Literature Review: Clinical Data Interoperability Models

Author:

Ait Abdelouahid Rachida12ORCID,Debauche Olivier23ORCID,Mahmoudi Saïd2ORCID,Marzak Abdelaziz1ORCID

Affiliation:

1. Department of Mathematics and Computer sciences, LTIM, Faculty of sciences Ben M’sick, Hassan II University of Casablanca, Casablanca 7955, Morocco

2. Faculty of Engineering, ILIA, University of Mons, 7000 Mons, Belgium

3. Elevéo, R&D Service, Innovation Department, Awé Group, 5590 Ciney, Belgium

Abstract

A medical entity (hospital, nursing home, rest home, revalidation center, etc.) usually includes a multitude of information systems that allow for quick decision-making close to the medical sensors. The Internet of Medical Things (IoMT) is an area of IoT that generates a lot of data of different natures (radio, CT scan, medical reports, medical sensor data). However, these systems need to share and exchange medical information in a seamless, timely, and efficient manner with systems that are either within the same entity or other healthcare entities. The lack of inter- and intra-entity interoperability causes major problems in the analysis of patient records and leads to additional financial costs (e.g., redone examinations). To develop a medical data interoperability architecture model that will allow providers and different actors in the medical community to exchange patient summary information with other caregivers and partners to improve the quality of care, the level of data security, and the efficiency of care should take stock of the state of knowledge. This paper discusses the challenges faced by medical entities in sharing and exchanging medical information seamlessly and efficiently. It highlights the need for inter- and intra-entity interoperability to improve the analysis of patient records, reduce financial costs, and enhance the quality of care. The paper reviews existing solutions proposed by various researchers and identifies their limitations. The analysis of the literature has shown that the HL7 FHIR standard is particularly well adapted for exchanging and storing health data, while DICOM, CDA, and JSON can be converted in HL7 FHIR or HL7 FHIR to these formats for interoperability purposes. This approach covers almost all use cases.

Funder

ARES, and Infortech and Numediart research institutes

MDPI Information

Publisher

MDPI AG

Subject

Information Systems

Reference40 articles.

1. Bender, D., and Sartipi, K. (2013, January 20–22). HL7 FHIR: An Agile and RESTful approach to healthcare information exchange. Proceedings of the 26th IEEE International Symposium on Computer-Based Medical Systems, Porto, Portugal.

2. Schweitzer, M., Steger, B., Hoerbst, A., Augustin, M., Pfeifer, B., Hausmann, U., and Baumgarten, D. (2022). dHealth 2022, IOS Press.

3. Hl7 Rim: An Incoherent Standard;Smith;Stud. Health Technol. Inform.,2006

4. HL7 Version 3—An object-oriented methodology for collaborative standards development;Beeler;Int. J. Med. Inform.,1998

5. HL7 clinical document architecture, release 2;Dolin;J. Am. Med. Inform. Assoc.,2006

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