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Optimizing Hospital-wide Patient Scheduling electronic resource Early Classification of Diagnosis-related Groups Through Machine Learning / by Daniel Gartner.

By: Gartner, Daniel [author.]Contributor(s): SpringerLink (Online service)Material type: TextTextSeries: Lecture Notes in Economics and Mathematical SystemsPublication details: Cham : Springer International Publishing : Imprint: Springer, 2014Description: XIV, 119 p. 22 illus. online resourceContent type: text Media type: computer Carrier type: online resourceISBN: 9783319040660Subject(s): Economics | Medical records -- Data processing | Operations research | Economics/Management Science | Operation Research/Decision Theory | Health Informatics | Health Informatics | Operations Research, Management Science | Health Care ManagementDDC classification: 658.40301 LOC classification: HD30.23Online resources: Click here to access online
Contents:
Introduction -- Machine learning for early DRG classification -- Scheduling the hospital-wide flow of elective patients -- Experimental analyses -- Conclusion.
In: Springer eBooksSummary: Diagnosis-related groups (DRGs) are used in hospitals for the reimbursement of inpatient services. The assignment of a patient to a DRG can be distinguished into billing- and operations-driven DRG classification. The topic of this monograph is operations-driven DRG classification, in which DRGs of inpatients are employed to improve contribution margin-based patient scheduling decisions. In the first part, attribute selection and classification techniques are evaluated in order to increase early DRG classification accuracy. Employing mathematical programming, the hospital-wide flow of elective patients is modelled taking into account DRGs, clinical pathways and scarce hospital resources. The results of the early DRG classification part reveal that a small set of attributes is sufficient in order to substantially improve DRG classification accuracy as compared to the current approach of many hospitals. Moreover, the results of the patient scheduling part reveal that the contribution margin can be increased as compared to current practice.
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Introduction -- Machine learning for early DRG classification -- Scheduling the hospital-wide flow of elective patients -- Experimental analyses -- Conclusion.

Diagnosis-related groups (DRGs) are used in hospitals for the reimbursement of inpatient services. The assignment of a patient to a DRG can be distinguished into billing- and operations-driven DRG classification. The topic of this monograph is operations-driven DRG classification, in which DRGs of inpatients are employed to improve contribution margin-based patient scheduling decisions. In the first part, attribute selection and classification techniques are evaluated in order to increase early DRG classification accuracy. Employing mathematical programming, the hospital-wide flow of elective patients is modelled taking into account DRGs, clinical pathways and scarce hospital resources. The results of the early DRG classification part reveal that a small set of attributes is sufficient in order to substantially improve DRG classification accuracy as compared to the current approach of many hospitals. Moreover, the results of the patient scheduling part reveal that the contribution margin can be increased as compared to current practice.

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