SIMPLE: Simultaneous Multi-Plane Self-Supervised Learning for Isotropic MRI Restoration from Anisotropic Data
Rotem Benisty, Yevgenia Shteynman, Moshe Porat, Anat Ilivitzki, Moti, Freiman

TL;DR
SIMPLE is a self-supervised learning method that reconstructs isotropic 3D MRI images from anisotropic data using multi-plane information, improving diagnostic accuracy without relying on simulated data.
Contribution
It introduces a novel multi-plane self-supervised approach that directly leverages clinical anisotropic MRI data for true 3D isotropic reconstruction, bypassing the need for simulated training data.
Findings
Outperforms state-of-the-art methods in quantitative metrics.
Enhances volumetric analysis and 3D reconstructions.
Validated by radiologist evaluations.
Abstract
Magnetic resonance imaging (MRI) is crucial in diagnosing various abdominal conditions and anomalies. Traditional MRI scans often yield anisotropic data due to technical constraints, resulting in varying resolutions across spatial dimensions, which limits diagnostic accuracy and volumetric analysis. Super-resolution (SR) techniques aim to address these limitations by reconstructing isotropic high-resolution images from anisotropic data. However, current SR methods often depend on indirect mappings and scarce 3D isotropic data for training, primarily focusing on two-dimensional enhancements rather than achieving genuine three-dimensional isotropy. We introduce ``SIMPLE,'' a Simultaneous Multi-Plane Self-Supervised Learning approach for isotropic MRI restoration from anisotropic data. Our method leverages existing anisotropic clinical data acquired in different planes, bypassing the need…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Medical Imaging Techniques and Applications · Image Retrieval and Classification Techniques
