Title of article :
A pilot study of distributed knowledge management and clinical decision support in the cloud
Author/Authors :
Dixon، نويسنده , , Brian E. and Simonaitis، نويسنده , , Linas and Goldberg، نويسنده , , Howard S. and Paterno، نويسنده , , Marilyn D. and Schaeffer، نويسنده , , Molly and Hongsermeier، نويسنده , , Tonya and Wright، نويسنده , , Adam J. Middleton، نويسنده , , Blackford، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Pages :
9
From page :
45
To page :
53
Abstract :
AbstractObjective ent and perform pilot testing of web-based clinical decision support services using a novel framework for creating and managing clinical knowledge in a distributed fashion using the cloud. The pilot sought to (1) develop and test connectivity to an external clinical decision support (CDS) service, (2) assess the exchange of data to and knowledge from the external CDS service, and (3) capture lessons to guide expansion to more practice sites and users. als and methods inical Decision Support Consortium created a repository of shared CDS knowledge for managing hypertension, diabetes, and coronary artery disease in a community cloud hosted by Partners HealthCare. A limited data set for primary care patients at a separate health system was securely transmitted to a CDS rules engine hosted in the cloud. Preventive care reminders triggered by the limited data set were returned for display to clinician end users for review and display. During a pilot study, we (1) monitored connectivity and system performance, (2) studied the exchange of data and decision support reminders between the two health systems, and (3) captured lessons. s the six month pilot study, there were 1339 patient encounters in which information was successfully exchanged. Preventive care reminders were displayed during 57% of patient visits, most often reminding physicians to monitor blood pressure for hypertensive patients (29%) and order eye exams for patients with diabetes (28%). Lessons learned were grouped into five themes: performance, governance, semantic interoperability, ongoing adjustments, and usability. sion , asynchronous cloud-based decision support performed reasonably well, although issues concerning governance, semantic interoperability, and usability remain key challenges for successful adoption and use of cloud-based CDS that will require collaboration between biomedical informatics and computer science disciplines. sion on support in the cloud is feasible and may be a reasonable path toward achieving better support of clinical decision-making across the widest range of health care providers.
Keywords :
information dissemination , Log file analysis , Qualitative analysis , Clinical Decision Support Systems , medical informatics , Preventive health services , Knowledge Management , Computer-Assisted Decision Making
Journal title :
Artificial Intelligence In Medicine
Serial Year :
2013
Journal title :
Artificial Intelligence In Medicine
Record number :
1837286
Link To Document :
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