From research to clinic: Accelerating the translation of clinical decision support systems by making synthetic data interoperable
Pavitra Chauhan, Mohsen Gamal Saad Askar, Kristian Svendsen, Bj{\o}rn Fjukstad, Brita Elvev{\aa}g, Lars Ailo Bongo, Edvard Pedersen

TL;DR
This paper presents SyntHIR, an architecture utilizing synthetic data to facilitate the development, validation, and deployment of clinical decision support systems within electronic health record systems, overcoming data privacy barriers.
Contribution
The study introduces SyntHIR, a novel architecture that enables interoperability and tool transportability for CDSS development using synthetic data, accelerating clinical translation.
Findings
Successful deployment of a machine learning-based CDSS in a real EHR system.
Demonstrated data interoperability and tool transportability.
Validated approach with real-world patient registry data.
Abstract
The translation of clinical decision support system (CDSS) tools from research settings into the clinic is often non-existent, partly because the focus tends to be on training machine learning models rather than tool development using the model for inference. To develop a CDSS tool that can be deployed in the clinical workflow, there is a need to integrate, validate, and test the tool on the Electronic Health Record (EHR) systems that store and manage patient data. Not surprisingly, it is rarely possible for researchers to get the necessary access to an EHR system due to legal restrictions pertaining to the protection of data privacy in patient records. We propose an architecture for using synthetic data in EHR systems to make CDSS tool development and testing much easier. In this study, the architecture is implemented in the SyntHIR system. SyntHIR has three noteworthy architectural…
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Taxonomy
TopicsElectronic Health Records Systems
