Assessing risk of hospital readmissions for improving medical practice
Insurance, Health
Decision Trees
Age Factors
Environment
Length of Stay
Middle Aged
Patient Readmission
Risk Assessment
Severity of Illness Index
Patient Discharge
3. Good health
03 medical and health sciences
Logistic Models
0302 clinical medicine
Hospital Bed Capacity
Risk Factors
Humans
Medicine
Neural Networks, Computer
Aged
DOI:
10.1007/s10729-015-9323-5
Publication Date:
2015-04-15T09:43:32Z
AUTHORS (3)
ABSTRACT
We compare statistical approaches for predicting the likelihood that individual patients will require readmission to hospital within 30 days of their discharge and for setting quality-control standards in that regard. Logistic regression, neural networks and decision trees are found to have comparable discriminating power when applied to cases that were not used to calibrate the respective models. Significant factors for predicting likelihood of readmission are the patient's medical condition upon admission and discharge, length (days) of the hospital visit, care rendered during the hospital stay, size and role of the medical facility, the type of medical insurance, and the environment into which the patient is discharged. Separately constructed models for major medical specialties (Surgery/Gynecology, Cardiorespiratory, Cardiovascular, Neurology, and Medicine) can improve the ability to identify high-risk patients for possible intervention, while consolidated models (with indicator variables for the specialties) can serve well for assessing overall quality of care.
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