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Machine learning prediction model for treatment responders in patients with primary biliary cholangitis
BACKGROUND AND AIM: Treatment response to ursodeoxycholic acid may predict the prognosis of patients with primary biliary cholangitis (PBC). Recent studies have suggested the benefits of using machine learning (ML) to forecast complex medical predictions. We aimed to predict treatment response in pa...
Autores principales: | , , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Wiley Publishing Asia Pty Ltd
2023
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10290270/ https://www.ncbi.nlm.nih.gov/pubmed/37359114 http://dx.doi.org/10.1002/jgh3.12915 |
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author | Kimura, Naruhiro Takahashi, Kazuya Setsu, Toru Goto, Shu Miida, Suguru Takeda, Nobutaka Kojima, Yuichi Arao, Yoshihisa Hayashi, Kazunao Sakai, Norihiro Watanabe, Yusuke Abe, Hiroyuki Kamimura, Hiroteru Sakamaki, Akira Yokoo, Takeshi Kamimura, Kenya Tsuchiya, Atsunori Terai, Shuji |
author_facet | Kimura, Naruhiro Takahashi, Kazuya Setsu, Toru Goto, Shu Miida, Suguru Takeda, Nobutaka Kojima, Yuichi Arao, Yoshihisa Hayashi, Kazunao Sakai, Norihiro Watanabe, Yusuke Abe, Hiroyuki Kamimura, Hiroteru Sakamaki, Akira Yokoo, Takeshi Kamimura, Kenya Tsuchiya, Atsunori Terai, Shuji |
author_sort | Kimura, Naruhiro |
collection | PubMed |
description | BACKGROUND AND AIM: Treatment response to ursodeoxycholic acid may predict the prognosis of patients with primary biliary cholangitis (PBC). Recent studies have suggested the benefits of using machine learning (ML) to forecast complex medical predictions. We aimed to predict treatment response in patients with PBC using ML and pretreatment data. METHODS: We conducted a single‐center retrospective study and collected data from 194 patients with PBC who were followed up for at least 12 months after treatment initiation. Patient data were analyzed with five ML models, namely random forest, extreme gradient boosting (XGB), decision tree, naïve Bayes, or logistic regression, to predict treatment response using the Paris II criteria. The established models were assessed using an out‐of‐sample validation. The area under the curve (AUC) was used to evaluate the efficacy of each algorithm. Overall survival and liver‐related deaths were analyzed using Kaplan–Meier analysis. RESULTS: Compared to logistic regression (AUC = 0.595, P = 0.0219, 0.031 models), ML analyses showed significantly high AUC in the random forest (AUC = 0.84) and XGB (AUC = 0.83) models; however, the AUC was not significantly high for decision tree (AUC = 0.633) or naïve Bayes (AUC = 0.584) models. Kaplan–Meier analysis showed significantly improved prognoses in patients predicted to achieve the Paris II criteria by XGB (log‐rank = 0.005 and 0.007). CONCLUSION: ML algorithms could improve treatment response prediction using pretreatment data, which could lead to better prognoses. In addition, the ML model using XGB could predict the prognosis of patients before treatment initiation. |
format | Online Article Text |
id | pubmed-10290270 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Wiley Publishing Asia Pty Ltd |
record_format | MEDLINE/PubMed |
spelling | pubmed-102902702023-06-25 Machine learning prediction model for treatment responders in patients with primary biliary cholangitis Kimura, Naruhiro Takahashi, Kazuya Setsu, Toru Goto, Shu Miida, Suguru Takeda, Nobutaka Kojima, Yuichi Arao, Yoshihisa Hayashi, Kazunao Sakai, Norihiro Watanabe, Yusuke Abe, Hiroyuki Kamimura, Hiroteru Sakamaki, Akira Yokoo, Takeshi Kamimura, Kenya Tsuchiya, Atsunori Terai, Shuji JGH Open Original Articles BACKGROUND AND AIM: Treatment response to ursodeoxycholic acid may predict the prognosis of patients with primary biliary cholangitis (PBC). Recent studies have suggested the benefits of using machine learning (ML) to forecast complex medical predictions. We aimed to predict treatment response in patients with PBC using ML and pretreatment data. METHODS: We conducted a single‐center retrospective study and collected data from 194 patients with PBC who were followed up for at least 12 months after treatment initiation. Patient data were analyzed with five ML models, namely random forest, extreme gradient boosting (XGB), decision tree, naïve Bayes, or logistic regression, to predict treatment response using the Paris II criteria. The established models were assessed using an out‐of‐sample validation. The area under the curve (AUC) was used to evaluate the efficacy of each algorithm. Overall survival and liver‐related deaths were analyzed using Kaplan–Meier analysis. RESULTS: Compared to logistic regression (AUC = 0.595, P = 0.0219, 0.031 models), ML analyses showed significantly high AUC in the random forest (AUC = 0.84) and XGB (AUC = 0.83) models; however, the AUC was not significantly high for decision tree (AUC = 0.633) or naïve Bayes (AUC = 0.584) models. Kaplan–Meier analysis showed significantly improved prognoses in patients predicted to achieve the Paris II criteria by XGB (log‐rank = 0.005 and 0.007). CONCLUSION: ML algorithms could improve treatment response prediction using pretreatment data, which could lead to better prognoses. In addition, the ML model using XGB could predict the prognosis of patients before treatment initiation. Wiley Publishing Asia Pty Ltd 2023-06-01 /pmc/articles/PMC10290270/ /pubmed/37359114 http://dx.doi.org/10.1002/jgh3.12915 Text en © 2023 The Authors. JGH Open published by Journal of Gastroenterology and Hepatology Foundation and John Wiley & Sons Australia, Ltd. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made. |
spellingShingle | Original Articles Kimura, Naruhiro Takahashi, Kazuya Setsu, Toru Goto, Shu Miida, Suguru Takeda, Nobutaka Kojima, Yuichi Arao, Yoshihisa Hayashi, Kazunao Sakai, Norihiro Watanabe, Yusuke Abe, Hiroyuki Kamimura, Hiroteru Sakamaki, Akira Yokoo, Takeshi Kamimura, Kenya Tsuchiya, Atsunori Terai, Shuji Machine learning prediction model for treatment responders in patients with primary biliary cholangitis |
title | Machine learning prediction model for treatment responders in patients with primary biliary cholangitis |
title_full | Machine learning prediction model for treatment responders in patients with primary biliary cholangitis |
title_fullStr | Machine learning prediction model for treatment responders in patients with primary biliary cholangitis |
title_full_unstemmed | Machine learning prediction model for treatment responders in patients with primary biliary cholangitis |
title_short | Machine learning prediction model for treatment responders in patients with primary biliary cholangitis |
title_sort | machine learning prediction model for treatment responders in patients with primary biliary cholangitis |
topic | Original Articles |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10290270/ https://www.ncbi.nlm.nih.gov/pubmed/37359114 http://dx.doi.org/10.1002/jgh3.12915 |
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