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Published in: World Journal of Surgery 4/2010

01-04-2010

Multimedia Abstract Generation of Intensive Care Data: The Automation of Clinical Processes Through AI Methodologies

Authors: Desmond Jordan, Sydney E. Rose

Published in: World Journal of Surgery | Issue 4/2010

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Abstract

Medical errors from communication failures are enormous during the perioperative period of cardiac surgical patients. As caregivers change shifts or surgical patients change location within the hospital, key information is lost or misconstrued. After a baseline cognitive study of information need and caregiver workflow, we implemented an advanced clinical decision support tool of intelligent agents, medical logic modules, and text generators called the “Inference Engine” to summarize individual patient’s raw medical data elements into procedural milestones, illness severity, and care therapies. The system generates two displays: 1) the continuum of care, multimedia abstract generation of intensive care data (MAGIC)—an expert system that would automatically generate a physician briefing of a cardiac patient’s operative course in a multimodal format; and 2) the isolated point in time, “Inference Engine”—a system that provides a real-time, high-level, summarized depiction of a patient’s clinical status. In our studies, system accuracy and efficacy was judged against clinician performance in the workplace. To test the automated physician briefing, “MAGIC,” the patient’s intraoperative course, was reviewed in the intensive care unit before patient arrival. It was then judged against the actual physician briefing and that given in a cohort of patients where the system was not used. To test the real-time representation of the patient’s clinical status, system inferences were judged against clinician decisions. Changes in workflow and situational awareness were assessed by questionnaires and process evaluation. MAGIC provides 200% more information, twice the accuracy, and enhances situational awareness. This study demonstrates that the automation of clinical processes through AI methodologies yields positive results.
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Metadata
Title
Multimedia Abstract Generation of Intensive Care Data: The Automation of Clinical Processes Through AI Methodologies
Authors
Desmond Jordan
Sydney E. Rose
Publication date
01-04-2010
Publisher
Springer-Verlag
Published in
World Journal of Surgery / Issue 4/2010
Print ISSN: 0364-2313
Electronic ISSN: 1432-2323
DOI
https://doi.org/10.1007/s00268-009-0319-5

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