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Predictive Factors of Inpatient Rehabilitation Stay and Post-Discharge Burden of Care After Joint Replacement for Hip and Knee Osteoarthritis: A Retrospective Study on 1678 Patients

Academic Article
Publication Date:
2024
Citation:
Predictive Factors of Inpatient Rehabilitation Stay and Post-Discharge Burden of Care After Joint Replacement for Hip and Knee Osteoarthritis: A Retrospective Study on 1678 Patients / F. Pennestri, V. Tosto, C. Pelosi, D. Grippa, S. Negrini, C. Kiekens, E. Sarasso, G. Banfi, C. Cordani. - In: APPLIED SCIENCES. - ISSN 2076-3417. - 14:24(2024 Dec 21), pp. 11993.1-11993.12. [10.3390/app142411993]
abstract:
The global demand for end-stage hip and knee osteoarthritis surgical treatment is rising, as is the need of optimal postoperative rehabilitation. Patient stratification is key to provide rehabilitation professionals and policy makers with real-life data in support of early discharge planning and continuous care provision. The aim of this retrospective, observational study was to investigate which factors can predict the burden of care at discharge (BCD) and the inpatient rehabilitation length of stay (LOS) based on a set of demographic, societal, clinical and organizational data collected from a high-volume orthopedic hospital. We included 45.306 variables from 1678 patients. All variables were initially tested individually using a linear regression model for inpatient rehabilitation LOS and a logistic regression model for BCD. Variables that resulted significant (p < 0.05) were subsequently considered in a single, comprehensive linear regression model, or a single, logistic regression model, respectively. Age, living with a family, occupational status, baseline Barthel Index and duration of surgery were predictors of inpatient rehabilitation LOS and BCD. Sex, primary or secondary osteoarthritis, American Society of Anesthesiologists score, body mass index, transfusion, biological risk, type of anesthesia, day of surgery, numeric pain rating scale and baseline cognitive function at baseline were not. Including specific patient comorbidities, surgical access technique and chronic use of pharmacological therapy can improve the predictive power of the model.
IRIS type:
01 - Articolo su periodico
Keywords:
aging; arthroplasty; continuity of care; inpatients; osteoarthritis; population health management; rehabilitation
List of contributors:
F. Pennestri, V. Tosto, C. Pelosi, D. Grippa, S. Negrini, C. Kiekens, E. Sarasso, G. Banfi, C. Cordani
Authors of the University:
NEGRINI STEFANO ( author )
Link to information sheet:
https://air.unimi.it/handle/2434/1134675
Full Text:
https://air.unimi.it/retrieve/handle/2434/1134675/2633413/applsci-14-11993.pdf
Project:
Personalized rehabilitation via novel ai patient stratification stategies (PREPARE)
  • Research Areas

Research Areas

Concepts (3)


Settore MEDS-19/A - Malattie dell'apparato locomotore

Settore MEDS-19/B - Medicina fisica e riabilitativa

Settore MEDS-26/C - Scienze delle professioni sanitarie della riabilitazione
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