Title of article :
An ontology-based approach to enhance querying capabilities of general practice medicine for better management of hypertension
Author/Authors :
Mabotuwana، نويسنده , , Thusitha and Warren، نويسنده , , Jim، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
17
From page :
87
To page :
103
Abstract :
SummaryBackground ension is one of the most prevalent chronic conditions and is directly correlated to deadly risks; yet, despite the availability of effective treatment, there is still clear room for improving patient outcomes. Use of relational databases is widespread for storing patient data, but formulating queries to identify patients whose clinical management can be improved is challenging due to the temporal nature of chronic illness and the mismatch in levels of abstraction between key management concepts and coded clinical data. ive jective of this work is to develop a sharable and extensible analysis tool that can be used to identify hypertensive patients who satisfy any of a set of evidence-based criteria for quality improvement potential. s eloped an ontology driven framework to enhance and facilitate some important temporal querying requirements in general practice medicine, focusing on prescribing for hypertension. The Web Ontology Language has been used to develop the ontology and the specific queries have been written in Semantic Query-enhanced Web Rule Language. We have used production electronic medical record (EMR) data from a General Medical Practice in New Zealand to populate the ontology. s ied patient management ontology consisting of a disease management ontology, a patient data ontology, and a plan violation taxonomy has been created and populated with EMR data. We have queried this ontology to determine patient cohorts that satisfy any of eight quality audit criteria, thereby identifying patients whose clinical management can be improved. A prescription timeline visualisation tool has also been developed to aid a clinician in understanding a patientʹs antihypertensive prescribing patterns, as well as visually validating the query results. sions esented framework shows potential to provide answers to clinically relevant queries with complex temporal relationships. The framework can be used to successfully identify hypertensive patients who need to be followed-up/recalled.
Keywords :
Ambulatory care information systems , Clinical audits , LONG-TERM CARE , Patient Outcome Assessment , Quality Indicators
Journal title :
Artificial Intelligence In Medicine
Serial Year :
2009
Journal title :
Artificial Intelligence In Medicine
Record number :
1836828
Link To Document :
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