TY - JOUR
T1 - Optimized probability sampling of study sites to improve generalizability in a multisite intervention trial
AU - Kraschnewski, Jennifer L.
AU - Keyserling, Thomas C.
AU - Bangdiwala, Shrikant I.
AU - Gizlice, Ziya
AU - Garcia, Beverly A.
AU - Johnston, Larry F.
AU - Gustafson, Alison
AU - Petrovic, Lindsay
AU - Glasgow, Russell E.
AU - Samuel-Hodge, Carmen D.
N1 - Copyright:
Copyright 2016 Elsevier B.V., All rights reserved.
PY - 2010
Y1 - 2010
N2 - Introduction Studies of type 2 translation, the adaption of evidence-based interventions to real-world settings, should include representative study sites and staff to improve external validity. Sites for such studies are, however, often selected by convenience sampling, which limits generalizability. We used an optimized probability sampling protocol to select an unbiased, representative sample of study sites to prepare for a randomized trial of a weight loss intervention. Methods: We invited North Carolina health departments within 200 miles of the research center to participate (N = 81). Of the 43 health departments that were eligible, 30 were interested in participating. To select a representative and feasible sample of 6 health departments that met inclusion criteria, we generated all combinations of 6 from the 30 health departments that were eligible and interested. From the subset of combinations that met inclusion criteria, we selected 1 at random. Results: Of 593,775 possible combinations of 6 counties, 15,177 (3%) met inclusion criteria. Sites in the selected subset were similar to all eligible sites in terms of health department characteristics and county demographics. Conclusion Optimized probability sampling improved generalizability by ensuring an unbiased and representative sample of study sites.
AB - Introduction Studies of type 2 translation, the adaption of evidence-based interventions to real-world settings, should include representative study sites and staff to improve external validity. Sites for such studies are, however, often selected by convenience sampling, which limits generalizability. We used an optimized probability sampling protocol to select an unbiased, representative sample of study sites to prepare for a randomized trial of a weight loss intervention. Methods: We invited North Carolina health departments within 200 miles of the research center to participate (N = 81). Of the 43 health departments that were eligible, 30 were interested in participating. To select a representative and feasible sample of 6 health departments that met inclusion criteria, we generated all combinations of 6 from the 30 health departments that were eligible and interested. From the subset of combinations that met inclusion criteria, we selected 1 at random. Results: Of 593,775 possible combinations of 6 counties, 15,177 (3%) met inclusion criteria. Sites in the selected subset were similar to all eligible sites in terms of health department characteristics and county demographics. Conclusion Optimized probability sampling improved generalizability by ensuring an unbiased and representative sample of study sites.
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M3 - Article
C2 - 20040225
AN - SCOPUS:77949332761
SN - 1545-1151
VL - 7
JO - Preventing Chronic Disease
JF - Preventing Chronic Disease
IS - 1
M1 - A10
ER -