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Development and initial validation of a data quality evaluation tool in obstetrics real-world data through HL7-FHIR interoperable Bayesian networks and expert rules.

João Coutinho-AlmeidaCarlos SáezRicardo CorreiaPedro Pereira Rodrigues
Published in: JAMIA open (2024)
This study contributes significantly to the field of EHR data quality assessment, with a specific focus on obstetrics. The combination of HL7-FHIR interoperability, machine learning techniques, and expert knowledge presents a robust, adaptable solution to the challenges of healthcare data quality. Future research should explore tailored data quality evaluations for different healthcare contexts, as well as further validation of the tool capabilities, enhancing the tool's utility across diverse medical domains.
Keyphrases
  • electronic health record
  • healthcare
  • big data
  • machine learning
  • quality improvement
  • solid state