Medical Image Datasets
Medical image datasets are crucial for training and evaluating machine learning models used in disease diagnosis and treatment planning. Current research focuses on addressing challenges like data scarcity and imbalance through techniques such as data augmentation (including GANs and image translation), test-time training, and federated learning to improve model performance and generalization across diverse patient populations and imaging modalities. Convolutional neural networks (CNNs), transformers, and large multi-modal models are prominent architectures, often combined with techniques to enhance interpretability and mitigate biases. These advancements hold significant potential for improving the accuracy, efficiency, and accessibility of medical image analysis, ultimately leading to better patient care.
Papers
How does self-supervised pretraining improve robustness against noisy labels across various medical image classification datasets?
Bidur Khanal, Binod Bhattarai, Bishesh Khanal, Cristian Linte
PMFSNet: Polarized Multi-scale Feature Self-attention Network For Lightweight Medical Image Segmentation
Jiahui Zhong, Wenhong Tian, Yuanlun Xie, Zhijia Liu, Jie Ou, Taoran Tian, Lei Zhang
Pseudo Label-Guided Data Fusion and Output Consistency for Semi-Supervised Medical Image Segmentation
Tao Wang, Yuanbin Chen, Xinlin Zhang, Yuanbo Zhou, Junlin Lan, Bizhe Bai, Tao Tan, Min Du, Qinquan Gao, Tong Tong
Shifting to Machine Supervision: Annotation-Efficient Semi and Self-Supervised Learning for Automatic Medical Image Segmentation and Classification
Pranav Singh, Raviteja Chukkapalli, Shravan Chaudhari, Luoyao Chen, Mei Chen, Jinqian Pan, Craig Smuda, Jacopo Cirrone