Motivation Most modern intensive care units record the physiological and vital signs of patients. These data can be used to extract signatures, commonly known as biomarkers, that help physicians understand the biological complexity of many syndromes. However, most biological biomarkers suffer from either poor predictive performance or weak explanatory power. Recent developments in time series classification focus on discovering shapelets, i.e. subsequences that are most predictive in terms of class membership. Shapelets have the advantage of combining a high predictive performance with an interpretable component—their shape. Currently, most shapelet discovery methods do not rely on statistical tests to verify the significance of individual...
The life sciences of the digital era are driven by its most fundamental and irreplaceable currency: ...
This study proposes a robust similarity score-based time series feature extraction method that is te...
Development of personalized cardiovascular management systems involves automatic identification of t...
Abstract Motivation Most modern intensive care units record the physiological and vital signs of pat...
The increased focus on evidence-based practice in the health sciences led to a plethora of (un)organ...
Extracting useful information from structured and unstructured biological data is crucial in the hea...
A recently introduced primitive for time series data mining, unsupervised shapelets (u-shapelets), h...
Time series data mining is one of the most studied and researched areas. This need in mining time se...
The article examines the problem of processing short time series for bioinformatics tasks using data...
This study proposes a robust similarity score-based time series feature extraction method that is te...
Abstract — Modern clinical databases include time series of vital signs, which are often recorded co...
In this paper we develop statistical algorithms to infer possible cardiac pathologies, based on data...
In thesis, we propose a robust similarity score-based time series characterization method, termed as...
The management of patient well-being can be performed by monitoring continuous time-series vital-sig...
The management of patient well-being can be performed by monitoring continuous time-series vital-sig...
The life sciences of the digital era are driven by its most fundamental and irreplaceable currency: ...
This study proposes a robust similarity score-based time series feature extraction method that is te...
Development of personalized cardiovascular management systems involves automatic identification of t...
Abstract Motivation Most modern intensive care units record the physiological and vital signs of pat...
The increased focus on evidence-based practice in the health sciences led to a plethora of (un)organ...
Extracting useful information from structured and unstructured biological data is crucial in the hea...
A recently introduced primitive for time series data mining, unsupervised shapelets (u-shapelets), h...
Time series data mining is one of the most studied and researched areas. This need in mining time se...
The article examines the problem of processing short time series for bioinformatics tasks using data...
This study proposes a robust similarity score-based time series feature extraction method that is te...
Abstract — Modern clinical databases include time series of vital signs, which are often recorded co...
In this paper we develop statistical algorithms to infer possible cardiac pathologies, based on data...
In thesis, we propose a robust similarity score-based time series characterization method, termed as...
The management of patient well-being can be performed by monitoring continuous time-series vital-sig...
The management of patient well-being can be performed by monitoring continuous time-series vital-sig...
The life sciences of the digital era are driven by its most fundamental and irreplaceable currency: ...
This study proposes a robust similarity score-based time series feature extraction method that is te...
Development of personalized cardiovascular management systems involves automatic identification of t...