The likelihood of requiring a diagnostic test: Classifying emergency department patients with logistic regression
Loading...

Date
2022
Authors
Gorkem Sariyer
Mustafa Gökalp Ataman
Journal Title
Journal ISSN
Volume Title
Publisher
SAGE Publications Inc.
Open Access Color
Green Open Access
Yes
OpenAIRE Downloads
OpenAIRE Views
Publicly Funded
No
Abstract
Background: Emergency departments (EDs) play an important role in health systems since they are the front line for patients with emergency medical conditions who frequently require diagnostic tests and timely treatment. Objective: To improve decision-making and accelerate processes in EDs this study proposes predictive models for classifying patients according to whether or not they are likely to require a diagnostic test based on referral diagnosis age gender triage category and type of arrival. Method: Retrospective data were categorised into four output patient groups: not requiring any diagnostic test (group A), requiring a radiology test (group B), requiring a laboratory test (group C), requiring both tests (group D). Multivariable logistic regression models were used with the outcome classifications represented as a series of binary variables: test (1) or no test (0), in the case of group A no test (1) or test (0). Results: For all models age triage category type of arrival and referral diagnosis were significant predictors whereas gender was not. The main referral diagnosis with high model coefficients varied by designed output groups (groups A B C and D). The overall accuracies of the logistic regression models for groups A B C and D were respectively 74.11% 73.07% 82.47% and 85.79%. Specificity metrics were higher than the sensitivities for groups B C and D meaning that these models were better able to predict negative outcomes. Implications: These results provide guidance for ED triage staff researchers and practitioners in making rapid decisions regarding patients’ diagnostic test requirements based on specified variables in the predictive models. This is critical in ED operations planning as it potentially decreases waiting times while increasing patient satisfaction and operational performance. © 2021 Elsevier B.V. All rights reserved.
Description
Keywords
Algorithms, Classification Techniques, Data Analysis, Data Mining, Diagnostic Test, Electronic Medical Records, Emergency Department, Health Information Management, Logistic Regression, Referral Diagnosis, Adult, Algorithm, Article, Case Report, Clinical Article, Data Analysis, Data Mining, Decision Making, Electronic Medical Record, Emergency Health Service, Emergency Ward, Female, Gender, Human, Laboratory Test, Male, Medical Information System, Outcome Assessment, Patient Referral, Patient Satisfaction, Radiology, Retrospective Study, Sensitivity And Specificity, Hospital Emergency Service, Statistical Model, Emergency Service Hospital, Humans, Logistic Models, Retrospective Studies, Triage, adult, algorithm, article, case report, clinical article, data analysis, data mining, decision making, electronic medical record, emergency health service, emergency ward, female, gender, human, laboratory test, male, medical information system, outcome assessment, patient referral, patient satisfaction, radiology, retrospective study, sensitivity and specificity, hospital emergency service, statistical model, Emergency Service Hospital, Humans, Logistic Models, Retrospective Studies, Triage, Logistic Models, Humans, Triage, Emergency Service, Hospital, Retrospective Studies
Fields of Science
03 medical and health sciences, 0302 clinical medicine
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
2
Source
Health Information Management Journal
Volume
51
Issue
Start Page
13
End Page
22
Collections
PlumX Metrics
Citations
CrossRef : 2
Scopus : 5
PubMed : 1
Captures
Mendeley Readers : 38
Google Scholar™


