International audienceThe recognition of high level clinical scenes is fundamental in patient monitoring. In this paper, we propose a technique for recognizing a session, i.e. the clinical process evolution, by comparison against a predetermined set of scenarios, i.e. the possible behaviors for this process. We use temporal constraint networks to represent both scenario and session. Specific operations on networks are then applied to perform the recognition task. An index of temporal proximity is introduced to quantify the degree of matching between two temporal networks in order to select the best scenario fitting a session. We explore the application of our technique, implemented in the Déjà Vu system, to the recognition of typical medica...
Objectives: Temporal abstraction (TA) of clinical data aims to abstract and interpret clinical data ...
The degree of fulfillment of clinical guidelines is considered a key factor when evaluating the qual...
Time is a central factor in patient monitoring. Introduction of domain-dependent knowledge is essent...
International audienceThe recognition of high level clinical scenes is fundamental in patient monito...
The recognition of high level clinical scenes is fundamental in patient monitoring. In this paper, w...
AbstractWe propose in this paper a new approach for the modelling and recognition of temporal scenar...
Database systems are more and more employed to analyze an ever increasing amount of temporal data by...
The Neonatal Intensive Care Unit (NICU) is a hospital ward specializing in looking after premature a...
Time representation and temporal reasoning are of crucial importance to clinical diagnosis. In this ...
International audienceAbstract. In the context of high dependent environments such as intensive care...
The automatic recognition of typical pattern sequences (scenarios), as they are developing, is of cr...
Knowledge-based decision support systems have a long tradition within the medical area. In particula...
Extracting temporal relations usually entails identifying and classifying the relation between two m...
This thesis research focuses on the recognition of temporal scenarios for Automatic Video Interpreta...
In this paper, we extend a preliminary proposal and discuss in a deeper and more formal way an appr...
Objectives: Temporal abstraction (TA) of clinical data aims to abstract and interpret clinical data ...
The degree of fulfillment of clinical guidelines is considered a key factor when evaluating the qual...
Time is a central factor in patient monitoring. Introduction of domain-dependent knowledge is essent...
International audienceThe recognition of high level clinical scenes is fundamental in patient monito...
The recognition of high level clinical scenes is fundamental in patient monitoring. In this paper, w...
AbstractWe propose in this paper a new approach for the modelling and recognition of temporal scenar...
Database systems are more and more employed to analyze an ever increasing amount of temporal data by...
The Neonatal Intensive Care Unit (NICU) is a hospital ward specializing in looking after premature a...
Time representation and temporal reasoning are of crucial importance to clinical diagnosis. In this ...
International audienceAbstract. In the context of high dependent environments such as intensive care...
The automatic recognition of typical pattern sequences (scenarios), as they are developing, is of cr...
Knowledge-based decision support systems have a long tradition within the medical area. In particula...
Extracting temporal relations usually entails identifying and classifying the relation between two m...
This thesis research focuses on the recognition of temporal scenarios for Automatic Video Interpreta...
In this paper, we extend a preliminary proposal and discuss in a deeper and more formal way an appr...
Objectives: Temporal abstraction (TA) of clinical data aims to abstract and interpret clinical data ...
The degree of fulfillment of clinical guidelines is considered a key factor when evaluating the qual...
Time is a central factor in patient monitoring. Introduction of domain-dependent knowledge is essent...