Abstract

Background - Predicting red cell transfusion may assist in identifying those most likely to benefit from patient blood management strategies. Our objective was to identify a simple statistical model to predict transfusion in elective surgery from routinely available data.
Materials and methods - Our final multicentre cohort consisted of 42,546 patients and contained the following potential predictors of red cell transfusion known prior to admission: patient age, sex, pre-admission haemoglobin, surgical procedure, and comorbidities. Missing data were handled by multiple imputation methods. The outcome measure of interest was administration of a red cell transfusion. We used multivariable logistic regression models to predict transfusion, and evaluated the performance by applying a 10-fold cross-validation. Model accuracy was assessed by comparing the area under the receiver operating characteristics curve. After applying an optimal probability cut-off we measured model accuracy, sensitivity, specificity, positive predictive value, and negative predictive value.
Results - 7.0% (n=2,993) of the study population received a red cell transfusion. Our most simple model predicted red cell transfusion based on admission haemoglobin and surgical procedure with a multiply imputed estimated area under the curve of 0.862 (0.856, 0.864). The estimated accuracy, sensitivity, specificity, positive predictive, and negative predictive values at the probability cut-off of 0.4 were 0.934, 0.257, 0.986, 0.573, and 0.946 respectively.
Discussion - A small number of variables available prior to admission can predict red cell transfusion with very good accuracy. Our model can be used to flag high-risk patients most likely to benefit from pre-operative patient blood management measures.

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Authors

Kevin M. Trentino School of Population and Global Health, The University of Western Australia, Perth, Australia; Data and Digital Innovation, East Metropolitan Health Service, Perth, Australia

Frank M. Sanfilippo School of Population and Global Health, The University of Western Australia, Perth, Australia

Michael F. Leahy Department of Haematology, PathWest Laboratory Medicine, Royal Perth Hospital, Perth, Australia; School of Medicine and Pharmacology, The University of Western Australia, Perth, Australia

Shannon L. Farmer Department of Haematology, Royal Perth Hospital, Perth, Australia; Discipline of Surgery, Medical School, The University of Western Australia, Perth, Australia

Hamish Mace Department of Anaesthesia, Pain and Perioperative Medicine, Fiona Stanley Hospital, Murdoch, Australia; Division of Emergency Medicine, The University of Western Australia, Perth, Australia

Adam Lloyd Data and Digital Innovation, East Metropolitan Health Service, Perth, Australia

Kevin Murray School of Population and Global Health, The University of Western Australia, Perth, Australia

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