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Super‐resolution musculoskeletal MRI MRI using deep learning

机译:使用深度学习的超分辨率肌肉骨骼MRI MRI

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Purpose To develop a super‐resolution technique using convolutional neural networks for generating thin‐slice knee MR images from thicker input slices, and compare this method with alternative through‐plane interpolation methods. Methods We implemented a 3D convolutional neural network entitled DeepResolve to learn residual‐based transformations between high‐resolution thin‐slice images and lower‐resolution thick‐slice images at the same center locations. DeepResolve was trained using 124 double echo in steady‐state (DESS) data sets with 0.7‐mm slice thickness and tested on 17 patients. Ground‐truth images were compared with DeepResolve, clinically used tricubic interpolation, and Fourier interpolation methods, along with state‐of‐the‐art single‐image sparse‐coding super‐resolution. Comparisons were performed using structural similarity, peak SNR, and RMS error image quality metrics for a multitude of thin‐slice downsampling factors. Two musculoskeletal radiologists ranked the 3 data sets and reviewed the diagnostic quality of the DeepResolve, tricubic interpolation, and ground‐truth images for sharpness, contrast, artifacts, SNR, and overall diagnostic quality. Mann‐Whitney U tests evaluated differences among the quantitative image metrics, reader scores, and rankings. Cohen's Kappa (κ) evaluated interreader reliability. Results DeepResolve had significantly better structural similarity, peak SNR, and RMS error than tricubic interpolation, Fourier interpolation, and sparse‐coding super‐resolution for all downsampling factors ( p ??.05, except 4?×?and 8?×?sparse‐coding super‐resolution downsampling factors). In the reader study, DeepResolve significantly outperformed ( p ??.01) tricubic interpolation in all image quality categories and overall image ranking. Both readers had substantial scoring agreement (κ?=?0.73). Conclusion DeepResolve was capable of resolving high‐resolution thin‐slice knee MRI from lower‐resolution thicker slices, achieving superior quantitative and qualitative diagnostic performance to both conventionally used and state‐of‐the‐art methods.
机译:目的,要使用卷积神经网络开发超分辨率技术,用于从较厚的输入切片生成薄片膝关节MR图像,并将该方法与替代的通过平面插值方法进行比较。方法我们实施了一个赋予Deepresolve的3D卷积神经网络,以学习在同一中心位置处的高分辨率薄片图像和较低分辨率厚切片图像之间的残差转换。使用0.7毫米切片厚度的稳态(DESS)数据组中的124个双回波培训Deepresolve培训,并在17名患者上进行测试。与Deepresolve,临床使用的三字插值和傅里叶插值方法进行比较地面图像,以及最先进的单图像稀疏编码超分辨率。使用结构相似性,峰值SNR和RMS误差图像质量指标进行比较,用于多个薄切片下采样因子。两个肌肉骨骼放射科医生排名三个数据集,并审查了DeePresolve,Tricubic插值和地面真实图像的诊断质量,以满足清晰度,对比度,工件,SNR和整体诊断质量。 Mann-Whitney U测试评估了定量图像指标,读者分数和排名之间的差异。科恩的kappa(κ)评估了中间体的可靠性。结果DeePresolve的结构相似性,峰值SNR和RMS误差明显优于Tricubic插值,傅里叶插值和所有下采样因子的稀疏编码超分辨率(P?& 05,除4?×和8除外) ?稀疏编码超分辨率下采样因子)。在读者研究中,Deepresolve在所有图像质量类别和整体图像排名中显着优于大于胜过两个读者都有很大的评分协议(κ= 0.73)。结论Deepresolve能够从较低分辨率较厚的切片中解析高分辨率薄片膝关节MRI,为常规使用和最先进的方法实现了卓越的定量和定性诊断性能。

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