학술논문

OpenEHR Modeling Applied to Eating Disorders in Clinical Practice: OpenEHR-Archetypes in Eating Disorders
Document Type
Conference
Source
2018 IEEE 31st International Symposium on Computer-Based Medical Systems (CBMS) CBMS Computer-Based Medical Systems (CBMS), 2018 IEEE 31st International Symposium on. :36-41 Jun, 2018
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Tools
Software
Interoperability
Computational modeling
Electronic medical records
Psychology
Instruments
eating disorders
openEHR
archetypes
electronic health record
nutrition
Language
ISSN
2372-9198
Abstract
Eating disorders (ED) are described as a broad spectrum of eating-related issues, which include dysfunctional behavior related to dissatisfaction with body shape or size, as well as inadequate eating behavior such as purgative practices, binge eating and dietary restrictions for weight loss and control purposes. ED assessments are carried out through questionnaires/scales focused on ED symptoms. Meanwhile, electronic health records (EHR) should help health professionals to make decisions by providing data to support individual decisions. Aim: The current article aims to present a solution for the integration of ED tools into EHR via openEHR-archetypes and to understand the challenges involving in this process. Methods: This is an exploratory study. The literature review focused on finding the main scales applied to ED screening, which were organized and structured into openEHR-archetypes. The Ocean Archetype Editor software was used as openEHR modeling tool. Results: Three new open-EHR archetypes (Eating attitudes test - EAT-40 and its short-version - EAT-26; and Bulimic Investigatory Test, Edinburgh - BITE) were developed in the initial stage of the current study. According to a review conducted by a member of our research group, these archetypes were described as the most often adopted tests by researchers. Conclusions: The quality of medical information is essential to help improving data standards and to assure interoperability. The openEHR-archetypes developed in the current study will be essential to help to improve clinical practices and, mainly, clinical research.