Within the medical domain there are clear expectations as to how a patient should respond to treatments administered. When these responses are not observed it can be challenging for clinicians to understand the anomalous responses. The work reported here describes a tool which can detect anomalous patient responses to treatment and further suggest hypotheses to explain the anomaly. In order to develop this tool, we have undertaken a study to determine how Intensive Care Unit (ICU) clinicians identify anomalous patient responses; we then asked further clinicians to provide potential explanations for such anomalies. The high level reasoning deployed by the clinicians has been captured and generalised to form the procedural component of the on...
Between appointments, healthcare providers have limited interaction with their patients, but patient...
AbstractThe electronic health record (EHR) contains a diverse set of clinical observations that are ...
A popular approach to knowledge extraction from clinical databases is to first define an ontology of...
Within the medical domain there are clear expectations as to how a patient should respond to treatme...
Within the medical domain there are clear expectations as to how a patient should respond to treatme...
The Intensive Care Unit (ICU) provides treatment to critically ill patients. When a patient does not...
This thesis focuses on the explanation of anomalies as an approach to anomaly-driven revision of a t...
Medically unexplained symptoms (MUS) remain recalcitrant to the medical profession, proving less sui...
To develop knowledge bases for use in knowledge-based (or expert) systems, domain experts are often...
Medically unexplained symptoms (MUS) remain recalcitrant to the medical profession, proving less sui...
<p>Objective: While EIRA has proved to be successful in the detection of anomalous patient res...
This project is about the description of ontologies for anomaly detection in computer systems. The s...
Medically unexplained symptoms (MUS) remain recalcitrant to the medical profession, proving less sui...
Background: Ontologies characterize complex and detailed information and are extensively used in hea...
Introduction: Making a reliable medical diagnosis requires the identification of the patient’s disea...
Between appointments, healthcare providers have limited interaction with their patients, but patient...
AbstractThe electronic health record (EHR) contains a diverse set of clinical observations that are ...
A popular approach to knowledge extraction from clinical databases is to first define an ontology of...
Within the medical domain there are clear expectations as to how a patient should respond to treatme...
Within the medical domain there are clear expectations as to how a patient should respond to treatme...
The Intensive Care Unit (ICU) provides treatment to critically ill patients. When a patient does not...
This thesis focuses on the explanation of anomalies as an approach to anomaly-driven revision of a t...
Medically unexplained symptoms (MUS) remain recalcitrant to the medical profession, proving less sui...
To develop knowledge bases for use in knowledge-based (or expert) systems, domain experts are often...
Medically unexplained symptoms (MUS) remain recalcitrant to the medical profession, proving less sui...
<p>Objective: While EIRA has proved to be successful in the detection of anomalous patient res...
This project is about the description of ontologies for anomaly detection in computer systems. The s...
Medically unexplained symptoms (MUS) remain recalcitrant to the medical profession, proving less sui...
Background: Ontologies characterize complex and detailed information and are extensively used in hea...
Introduction: Making a reliable medical diagnosis requires the identification of the patient’s disea...
Between appointments, healthcare providers have limited interaction with their patients, but patient...
AbstractThe electronic health record (EHR) contains a diverse set of clinical observations that are ...
A popular approach to knowledge extraction from clinical databases is to first define an ontology of...