Systematic Review of Machine Learning Models in Predicting the Risk of Bleed/Grade of Esophageal Varices in Patients with Liver Cirrhosis: A Comprehensive Methodological Analysis

Esophageal varices (EV) in liver cirrhosis carry high mortality risks. Traditional endoscopy, which is costly and subjective, prompts a shift towards machine learning (ML). This review critically evaluates ML applications in predicting bleeding risks and grading EV in patients with liver cirrhosis....

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Main Authors: Malik, Sheza, Tenorio, Bettina Gabrielle, Moond, Vishali, Dahiya, Dushyant Singh, Vora, Ravi, Dbouk, Nader
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Published: Archīum Ateneo 2024
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Online Access:https://archium.ateneo.edu/asmph-pubs/262
https://doi.org/10.1111/jgh.16645
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Institution: Ateneo De Manila University
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spelling ph-ateneo-arc.asmph-pubs-12662024-09-19T02:23:46Z Systematic Review of Machine Learning Models in Predicting the Risk of Bleed/Grade of Esophageal Varices in Patients with Liver Cirrhosis: A Comprehensive Methodological Analysis Malik, Sheza Tenorio, Bettina Gabrielle Moond, Vishali Dahiya, Dushyant Singh Vora, Ravi Dbouk, Nader Esophageal varices (EV) in liver cirrhosis carry high mortality risks. Traditional endoscopy, which is costly and subjective, prompts a shift towards machine learning (ML). This review critically evaluates ML applications in predicting bleeding risks and grading EV in patients with liver cirrhosis. Following the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines, we conducted a systematic review of studies using ML to predict the risk of variceal bleeding and/or grade EV in liver disease patients. Data extraction and bias assessment followed the CHARMS (CHecklist for critical Appraisal and data extraction for systematic Reviews of prediction Modeling Studies) checklist and PROBAST (Prediction model Risk Of Bias Assessment Tool) tool, respectively. Due to the heterogeneity of the study, a meta-analysis was not feasible; instead, descriptive statistics summarized the findings. Twelve studies were included, highlighting the use of various ML models such as extreme gradient boosting, artificial neural networks, and convolutional neural networks. These studies demonstrated high predictive accuracy, with some models achieving area under the curve values above 99%. However, significant heterogeneity was noted in input variables, methodologies, and outcome measures. Moreover, a substantial portion of the studies exhibited unclear or high risk of bias, mainly due to insufficient participant numbers, unclear handling of missing data, and a lack of detailed reporting on endoscopic procedures. ML models show significant promise in predicting the risk of variceal bleeding and grading EV in patients with cirrhosis, potentially reducing the need for invasive procedures. Nonetheless, the current literature reveals considerable heterogeneity and methodological limitations, including high or unclear risks of bias. Future research should focus on larger, prospective trials and the standardization of ML assessment criteria to confirm these models' practical utility in clinical settings. 2024-01-01T08:00:00Z text https://archium.ateneo.edu/asmph-pubs/262 https://doi.org/10.1111/jgh.16645 Ateneo School of Medicine and Public Health Publications Archīum Ateneo bleeding esophageal varices liver cirrhosis machine learning systematic review variceal grade Analytical, Diagnostic and Therapeutic Techniques and Equipment Diseases Gastroenterology Hepatology Medicine and Health Sciences
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic bleeding
esophageal varices
liver cirrhosis
machine learning
systematic review
variceal grade
Analytical, Diagnostic and Therapeutic Techniques and Equipment
Diseases
Gastroenterology
Hepatology
Medicine and Health Sciences
spellingShingle bleeding
esophageal varices
liver cirrhosis
machine learning
systematic review
variceal grade
Analytical, Diagnostic and Therapeutic Techniques and Equipment
Diseases
Gastroenterology
Hepatology
Medicine and Health Sciences
Malik, Sheza
Tenorio, Bettina Gabrielle
Moond, Vishali
Dahiya, Dushyant Singh
Vora, Ravi
Dbouk, Nader
Systematic Review of Machine Learning Models in Predicting the Risk of Bleed/Grade of Esophageal Varices in Patients with Liver Cirrhosis: A Comprehensive Methodological Analysis
description Esophageal varices (EV) in liver cirrhosis carry high mortality risks. Traditional endoscopy, which is costly and subjective, prompts a shift towards machine learning (ML). This review critically evaluates ML applications in predicting bleeding risks and grading EV in patients with liver cirrhosis. Following the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines, we conducted a systematic review of studies using ML to predict the risk of variceal bleeding and/or grade EV in liver disease patients. Data extraction and bias assessment followed the CHARMS (CHecklist for critical Appraisal and data extraction for systematic Reviews of prediction Modeling Studies) checklist and PROBAST (Prediction model Risk Of Bias Assessment Tool) tool, respectively. Due to the heterogeneity of the study, a meta-analysis was not feasible; instead, descriptive statistics summarized the findings. Twelve studies were included, highlighting the use of various ML models such as extreme gradient boosting, artificial neural networks, and convolutional neural networks. These studies demonstrated high predictive accuracy, with some models achieving area under the curve values above 99%. However, significant heterogeneity was noted in input variables, methodologies, and outcome measures. Moreover, a substantial portion of the studies exhibited unclear or high risk of bias, mainly due to insufficient participant numbers, unclear handling of missing data, and a lack of detailed reporting on endoscopic procedures. ML models show significant promise in predicting the risk of variceal bleeding and grading EV in patients with cirrhosis, potentially reducing the need for invasive procedures. Nonetheless, the current literature reveals considerable heterogeneity and methodological limitations, including high or unclear risks of bias. Future research should focus on larger, prospective trials and the standardization of ML assessment criteria to confirm these models' practical utility in clinical settings.
format text
author Malik, Sheza
Tenorio, Bettina Gabrielle
Moond, Vishali
Dahiya, Dushyant Singh
Vora, Ravi
Dbouk, Nader
author_facet Malik, Sheza
Tenorio, Bettina Gabrielle
Moond, Vishali
Dahiya, Dushyant Singh
Vora, Ravi
Dbouk, Nader
author_sort Malik, Sheza
title Systematic Review of Machine Learning Models in Predicting the Risk of Bleed/Grade of Esophageal Varices in Patients with Liver Cirrhosis: A Comprehensive Methodological Analysis
title_short Systematic Review of Machine Learning Models in Predicting the Risk of Bleed/Grade of Esophageal Varices in Patients with Liver Cirrhosis: A Comprehensive Methodological Analysis
title_full Systematic Review of Machine Learning Models in Predicting the Risk of Bleed/Grade of Esophageal Varices in Patients with Liver Cirrhosis: A Comprehensive Methodological Analysis
title_fullStr Systematic Review of Machine Learning Models in Predicting the Risk of Bleed/Grade of Esophageal Varices in Patients with Liver Cirrhosis: A Comprehensive Methodological Analysis
title_full_unstemmed Systematic Review of Machine Learning Models in Predicting the Risk of Bleed/Grade of Esophageal Varices in Patients with Liver Cirrhosis: A Comprehensive Methodological Analysis
title_sort systematic review of machine learning models in predicting the risk of bleed/grade of esophageal varices in patients with liver cirrhosis: a comprehensive methodological analysis
publisher Archīum Ateneo
publishDate 2024
url https://archium.ateneo.edu/asmph-pubs/262
https://doi.org/10.1111/jgh.16645
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