| Literature DB >> 33867738 |
Liu Wei1, Wu Chenggao1, Zou Juan1, Le Aiping1.
Abstract
Early initial massive transfusion protocol and blood transfusion can reduce patient mortality, however accurately identifying the risk of massive transfusion (MT) remains a major challenge in severe trauma patient therapy. We retrospectively analyzed clinical data of severe trauma patients with and without MT. Based on analysis results, we established a MT prediction model of clinical and laboratory data by using the decision tree algorithm in patients with multiple trauma. Our results demonstrate that shock index, injury severity score, international normalized ratio, and pelvis fracture were the most significant risk factors of MT. These four indexes were incorporated into the prediction model, and the model was validated by using the testing dataset. Moreover, the sensitivity, specificity, accuracy and area under curve values of prediction model for MT risk prediction were 60%, 92%, 90% and 0.85. Our study provides an easy and understandable classification rules for identifying risk factors associated with MT that may be useful for promoting trauma management. © Indian Society of Hematology and Blood Transfusion 2020.Entities:
Keywords: Algorithm; Decision tree; Massive hemorrhage; Massive transfusion; Multiple trauma
Year: 2020 PMID: 33867738 PMCID: PMC8012442 DOI: 10.1007/s12288-020-01348-y
Source DB: PubMed Journal: Indian J Hematol Blood Transfus ISSN: 0971-4502 Impact factor: 0.900