.5694/mja2.52566.


The impact of the Covid-19 pandemic on outpatient visits for patients with cancer in Iran: an interrupted time series analysis.

Beiranvand S, Behzadifar M, Aryankhesal A, Ehsanzadeh S, Darvishi Teli B, Behzadifar M Arch Public Health. 2025; 83(1):1.

PMID: 39757223 PMC: 11702165. DOI: 10.1186/s13690-024-01482-3.


Clinical Decision Support to Increase Emergency Department Naloxone Coprescribing: Implementation Report.

Sommers S, Tolle H, Trinkley K, Johnston C, Dietsche C, Eldred S JMIR Med Inform. 2024; 12:e58276.

PMID: 39504560 PMC: 11560079. DOI: 10.2196/58276.