Introduction: Over the last 25 years there has been significant work carried out in producing risk prediction models for patients admitted to critical care units. The most recent of these models is the Intensive Care National Audit and Research Centre (ICNARC) model developed in 2007 (1) which uses data from 231,930 admissions to 163 critical care units to develop and validate a UK based model outperforming other approaches (with an average c index of 0.863). Aims: This research aims to present an artificial neural network based model for critical care admissions that improves over the ICNARC model in terms of the discrimination across the data set used in this study. Results: Figure 1 shows a comparison between the receiver operator...
INTRODUCTION: This report describes the case mix and outcome (mortality, intensive care unit (ICU) a...
Background: Although cancer patients are increasingly admitted to the intensive care unit (ICU) for ...
BACKGROUND: Pre-hospital circumstances, cardiac arrest characteristics, comorbidities and clinical s...
OBJECTIVE: To develop a new model to improve risk prediction for admissions to adult critical care u...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
This work presents a novel approach for the prediction of mortality in intensive care units (ICUs) b...
Based on the results of previous studies, research on machine learning for predicting ICU patients i...
Accurate mortality prediction in intensive care units (ICUs) allows for the risk adjustment of study...
Background: Early outcome prediction of hospitalized patients is critical because the intensivists a...
Mortality risk prediction can greatly improve the utilization of resources in intensive care units (...
OBJECTIVES: The intensive care environment generates a wealth of critical care data suited to develo...
ABSTRACT Objective: The variation in mortality rates of intensive care unit oncological patients ma...
Introduction: The Medication Regimen Complexity -Intensive Care Unit (MRC-ICU) is the first tool for...
Objective: The mortality rate of critically ill patients in ICUs is relatively high. In order to eva...
BACKGROUND: Resuscitated cardiac arrest is associated with high mortality; however, the ability to e...
INTRODUCTION: This report describes the case mix and outcome (mortality, intensive care unit (ICU) a...
Background: Although cancer patients are increasingly admitted to the intensive care unit (ICU) for ...
BACKGROUND: Pre-hospital circumstances, cardiac arrest characteristics, comorbidities and clinical s...
OBJECTIVE: To develop a new model to improve risk prediction for admissions to adult critical care u...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
This work presents a novel approach for the prediction of mortality in intensive care units (ICUs) b...
Based on the results of previous studies, research on machine learning for predicting ICU patients i...
Accurate mortality prediction in intensive care units (ICUs) allows for the risk adjustment of study...
Background: Early outcome prediction of hospitalized patients is critical because the intensivists a...
Mortality risk prediction can greatly improve the utilization of resources in intensive care units (...
OBJECTIVES: The intensive care environment generates a wealth of critical care data suited to develo...
ABSTRACT Objective: The variation in mortality rates of intensive care unit oncological patients ma...
Introduction: The Medication Regimen Complexity -Intensive Care Unit (MRC-ICU) is the first tool for...
Objective: The mortality rate of critically ill patients in ICUs is relatively high. In order to eva...
BACKGROUND: Resuscitated cardiac arrest is associated with high mortality; however, the ability to e...
INTRODUCTION: This report describes the case mix and outcome (mortality, intensive care unit (ICU) a...
Background: Although cancer patients are increasingly admitted to the intensive care unit (ICU) for ...
BACKGROUND: Pre-hospital circumstances, cardiac arrest characteristics, comorbidities and clinical s...