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A joint latent class model for classifying severely hemorrhaging trauma patients.

Publication ,  Journal Article
Rahbar, MH; Ning, J; Choi, S; Piao, J; Hong, C; Huang, H; Del Junco, DJ; Fox, EE; Rahbar, E; Holcomb, JB
Published in: BMC Res Notes
October 24, 2015

BACKGROUND: In trauma research, "massive transfusion" (MT), historically defined as receiving ≥10 units of red blood cells (RBCs) within 24 h of admission, has been routinely used as a "gold standard" for quantifying bleeding severity. Due to early in-hospital mortality, however, MT is subject to survivor bias and thus a poorly defined criterion to classify bleeding trauma patients. METHODS: Using the data from a retrospective trauma transfusion study, we applied a latent-class (LC) mixture model to identify severely hemorrhaging (SH) patients. Based on the joint distribution of cumulative units of RBCs and binary survival outcome at 24 h of admission, we applied an expectation-maximization (EM) algorithm to obtain model parameters. Estimated posterior probabilities were used for patients' classification and compared with the MT rule. To evaluate predictive performance of the LC-based classification, we examined the role of six clinical variables as predictors using two separate logistic regression models. RESULTS: Out of 471 trauma patients, 211 (45 %) were MT, while our latent SH classifier identified only 127 (27 %) of patients as SH. The agreement between the two classification methods was 73 %. A non-ignorable portion of patients (17 out of 68, 25 %) who died within 24 h were not classified as MT but the SH group included 62 patients (91 %) who died during the same period. Our comparison of the predictive models based on MT and SH revealed significant differences between the coefficients of potential predictors of patients who may be in need of activation of the massive transfusion protocol. CONCLUSIONS: The traditional MT classification does not adequately reflect transfusion practices and outcomes during the trauma reception and initial resuscitation phase. Although we have demonstrated that joint latent class modeling could be used to correct for potential bias caused by misclassification of severely bleeding patients, improvement in this approach could be made in the presence of time to event data from prospective studies.

Duke Scholars

Published In

BMC Res Notes

DOI

EISSN

1756-0500

Publication Date

October 24, 2015

Volume

8

Start / End Page

602

Location

England

Related Subject Headings

  • Young Adult
  • Wounds and Injuries
  • Severity of Illness Index
  • Retrospective Studies
  • Models, Theoretical
  • Middle Aged
  • Male
  • Humans
  • Hemorrhage
  • Female
 

Citation

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Rahbar, M. H., Ning, J., Choi, S., Piao, J., Hong, C., Huang, H., … Holcomb, J. B. (2015). A joint latent class model for classifying severely hemorrhaging trauma patients. BMC Res Notes, 8, 602. https://doi.org/10.1186/s13104-015-1563-4
Rahbar, Mohammad H., Jing Ning, Sangbum Choi, Jin Piao, Chuan Hong, Hanwen Huang, Deborah J. Del Junco, Erin E. Fox, Elaheh Rahbar, and John B. Holcomb. “A joint latent class model for classifying severely hemorrhaging trauma patients.BMC Res Notes 8 (October 24, 2015): 602. https://doi.org/10.1186/s13104-015-1563-4.
Rahbar MH, Ning J, Choi S, Piao J, Hong C, Huang H, et al. A joint latent class model for classifying severely hemorrhaging trauma patients. BMC Res Notes. 2015 Oct 24;8:602.
Rahbar, Mohammad H., et al. “A joint latent class model for classifying severely hemorrhaging trauma patients.BMC Res Notes, vol. 8, Oct. 2015, p. 602. Pubmed, doi:10.1186/s13104-015-1563-4.
Rahbar MH, Ning J, Choi S, Piao J, Hong C, Huang H, Del Junco DJ, Fox EE, Rahbar E, Holcomb JB. A joint latent class model for classifying severely hemorrhaging trauma patients. BMC Res Notes. 2015 Oct 24;8:602.
Journal cover image

Published In

BMC Res Notes

DOI

EISSN

1756-0500

Publication Date

October 24, 2015

Volume

8

Start / End Page

602

Location

England

Related Subject Headings

  • Young Adult
  • Wounds and Injuries
  • Severity of Illness Index
  • Retrospective Studies
  • Models, Theoretical
  • Middle Aged
  • Male
  • Humans
  • Hemorrhage
  • Female