Anupam Chandra1, Parvez A Rahman2, Amelia Sneve3, Rozalina G McCoy4, Bjorg Thorsteinsdottir3, Rajeev Chaudhry3, Curtis B Storlie5, Dennis H Murphree5, Gregory J Hanson3, Paul Y Takahashi3. 1. Division of Primary Care Internal Medicine, Mayo Clinic, Rochester, MN. Electronic address: chandra.anupam@mayo.edu. 2. Robert D. and Patricia E. Kern Center for Science of Health Care Delivery, Mayo Clinic, Rochester, MN. 3. Division of Primary Care Internal Medicine, Mayo Clinic, Rochester, MN. 4. Division of Primary Care Internal Medicine, Mayo Clinic, Rochester, MN; Division of Health Care Policy and Research, Mayo Clinic, Rochester, MN. 5. Division of Biomedical Statistics and Informatics, Mayo Clinic, Rochester, MN.
Abstract
OBJECTIVES: Patients discharged to a skilled nursing facility (SNF) for post-acute care have a high risk of hospital readmission. We aimed to develop and validate a risk-prediction model to prospectively quantify the risk of 30-day hospital readmission at the time of discharge to a SNF. DESIGN: Retrospective cohort study. SETTING: Ten independent SNFs affiliated with the post-acute care practice of an integrated health care delivery system. PARTICIPANTS: We evaluated 6032 patients who were discharged to SNFs for post-acute care after hospitalization. MEASUREMENTS: The primary outcome was all-cause 30-day hospital readmission. Patient demographics, medical comorbidity, prior use of health care, and clinical parameters during the index hospitalization were analyzed by using gradient boosting machine multivariable analysis to build a predictive model for 30-day hospital readmission. Area under the receiver operating characteristic curve (AUC) was assessed on out-of-sample observations under 10-fold cross-validation. RESULTS: Among 8616 discharges to SNFs from January 1, 2009, through June 30, 2014, a total of 1568 (18.2%) were readmitted to the hospital within 30 days. The 30-day hospital readmission prediction model had an AUC of 0.69, a 16% improvement over risk assessment using the Charlson Comorbidity Index alone. The final model included length of stay, abnormal laboratory parameters, and need for intensive care during the index hospitalization; comorbid status; and number of emergency department and hospital visits within the preceding 6 months. CONCLUSIONS AND IMPLICATIONS: We developed and validated a risk-prediction model for 30-day hospital readmission in patients discharged to a SNF for post-acute care. This prediction tool can be used to risk stratify the complex population of hospitalized patients who are discharged to SNFs to prioritize interventions and potentially improve the quality, safety, and cost-effectiveness of care.
OBJECTIVES:Patients discharged to a skilled nursing facility (SNF) for post-acute care have a high risk of hospital readmission. We aimed to develop and validate a risk-prediction model to prospectively quantify the risk of 30-day hospital readmission at the time of discharge to a SNF. DESIGN: Retrospective cohort study. SETTING: Ten independent SNFs affiliated with the post-acute care practice of an integrated health care delivery system. PARTICIPANTS: We evaluated 6032 patients who were discharged to SNFs for post-acute care after hospitalization. MEASUREMENTS: The primary outcome was all-cause 30-day hospital readmission. Patient demographics, medical comorbidity, prior use of health care, and clinical parameters during the index hospitalization were analyzed by using gradient boosting machine multivariable analysis to build a predictive model for 30-day hospital readmission. Area under the receiver operating characteristic curve (AUC) was assessed on out-of-sample observations under 10-fold cross-validation. RESULTS: Among 8616 discharges to SNFs from January 1, 2009, through June 30, 2014, a total of 1568 (18.2%) were readmitted to the hospital within 30 days. The 30-day hospital readmission prediction model had an AUC of 0.69, a 16% improvement over risk assessment using the Charlson Comorbidity Index alone. The final model included length of stay, abnormal laboratory parameters, and need for intensive care during the index hospitalization; comorbid status; and number of emergency department and hospital visits within the preceding 6 months. CONCLUSIONS AND IMPLICATIONS: We developed and validated a risk-prediction model for 30-day hospital readmission in patients discharged to a SNF for post-acute care. This prediction tool can be used to risk stratify the complex population of hospitalized patients who are discharged to SNFs to prioritize interventions and potentially improve the quality, safety, and cost-effectiveness of care.
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Authors: Anupam Chandra; Paul Y Takahashi; Rozalina G McCoy; Bjoerg Thorsteinsdottir; Gregory J Hanson; Rajeev Chaudhry; Parvez A Rahman; Curtis B Storlie; Dennis H Murphree Journal: J Am Med Dir Assoc Date: 2022-02-25 Impact factor: 7.802
Authors: Paul Y Takahashi; Anupam Chandra; Rozalina G McCoy; Lynn S Borkenhagen; Mary E Larson; Bjorg Thorsteinsdottir; Joel A Hickman; Kristi M Swanson; Gregory J Hanson; James M Naessens Journal: J Am Med Dir Assoc Date: 2021-05-11 Impact factor: 4.669
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