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dc.contributor.authorSariyer, G.
dc.contributor.authorAtaman, M.G.
dc.date.accessioned2022-04-11T07:09:17Z
dc.date.available2022-04-11T07:09:17Z
dc.date.issued2021
dc.identifier.issn1368-5031
dc.identifier.urihttps://dspace.yasar.edu.tr/xmlui/handle/20.500.12742/18569
dc.description.abstractObjectives: Since emergency departments (EDs) are responsible for providing initial care for patients who may need urgent medical care, they are highly sensitive to increased patient delays. A key factor that increases patient delays is ordering diagnostic tests. Therefore, understanding the factors increasing diagnostic test orders and proposing efficient models may facilitate decision making in EDs. Methods: Month and week of the year, day of the week, and daily numbers of patients encoded based on 21 different ICD-10 codes were used as input variables. Daily test frequencies of patients requiring tests from laboratory and imaging services were modelled separately by linear regression models. Although significance of the input variables was identified based on these models, obtained forecasts and residuals were further processed by machine learning techniques to obtain hybrid models. Results: Day of the week, and number of patients with ICD-10 codes of ‘A00-B99’, ‘I00-I99’, ‘J00-J99’, ‘M00-M99’ and ‘R00-R99’ were significant in both test types. In addition to these, although daily patient frequencies with ‘H60-H95’, ‘N00-N99’ and ‘O00-O9A’ were significant for laboratory services, ‘L00-L99’, ‘S00-T88’ and ‘Z00-Z99’ were significant for imaging services. Although prediction accuracies of regression models were, respectively, as 93.658% and 95.028% for laboratory and imaging services modelling, they increased to 99.997% and 99.995% with the machine learning-integrated hybrid model. Conclusion: The significant factors identified here can predict increases in use of laboratory and imaging services. This could enable these services to be prepared in advance to reduce ED patient delays, thereby reducing ED overcrowding. The proposed model may also be efficiently used for decision making.en_US
dc.language.isoEnglishen_US
dc.publisherWileyen_US
dc.rightsinfo:eu-repo/semantics/openAccessen_US
dc.rightsAttribution-NonCommercial-NoDerivs 3.0 United States*
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/3.0/us/*
dc.titleHow machine learning facilitates decision making in emergency departments: Modelling diagnostic test ordersen_US
dc.typeArticleen_US
dc.relation.journalInternational Journal of Clinical Practiceen_US
dc.identifier.doi10.1111/ijcp.14980en_US
dc.contributor.departmentDepartment of Businessen_US
dc.identifier.issue75en_US
dc.identifier.volume12en_US
dc.identifier.woshttps://www.webofscience.com/wos/woscc/full-record/WOS:000709095400001?AlertId=fc1c72a7-b080-4d60-92a3-edbe4aa40157&SID=EUW1ED0C37lufwLPnXP84YUPHm4FPen_US
dc.identifier.scopushttps://www.scopus.com/record/display.uri?eid=2-s2.0-85117460801&origin=resultslist&sort=plf-f&src=s&st1=How+machine+learning+facilitates+decision+making+in+emergency+departments%3a+Modelling+diagnostic+test+orders&sid=a88da4ed723deb936a5000f0daa806a8&sot=b&sdt=b&sl=122&s=TITLE-ABS-KEY%28How+machine+learning+facilitates+decision+making+in+emergency+departments%3a+Modelling+diagnostic+test+orders%29&relpos=0&citeCnt=0&searchTerm=&featureToggles=FEATURE_NEW_DOC_DETAILS_EXPORT:1en_US
dc.contributor.yasarauthor0000-0002-8290-2248: Görkem Ataman Sarıyeren_US


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