Patient-Specific Pain Model for Identifying Patients at Risk Following TKA

Author:

Antunes Ricardo1,Jacob Paul2,Marchand Bob3,Justice Elaine2,Taylor Kelly3,Hampp Emily4,Verstraete Matthias5

Affiliation:

1. Stryker (United Kingdom)

2. Oklahoma Joint Reconstruction Institute

3. Ortho Rhode Island

4. Stryker (United States)

5. Stryker (Netherlands)

Abstract

Remote patient monitoring provides clinicians with visibility to patients’ recovery beyond what can be achieved with in clinic visits alone. Patients’ pain management is an important aspect of recovery following total knee arthroplasty (TKA), and one that is increasingly tracked remotely through digital applications. Its timely assessment may provide clinicians with a way to detect postoperative complications. We proposed a patient-specific model that predicts the probability of remotely collected pain scores for TKA patients along a 90-day recovery period, aimed at detecting patients with anomalous pain scores, and enable appropriate interventions by clinicians in a timely manner. We fitted and validated the model with a set of 4,782 remotely collected pain scores for 84 patients that underwent unilateral primary TKA.

Publisher

Charter Services New York d/b/a Journal of Orthopaedic Experience and Innovation

Reference24 articles.

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3. Global nurse shortages—the facts, the impact and action for change;Vari M. Drennan;British Medical Bulletin,2019

4. Hospital Length of Stay following Primary Total Knee Arthroplasty: Data from the Nationwide Inpatient Sample Database;Youssef F. El Bitar;The Journal of Arthroplasty,2015

5. Orthopedic Telemedicine Outpatient Practice Diagnoses Set during the First COVID-19 Pandemic Lockdown—Individual Observation;Wojciech Michał Glinkowski;International Journal of Environmental Research and Public Health,2022

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