Deep End-to-end Adaptive k-Space Sampling, Reconstruction, and Registration for Dynamic MRI
George Yiasemis, Jan-Jakob Sonke, Jonas Teuwen

TL;DR
This paper presents an end-to-end deep learning framework that adaptively samples, reconstructs, and registers dynamic MRI data to improve image quality and motion estimation under undersampling constraints.
Contribution
It introduces a novel integrated deep learning approach that jointly optimizes adaptive k-space sampling, image reconstruction, and registration for dynamic MRI.
Findings
Enhanced motion estimation accuracy from undersampled data
Improved image quality through joint optimization
Flexible framework allowing plug-and-play modules
Abstract
Dynamic MRI enables a range of clinical applications, including cardiac function assessment, organ motion tracking, and radiotherapy guidance. However, fully sampling the dynamic k-space data is often infeasible due to time constraints and physiological motion such as respiratory and cardiac motion. This necessitates undersampling, which degrades the quality of reconstructed images. Poor image quality not only hinders visualization but also impairs the estimation of deformation fields, crucial for registering dynamic (moving) images to a static reference image. This registration enables tasks such as motion correction, treatment planning, and quantitative analysis in applications like cardiac imaging and MR-guided radiotherapy. To overcome the challenges posed by undersampling and motion, we introduce an end-to-end deep learning (DL) framework that integrates adaptive dynamic k-space…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced MRI Techniques and Applications · Advanced X-ray and CT Imaging
