Magnetic Resonance
Magnetic resonance (MR) techniques, encompassing MRI and MRS, aim to produce high-quality images and spectra for medical diagnosis and scientific research. Current research heavily utilizes deep learning, employing convolutional neural networks (CNNs), transformers, and generative adversarial networks (GANs) to address challenges such as image reconstruction from undersampled data, noise reduction, and automated segmentation of anatomical structures. These advancements improve diagnostic accuracy, accelerate data processing, and enable quantitative analysis, impacting various fields from clinical radiology to materials science. The development of robust uncertainty quantification methods further enhances the reliability and trustworthiness of MR-based analyses.
Papers
Deep Learning-based Unsupervised Domain Adaptation via a Unified Model for Prostate Lesion Detection Using Multisite Bi-parametric MRI Datasets
Hao Li, Han Liu, Heinrich von Busch, Robert Grimm, Henkjan Huisman, Angela Tong, David Winkel, Tobias Penzkofer, Ivan Shabunin, Moon Hyung Choi, Qingsong Yang, Dieter Szolar, Steven Shea, Fergus Coakley, Mukesh Harisinghani, Ipek Oguz, Dorin Comaniciu, Ali Kamen, Bin Lou
LSST: Learned Single-Shot Trajectory and Reconstruction Network for MR Imaging
Hemant Kumar Aggarwal, Sudhanya Chatterjee, Dattesh Shanbhag, Uday Patil, K.V.S. Hari