Explainable Versus Interpretable AI in Healthcare: How to Achieve Understanding
Version
Published
Identifiers
10.3233/SHTI250639
Date Issued
2025-05-15
Author(s)
Type
Article
Language
English
Abstract
The increasing adoption of deep learning methods has intensified the demand for explanations regarding how AI systems generate their results. This necessity originated primarily in the domain of image processing and has expanded to encompass the complexities of large language models (LLMs), particularly in medical contexts. For example, when LLM-based chatbots provide medical advice, the challenge lies in articulating the rationale behind their recommendations, especially when specific features may not be identifiable. This paper explores the distinction between explanation, interpretation, and understanding within AI-driven decision support systems. By adopting Daniel Dennett's intentional stance, we propose a methodology for analyzing how AI explanations can facilitate deeper user engagement and comprehension. Furthermore, we examine the implications of this methodology for the development and regulation of medical chatbots.
Publisher DOI
Journal
Studies in health technology and informatics
ISSN
1879-8365
Publisher URL
Volume
327
Publisher
IOS Press
Submitter
Sariyar, Murat
Citation apa
Moser, D. S., & Sariyar, M. (2025). Explainable Versus Interpretable AI in Healthcare: How to Achieve Understanding. In Studies in health technology and informatics (Vol. 327). IOS Press. https://arbor.bfh.ch/handle/arbor/46324
File(s)![Thumbnail Image]()
Loading...
open access
Name
SHTI-327-SHTI250639.pdf
License
Attribution-NonCommercial 4.0 International
Version
published
Size
196.13 KB
Format
Adobe PDF
Checksum (MD5)
4f57bafcd52dbee399e52e73491e724a
