Craig D Newgard1. 1. Center for Policy and Research in Emergency Medicine, Department of Emergency Medicine, Oregon Health & Science University, Portland, OR 97239-3098, USA. newgardc@ohsu.edu
Abstract
OBJECTIVES: To assess 1) the agreement of multiply imputed out-of-hospital values previously missing in a state trauma registry compared with known ambulance values and 2) the potential impact of using multiple imputation versus a commonly used method for handling missing data (i.e., complete case analysis) in a typical multivariable injury analysis. METHODS: This was a retrospective cohort analysis. Multiply imputed out-of-hospital data from 1998 to 2003 for four variables (intubation attempt, Glasgow Coma Scale score, systolic blood pressure, and respiratory rate) were compared with known values from probabilistically linked ambulance records using measures of agreement (kappa, weighted kappa, and Bland-Altman plots). Ambulance values were assumed to represent the "true" values for all analyses. A hypothetical multivariable regression model was used to demonstrate the impact (i.e., bias and precision of model results) of handling missing out-of-hospital data with multiple imputation versus complete case analysis. RESULTS: A total of 6,150 matched ambulance and trauma registry records were available for comparison. Multiply imputed values for the four out-of-hospital variables demonstrated fair to good agreement with known ambulance values. When included in typical multivariable analyses, multiple imputation increased precision and reduced bias compared with using complete case analysis for the same data set. CONCLUSIONS: Multiply imputed out-of-hospital values for intubation attempt, Glasgow Coma Scale score, systolic blood pressure, and respiratory rate have fair to good agreement with known ambulance values. Multiple imputation also increased precision and reduced bias compared with complete case analysis in a typical multivariable injury model, and it should be considered for studies using out-of-hospital data from a trauma registry, particularly when substantial portions of data are missing.
OBJECTIVES: To assess 1) the agreement of multiply imputed out-of-hospital values previously missing in a state trauma registry compared with known ambulance values and 2) the potential impact of using multiple imputation versus a commonly used method for handling missing data (i.e., complete case analysis) in a typical multivariable injury analysis. METHODS: This was a retrospective cohort analysis. Multiply imputed out-of-hospital data from 1998 to 2003 for four variables (intubation attempt, Glasgow Coma Scale score, systolic blood pressure, and respiratory rate) were compared with known values from probabilistically linked ambulance records using measures of agreement (kappa, weighted kappa, and Bland-Altman plots). Ambulance values were assumed to represent the "true" values for all analyses. A hypothetical multivariable regression model was used to demonstrate the impact (i.e., bias and precision of model results) of handling missing out-of-hospital data with multiple imputation versus complete case analysis. RESULTS: A total of 6,150 matched ambulance and trauma registry records were available for comparison. Multiply imputed values for the four out-of-hospital variables demonstrated fair to good agreement with known ambulance values. When included in typical multivariable analyses, multiple imputation increased precision and reduced bias compared with using complete case analysis for the same data set. CONCLUSIONS: Multiply imputed out-of-hospital values for intubation attempt, Glasgow Coma Scale score, systolic blood pressure, and respiratory rate have fair to good agreement with known ambulance values. Multiple imputation also increased precision and reduced bias compared with complete case analysis in a typical multivariable injury model, and it should be considered for studies using out-of-hospital data from a trauma registry, particularly when substantial portions of data are missing.
Authors: Craig D Newgard; Dana Zive; James F Holmes; Eileen M Bulger; Kristan Staudenmayer; Michael Liao; Thomas Rea; Renee Y Hsia; N Ewen Wang; Ross Fleischman; Jonathan Jui; N Clay Mann; Jason S Haukoos; Karl A Sporer; K Dean Gubler; Jerris R Hedges Journal: J Am Coll Surg Date: 2011-12 Impact factor: 6.113
Authors: Craig D Newgard; Michael Kampp; Maria Nelson; James F Holmes; Dana Zive; Thomas Rea; Eileen M Bulger; Michael Liao; John Sherck; Renee Y Hsia; N Ewen Wang; Ross J Fleischman; Erik D Barton; Mohamud Daya; John Heineman; Nathan Kuppermann Journal: J Trauma Acute Care Surg Date: 2012-05 Impact factor: 3.313
Authors: Yoko Nakamura; Mohamud Daya; Eileen M Bulger; Martin Schreiber; Robert Mackersie; Renee Y Hsia; N Clay Mann; James F Holmes; Kristan Staudenmayer; Zachary Sturges; Michael Liao; Jason Haukoos; Nathan Kuppermann; Erik D Barton; Craig D Newgard Journal: Ann Emerg Med Date: 2012-05-24 Impact factor: 5.721
Authors: M Austin Johnson; Brian J H Grahan; Jason S Haukoos; Bryan McNally; Robert Campbell; Comilla Sasson; David E Slattery Journal: Resuscitation Date: 2014-03-28 Impact factor: 5.262
Authors: Gowri Shivasabesan; Gerard M O'Reilly; Joseph Mathew; Mark C Fitzgerald; Amit Gupta; Nobhojit Roy; Manjul Joshipura; Naveen Sharma; Peter Cameron; Madonna Fahey; Teresa Howard; Zoe Cheung; Vineet Kumar; Bhavesh Jarwani; Kapil Dev Soni; Pankaj Patel; Advait Thakor; Mahesh Misra; Russell L Gruen; Biswadev Mitra Journal: World J Surg Date: 2019-10 Impact factor: 3.352
Authors: Craig D Newgard; N Clay Mann; Renee Y Hsia; Eileen M Bulger; O John Ma; Kristan Staudenmayer; Jason S Haukoos; Ritu Sahni; Nathan Kuppermann Journal: Acad Emerg Med Date: 2013-09 Impact factor: 3.451
Authors: Craig D Newgard; Nathan Kuppermann; James F Holmes; Jason S Haukoos; Brian Wetzel; Renee Y Hsia; N Ewen Wang; Eileen M Bulger; Kristan Staudenmayer; N Clay Mann; Erik D Barton; Garen Wintemute Journal: Pediatrics Date: 2013-10-14 Impact factor: 7.124
Authors: Jeffrey M Caterino; Nicole V Brown; Maya W Hamilton; Brian Ichwan; Salman Khaliqdina; David C Evans; Subrahmanyan Darbha; Ashish R Panchal; Manish N Shah Journal: J Am Geriatr Soc Date: 2016-10-03 Impact factor: 5.562