A RESTful approach for developing medical decision support systems
Publication date
2015-01-01
Document type
Conference paper
Author
Organisational unit
Karlsruhe Institute of Technology
Scopus ID
ISBN
ISSN
E-ISSN
Conference
ESWC 2015 Satellite Events ESWC 2015 Satellite Events, Portorož, Slovenia, May 31 – June 4, 2015
Series or journal
Lecture Notes in Computer Science
Periodical volume
9341
Book title
The Semantic Web: ESWC 2015 Satellite Events
First page
376
Last page
384
Peer-reviewed
✅
Part of the university bibliography
Nein
Abstract
Current developments in the medical sector are witnessing the growing digitalization of data in terms of patient tests, records and trials, use of sensors for monitoring and recording procedures, and employing digital imagery. Besides the increasing number of published guidelines and studies, it has been shown that clinicians are often unable to observe these guidelines correctly during the actual care process. [1] The increasing number of guidelines and studies, and also the fact that physicians are often unable to observe these guidelines correctly provide the foundation for this paper. We will tackle these problems by developing a medical assistance system which processes the gathered and integrated data from different sources, and assists the physicians in making decisions, preparing treatment plans, and even guide surgeons during invasive procedures. In this paper we demonstrate how a RESTful architecture combined with applying Linked Data principles for data storage and exchange can effectively be used for developing medical decision support systems. We propose different autonomous subsystems that automatically process data relevant to their purpose. These so-called “Cognitive Apps” provide RESTful interfaces and perform tasks such as converting and uploading data and deducing medical knowledge by using inference rules. The result is an adaptive decision support system, based on distributed decoupled Cognitive Apps, which can preprocess data in advance but also support real-time scenarios. We demonstrate the practical applicability of our approach by providing an implementation of a system for processing patients with liver tumors. Finally, we evaluate the system in terms of knowledge deduction and performance.
Version
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