2023
DOI: 10.1002/ejhf.2983
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Machine learning‐based prediction of in‐hospital death for patients with takotsubo syndrome: The InterTAK‐ML model

Abstract: AimsTakotsubo syndrome (TTS) is associated with a substantial rate of adverse events. We sought to design a machine‐learning (ML) based model to predict the risk of in‐hospital death and to perform a clustering of TTS patients to identify different risk profiles.Methods and resultsA Ridge Logistic Regression‐based ML model for predicting in‐hospital death was developed on 3482 TTS patients from the International Takotsubo Registry, randomly split in a train and an internal validation cohort (75% and 25% of the… Show more

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Cited by 6 publications
(4 citation statements)
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“…Over the past few years, an increasing number of studies concentrate on deep learning models, and most of them are based on visualizations such as ECG, echocardiogram and cardiac magnetic resonance to train models 14 . Currently, studies have been conducted domestically and worldwide to analyze diverse types of clinical data such as electrocardiograms and echocardiograms, which based on deep learning to classify and evaluate the three traditional types of heart failure and risk stratification 3,15 . However, until recently, there is no research about constructing a prediction model for HFimpEF concerning deep learning.…”
Section: Discussionmentioning
confidence: 99%
“…Over the past few years, an increasing number of studies concentrate on deep learning models, and most of them are based on visualizations such as ECG, echocardiogram and cardiac magnetic resonance to train models 14 . Currently, studies have been conducted domestically and worldwide to analyze diverse types of clinical data such as electrocardiograms and echocardiograms, which based on deep learning to classify and evaluate the three traditional types of heart failure and risk stratification 3,15 . However, until recently, there is no research about constructing a prediction model for HFimpEF concerning deep learning.…”
Section: Discussionmentioning
confidence: 99%
“…Another study, which looked at 3284 patients with TTS, showed that an ML-based approach identified patients at risk of a poor short-term prognosis in the hospital. The Inter-TAK-ML model has shown its usefulness for predicting in-hospital death in patients with TTS [ 59 ].…”
Section: Literature Reviewmentioning
confidence: 99%
“…Considering the 10 most important variables, patients were clustered into six groups, and each group was associated with a specific risk of in-hospital death. 37 The rationale and design of the ESC Heart Failure III Registry is published. 38 .…”
Section: Quality Of Care and Outcomesmentioning
confidence: 99%