Center for Advanced Imaging Innovation and Research (CAI2R), Department of Radiology, New York University Grossman School of Medicine, New York, NY, USA.
Facebook AI Research, Menlo Park, CA, USA.
Magn Reson Med. 2020 Dec;84(6):3054-3070. doi: 10.1002/mrm.28338. Epub 2020 Jun 7.
To advance research in the field of machine learning for MR image reconstruction with an open challenge.
We provided participants with a dataset of raw k-space data from 1,594 consecutive clinical exams of the knee. The goal of the challenge was to reconstruct images from these data. In order to strike a balance between realistic data and a shallow learning curve for those not already familiar with MR image reconstruction, we ran multiple tracks for multi-coil and single-coil data. We performed a two-stage evaluation based on quantitative image metrics followed by evaluation by a panel of radiologists. The challenge ran from June to December of 2019.
We received a total of 33 challenge submissions. All participants chose to submit results from supervised machine learning approaches.
The challenge led to new developments in machine learning for image reconstruction, provided insight into the current state of the art in the field, and highlighted remaining hurdles for clinical adoption.
通过公开挑战,推动机器学习在磁共振图像重建领域的研究。
我们向参与者提供了一组来自 1594 例连续膝关节检查的原始 k 空间数据。挑战的目标是从这些数据中重建图像。为了在真实数据和那些不熟悉磁共振图像重建的人之间取得平衡,我们为多通道和单通道数据运行了多个轨道。我们基于定量图像指标进行了两阶段评估,然后由放射科医生小组进行评估。挑战于 2019 年 6 月至 12 月进行。
我们共收到 33 项挑战提交。所有参与者都选择提交基于监督学习的方法的结果。
该挑战推动了图像重建领域的机器学习新发展,深入了解了该领域的最新技术水平,并突出了临床应用的剩余障碍。