This work presents a novel approach for the prediction of mortality in intensive care units (ICUs) based on the use of adverse events, which are defined from four bedside alarms, and artificial neural networks (ANNs). This approach is compared with two logistic regression (LR) models: the prognostic model used in most of the European ICUs, based on the simplified acute physiology score (SAPS II), and a LR that uses the same input variables of the ANN model. Materials and Methods: A large dataset was considered, encompassing forty two ICUs of nine European countries. The recorded features of each patient include the final outcome, the case mix (e.g. age) and the intermediate outcomes, defined as the daily averages of the out of range values...
Introduction: Over the last 25 years there has been significant work carried out in producing risk p...
The massive influx of data in healthcare encouraged the building of data-driven machine learning mod...
This paper demonstrates that neural nets have the capacity to 'mould' themselves to data s...
This work presents a novel approach for the prediction of mortality in intensive care units (ICUs) b...
Mortality risk prediction can greatly improve the utilization of resources in intensive care units (...
contemporaneous, formative computer analysis into the delivery and assessment of patient care, with ...
The aim of this study was to develop and compare techniques to increase the prediction accuracy of p...
In recent years, Clinical Data Mining has gained an increasing acceptance by the research community...
Background: Early outcome prediction of hospitalized patients is critical because the intensivists a...
OBJECTIVES: The intensive care environment generates a wealth of critical care data suited to develo...
In the past years, the Clinical Data Mining arena has suffered a remarkable development, where intel...
Purpose : To evaluate the application of machine learning methods, specifically Deep Neural Netwo...
Based on the results of previous studies, research on machine learning for predicting ICU patients i...
BACKGROUND: Pre-hospital circumstances, cardiac arrest characteristics, comorbidities and clinical s...
Accurate mortality prediction in intensive care units (ICUs) allows for the risk adjustment of study...
Introduction: Over the last 25 years there has been significant work carried out in producing risk p...
The massive influx of data in healthcare encouraged the building of data-driven machine learning mod...
This paper demonstrates that neural nets have the capacity to 'mould' themselves to data s...
This work presents a novel approach for the prediction of mortality in intensive care units (ICUs) b...
Mortality risk prediction can greatly improve the utilization of resources in intensive care units (...
contemporaneous, formative computer analysis into the delivery and assessment of patient care, with ...
The aim of this study was to develop and compare techniques to increase the prediction accuracy of p...
In recent years, Clinical Data Mining has gained an increasing acceptance by the research community...
Background: Early outcome prediction of hospitalized patients is critical because the intensivists a...
OBJECTIVES: The intensive care environment generates a wealth of critical care data suited to develo...
In the past years, the Clinical Data Mining arena has suffered a remarkable development, where intel...
Purpose : To evaluate the application of machine learning methods, specifically Deep Neural Netwo...
Based on the results of previous studies, research on machine learning for predicting ICU patients i...
BACKGROUND: Pre-hospital circumstances, cardiac arrest characteristics, comorbidities and clinical s...
Accurate mortality prediction in intensive care units (ICUs) allows for the risk adjustment of study...
Introduction: Over the last 25 years there has been significant work carried out in producing risk p...
The massive influx of data in healthcare encouraged the building of data-driven machine learning mod...
This paper demonstrates that neural nets have the capacity to 'mould' themselves to data s...