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首页> 外文期刊>BMC Medical Imaging >Deep learning-based segmentation of the lung in MR-images acquired by a stack-of-spirals trajectory at ultra-short echo-times
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Deep learning-based segmentation of the lung in MR-images acquired by a stack-of-spirals trajectory at ultra-short echo-times

机译:在超短期回声时间内由螺旋轨迹获取的MR图像中肺部的深度学习分割

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Functional lung MRI techniques are usually associated with time-consuming post-processing, where manual lung segmentation represents the most cumbersome part. The aim of this study was to investigate whether deep learning-based segmentation of lung images which were scanned by a fast UTE sequence exploiting the stack-of-spirals trajectory can provide sufficiently good accuracy for the calculation of functional parameters. In this study, lung images were acquired in 20 patients suffering from cystic fibrosis (CF) and 33 healthy volunteers, by a fast UTE sequence with a stack-of-spirals trajectory and a minimum echo-time of 0.05?ms. A convolutional neural network was then trained for semantic lung segmentation using 17,713 2D coronal slices, each paired with a label obtained from manual segmentation. Subsequently, the network was applied to 4920 independent 2D test images and results were compared to a manual segmentation using the S?rensen–Dice similarity coefficient (DSC) and the Hausdorff distance (HD). Obtained lung volumes and fractional ventilation values calculated from both segmentations were compared using Pearson’s correlation coefficient and Bland Altman analysis. To investigate generalizability to patients outside the CF collective, in particular to those exhibiting larger consolidations inside the lung, the network was additionally applied to UTE images from four patients with pneumonia and one with lung cancer. The overall DSC for lung tissue was 0.967?±?0.076 (mean?±?standard deviation) and HD was 4.1?±?4.4?mm. Lung volumes derived from manual and deep learning based segmentations as well as values for fractional ventilation exhibited a high overall correlation (Pearson’s correlation coefficent?=?0.99 and 1.00). For the additional cohort with unseen pathologies / consolidations, mean DSC was 0.930?±?0.083, HD?=?12.9?±?16.2?mm and the mean difference in lung volume was 0.032?±?0.048 L. Deep learning-based image segmentation in stack-of-spirals based lung MRI allows for accurate estimation of lung volumes and fractional ventilation values and promises to replace the time-consuming step of manual image segmentation in the future.
机译:功能性肺MRI技术通常与耗时的后处理相关联,其中手动肺分割代表最麻烦的部分。本研究的目的是调查通过利用螺旋轨迹的快速ute序列扫描的肺图像的深度学习的分割是否可以为计算功能参数提供足够好的准确度。在这项研究中,通过伴有螺旋轨迹的快速UTE序列,在患有囊性纤维化(CF)和33个健康志愿者的患者中获得肺图像,其螺旋轨迹轨迹和0.05Ωms的最小回声时间。然后使用17,713 2D冠状切片训练卷积神经网络,用于使用17,713 2D冠状切片进行语义肺分段,每个切片配对从手动分段获得的标签。随后,将网络应用于4920独立的2D测试图像,并使用S?rens-DiCe相似度系数(DSC)和Hausdorff距离(HD)进行比较了结果。使用Pearson的相关系数和Bland Altman分析比较了从两种分段计算的肺体积和分数通气值。为了探讨CF集体以外的患者的普遍性,特别是对于在肺部内显示出较大的整合的患者,该网络另外应用于来自四名肺炎患者的UTE图像和肺癌。肺组织的总体DSC为0.967?±0.076(平均值?±标准偏差)和HD为4.1?±4.4?mm。来自手动和深度学习的分割的肺量以及分数通气的值表现出高的总相关性(Pearson的相关系数?=?0.99和1.00)。对于具有看不见病理/整合的额外群组,平均dsc为0.930?±0.083,HD?= 12.9?±12.9?±12.9?肺体积平均差异为0.032?0.048 L.深度学习的图像基于螺旋堆的肺MRI的分割允许准确地估计肺部卷和分数通风价值,并承诺在未来取代手动图像分割的耗时步骤。

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