Applying Metalevel Argumentation Frameworks to Support Medical Decision Making

Kokciyan, Nadin, Sassoon, Isabel, Sklar, Elizabeth , Parsons, Simon and Modgil, Sanjay (2021) Applying Metalevel Argumentation Frameworks to Support Medical Decision Making. IEEE Intelligent Systems . ISSN 1541-1672

Full content URL: https://doi.ieeecomputersociety.org/10.1109/MIS.20...

Documents
Applying Metalevel Argumentation Frameworks to Support Medical Decision Making
Authors' Accepted Manuscript
[img]
[Download]
[img]
Preview
PDF
ISSI-2020-08-0225.R1_Kokciyan.pdf - Whole Document

618kB
Item Type:Article
Item Status:Live Archive

Abstract

People are increasingly employing artificial intelligence as the basis for decision-support systems (DSSs) to assist them in making well-informed decisions. Adoption of DSS is challenging when such systems lack support, or evidence, for justifying their recommendations. DSSs are widely applied in the medical domain, due to the complexity of the domain and the sheer volume of data that render manual processing difficult. This paper proposes a metalevel argumentation-based decision-support system that can reason with heterogeneous data (e.g. body measurements, electronic health records, clinical guidelines), while incorporating the preferences of the human beneficiaries of those decisions. The system constructs template-based explanations for the recommendations that it makes. The proposed framework has been implemented in a system to support stroke patients and its functionality has been tested in a pilot study. User feedback shows that the system can run effectively over an extended period.

Keywords:Computational argumentation, Decision-support systems, Explainable AI, Healthcare
Subjects:G Mathematical and Computer Sciences > G700 Artificial Intelligence
Divisions:College of Science > School of Computer Science
ID Code:43690
Deposited On:21 Jan 2021 16:13

Repository Staff Only: item control page