4.6 Article

AMPREDICT PROsthetics-Predicting Prosthesis Mobility to Aid in Prosthetic Prescription and Rehabilitation Planning

Journal

ARCHIVES OF PHYSICAL MEDICINE AND REHABILITATION
Volume 104, Issue 4, Pages 523-532

Publisher

W B SAUNDERS CO-ELSEVIER INC
DOI: 10.1016/j.apmr.2022.11.014

Keywords

Amputation; Lower extremity; Peripheral artery disease; Prosthe-sis; Rehabilitation

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This study developed and validated a patient-specific multivariable prediction model to predict 12-month mobility at the time of initial post-amputation prosthetic prescription. The model is designed for patients who have undergone transtibial or transfemoral amputation due to complications of diabetes and/or peripheral artery disease. The study used retrospective data from a large Veteran's Affairs dataset and prospectively collected patient-reported mobility.
Objective: To develop and validate a patient-specific multivariable prediction model that uses variables readily available in the electronic medical record to predict 12-month mobility at the time of initial post-amputation prosthetic prescription. The prediction model is designed for patients who have undergone their initial transtibial (TT) or transfemoral (TF) amputation because of complications of diabetes and/or peripheral artery disease.Design: Multi-methodology cohort study that identified patients retrospectively through a large Veteran's Affairs (VA) dataset then prospectively collected their patient-reported mobility.Setting: The VA Corporate Data Warehouse, the National Prosthetics Patient Database, participant mailings, and phone calls. Participants: Three-hundred fifty-seven veterans who underwent an incident dysvascular TT or TF amputation and received a qualifying lower limb prosthesis between March 1, 2018, and November 30, 2020 (N=357). Interventions: Not applicable.Main Outcome Measure: The Amputee Single Item Mobility Measure (AMPSIMM) was divided into a 4-category outcome to predict wheelchair mobility (0-2), and household (3), basic community (4), or advanced community ambulation (5-6).Results: Multinomial logistic lasso regression, a machine learning methodology designed to select variables that most contribute to prediction while controlling for overfitting, led to a final model including 23 predictors of the 4-category AMPSIMM outcome that effectively discriminates household ambulation from basic community ambulation and from advanced community ambulation-levels of key clinical importance when estimating future prosthetic demands. The overall model performance was modest as it did not discriminate wheelchair from household mobility as effectively. Conclusions: The AMPREDICT PROsthetics model can assist providers in estimating individual patients' future mobility at the time of prosthetic prescription, thereby aiding in the formulation of appropriate mobility goals, as well as facilitating the prescription of a prosthetic device that is most appropriate for anticipated functional goals. Archives of Physical Medicine and Rehabilitation 2023;104:523-32 (c) 2023 Published by Elsevier Inc. on behalf of the American Congress of Rehabilitation Medicine

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