4.3 Article

K2S Challenge: From Undersampled K-Space to Automatic Segmentation

Journal

BIOENGINEERING-BASEL
Volume 10, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/bioengineering10020267

Keywords

image reconstruction; segmentation; multi-task learning; magnetic resonance imaging; musculoskeletal; deep learning; compressed sensing

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Magnetic Resonance Imaging (MRI) faces challenges such as long acquisition times and manual annotation. To address these challenges, the K2S challenge was organized to explore the potential of end-to-end approaches. The challenge involved segmenting knee bones and cartilage from undersampled k-space, and showcased strong submissions with high similarity coefficients and preserved features for downstream biomarker analysis.
Magnetic Resonance Imaging (MRI) offers strong soft tissue contrast but suffers from long acquisition times and requires tedious annotation from radiologists. Traditionally, these challenges have been addressed separately with reconstruction and image analysis algorithms. To see if performance could be improved by treating both as end-to-end, we hosted the K2S challenge, in which challenge participants segmented knee bones and cartilage from 8x undersampled k-space. We curated the 300-patient K2S dataset of multicoil raw k-space and radiologist quality-checked segmentations. 87 teams registered for the challenge and there were 12 submissions, varying in methodologies from serial reconstruction and segmentation to end-to-end networks to another that eschewed a reconstruction algorithm altogether. Four teams produced strong submissions, with the winner having a weighted Dice Similarity Coefficient of 0.910 +/- 0.021 across knee bones and cartilage. Interestingly, there was no correlation between reconstruction and segmentation metrics. Further analysis showed the top four submissions were suitable for downstream biomarker analysis, largely preserving cartilage thicknesses and key bone shape features with respect to ground truth. K2S thus showed the value in considering reconstruction and image analysis as end-to-end tasks, as this leaves room for optimization while more realistically reflecting the long-term use case of tools being developed by the MR community.

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