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ROAD2H: Development and evaluation of an open-source explainable artificial intelligence approach for managing co-morbidity and clinical guidelines.
Domínguez, Jesús; Prociuk, Denys; Marovic, Branko; Cyras, Kristijonas; Cocarascu, Oana; Ruiz, Francis; Mi, Ella; Mi, Emma; Ramtale, Christian; Rago, Antonio; Darzi, Ara; Toni, Francesca; Curcin, Vasa; Delaney, Brendan.
Affiliation
  • Domínguez J; Department of Population Health Sciences King's College London London UK.
  • Prociuk D; Imperial College London London UK.
  • Marovic B; University of Belgrade Belgrade Serbia.
  • Cyras K; Imperial College London London UK.
  • Cocarascu O; Department of Informatics King's College London London UK.
  • Ruiz F; London School of Hygiene and Tropical Medicine London UK.
  • Mi E; University of Oxford Oxford UK.
  • Mi E; University of Oxford Oxford UK.
  • Ramtale C; Imperial College London London UK.
  • Rago A; Imperial College London London UK.
  • Darzi A; Imperial College London London UK.
  • Toni F; Imperial College London London UK.
  • Curcin V; Department of Population Health Sciences King's College London London UK.
  • Delaney B; Imperial College London London UK.
Learn Health Syst ; 8(2): e10391, 2024 Apr.
Article in En | MEDLINE | ID: mdl-38633019
ABSTRACT

Introduction:

Clinical decision support (CDS) systems (CDSSs) that integrate clinical guidelines need to reflect real-world co-morbidity. In patient-specific clinical contexts, transparent recommendations that allow for contraindications and other conflicts arising from co-morbidity are a requirement. In this work, we develop and evaluate a non-proprietary, standards-based approach to the deployment of computable guidelines with explainable argumentation, integrated with a commercial electronic health record (EHR) system in Serbia, a middle-income country in West Balkans.

Methods:

We used an ontological framework, the Transition-based Medical Recommendation (TMR) model, to represent, and reason about, guideline concepts, and chose the 2017 International global initiative for chronic obstructive lung disease (GOLD) guideline and a Serbian hospital as the deployment and evaluation site, respectively. To mitigate potential guideline conflicts, we used a TMR-based implementation of the Assumptions-Based Argumentation framework extended with preferences and Goals (ABA+G). Remote EHR integration of computable guidelines was via a microservice architecture based on HL7 FHIR and CDS Hooks. A prototype integration was developed to manage chronic obstructive pulmonary disease (COPD) with comorbid cardiovascular or chronic kidney diseases, and a mixed-methods evaluation was conducted with 20 simulated cases and five pulmonologists.

Results:

Pulmonologists agreed 97% of the time with the GOLD-based COPD symptom severity assessment assigned to each patient by the CDSS, and 98% of the time with one of the proposed COPD care plans. Comments were favourable on the principles of explainable argumentation; inclusion of additional co-morbidities was suggested in the future along with customisation of the level of explanation with expertise.

Conclusion:

An ontological model provided a flexible means of providing argumentation and explainable artificial intelligence for a long-term condition. Extension to other guidelines and multiple co-morbidities is needed to test the approach further.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Learn Health Syst / Learning health systems Year: 2024 Document type: Article Country of publication:

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Learn Health Syst / Learning health systems Year: 2024 Document type: Article Country of publication: