What do we need to build explainable AI systems for the medical domain?
Andreas Holzinger, Chris Biemann, Constantinos S. Pattichis, Douglas, B. Kell

TL;DR
This paper discusses the importance and challenges of developing explainable AI systems tailored for the medical domain, emphasizing transparency, trust, and compliance with legal regulations.
Contribution
It highlights key research topics and challenges in creating explainable AI for medicine, focusing on heterogeneous data sources like images, omics data, and text.
Findings
Explainable AI can enhance transparency and trust in medical applications.
Legal and privacy regulations motivate the development of re-traceable AI systems.
Medical data complexity requires specialized explainability approaches.
Abstract
Artificial intelligence (AI) generally and machine learning (ML) specifically demonstrate impressive practical success in many different application domains, e.g. in autonomous driving, speech recognition, or recommender systems. Deep learning approaches, trained on extremely large data sets or using reinforcement learning methods have even exceeded human performance in visual tasks, particularly on playing games such as Atari, or mastering the game of Go. Even in the medical domain there are remarkable results. The central problem of such models is that they are regarded as black-box models and even if we understand the underlying mathematical principles, they lack an explicit declarative knowledge representation, hence have difficulty in generating the underlying explanatory structures. This calls for systems enabling to make decisions transparent, understandable and explainable. A…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Machine Learning in Healthcare · Artificial Intelligence in Healthcare and Education
