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No Image, No Problem: End-to-End Multi-Task Cardiac Analysis from Undersampled k-Space

arXiv:2603.09945v144.8h-index: 11
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This addresses a fundamental bottleneck in clinical cardiac MRI workflows by enabling direct diagnostic analysis from undersampled data, potentially improving efficiency and accuracy for medical practitioners.

The paper tackled the problem of conventional cardiac MRI requiring image reconstruction from undersampled k-space before analysis, which introduces artifacts and bottlenecks, by proposing k-MTR, a framework that directly learns representations from k-space for multi-task analysis, achieving competitive performance in phenotype regression, disease classification, and segmentation.

Conventional clinical CMR pipelines rely on a sequential "reconstruct-then-analyze" paradigm, forcing an ill-posed intermediate step that introduces avoidable artifacts and information bottlenecks. This creates a fundamental mathematical paradox: it attempts to recover high-dimensional pixel arrays (i.e., images) from undersampled k-space, rather than directly extracting the low-dimensional physiological labels actually required for diagnosis. To unlock the direct diagnostic potential of k-space, we propose k-MTR (k-space Multi-Task Representation), a k-space representation learning framework that aligns undersampled k-space data and fully-sampled images into a shared semantic manifold. Leveraging a large-scale controlled simulation of 42,000 subjects, k-MTR forces the k-space encoder to restore anatomical information lost to undersampling directly within the latent space, bypassing the explicit inverse problem for downstream analysis. We demonstrate that this latent alignment enables the dense latent space embedded with high-level physiological semantics directly from undersampled frequencies. Across continuous phenotype regression, disease classification, and anatomical segmentation, k-MTR achieves highly competitive performance against state-of-the-art image-domain baselines. By showcasing that precise spatial geometries and multi-task features can be successfully recovered directly from the k-space representations, k-MTR provides a robust architectural blueprint for task-aware cardiac MRI workflows.

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