Medical Image Analysis
Medical image analysis uses computational methods to extract meaningful information from medical images, primarily aiming to improve diagnosis, treatment planning, and disease understanding. Current research heavily emphasizes the development and application of deep learning models, including transformers, U-Nets, and novel architectures like Mamba, alongside techniques like self-explainable AI and efficient fine-tuning for improved accuracy, robustness, and explainability. This field is crucial for advancing healthcare, enabling faster and more accurate diagnoses, personalized treatment strategies, and ultimately improving patient outcomes.
Papers
When Eye-Tracking Meets Machine Learning: A Systematic Review on Applications in Medical Image Analysis
Sahar Moradizeyveh, Mehnaz Tabassum, Sidong Liu, Robert Ahadizad Newport, Amin Beheshti, Antonio Di Ieva
In-context learning enables multimodal large language models to classify cancer pathology images
Dyke Ferber, Georg Wölflein, Isabella C. Wiest, Marta Ligero, Srividhya Sainath, Narmin Ghaffari Laleh, Omar S. M. El Nahhas, Gustav Müller-Franzes, Dirk Jäger, Daniel Truhn, Jakob Nikolas Kather
Exploring Intrinsic Properties of Medical Images for Self-Supervised Binary Semantic Segmentation
Pranav Singh, Jacopo Cirrone
3D Lymphoma Segmentation on PET/CT Images via Multi-Scale Information Fusion with Cross-Attention
Huan Huang, Liheng Qiu, Shenmiao Yang, Longxi Li, Jiaofen Nan, Yanting Li, Chuang Han, Fubao Zhu, Chen Zhao, Weihua Zhou