Covid-19 triage in the emergency department 2.0: how analytics and AI transform a human-made algorithm for the prediction of clinical pathways
-
Published:2023-07-10
Issue:3
Volume:26
Page:412-429
-
ISSN:1386-9620
-
Container-title:Health Care Management Science
-
language:en
-
Short-container-title:Health Care Manag Sci
Author:
Bartenschlager Christina C., Grieger Milena, Erber Johanna, Neidel Tobias, Borgmann Stefan, Vehreschild Jörg J., Steinbrecher Markus, Rieg Siegbert, Stecher Melanie, Dhillon Christine, Ruethrich Maria M., Jakob Carolin E. M., Hower Martin, Heller Axel R., Vehreschild Maria, Wyen Christoph, Messmann Helmut, Piepel Christiane, Brunner Jens O.ORCID, Hanses Frank, Römmele Christoph, Spinner Christoph, Ruethrich Maria Madeleine, Lanznaster Julia, Römmele Christoph, Wille Kai, Tometten Lukas, Dolff Sebastian, von Bergwelt-Baildon Michael, Merle Uta, Rothfuss Katja, Isberner Nora, Jung Norma, Göpel Siri, vom Dahl Juergen, Degenhardt Christian, Strauss Richard, Gruener Beate, Eberwein Lukas, Hellwig Kerstin, Rauschning Dominic, Neufang Mark, Westhoff Timm, Raichle Claudia, Akova Murat, Jensen Bjoern-Erik, Schubert Joerg, Grunwald Stephan, Friedrichs Anette, Trauth Janina, de With Katja, Guggemos Wolfgang, Kielstein Jan, Heigener David, Markart Philipp, Bals Robert, Stieglitz Sven, Voigt Ingo, Taubel Jorg, Milovanovic Milena,
Abstract
Abstract
The Covid-19 pandemic has pushed many hospitals to their capacity limits. Therefore, a triage of patients has been discussed controversially primarily through an ethical perspective. The term triage contains many aspects such as urgency of treatment, severity of the disease and pre-existing conditions, access to critical care, or the classification of patients regarding subsequent clinical pathways starting from the emergency department. The determination of the pathways is important not only for patient care, but also for capacity planning in hospitals. We examine the performance of a human-made triage algorithm for clinical pathways which is considered a guideline for emergency departments in Germany based on a large multicenter dataset with over 4,000 European Covid-19 patients from the LEOSS registry. We find an accuracy of 28 percent and approximately 15 percent sensitivity for the ward class. The results serve as a benchmark for our extensions including an additional category of palliative care as a new label, analytics, AI, XAI, and interactive techniques. We find significant potential of analytics and AI in Covid-19 triage regarding accuracy, sensitivity, and other performance metrics whilst our interactive human-AI algorithm shows superior performance with approximately 73 percent accuracy and up to 76 percent sensitivity. The results are independent of the data preparation process regarding the imputation of missing values or grouping of comorbidities. In addition, we find that the consideration of an additional label palliative care does not improve the results.
Funder
Deutsches Zentrum für Infektionsforschung Willy Robert Pitzer Foundation Universität Augsburg
Publisher
Springer Science and Business Media LLC
Subject
General Health Professions,Medicine (miscellaneous)
Reference49 articles.
1. Arballa N, Al-Turaiki I (2021) Machine learning approaches in COVID-19 diagnosis, mortality, and severity risk prediction: a review. Informatics in Medicine Unlocked. Online First 2. Ardabili SF, Mosavi A, Ghamisi P, Ferdinand F, Varkonyi-Koczy AR, Reuter U, Rabczuk T, Atkinson PM (2020) COVID-19 outbreak prediction with machine learning. Algorithms 13(10):1–36 3. Arrieta AB, Díaz-Rodríguez N, Del Ser J, Bennetot A, Tabik S, Barbado A, Garcia S, Gil-Lopez S, Molina D, Benjamins R, Chatila R, Herrera F (2020) Explainable Artificial Intelligence (XAI): Concepts, taxonomies, opportunities and challenges toward responsible AI. Inf Fusion 58:82–115 4. Azad-Khaneghah P, Neubauer N, Cruz AM, Liu L (2021) Mobile health app usability and quality rating scales: a systematic review. Disabil Rehabil Assist Technol 16(7):712–721 5. Bartenschlager CC, Ebel SS, Kling S, Vehreschild J, Zabel LT, Spinner CD, Schuler A, Heller AR, Borgmann S, Hoffmann R, Rieg S, Messmann H, Hower M, Brunner JO, Hanses F, Römmele C (2022) COVIDAL: a machine learning classifier for digital COVID-19 diagnosis in German hospitals, Working paper, University of Augsburg
Cited by
7 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|