Medical Imaging
Medical imaging research focuses on developing and improving AI-powered methods for analyzing medical images, primarily aiming to enhance diagnostic accuracy, efficiency, and accessibility. Current research emphasizes robust model architectures (like Vision Transformers and UNets) and algorithms (including federated learning, generative adversarial networks, and diffusion models) to address challenges such as data scarcity, domain shifts (e.g., scanner variations), and privacy concerns. These advancements hold significant potential for improving clinical decision-making, particularly in areas with limited radiologist access, and for facilitating more efficient and reliable medical diagnoses.
Papers
Integrating Preprocessing Methods and Convolutional Neural Networks for Effective Tumor Detection in Medical Imaging
Ha Anh Vu
On the Feasibility of Deep Learning Classification from Raw Signal Data in Radiology, Ultrasonography and Electrophysiology
Szilard Enyedi
Adversarial-Robust Transfer Learning for Medical Imaging via Domain Assimilation
Xiaohui Chen, Tie Luo
[Citation needed] Data usage and citation practices in medical imaging conferences
Théo Sourget, Ahmet Akkoç, Stinna Winther, Christine Lyngbye Galsgaard, Amelia Jiménez-Sánchez, Dovile Juodelyte, Caroline Petitjean, Veronika Cheplygina
CRANE: A Redundant, Multi-Degree-of-Freedom Computed Tomography Robot for Heightened Needle Dexterity within a Medical Imaging Bore
Dimitrious Schreiber, Zhaowei Yu, Taylor Henderson, Derek Chen, Alexander Norbasha, Michael C. Yip
RAD-DINO: Exploring Scalable Medical Image Encoders Beyond Text Supervision
Fernando Pérez-García, Harshita Sharma, Sam Bond-Taylor, Kenza Bouzid, Valentina Salvatelli, Maximilian Ilse, Shruthi Bannur, Daniel C. Castro, Anton Schwaighofer, Matthew P. Lungren, Maria Wetscherek, Noel Codella, Stephanie L. Hyland, Javier Alvarez-Valle, Ozan Oktay
Towards Universal Unsupervised Anomaly Detection in Medical Imaging
Cosmin I. Bercea, Benedikt Wiestler, Daniel Rueckert, Julia A. Schnabel