Adaptable image quality assessment using meta-reinforcement learning of task amenability
Shaheer U. Saeed, Yunguan Fu, Vasilis Stavrinides, Zachary M. C. Baum,, Qianye Yang, Mirabela Rusu, Richard E. Fan, Geoffrey A. Sonn, J. Alison, Noble, Dean C. Barratt, Yipeng Hu

TL;DR
This paper introduces a meta-reinforcement learning approach to adaptively assess image quality for medical imaging tasks, reducing reliance on expert labels and improving task-specific image quality prediction.
Contribution
It develops a transfer learning strategy within a meta-RL framework to adapt IQA agents for different definitions of image quality with minimal expert labels.
Findings
IQA agents can be adapted with as little as 19.7% and 29.6% expert labels for classification and segmentation.
The method achieves comparable performance to fully supervised approaches with significantly fewer expert labels.
The approach enhances the flexibility and efficiency of image quality assessment in medical imaging.
Abstract
The performance of many medical image analysis tasks are strongly associated with image data quality. When developing modern deep learning algorithms, rather than relying on subjective (human-based) image quality assessment (IQA), task amenability potentially provides an objective measure of task-specific image quality. To predict task amenability, an IQA agent is trained using reinforcement learning (RL) with a simultaneously optimised task predictor, such as a classification or segmentation neural network. In this work, we develop transfer learning or adaptation strategies to increase the adaptability of both the IQA agent and the task predictor so that they are less dependent on high-quality, expert-labelled training data. The proposed transfer learning strategy re-formulates the original RL problem for task amenability in a meta-reinforcement learning (meta-RL) framework. The…
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Taxonomy
TopicsPhotoacoustic and Ultrasonic Imaging · Image Enhancement Techniques · Radiomics and Machine Learning in Medical Imaging
