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Blood cell differential count discretisation modelling to predict survival in adults reporting to the emergency room: a retrospective cohort study

Authors :
Matteo Locatelli
Massimo Cazzaniga
Riccardo Mario Fumagalli
Marco Chiarelli
Claudio Bonato
Luciano D'Angelo
Luca Cavalieri D'Oro
Mario Cerino
Sabina Terragni
Elisa Lainu
Cristina Lorini
Claudio Scarazzati
Sara Elisabetta Tazzari
Francesca Porro
Simone Aldé
Morena Burati
William Brambilla
Stefano Nattino
Daria Valsecchi
Paolo Spreafico
Valter Tantardini
Gianpaolo Schiavo
Mauro Pietro Zago
Luca Andrea Mario Fumagalli
Source :
BMJ Open, Vol 13, Iss 11 (2023)
Publication Year :
2023
Publisher :
BMJ Publishing Group, 2023.

Abstract

Objectives To assess the survival predictivity of baseline blood cell differential count (BCDC), discretised according to two different methods, in adults visiting an emergency room (ER) for illness or trauma over 1 year.Design Retrospective cohort study of hospital records.Setting Tertiary care public hospital in northern Italy.Participants 11 052 patients aged >18 years, consecutively admitted to the ER in 1 year, and for whom BCDC collection was indicated by ER medical staff at first presentation.Primary outcome Survival was the referral outcome for explorative model development. Automated BCDC analysis at baseline assessed haemoglobin, mean cell volume (MCV), red cell distribution width (RDW), platelet distribution width (PDW), platelet haematocrit (PCT), absolute red blood cells, white blood cells, neutrophils, lymphocytes, monocytes, eosinophils, basophils and platelets. Discretisation cut-offs were defined by benchmark and tailored methods. Benchmark cut-offs were stated based on laboratory reference values (Clinical and Laboratory Standards Institute). Tailored cut-offs for linear, sigmoid-shaped and U-shaped distributed variables were discretised by maximally selected rank statistics and by optimal-equal HR, respectively. Explanatory variables (age, gender, ER admission during SARS-CoV2 surges and in-hospital admission) were analysed using Cox multivariable regression. Receiver operating curves were drawn by summing the Cox-significant variables for each method.Results Of 11 052 patients (median age 67 years, IQR 51–81, 48% female), 59% (n=6489) were discharged and 41% (n=4563) were admitted to the hospital. After a 306-day median follow-up (IQR 208–417 days), 9455 (86%) patients were alive and 1597 (14%) deceased. Increased HRs were associated with age >73 years (HR=4.6, 95% CI=4.0 to 5.2), in-hospital admission (HR=2.2, 95% CI=1.9 to 2.4), ER admission during SARS-CoV2 surges (Wave I: HR=1.7, 95% CI=1.5 to 1.9; Wave II: HR=1.2, 95% CI=1.0 to 1.3). Gender, haemoglobin, MCV, RDW, PDW, neutrophils, lymphocytes and eosinophil counts were significant overall. Benchmark-BCDC model included basophils and platelet count (area under the ROC (AUROC) 0.74). Tailored-BCDC model included monocyte counts and PCT (AUROC 0.79).Conclusions Baseline discretised BCDC provides meaningful insight regarding ER patients’ survival.

Subjects

Subjects :
Medicine

Details

Language :
English
ISSN :
20446055
Volume :
13
Issue :
11
Database :
Directory of Open Access Journals
Journal :
BMJ Open
Publication Type :
Academic Journal
Accession number :
edsdoj.4e8d782ba0bb4476852b8f94dbba6200
Document Type :
article
Full Text :
https://doi.org/10.1136/bmjopen-2023-071937