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    <dc:date>2026-04-20T20:27:22Z</dc:date>
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    <title>Delivering Health Intelligence For Healthcare Services</title>
    <link>http://hdl.handle.net/10884/1467</link>
    <description>Title: Delivering Health Intelligence For Healthcare Services
Authors: Murray, Michael; Macedo, Mário; Glynn, Carole
Abstract: The systems barrier for clinical information&#xD;
interoperability and standards has now evolved from a&#xD;
technology barrier to a semantic barrier. The processes to&#xD;
gather clinical data and to build clinical information and&#xD;
knowledge cannot be fully implemented, owing to semantic&#xD;
dissonances and limited data normalization. According to [1],&#xD;
“Just over a half of entered codes were appropriate for a given&#xD;
scenario and about a quarter were omitted.” This is a&#xD;
significant data and financial gap for healthcare provision.&#xD;
Huge amount of addition to the financial cost, lack of data&#xD;
integration and loss of information affects the ability to&#xD;
maintain standards in clinical care delivery and patient&#xD;
outcomes.&#xD;
This paper proposes that the solution to these issues is an&#xD;
augmented network of clinical note taking, where coding is&#xD;
automatically generated by an AI system as clinicians write&#xD;
their clinical notes. The system (AI-KEN) offers enhanced web&#xD;
support that is integrated to local clinical systems, whereby&#xD;
clinical notes are prompted by suggested predictive text&#xD;
options in real time. The anticipated benefits include reducing&#xD;
financial loss for acute services, support for clinical standard&#xD;
maintenance and enhanced advancements for clinical practice&#xD;
and research in real time.</description>
    <dc:date>2019-11-01T00:00:00Z</dc:date>
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