SAFETYLIT WEEKLY UPDATE

We compile citations and summaries of about 400 new articles every week.
RSS Feed

HELP: Tutorials | FAQ
CONTACT US: Contact info

Search Results

Journal Article

Citation

Newgard C, Malveau S, Staudenmayer K, Wang NE, Hsia RY, Mann NC, Holmes JF, Kuppermann N, Haukoos JS, Bulger EM, Dai M, Cook LJ. Acad. Emerg. Med. 2012; 19(4): 469-480.

Affiliation

Center for Policy and Research in Emergency Medicine, Department of Emergency Medicine, Oregon Health & Science University (CN, SM), Portland, OR; the Department of Surgery (KS), Stanford University, Palo Alto, CA; the Division of Emergency Medicine, Department of Surgery, Stanford University (NEW), Palo Alto, CA; the Department of Emergency Medicine, University of California San Francisco, San Francisco General Hospital (RYH), San Francisco, CA; the Department of Pediatrics, Intermountain Injury Control Research Center, University of Utah School of Medicine (NCM, MD, LJC), Salt Lake City, UT; the Department of Emergency Medicine, University of California at Davis (JFH, NK), Sacramento, CA; the Department of Emergency Medicine, Denver Health Medical Center (JSH), Denver, CO; the Department of Epidemiology, Colorado School of Public Health, University of Colorado School of Medicine (JSH), Aurora, CO; and the Department of Surgery, University of Washington (EMB), Seattle, WA.

Copyright

(Copyright © 2012, Society for Academic Emergency Medicine, Publisher John Wiley and Sons)

DOI

10.1111/j.1553-2712.2012.01324.x

PMID

22506952

PMCID

PMC3334286

Abstract

Objectives:  The objective was to evaluate the process of using existing data sources, probabilistic linkage, and multiple imputation to create large population-based injury databases matched to outcomes. Methods:  This was a retrospective cohort study of injured children and adults transported by 94 emergency medical systems (EMS) agencies to 122 hospitals in seven regions of the western United States over a 36-month period (2006 to 2008). All injured patients evaluated by EMS personnel within specific geographic catchment areas were included, regardless of field disposition or outcome. The authors performed probabilistic linkage of EMS records to four hospital and postdischarge data sources (emergency department [ED] data, patient discharge data, trauma registries, and vital statistics files) and then handled missing values using multiple imputation. The authors compare and evaluate matched records, match rates (proportion of matches among eligible patients), and injury outcomes within and across sites. Results:  There were 381,719 injured patients evaluated by EMS personnel in the seven regions. Among transported patients, match rates ranged from 14.9% to 87.5% and were directly affected by the availability of hospital data sources and proportion of missing values for key linkage variables. For vital statistics records (1-year mortality), estimated match rates ranged from 88.0% to 98.7%. Use of multiple imputation (compared to complete case analysis) reduced bias for injury outcomes, although sample size, percentage missing, type of variable, and combined-site versus single-site imputation models all affected the resulting estimates and variance. Conclusions:  This project demonstrates the feasibility and describes the process of constructing population-based injury databases across multiple phases of care using existing data sources and commonly available analytic methods. Attention to key linkage variables and decisions for handling missing values can be used to increase match rates between data sources, minimize bias, and preserve sampling design.


Language: en

NEW SEARCH


All SafetyLit records are available for automatic download to Zotero & Mendeley
Print