Background: Cardiac arrest is the most serious death-related event in intensive care units (ICUs), but it is not easily predicted because of the complex and time-dependent data characteristics of intensive care patients. Given the complexity and time dependence of ICU data, deep learning-based methods are expected to provide a good foundation for developing risk prediction models based on large clinical records. Objective: This study aimed to implement a deep learning model that estimates the distribution of cardiac arrest risk probability over time based on clinical data and assesses its potential. Methods: A retrospective study of 759 ICU patients was conducted between January 2013 and July 2015. A character-level gated recurrent...
Adverse clinical events like cardiopulmonary arrest and multiple organ dysfunction are life-threaten...
AbstractExtensive monitoring in intensive care units (ICUs) generates large quantities of data which...
The global healthcare system is being overburdened by an increasing number of COVID-19 patients. Phy...
Abstract Background Retrospective studies have demonstrated that the deep learning-based cardiac arr...
Cardiac arrest remains a critical concern in Intensive Care Units (ICUs), with alarmingly low surviv...
Cardiac arrest is a common issue in Intensive Care Units (ICU) with low survival rate. Deep learning...
BACKGROUND: Resuscitated cardiac arrest is associated with high mortality; however, the ability to e...
BACKGROUND: The rapid development in big data analytics and the data-rich environment of intensive c...
BackgroundResuscitated cardiac arrest is associated with high mortality; however, the ability to est...
OBJECTIVES: Cardiovascular disease (CVD) is one of the major causes of death worldwide. For improved...
Patients resuscitated from cardiac arrest (CA) face a high risk of neurological disability and death...
The Intensive Care Unit is a fast-paced environment where the most critically ill patients are trea...
Background and objectives Changes in a patient's condition over time are a backbone of clinical deci...
The early warning system detects early and responds quickly to emergencies in high-risk patients, su...
Deep neural networks have proven valuable in several applications. The availability of electronic he...
Adverse clinical events like cardiopulmonary arrest and multiple organ dysfunction are life-threaten...
AbstractExtensive monitoring in intensive care units (ICUs) generates large quantities of data which...
The global healthcare system is being overburdened by an increasing number of COVID-19 patients. Phy...
Abstract Background Retrospective studies have demonstrated that the deep learning-based cardiac arr...
Cardiac arrest remains a critical concern in Intensive Care Units (ICUs), with alarmingly low surviv...
Cardiac arrest is a common issue in Intensive Care Units (ICU) with low survival rate. Deep learning...
BACKGROUND: Resuscitated cardiac arrest is associated with high mortality; however, the ability to e...
BACKGROUND: The rapid development in big data analytics and the data-rich environment of intensive c...
BackgroundResuscitated cardiac arrest is associated with high mortality; however, the ability to est...
OBJECTIVES: Cardiovascular disease (CVD) is one of the major causes of death worldwide. For improved...
Patients resuscitated from cardiac arrest (CA) face a high risk of neurological disability and death...
The Intensive Care Unit is a fast-paced environment where the most critically ill patients are trea...
Background and objectives Changes in a patient's condition over time are a backbone of clinical deci...
The early warning system detects early and responds quickly to emergencies in high-risk patients, su...
Deep neural networks have proven valuable in several applications. The availability of electronic he...
Adverse clinical events like cardiopulmonary arrest and multiple organ dysfunction are life-threaten...
AbstractExtensive monitoring in intensive care units (ICUs) generates large quantities of data which...
The global healthcare system is being overburdened by an increasing number of COVID-19 patients. Phy...