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Gated Recurrent Neural Networks for Accelerated Ventilation MRI

机译:门控递归神经网络用于加速通气MRI

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Thanks to recent advancements of specific acquisition methods and post-processing, proton Magnetic Resonance Imaging became an alternative imaging modality for detecting and monitoring chronic pulmonary disorders. Currently, ventilation maps of the lung are calculated from time-resolved image series which are acquired under free breathing. Each series consists of 140 coronal 2D images containing several breathing cycles. To cover the majority of the lung, such a series is acquired at several coronal slice-positions. A reduction of the number of images per slice enable an increase in the number of slice-positions per patient and therefore a more detailed analysis of the lung function without adding more stress to the patient. In this paper, we present a new method in order to reduce the number of images for one coronal slice while preserving the quality of the ventilation maps. As the input is a time-dependent signal, we designed our model based on Gated Recurrent Units. The results show that our method is able to compute ventilation maps with a high quality using only 40 images. Furthermore, our method shows strong robustness regarding changes in the breathing cycles during the acquisition.
机译:由于特定采集方法和后处理技术的最新发展,质子磁共振成像已成为检测和监测慢性肺部疾病的另一种成像方式。当前,根据在自由呼吸下获取的时间分辨图像序列来计算肺的通气图。每个系列由140个冠状2D图像组成,包含多个呼吸周期。为了覆盖大部分肺,在多个冠状切片位置采集了这样的序列。减少每个切片的图像数量可以增加每个患者的切片位置数量,因此可以在不增加患者压力的情况下对肺功能进行更详细的分析。在本文中,我们提出了一种新方法,以减少一个冠状切片的图像数量,同时保留通气图的质量。由于输入是随时间变化的信号,因此我们基于门控循环单元设计了模型。结果表明,我们的方法仅使用40张图像就能计算出高质量的通风图。此外,我们的方法对于采集过程中呼吸周期的变化表现出强大的鲁棒性。

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