An intensive care unit mortality prediction model for the PhysioNet/Computing in Cardiology Challenge 2012 using a novel Bayesian ensemble learning algorithm is described. Methods: Data pre-processing was automatically performed based upon domain knowledge to remove artefacts and erroneous recordings, e.g. physiologically invalid entries and unit conversion errors. A range of diverse features was extracted from the original time series signals including standard statistical descriptors such as the minimum, maximum, median, first, last, and the number of values. A new Bayesian ensemble scheme comprising 500 weak learners was then developed to classify the data samples. Each weak learner was a decision tree of depth two, which randomly assign...
The Intensive Care Unit (ICU) is a hospital department where machine learning has the potential to p...
Bayesian networks can be used to model the respiratory system. Their structure indicate how risk fac...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Introduction: An intensive care unit mortality prediction model for the PhysioNet/Computing in Cardi...
Introduction: An intensive care unit mortality prediction model for the PhysioNet/Computing in Cardi...
Prediction of patient mortality in Intensive Care Units (ICU) can aid the prevision of timely medica...
The intensive care unit (ICU) typically admits patients who require urgent medical intervention. Pre...
In this paper, we develop an effective framework to predict in-hospital mortality (IHM) during inten...
Patients in intensive care units (ICU) are acutely ill and have the highest mortality rates for hosp...
Series : Communications in computer and information science, vol. 415The number of patients admitted...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
Determining mortality risk is important for critical decisions in Intensive Care Units (ICU). The ne...
Due to the development of biomedical equipment and healthcare level, especially in the Intensive Car...
For the identification and prediction of different diseases, machine learning techniques are commonl...
Scoring tools are often used to predict patient severity of illness and mortality in intensive care ...
The Intensive Care Unit (ICU) is a hospital department where machine learning has the potential to p...
Bayesian networks can be used to model the respiratory system. Their structure indicate how risk fac...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Introduction: An intensive care unit mortality prediction model for the PhysioNet/Computing in Cardi...
Introduction: An intensive care unit mortality prediction model for the PhysioNet/Computing in Cardi...
Prediction of patient mortality in Intensive Care Units (ICU) can aid the prevision of timely medica...
The intensive care unit (ICU) typically admits patients who require urgent medical intervention. Pre...
In this paper, we develop an effective framework to predict in-hospital mortality (IHM) during inten...
Patients in intensive care units (ICU) are acutely ill and have the highest mortality rates for hosp...
Series : Communications in computer and information science, vol. 415The number of patients admitted...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
Determining mortality risk is important for critical decisions in Intensive Care Units (ICU). The ne...
Due to the development of biomedical equipment and healthcare level, especially in the Intensive Car...
For the identification and prediction of different diseases, machine learning techniques are commonl...
Scoring tools are often used to predict patient severity of illness and mortality in intensive care ...
The Intensive Care Unit (ICU) is a hospital department where machine learning has the potential to p...
Bayesian networks can be used to model the respiratory system. Their structure indicate how risk fac...
With the advent of the data age, the continuous improvement and widespread application of medical in...