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Predictors of rapid eye movement sleep behavior disorder in patients with Parkinson’s disease based on random forest and decision tree

BACKGROUND AND OBJECTIVES: Sleep disorders related to Parkinson’s disease (PD) have recently attracted increasing attention, but there are few clinical reports on the correlation of Parkinson’s disease patients with rapid eye movement (REM) sleep behavior disorder (RBD). Therefore, this study conduc...

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Autores principales: Chong-Wen, Wu, Sha-Sha, Li, Xu, E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9202951/
https://www.ncbi.nlm.nih.gov/pubmed/35709163
http://dx.doi.org/10.1371/journal.pone.0269392
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author Chong-Wen, Wu
Sha-Sha, Li
Xu, E.
author_facet Chong-Wen, Wu
Sha-Sha, Li
Xu, E.
author_sort Chong-Wen, Wu
collection PubMed
description BACKGROUND AND OBJECTIVES: Sleep disorders related to Parkinson’s disease (PD) have recently attracted increasing attention, but there are few clinical reports on the correlation of Parkinson’s disease patients with rapid eye movement (REM) sleep behavior disorder (RBD). Therefore, this study conducted a cognitive function examination for Parkinson’s disease patients and discussed the application effect of three algorithms in the screening of influencing factors and risk prediction effects. METHODS: Three algorithms (logistic regression, machine learning-based regression trees and random forest) were used to establish a prediction model for PD-RBD patients, and the application effects of the three algorithms in the screening of influencing factors and the risk prediction of PD-RBD were discussed. RESULTS: The subjects included 169 patients with Parkinson’s disease (Parkinson’s disease with RBD [PD-RBD] = 69 subjects; Parkinson’s disease without RBD [PD-nRBD] = 100 subjects). This study compared the predictive performance of RF, decision tree and logistic regression, selected a final model with the best model performance and proposed the importance of variables in the final model. After the analysis, the accuracy of RF (83.05%) was better than that of the other models (decision tree = 75.10%, logistic regression = 71.62%). PQSI, Scopa-AUT score, MoCA score, MMSE score, AGE, LEDD, PD-course, UPDRS total score, ESS score, NMSQ, disease type, RLSRS, HAMD, UPDRS III and PDOnsetage are the main variables for predicting RBD, along with increased weight. Among them, PQSI is the most important factor. The prediction model of Parkinson’s disease RBD that was established in this study will help in screening out predictive factors and in providing a reference for the prognosis and preventive treatment of PD-RBD patients. CONCLUSIONS: The random forest model had good performance in the prediction and evaluation of PD-RBD influencing factors and was superior to decision tree and traditional logistic regression models in many aspects, which can provide a reference for the prognosis and preventive treatment of PD-RBD patients.
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spelling pubmed-92029512022-06-17 Predictors of rapid eye movement sleep behavior disorder in patients with Parkinson’s disease based on random forest and decision tree Chong-Wen, Wu Sha-Sha, Li Xu, E. PLoS One Research Article BACKGROUND AND OBJECTIVES: Sleep disorders related to Parkinson’s disease (PD) have recently attracted increasing attention, but there are few clinical reports on the correlation of Parkinson’s disease patients with rapid eye movement (REM) sleep behavior disorder (RBD). Therefore, this study conducted a cognitive function examination for Parkinson’s disease patients and discussed the application effect of three algorithms in the screening of influencing factors and risk prediction effects. METHODS: Three algorithms (logistic regression, machine learning-based regression trees and random forest) were used to establish a prediction model for PD-RBD patients, and the application effects of the three algorithms in the screening of influencing factors and the risk prediction of PD-RBD were discussed. RESULTS: The subjects included 169 patients with Parkinson’s disease (Parkinson’s disease with RBD [PD-RBD] = 69 subjects; Parkinson’s disease without RBD [PD-nRBD] = 100 subjects). This study compared the predictive performance of RF, decision tree and logistic regression, selected a final model with the best model performance and proposed the importance of variables in the final model. After the analysis, the accuracy of RF (83.05%) was better than that of the other models (decision tree = 75.10%, logistic regression = 71.62%). PQSI, Scopa-AUT score, MoCA score, MMSE score, AGE, LEDD, PD-course, UPDRS total score, ESS score, NMSQ, disease type, RLSRS, HAMD, UPDRS III and PDOnsetage are the main variables for predicting RBD, along with increased weight. Among them, PQSI is the most important factor. The prediction model of Parkinson’s disease RBD that was established in this study will help in screening out predictive factors and in providing a reference for the prognosis and preventive treatment of PD-RBD patients. CONCLUSIONS: The random forest model had good performance in the prediction and evaluation of PD-RBD influencing factors and was superior to decision tree and traditional logistic regression models in many aspects, which can provide a reference for the prognosis and preventive treatment of PD-RBD patients. Public Library of Science 2022-06-16 /pmc/articles/PMC9202951/ /pubmed/35709163 http://dx.doi.org/10.1371/journal.pone.0269392 Text en © 2022 Chong-Wen et al 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 author and source are credited.
spellingShingle Research Article
Chong-Wen, Wu
Sha-Sha, Li
Xu, E.
Predictors of rapid eye movement sleep behavior disorder in patients with Parkinson’s disease based on random forest and decision tree
title Predictors of rapid eye movement sleep behavior disorder in patients with Parkinson’s disease based on random forest and decision tree
title_full Predictors of rapid eye movement sleep behavior disorder in patients with Parkinson’s disease based on random forest and decision tree
title_fullStr Predictors of rapid eye movement sleep behavior disorder in patients with Parkinson’s disease based on random forest and decision tree
title_full_unstemmed Predictors of rapid eye movement sleep behavior disorder in patients with Parkinson’s disease based on random forest and decision tree
title_short Predictors of rapid eye movement sleep behavior disorder in patients with Parkinson’s disease based on random forest and decision tree
title_sort predictors of rapid eye movement sleep behavior disorder in patients with parkinson’s disease based on random forest and decision tree
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9202951/
https://www.ncbi.nlm.nih.gov/pubmed/35709163
http://dx.doi.org/10.1371/journal.pone.0269392
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