BACKGROUND: Several predictive models have been developed to identify trauma patients who have had severe hemorrhage (SH) and may need a massive transfusion (MT) protocol. However, almost all these models define SH as the transfusion of 10 or more units of red blood cells (RBCs) within 24 hours of emergency department admission (also known as MT). This definition excludes some patients with SH, especially those who die before a 10th unit of RBCs could be transfused, which calls the validity of these prediction models into question. We show how a latent class model could improve the accuracy of identifying the SH patients. METHODS: Modeling SH classification as a latent variable, we estimate the posterior probability of a patient in SH based on emergency department admission variables (systolic blood pressure, heart rate, pH, hemoglobin), the 24-hour blood product use (plasma/RBC and platelet/RBC ratios), and 24-hour survival status. We define the SH subgroup as those having a posterior probability of 0.5 or greater. We compare our new classification of SH with that of the traditional MT using data from PROMMTT study. RESULTS: Of the 1,245 patients, 913 had complete data, which were used in the latent class model. About 25.3% of patients were classified as SH. The overall agreement between the MT and SH classifications was 83.8%. However, among 49 patients who died before receiving the 10th unit of RBCs, 41 (84%) were classified as SH. Seven (87.5%) of the remaining eight patients who were not classified as SH had head injury. CONCLUSION: Our definition of SH based on the aforementioned latent class model has an advantage of improving on the traditional MT definition by identifying SH patients who die before receiving the 10th unit of RBCs. We recommend further improvements to more accurately classify SH patients, which could replace the traditional definition of MT for use in developing prediction algorithms.
BACKGROUND: Several predictive models have been developed to identify traumapatients who have had severe hemorrhage (SH) and may need a massive transfusion (MT) protocol. However, almost all these models define SH as the transfusion of 10 or more units of red blood cells (RBCs) within 24 hours of emergency department admission (also known as MT). This definition excludes some patients with SH, especially those who die before a 10th unit of RBCs could be transfused, which calls the validity of these prediction models into question. We show how a latent class model could improve the accuracy of identifying the SH patients. METHODS: Modeling SH classification as a latent variable, we estimate the posterior probability of a patient in SH based on emergency department admission variables (systolic blood pressure, heart rate, pH, hemoglobin), the 24-hour blood product use (plasma/RBC and platelet/RBC ratios), and 24-hour survival status. We define the SH subgroup as those having a posterior probability of 0.5 or greater. We compare our new classification of SH with that of the traditional MT using data from PROMMTT study. RESULTS: Of the 1,245 patients, 913 had complete data, which were used in the latent class model. About 25.3% of patients were classified as SH. The overall agreement between the MT and SH classifications was 83.8%. However, among 49 patients who died before receiving the 10th unit of RBCs, 41 (84%) were classified as SH. Seven (87.5%) of the remaining eight patients who were not classified as SH had head injury. CONCLUSION: Our definition of SH based on the aforementioned latent class model has an advantage of improving on the traditional MT definition by identifying SH patients who die before receiving the 10th unit of RBCs. We recommend further improvements to more accurately classify SH patients, which could replace the traditional definition of MT for use in developing prediction algorithms.
Authors: Timothy H Rainer; Anthony M-H Ho; Janice H H Yeung; Nai Kwong Cheung; Raymond S M Wong; Ning Tang; Siu Keung Ng; George K C Wong; Paul B S Lai; Colin A Graham Journal: Resuscitation Date: 2011-04-01 Impact factor: 5.262
Authors: M A Borgman; P C Spinella; J B Holcomb; L H Blackbourne; C E Wade; R Lefering; B Bouillon; M Maegele Journal: Vox Sang Date: 2011-03-25 Impact factor: 2.144
Authors: Matthew A Borgman; Philip C Spinella; Jeremy G Perkins; Kurt W Grathwohl; Thomas Repine; Alec C Beekley; James Sebesta; Donald Jenkins; Charles E Wade; John B Holcomb Journal: J Trauma Date: 2007-10
Authors: John B Holcomb; Charles E Wade; Joel E Michalek; Gary B Chisholm; Lee Ann Zarzabal; Martin A Schreiber; Ernest A Gonzalez; Gregory J Pomper; Jeremy G Perkins; Phillip C Spinella; Kari L Williams; Myung S Park Journal: Ann Surg Date: 2008-09 Impact factor: 12.969
Authors: Christopher W Snyder; Jordan A Weinberg; Gerald McGwin; Sherry M Melton; Richard L George; Donald A Reiff; James M Cross; Jennifer Hubbard-Brown; Loring W Rue; Jeffrey D Kerby Journal: J Trauma Date: 2009-02
Authors: Luzia Gonçalves; Ana Subtil; M Rosário de Oliveira; Virgílio do Rosário; Pei-Wen Lee; Men-Fang Shaio Journal: PLoS One Date: 2012-07-23 Impact factor: 3.240
Authors: Sangbum Choi; Mohammad H Rahbar; Jing Ning; Deborah J Del Junco; Elaheh Rahbar; Chuan Hong; Jin Piao; Erin E Fox; John B Holcomb Journal: J Clin Epidemiol Date: 2016-04-29 Impact factor: 6.437
Authors: Elaheh Rahbar; Erin E Fox; Deborah J del Junco; John A Harvin; John B Holcomb; Charles E Wade; Martin A Schreiber; Mohammad H Rahbar; Eileen M Bulger; Herb A Phelan; Karen J Brasel; Louis H Alarcon; John G Myers; Mitchell J Cohen; Peter Muskat; Bryan A Cotton Journal: J Trauma Acute Care Surg Date: 2013-07 Impact factor: 3.313
Authors: Mohammad H Rahbar; Jing Ning; Sangbum Choi; Jin Piao; Chuan Hong; Hanwen Huang; Deborah J Del Junco; Erin E Fox; Elaheh Rahbar; John B Holcomb Journal: BMC Res Notes Date: 2015-10-24
Authors: Hao Wang; Johnbosco Umejiego; Richard D Robinson; Chet D Schrader; JoAnna Leuck; Michael Barra; Stefan Buca; Andrew Shedd; Andrew Bui; Nestor R Zenarosa Journal: J Clin Med Res Date: 2016-07-01