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Deep Learning for Low-Field to High-Field MR: Image Quality Transfer with Probabilistic Decimation Simulator

机译:深度学习对高场MR:概率抽取模拟器的图像质量转移

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MR images scanned at low magnetic field (<1T) have lower resolution in the slice direction and lower contrast, due to a relatively small signal-to-noise ratio (SNR) than those from high field (typically 1.5T and 3T). We adapt the recent idea of Image Quality Transfer (IQT) to enhance very low-field structural images aiming to estimate the resolution, spatial coverage, and contrast of high-field images. Analogous to many learning-based image enhancement techniques, IQT generates training data from high-field scans alone by simulating low-field images through a pre-defined decimation model. However, the ground truth decimation model is not well-known in practice, and lack of its specification can bias the trained model, aggravating performance on the real low-field scans. In this paper we propose a probabilistic decimation simulator to improve robustness of model training. It is used to generate and augment various low-field images whose parameters are random variables and sampled from an empirical distribution related to tissue-specific SNR on a 0.36T scanner. The probabilistic decimation simulator is model-agnostic, that is, it can be used with any super-resolution networks. Furthermore we propose a variant of U-Net architecture to improve its learning performance. We show promising qualitative results from clinical low-field images confirming the strong efficacy of IQT in an important new application area: epilepsy diagnosis in sub-Saharan Africa where only low-field scanners are normally available.
机译:在低磁场(<1T)扫描的MR图像具有在切片方向较低的分辨率和较低的对比度,由于比那些从高场(通常1.5T和3T)相对小的信噪比(SNR)。我们适应最近的图像质量转移(IQT)的理念,以提高极低场结构图像,旨在估算分辨率,空间范围和高场图像的对比度。类似于许多基于学习的图像增强技术,IQT产生从高场训练数据通过预先定义的抽取模型模拟低场图像单独扫描。然而,地面实况抽取模型在实践中并不知名,缺乏其规格可促使训练的模式,对真正的低场扫描加重的表现。在本文中,我们提出了一个概率抽取模拟器,以提高模型训练的稳健性。它用于产生和增强各种低场图像,它的参数是随机变量,并从与组织特异性SNR上的0.36T扫描器的经验分布进行采样。概率抽取模拟器是模型无关,也就是说,它可以与任何超解像网络中使用。此外,我们建议掌中宽带架构的一个变种,以提高其学习表现。我们发现有前途的临床低场图像证实了一个重要的新的应用领域IQT的强劲功效定性结果:在撒哈拉以南非洲地区癫痫的诊断只有低场扫描仪通常使用。

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