Automatic generation of computable implementation guides from clinical information models
Clinical information models are increasingly used to describe the contents of Electronic Health Records. Implementation guides are a common specification mechanism used to define such models. They contain, among other reference materials, all the constraints and rules that clinical information must...
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Zusammenfassung: | Clinical information models are increasingly used to describe the contents of Electronic Health Records.
Implementation guides are a common specification mechanism used to define such models. They contain,
among other reference materials, all the constraints and rules that clinical information must obey.
However, these implementation guides typically are oriented to human-readability, and thus cannot
be processed by computers. As a consequence, they must be reinterpreted and transformed manually into
an executable language such as Schematron or Object Constraint Language (OCL). This task can be diffi-
cult and error prone due to the big gap between both representations. The challenge is to develop a
methodology for the specification of implementation guides in such a way that humans can read and
understand easily and at the same time can be processed by computers. In this paper, we propose and
describe a novel methodology that uses archetypes as basis for generation of implementation guides.
We use archetypes to generate formal rules expressed in Natural Rule Language (NRL) and other reference
materials usually included in implementation guides such as sample XML instances. We also generate
Schematron rules from NRL rules to be used for the validation of data instances. We have
implemented these methods in LinkEHR, an archetype editing platform, and exemplify our approach
by generating NRL rules and implementation guides from EN ISO 13606, openEHR, and HL7 CDA
archetypes.
2015 Elsevier Inc. All rights reserved.
Boscá Tomás, D.; Maldonado Segura, JA.; Moner Cano, D.; Robles Viejo, M. (2015). Automatic generation of computable implementation guides from clinical information models. Journal of Biomedical Informatics. 55:143-152. doi:10.1016/j.jbi.2015.04.002 |
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