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Advisor(s)
Abstract(s)
This paper introduces a prototype for clinical research documentation using the structured information model HL7 CDA and clinical terminology (SNOMED CT). The proposed solution
was integrated with the current electronic health record system (EHR-S) and aimed to implement
interoperability and structure information, and to create a collaborative platform between clinical
and research teams. The framework also aims to overcome the limitations imposed by classical
documentation strategies in real-time healthcare encounters that may require fast access to complex information. The solution was developed in the pediatric hospital (HP) of the University
Hospital Center of Coimbra (CHUC), a national reference for neurodevelopmental disorders, particularly for autism spectrum disorder (ASD), which is very demanding in terms of longitudinal and
cross-sectional data throughput. The platform uses a three-layer approach to reduce components’
dependencies and facilitate maintenance, scalability, and security. The system was validated in a
real-life context of the neurodevelopmental and autism unit (UNDA) in the HP and assessed based
on the functionalities model of EHR-S (EHR-S FM) regarding their successful implementation and
comparison with state-of-the-art alternative platforms. A global approach to the clinical history
of neurodevelopmental disorders was worked out, providing transparent healthcare data coding
and structuring while preserving information quality. Thus, the platform enabled the development
of user-defined structured templates and the creation of structured documents with standardized
clinical terminology that can be used in many healthcare contexts. Moreover, storing structured data
associated with healthcare encounters supports a longitudinal view of the patient’s healthcare data
and health status over time, which is critical in routine and pediatric research contexts. Additionally,
it enables queries on population statistics that are key to supporting the definition of local and global
policies, whose importance was recently emphasized by the COVID pandemic.
Description
Keywords
Registos Electrónicos de Saúde Perturbações do Espectro Autismo Notificação de Doenças Nomenclatura Médica Sistematizada
Citation
Healthcare. 2023;11: 973