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
A Framework for Interpretability in Machine Learning for Medical Imaging
Alan Q. Wang, Batuhan K. Karaman, Heejong Kim, Jacob Rosenthal, Rachit Saluja, Sean I. Young, Mert R. Sabuncu
Self-distilled Masked Attention guided masked image modeling with noise Regularized Teacher (SMART) for medical image analysis
Jue Jiang, Harini Veeraraghavan
Anatomy-informed Data Augmentation for Enhanced Prostate Cancer Detection
Balint Kovacs, Nils Netzer, Michael Baumgartner, Carolin Eith, Dimitrios Bounias, Clara Meinzer, Paul F. Jaeger, Kevin S. Zhang, Ralf Floca, Adrian Schrader, Fabian Isensee, Regula Gnirs, Magdalena Goertz, Viktoria Schuetz, Albrecht Stenzinger, Markus Hohenfellner, Heinz-Peter Schlemmer, Ivo Wolf, David Bonekamp, Klaus H. Maier-Hein
SAM3D: Segment Anything Model in Volumetric Medical Images
Nhat-Tan Bui, Dinh-Hieu Hoang, Minh-Triet Tran, Gianfranco Doretto, Donald Adjeroh, Brijesh Patel, Arabinda Choudhary, Ngan Le
IP-UNet: Intensity Projection UNet Architecture for 3D Medical Volume Segmentation
Nyothiri Aung, Tahar Kechadi, Liming Chen, Sahraoui Dhelim
DeepLOC: Deep Learning-based Bone Pathology Localization and Classification in Wrist X-ray Images
Razan Dibo, Andrey Galichin, Pavel Astashev, Dmitry V. Dylov, Oleg Y. Rogov