MK-ResRecon: Multi-Kernel Residual Framework for Texture-Aware 3D MRI Refinement from Sparse 2D Slices

arXiv cs.CV / 5/6/2026

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Key Points

  • The paper introduces MK-ResRecon, a framework to reconstruct high-fidelity 3D MRI volumes from sparsely sampled 2D axial slices while using only about 12.5% of the slices for full-resolution 3D reconstruction.
  • It uses two models—MK-ResRecon to predict missing intermediate 2D slices with a multi-kernel, texture-aware loss, and IdentityRefineNet3D to refine the predicted and original slices jointly into a coherent 3D volume.
  • The approach targets common MRI problems caused by long scan times, especially motion artifacts that can degrade image quality and lead to repeat scans.
  • The authors train on a large T1 post-contrast brain MRI dataset and evaluate on a diverse heterogeneous brain MRI cohort, reporting accurate, hallucination-free, and generalizable results that are clinically validated.
  • Overall, the work aims to enable faster, more patient-friendly MRI acquisition by reducing the number of required slices without sacrificing anatomical detail and smooth 3D structure.

Abstract

Magnetic Resonance Imaging (MRI) acquisition remains a time-intensive and patient-straining process, as prolonged scan dura- tions increase the likelihood of motion artifacts, which degrade image quality and frequently require repeated scans. To address these chal- lenges, we propose a novel framework with two models MK-ResRecon and IdentityRefineNet3D to reconstruct high-fidelity 3D MRI volumes from sparsely sampled 2D slices-requiring only 12.5% of the axial slices for full resolution 3D reconstruction. MK-ResRecon predicts missing in- termediate 2D slices using a multi-kernel texture-aware loss, preserving fine anatomical details. IdentityRefineNet3D refines the predicted slices and the original sparse slices as a single 3D volume to obtain a smooth anatomical structure. We train the models on a large T1-sequence POST- contrast brain MRI dataset and evaluate on a large heterogeneous brain MRI cohort. The work provides accurate, hallucination-free, generaliz- able and clinically validated framework for 3D MRI reconstruction from highly sparse inputs and enables a clinically viable path towards faster and more patient-friendly MRI imaging.