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Machine Learning-based Model for Predicting Postoperative Complications among Patients with Colonic Perforation: A Retrospective study

OBJECTIVES: Surgery for colonic perforation has high morbidity and mortality rates. Predicting complications preoperatively would help improve short-term outcomes; however, no predictive risk stratification model exists to date. Therefore, the current study aimed to determine risk factors for compli...

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Autores principales: Hosaka, Hiroka, Takeuchi, Masashi, Imoto, Tomohiro, Yagishita, Haruka, Yu, Ayaka, Maeda, Yusuke, Kobayashi, Yosuke, Kadota, Yoshie, Odaira, Masanori, Toriumi, Fumiki, Endo, Takashi, Harada, Hirohisa
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Japan Society of Coloproctology 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8321583/
https://www.ncbi.nlm.nih.gov/pubmed/34395940
http://dx.doi.org/10.23922/jarc.2021-010
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author Hosaka, Hiroka
Takeuchi, Masashi
Imoto, Tomohiro
Yagishita, Haruka
Yu, Ayaka
Maeda, Yusuke
Kobayashi, Yosuke
Kadota, Yoshie
Odaira, Masanori
Toriumi, Fumiki
Endo, Takashi
Harada, Hirohisa
author_facet Hosaka, Hiroka
Takeuchi, Masashi
Imoto, Tomohiro
Yagishita, Haruka
Yu, Ayaka
Maeda, Yusuke
Kobayashi, Yosuke
Kadota, Yoshie
Odaira, Masanori
Toriumi, Fumiki
Endo, Takashi
Harada, Hirohisa
author_sort Hosaka, Hiroka
collection PubMed
description OBJECTIVES: Surgery for colonic perforation has high morbidity and mortality rates. Predicting complications preoperatively would help improve short-term outcomes; however, no predictive risk stratification model exists to date. Therefore, the current study aimed to determine risk factors for complications after colonic perforation surgery and use machine learning to construct a predictive model. METHODS: This retrospective study included 51 patients who underwent emergency surgery for colorectal perforation. We investigated the connection between overall complications and several preoperative indicators, such as lactate and the Glasgow Prognostic Score. Moreover, we used the classification and regression tree (CART), a machine-learning method, to establish an optimal prediction model for complications. RESULTS: Overall complications occurred in 32 patients (62.7%). Multivariate logistic regression analysis identified high lactate levels [odds ratio (OR), 1.86; 95% confidence interval (CI), 1.07-3.22; p = 0.027] and hypoalbuminemia (OR, 2.56; 95% CI, 1.06-6.25; p = 0.036) as predictors of overall complications. According to the CART analysis, the albumin level was the most important parameter, followed by the lactate level. This prediction model had an area under the curve (AUC) of 0.830. CONCLUSIONS: Our results determined that both preoperative albumin and lactate levels were valuable predictors of postoperative complications among patients who underwent colonic perforation surgery. The CART analysis determined optimal cutoff levels with high AUC values to predict complications, making both indicators clinically easier to use for decision making.
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spelling pubmed-83215832021-08-12 Machine Learning-based Model for Predicting Postoperative Complications among Patients with Colonic Perforation: A Retrospective study Hosaka, Hiroka Takeuchi, Masashi Imoto, Tomohiro Yagishita, Haruka Yu, Ayaka Maeda, Yusuke Kobayashi, Yosuke Kadota, Yoshie Odaira, Masanori Toriumi, Fumiki Endo, Takashi Harada, Hirohisa J Anus Rectum Colon Original Research Article OBJECTIVES: Surgery for colonic perforation has high morbidity and mortality rates. Predicting complications preoperatively would help improve short-term outcomes; however, no predictive risk stratification model exists to date. Therefore, the current study aimed to determine risk factors for complications after colonic perforation surgery and use machine learning to construct a predictive model. METHODS: This retrospective study included 51 patients who underwent emergency surgery for colorectal perforation. We investigated the connection between overall complications and several preoperative indicators, such as lactate and the Glasgow Prognostic Score. Moreover, we used the classification and regression tree (CART), a machine-learning method, to establish an optimal prediction model for complications. RESULTS: Overall complications occurred in 32 patients (62.7%). Multivariate logistic regression analysis identified high lactate levels [odds ratio (OR), 1.86; 95% confidence interval (CI), 1.07-3.22; p = 0.027] and hypoalbuminemia (OR, 2.56; 95% CI, 1.06-6.25; p = 0.036) as predictors of overall complications. According to the CART analysis, the albumin level was the most important parameter, followed by the lactate level. This prediction model had an area under the curve (AUC) of 0.830. CONCLUSIONS: Our results determined that both preoperative albumin and lactate levels were valuable predictors of postoperative complications among patients who underwent colonic perforation surgery. The CART analysis determined optimal cutoff levels with high AUC values to predict complications, making both indicators clinically easier to use for decision making. The Japan Society of Coloproctology 2021-07-29 /pmc/articles/PMC8321583/ /pubmed/34395940 http://dx.doi.org/10.23922/jarc.2021-010 Text en Copyright © 2021 by The Japan Society of Coloproctology https://creativecommons.org/licenses/by-nc-nd/4.0/Journal of the Anus, Rectum and Colon is an Open Access journal distributed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License. To view the details of this license, please visit (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Research Article
Hosaka, Hiroka
Takeuchi, Masashi
Imoto, Tomohiro
Yagishita, Haruka
Yu, Ayaka
Maeda, Yusuke
Kobayashi, Yosuke
Kadota, Yoshie
Odaira, Masanori
Toriumi, Fumiki
Endo, Takashi
Harada, Hirohisa
Machine Learning-based Model for Predicting Postoperative Complications among Patients with Colonic Perforation: A Retrospective study
title Machine Learning-based Model for Predicting Postoperative Complications among Patients with Colonic Perforation: A Retrospective study
title_full Machine Learning-based Model for Predicting Postoperative Complications among Patients with Colonic Perforation: A Retrospective study
title_fullStr Machine Learning-based Model for Predicting Postoperative Complications among Patients with Colonic Perforation: A Retrospective study
title_full_unstemmed Machine Learning-based Model for Predicting Postoperative Complications among Patients with Colonic Perforation: A Retrospective study
title_short Machine Learning-based Model for Predicting Postoperative Complications among Patients with Colonic Perforation: A Retrospective study
title_sort machine learning-based model for predicting postoperative complications among patients with colonic perforation: a retrospective study
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8321583/
https://www.ncbi.nlm.nih.gov/pubmed/34395940
http://dx.doi.org/10.23922/jarc.2021-010
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