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Predicting Falls in Long-term Care Facilities: Machine Learning Study

BACKGROUND: Short-term fall prediction models that use electronic health records (EHRs) may enable the implementation of dynamic care practices that specifically address changes in individualized fall risk within senior care facilities. OBJECTIVE: The aim of this study is to implement machine learni...

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Autores principales: Thapa, Rahul, Garikipati, Anurag, Shokouhi, Sepideh, Hurtado, Myrna, Barnes, Gina, Hoffman, Jana, Calvert, Jacob, Katzmann, Lynne, Mao, Qingqing, Das, Ritankar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9015781/
https://www.ncbi.nlm.nih.gov/pubmed/35363146
http://dx.doi.org/10.2196/35373
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author Thapa, Rahul
Garikipati, Anurag
Shokouhi, Sepideh
Hurtado, Myrna
Barnes, Gina
Hoffman, Jana
Calvert, Jacob
Katzmann, Lynne
Mao, Qingqing
Das, Ritankar
author_facet Thapa, Rahul
Garikipati, Anurag
Shokouhi, Sepideh
Hurtado, Myrna
Barnes, Gina
Hoffman, Jana
Calvert, Jacob
Katzmann, Lynne
Mao, Qingqing
Das, Ritankar
author_sort Thapa, Rahul
collection PubMed
description BACKGROUND: Short-term fall prediction models that use electronic health records (EHRs) may enable the implementation of dynamic care practices that specifically address changes in individualized fall risk within senior care facilities. OBJECTIVE: The aim of this study is to implement machine learning (ML) algorithms that use EHR data to predict a 3-month fall risk in residents from a variety of senior care facilities providing different levels of care. METHODS: This retrospective study obtained EHR data (2007-2021) from Juniper Communities’ proprietary database of 2785 individuals primarily residing in skilled nursing facilities, independent living facilities, and assisted living facilities across the United States. We assessed the performance of 3 ML-based fall prediction models and the Juniper Communities’ fall risk assessment. Additional analyses were conducted to examine how changes in the input features, training data sets, and prediction windows affected the performance of these models. RESULTS: The Extreme Gradient Boosting model exhibited the highest performance, with an area under the receiver operating characteristic curve of 0.846 (95% CI 0.794-0.894), specificity of 0.848, diagnostic odds ratio of 13.40, and sensitivity of 0.706, while achieving the best trade-off in balancing true positive and negative rates. The number of active medications was the most significant feature associated with fall risk, followed by a resident’s number of active diseases and several variables associated with vital signs, including diastolic blood pressure and changes in weight and respiratory rates. The combination of vital signs with traditional risk factors as input features achieved higher prediction accuracy than using either group of features alone. CONCLUSIONS: This study shows that the Extreme Gradient Boosting technique can use a large number of features from EHR data to make short-term fall predictions with a better performance than that of conventional fall risk assessments and other ML models. The integration of routinely collected EHR data, particularly vital signs, into fall prediction models may generate more accurate fall risk surveillance than models without vital signs. Our data support the use of ML models for dynamic, cost-effective, and automated fall predictions in different types of senior care facilities.
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spelling pubmed-90157812022-04-19 Predicting Falls in Long-term Care Facilities: Machine Learning Study Thapa, Rahul Garikipati, Anurag Shokouhi, Sepideh Hurtado, Myrna Barnes, Gina Hoffman, Jana Calvert, Jacob Katzmann, Lynne Mao, Qingqing Das, Ritankar JMIR Aging Original Paper BACKGROUND: Short-term fall prediction models that use electronic health records (EHRs) may enable the implementation of dynamic care practices that specifically address changes in individualized fall risk within senior care facilities. OBJECTIVE: The aim of this study is to implement machine learning (ML) algorithms that use EHR data to predict a 3-month fall risk in residents from a variety of senior care facilities providing different levels of care. METHODS: This retrospective study obtained EHR data (2007-2021) from Juniper Communities’ proprietary database of 2785 individuals primarily residing in skilled nursing facilities, independent living facilities, and assisted living facilities across the United States. We assessed the performance of 3 ML-based fall prediction models and the Juniper Communities’ fall risk assessment. Additional analyses were conducted to examine how changes in the input features, training data sets, and prediction windows affected the performance of these models. RESULTS: The Extreme Gradient Boosting model exhibited the highest performance, with an area under the receiver operating characteristic curve of 0.846 (95% CI 0.794-0.894), specificity of 0.848, diagnostic odds ratio of 13.40, and sensitivity of 0.706, while achieving the best trade-off in balancing true positive and negative rates. The number of active medications was the most significant feature associated with fall risk, followed by a resident’s number of active diseases and several variables associated with vital signs, including diastolic blood pressure and changes in weight and respiratory rates. The combination of vital signs with traditional risk factors as input features achieved higher prediction accuracy than using either group of features alone. CONCLUSIONS: This study shows that the Extreme Gradient Boosting technique can use a large number of features from EHR data to make short-term fall predictions with a better performance than that of conventional fall risk assessments and other ML models. The integration of routinely collected EHR data, particularly vital signs, into fall prediction models may generate more accurate fall risk surveillance than models without vital signs. Our data support the use of ML models for dynamic, cost-effective, and automated fall predictions in different types of senior care facilities. JMIR Publications 2022-04-01 /pmc/articles/PMC9015781/ /pubmed/35363146 http://dx.doi.org/10.2196/35373 Text en ©Rahul Thapa, Anurag Garikipati, Sepideh Shokouhi, Myrna Hurtado, Gina Barnes, Jana Hoffman, Jacob Calvert, Lynne Katzmann, Qingqing Mao, Ritankar Das. Originally published in JMIR Aging (https://aging.jmir.org), 01.04.2022. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Aging, is properly cited. The complete bibliographic information, a link to the original publication on https://aging.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Thapa, Rahul
Garikipati, Anurag
Shokouhi, Sepideh
Hurtado, Myrna
Barnes, Gina
Hoffman, Jana
Calvert, Jacob
Katzmann, Lynne
Mao, Qingqing
Das, Ritankar
Predicting Falls in Long-term Care Facilities: Machine Learning Study
title Predicting Falls in Long-term Care Facilities: Machine Learning Study
title_full Predicting Falls in Long-term Care Facilities: Machine Learning Study
title_fullStr Predicting Falls in Long-term Care Facilities: Machine Learning Study
title_full_unstemmed Predicting Falls in Long-term Care Facilities: Machine Learning Study
title_short Predicting Falls in Long-term Care Facilities: Machine Learning Study
title_sort predicting falls in long-term care facilities: machine learning study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9015781/
https://www.ncbi.nlm.nih.gov/pubmed/35363146
http://dx.doi.org/10.2196/35373
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