Development and Validation of PT-PENCIL: The Physical Therapy Frequency Clinical Decision Support Tool to Increase Hospital Discharge to Home.

Abstract

Importance

Identifying patients most likely to benefit from physical therapy in the hospital could aid physical therapists in optimizing treatment allocation for the purpose of increasing discharge to home.

Objective

The aims of this study were to develop and externally validate a predictive model for discharge to home on the basis of physical therapy frequency for patients who were hospitalized.

Design

A predictive model was developed using retrospective cohort data collected between April 2017 and August 2022, with external validation conducted in a separate sample.

Setting

The setting was a large health system.

Participants

Participants were adult patients who were hospitalized and received physical therapy.

Main outcome and measures

Predictors were extracted from the electronic health record and included demographics, clinical characteristics, and therapist-entered variables such as home set-up and prehospital level of function. Physical therapy frequency was quantified as once daily, defined as ≥5 times per week. The outcome was discharge to home. Variables were included in the final multivariable logistic regression model on the basis of associations with physical therapy frequency and/or outcome and clinical relevance. Calibration and discrimination of the models were assessed.

Results

The development sample included 205,659 adult patient (average age = 72.2 [SD = 14.3] years; 55.3% female) hospitalizations, with 52.5% of patients receiving physical therapy daily and an overall proportion of 67.1% being discharged to home. The final multivariable model included 8 variables, with good calibration and discrimination. Internal validity was established with an optimism-corrected concordance statistic of 0.874 (95% CI = 0.872-0.875). The external sample included 102,311 patient (average age = 67.7 [SD = 16.5] years; 50.9% female) admissions, with 64.5% of patients receiving physical therapy daily and 77.8% being discharged to home. Predictive performance was high (calibration slope = 0.908), and discrimination was good (concordance statistic = 0.851).

Conclusions and relevance

This study developed and externally validated the underlying prediction model for a clinical decision support tool, termed Physical Therapy Frequency Clinical Decision Support Tool (PT-PENCIL), to identify patients most likely to benefit from daily physical therapy to discharge to home. Future work will evaluate the implementation of PT-PENCIL to determine its effect on patient-centered outcomes.

Department

Description

Provenance

Subjects

Humans, Patient Discharge, Retrospective Studies, Decision Support Systems, Clinical, Adult, Aged, Aged, 80 and over, Middle Aged, Female, Male, Physical Therapy Modalities

Citation

Published Version (Please cite this version)

10.1093/ptj/pzaf093

Publication Info

Lapin, Brittany, Sandra Passek, Andrew Schuster, Mary Stilphen, Kate Minick, Dave S Collingridge, Beth Hunt, Devyn Woodfield, et al. (2025). Development and Validation of PT-PENCIL: The Physical Therapy Frequency Clinical Decision Support Tool to Increase Hospital Discharge to Home. Physical therapy, 105(9). p. pzaf093. 10.1093/ptj/pzaf093 Retrieved from https://hdl.handle.net/10161/34171.

This is constructed from limited available data and may be imprecise. To cite this article, please review & use the official citation provided by the journal.

Scholars@Duke

Johnson

Joshua Kurt Johnson

Assistant Professor in Orthopaedic Surgery

As a physical therapist researcher, I seek to better understand and improve rehabilitation care delivery using the learning health system framework. This prompts overlap in my work between data science and implementation science. I have the opportunity to use various sources of health data and engage in multiple quantitative and qualitative research methods. My work also lends naturally to partnership with healthcare leaders and clinicians. To facilitate this work, I have several roles at Duke University. In the School of Medicine, I am an Assistant Professor in the Division of Physical Therapy, Department of Orthopaedic Surgery, and Department of Population Health Sciences. I am also the Clinical Research Lead for the Duke University Health System Department of Rehabilitation and a member of the Duke Clinical Research Institute. Prior to joining the faculty at Duke, I was the Director of PM&R Outcomes Research at Cleveland Clinic. My PhD training was at the University of Utah. I hold a Doctor of Physical Therapy degree from Arcadia University and Bachelors degree in Athletic Training from Brigham Young University. 


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