Synthetic Sample Selection via Reinforcement Learning
Jiarong Ye, Yuan Xue, L. Rodney Long, Sameer Antani, Zhiyun Xue, Keith, Cheng, Xiaolei Huang

TL;DR
This paper introduces a reinforcement learning approach to select high-quality synthetic medical images for data augmentation, significantly improving classification accuracy in histopathology datasets.
Contribution
It proposes a novel RL-based method using a transformer controller to select reliable synthetic images, enhancing medical image recognition performance.
Findings
Improved classification accuracy by 8.1% on cervical dataset.
Enhanced accuracy by 2.3% on lymph node dataset.
Demonstrated the method's general applicability to medical image recognition.
Abstract
Synthesizing realistic medical images provides a feasible solution to the shortage of training data in deep learning based medical image recognition systems. However, the quality control of synthetic images for data augmentation purposes is under-investigated, and some of the generated images are not realistic and may contain misleading features that distort data distribution when mixed with real images. Thus, the effectiveness of those synthetic images in medical image recognition systems cannot be guaranteed when they are being added randomly without quality assurance. In this work, we propose a reinforcement learning (RL) based synthetic sample selection method that learns to choose synthetic images containing reliable and informative features. A transformer based controller is trained via proximal policy optimization (PPO) using the validation classification accuracy as the reward.…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · AI in cancer detection · Machine Learning in Healthcare
