2023
DOI: 10.3390/antibiotics12091427
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Analysis of Clinical Phenotypes through Machine Learning of First-Line H. pylori Treatment in Europe during the Period 2013–2022: Data from the European Registry on H. pylori Management (Hp-EuReg)

Olga P. Nyssen,
Pietro Pratesi,
Miguel A. Spínola
et al.

Abstract: The segmentation of patients into homogeneous groups could help to improve eradication therapy effectiveness. Our aim was to determine the most important treatment strategies used in Europe, to evaluate first-line treatment effectiveness according to year and country. Data collection: All first-line empirical treatments registered at AEGREDCap in the European Registry on Helicobacter pylori management (Hp-EuReg) from June 2013 to November 2022. A Boruta method determined the “most important” variables related … Show more

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Cited by 3 publications
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“…Forrest et al [ 24 ] developed a coronary artery disease prediction model based on random forest and established a quantitative marker of coronary artery disease from probabilities of a machine learning model. Nyssen et al [ 25 ] identified important treatment strategies and analyzed compliance and treatment effects of different treatment regimens by random forest and clustering on multi-correspondence components on the European Registry on H. pylori management first-line treatment data. Leung et al [ 26 ] evaluated the performances of different machine learning models in predicting gastric cancer risk after H. pylori eradication and found XGBoost had the best performance in predicting cancer development and was superior to conventional logistic regression.…”
Section: Introductionmentioning
confidence: 99%
“…Forrest et al [ 24 ] developed a coronary artery disease prediction model based on random forest and established a quantitative marker of coronary artery disease from probabilities of a machine learning model. Nyssen et al [ 25 ] identified important treatment strategies and analyzed compliance and treatment effects of different treatment regimens by random forest and clustering on multi-correspondence components on the European Registry on H. pylori management first-line treatment data. Leung et al [ 26 ] evaluated the performances of different machine learning models in predicting gastric cancer risk after H. pylori eradication and found XGBoost had the best performance in predicting cancer development and was superior to conventional logistic regression.…”
Section: Introductionmentioning
confidence: 99%