A Survey on Active Learning and Human-in-the-Loop Deep Learning for Medical Image Analysis
Samuel Budd, Emma C Robinson, Bernhard Kainz

TL;DR
This survey reviews the integration of active learning and human-in-the-loop methods in deep learning for medical image analysis, emphasizing safety, interpretability, and practical deployment challenges.
Contribution
It provides a comprehensive overview of techniques involving human input in deep learning for medical imaging, highlighting future research directions and unifying approaches.
Findings
Active learning improves annotation efficiency and model performance.
Human-in-the-loop enhances interpretability and safety in medical AI.
Practical deployment considerations are critical for clinical adoption.
Abstract
Fully automatic deep learning has become the state-of-the-art technique for many tasks including image acquisition, analysis and interpretation, and for the extraction of clinically useful information for computer-aided detection, diagnosis, treatment planning, intervention and therapy. However, the unique challenges posed by medical image analysis suggest that retaining a human end user in any deep learning enabled system will be beneficial. In this review we investigate the role that humans might play in the development and deployment of deep learning enabled diagnostic applications and focus on techniques that will retain a significant input from a human end user. Human-in-the-Loop computing is an area that we see as increasingly important in future research due to the safety-critical nature of working in the medical domain. We evaluate four key areas that we consider vital for deep…
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