Development of a Machine Learning-Based Model to Predict Timed-Up-and-Go Test in Older Adults.
Moritz KrausUlla Cordula StumpfAlexander Martin KepplerCarl NeuerburgWolfgang BöckerHenning WackerhageSebastian Felix BaumbachMaximilian Michael SallerPublished in: Geriatrics (Basel, Switzerland) (2023)
Our findings demonstrate the feasibility of predicting the TUG test time using a machine learning model that does not depend on mobility data. This establishes a basis for identifying patients at risk automatically and objectively assessing the physical capacity of currently immobilized patients. Such advancements could significantly contribute to enhancing patient care and treatment planning in orthogeriatric settings.