Intelligent alarm systems are needed for adequate bedside decision support in critical care. Clinical information systems acquire physiological variables online in short time intervals. To identify complications as well as therapeutic effects procedures for rapid classiffication of the current state of the patient have to be developed. Detection of characteristic patterns in the data can be accomplished by statistical time series analysis. In view of the high dimension of the data statistical methods for dimension reduction should be used in advance. We discuss the potential of statistical techniques for online monitoring
This thesis proposes new methods for real-time signal and variability extraction, presents derivatio...
Abstract ⎯ We propose a new regression-based filter for multivariate time series that separates sign...
Objectives: Time series analysis techniques facilitate statistical analysis of variables in the cour...
Clinical information systems can record numerous variables describing the patient’s state at high s...
In modern intensive care physiological variables of the critically ill can be reported online by cli...
Objectives: To determine how different mathematical time series approaches can be implemented for th...
As high dimensional data occur as a rule rather than an exception in critical care today, it is of u...
Objectives: To determine how different mathematical time series approaches can be implemented for th...
Detecting abnormalities from multiple correlated time series is valuable to those applications where...
Abstract We present a robust graphical procedure for routine detection of isolated and patchy outlie...
Detecting abnormalities from multiple correlated time series is valuable to those applications where...
International audienceThis paper presents an alarm validation system dedicated to patient monitoring...
SIGLEAvailable from TIB Hannover: RR 8460(2000,33) / FIZ - Fachinformationszzentrum Karlsruhe / TIB ...
Online-monitoring systems in intensive care are affected by a high rate of false threshold alarms. T...
Several variables are usually recorded on line in Intensive Care Units (ICU) to detect changes in a ...
This thesis proposes new methods for real-time signal and variability extraction, presents derivatio...
Abstract ⎯ We propose a new regression-based filter for multivariate time series that separates sign...
Objectives: Time series analysis techniques facilitate statistical analysis of variables in the cour...
Clinical information systems can record numerous variables describing the patient’s state at high s...
In modern intensive care physiological variables of the critically ill can be reported online by cli...
Objectives: To determine how different mathematical time series approaches can be implemented for th...
As high dimensional data occur as a rule rather than an exception in critical care today, it is of u...
Objectives: To determine how different mathematical time series approaches can be implemented for th...
Detecting abnormalities from multiple correlated time series is valuable to those applications where...
Abstract We present a robust graphical procedure for routine detection of isolated and patchy outlie...
Detecting abnormalities from multiple correlated time series is valuable to those applications where...
International audienceThis paper presents an alarm validation system dedicated to patient monitoring...
SIGLEAvailable from TIB Hannover: RR 8460(2000,33) / FIZ - Fachinformationszzentrum Karlsruhe / TIB ...
Online-monitoring systems in intensive care are affected by a high rate of false threshold alarms. T...
Several variables are usually recorded on line in Intensive Care Units (ICU) to detect changes in a ...
This thesis proposes new methods for real-time signal and variability extraction, presents derivatio...
Abstract ⎯ We propose a new regression-based filter for multivariate time series that separates sign...
Objectives: Time series analysis techniques facilitate statistical analysis of variables in the cour...