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Development of a Machine Learning-Based Model to Predict Timed-Up-and-Go Test in Older Adults

Introduction: The measurement of physical frailty in elderly patients with orthopedic impairments remains a challenge due to its subjectivity, unreliability, time-consuming nature, and limited applicability to uninjured individuals. Our study aims to address this gap by developing objective, multifa...

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Autores principales: Kraus, Moritz, Stumpf, Ulla Cordula, Keppler, Alexander Martin, Neuerburg, Carl, Böcker, Wolfgang, Wackerhage, Henning, Baumbach, Sebastian Felix, Saller, Maximilian Michael
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10606325/
https://www.ncbi.nlm.nih.gov/pubmed/37887972
http://dx.doi.org/10.3390/geriatrics8050099
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author Kraus, Moritz
Stumpf, Ulla Cordula
Keppler, Alexander Martin
Neuerburg, Carl
Böcker, Wolfgang
Wackerhage, Henning
Baumbach, Sebastian Felix
Saller, Maximilian Michael
author_facet Kraus, Moritz
Stumpf, Ulla Cordula
Keppler, Alexander Martin
Neuerburg, Carl
Böcker, Wolfgang
Wackerhage, Henning
Baumbach, Sebastian Felix
Saller, Maximilian Michael
author_sort Kraus, Moritz
collection PubMed
description Introduction: The measurement of physical frailty in elderly patients with orthopedic impairments remains a challenge due to its subjectivity, unreliability, time-consuming nature, and limited applicability to uninjured individuals. Our study aims to address this gap by developing objective, multifactorial machine models that do not rely on mobility data and subsequently validating their predictive capacity concerning the Timed-up-and-Go test (TUG test) in orthogeriatric patients. Methods: We utilized 67 multifactorial non-mobility parameters in a pre-processing phase, employing six feature selection algorithms. Subsequently, these parameters were used to train four distinct machine learning algorithms, including a generalized linear model, a support vector machine, a random forest algorithm, and an extreme gradient boost algorithm. The primary goal was to predict the time required for the TUG test without relying on mobility data. Results: The random forest algorithm yielded the most accurate estimations of the TUG test time. The best-performing algorithm demonstrated a mean absolute error of 2.7 s, while the worst-performing algorithm exhibited an error of 7.8 s. The methodology used for variable selection appeared to exert minimal influence on the overall performance. It is essential to highlight that all the employed algorithms tended to overestimate the time for quick patients and underestimate it for slower patients. Conclusion: 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.
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spelling pubmed-106063252023-10-28 Development of a Machine Learning-Based Model to Predict Timed-Up-and-Go Test in Older Adults Kraus, Moritz Stumpf, Ulla Cordula Keppler, Alexander Martin Neuerburg, Carl Böcker, Wolfgang Wackerhage, Henning Baumbach, Sebastian Felix Saller, Maximilian Michael Geriatrics (Basel) Article Introduction: The measurement of physical frailty in elderly patients with orthopedic impairments remains a challenge due to its subjectivity, unreliability, time-consuming nature, and limited applicability to uninjured individuals. Our study aims to address this gap by developing objective, multifactorial machine models that do not rely on mobility data and subsequently validating their predictive capacity concerning the Timed-up-and-Go test (TUG test) in orthogeriatric patients. Methods: We utilized 67 multifactorial non-mobility parameters in a pre-processing phase, employing six feature selection algorithms. Subsequently, these parameters were used to train four distinct machine learning algorithms, including a generalized linear model, a support vector machine, a random forest algorithm, and an extreme gradient boost algorithm. The primary goal was to predict the time required for the TUG test without relying on mobility data. Results: The random forest algorithm yielded the most accurate estimations of the TUG test time. The best-performing algorithm demonstrated a mean absolute error of 2.7 s, while the worst-performing algorithm exhibited an error of 7.8 s. The methodology used for variable selection appeared to exert minimal influence on the overall performance. It is essential to highlight that all the employed algorithms tended to overestimate the time for quick patients and underestimate it for slower patients. Conclusion: 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. MDPI 2023-10-07 /pmc/articles/PMC10606325/ /pubmed/37887972 http://dx.doi.org/10.3390/geriatrics8050099 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Kraus, Moritz
Stumpf, Ulla Cordula
Keppler, Alexander Martin
Neuerburg, Carl
Böcker, Wolfgang
Wackerhage, Henning
Baumbach, Sebastian Felix
Saller, Maximilian Michael
Development of a Machine Learning-Based Model to Predict Timed-Up-and-Go Test in Older Adults
title Development of a Machine Learning-Based Model to Predict Timed-Up-and-Go Test in Older Adults
title_full Development of a Machine Learning-Based Model to Predict Timed-Up-and-Go Test in Older Adults
title_fullStr Development of a Machine Learning-Based Model to Predict Timed-Up-and-Go Test in Older Adults
title_full_unstemmed Development of a Machine Learning-Based Model to Predict Timed-Up-and-Go Test in Older Adults
title_short Development of a Machine Learning-Based Model to Predict Timed-Up-and-Go Test in Older Adults
title_sort development of a machine learning-based model to predict timed-up-and-go test in older adults
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10606325/
https://www.ncbi.nlm.nih.gov/pubmed/37887972
http://dx.doi.org/10.3390/geriatrics8050099
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