Introduction: Recent advances in machine learning provide new possibilities to process and analyse observational patient data to predict patient outcomes. In this paper, we introduce a data processing pipeline for cardiogenic shock (CS) prediction from the MIMIC III database of intensive cardiac care unit patients with acute coronary syndrome. The ability to identify high-risk patients could possibly allow taking pre-emptive measures and thus prevent the development of CS. Methods: We mainly focus on techniques for the imputation of missing data by generating a pipeline for imputation and comparing the performance of various multivariate imputation algorithms, including k-nearest neighbours, two singular value decomposition (SVD)-based meth...
Abstract- Cardiovascular diseases (CVDs) remain a sig- nificant global health challenge, emphasizing...
International audienceThis study proposes machine learning-based models to automatically evaluate th...
BACKGROUND: We aimed to develop a machine learning algorithm to predict the presence of a culprit le...
Circulatory shock is a life-threatening disease that accounts for around one-third of all admissions...
Background Cardiogenic shock (CS) is a heterogeneous syndrome with varied presentations and outcomes...
Circulatory shock is a life-threatening disease that accounts for around one-third of all admissions...
A heart attack also known as cardiac arrest, diversify various conditions impacting the heart and be...
Machine learning (ML) is a subfield of AI that uses statistical algorithms. Cardiac Arrest or heart ...
Purpose: Cardiogenic shock (CS) is a heterogeneous syndrome that represents an acute and fulminant f...
Background/Aim: Healthcare is an unavoidable assignment to be done in human life. Cardiovascular sic...
Purpose: Predicting and then preventing cardiac arrest of a patient in ICU is the most challenging p...
Nearly 19 million people die each year from cardiovascular and chronic respiratory diseases, which a...
BackgroundMachine learning (ML) models can improve prediction of major adverse cardiovascular events...
About 26 million people worldwide experience its effects each year. Both cardiologists and surgeons ...
In the intensive care unit, patients with crucial, life-threatening conditions are admitted and need...
Abstract- Cardiovascular diseases (CVDs) remain a sig- nificant global health challenge, emphasizing...
International audienceThis study proposes machine learning-based models to automatically evaluate th...
BACKGROUND: We aimed to develop a machine learning algorithm to predict the presence of a culprit le...
Circulatory shock is a life-threatening disease that accounts for around one-third of all admissions...
Background Cardiogenic shock (CS) is a heterogeneous syndrome with varied presentations and outcomes...
Circulatory shock is a life-threatening disease that accounts for around one-third of all admissions...
A heart attack also known as cardiac arrest, diversify various conditions impacting the heart and be...
Machine learning (ML) is a subfield of AI that uses statistical algorithms. Cardiac Arrest or heart ...
Purpose: Cardiogenic shock (CS) is a heterogeneous syndrome that represents an acute and fulminant f...
Background/Aim: Healthcare is an unavoidable assignment to be done in human life. Cardiovascular sic...
Purpose: Predicting and then preventing cardiac arrest of a patient in ICU is the most challenging p...
Nearly 19 million people die each year from cardiovascular and chronic respiratory diseases, which a...
BackgroundMachine learning (ML) models can improve prediction of major adverse cardiovascular events...
About 26 million people worldwide experience its effects each year. Both cardiologists and surgeons ...
In the intensive care unit, patients with crucial, life-threatening conditions are admitted and need...
Abstract- Cardiovascular diseases (CVDs) remain a sig- nificant global health challenge, emphasizing...
International audienceThis study proposes machine learning-based models to automatically evaluate th...
BACKGROUND: We aimed to develop a machine learning algorithm to predict the presence of a culprit le...