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再利用诊断性 MRI 以推动脑形态计量学研究——基于学习的图像超分辨率的关键与实用评估。

Recycling diagnostic MRI for empowering brain morphometric research - Critical & practical assessment on learning-based image super-resolution.

机构信息

Department of Diagnostic Radiology, Affiliated Jinling Hospital, Medical School of Nanjing University, #305 East Zhongshan Rd, Nanjing, Jiangsu 210002, China.

Department of Research and Development, Shanghai United Imaging Intelligence Co., Ltd., Shanghai, China; School of Biomedical Engineering, Southern Medical University, Guangzhou, China.

出版信息

Neuroimage. 2021 Dec 15;245:118687. doi: 10.1016/j.neuroimage.2021.118687. Epub 2021 Oct 31.

Abstract

Preliminary studies have shown the feasibility of deep learning (DL)-based super-resolution (SR) technique for reconstructing thick-slice/gap diagnostic MR images into high-resolution isotropic data, which would be of great significance for brain research field if the vast amount of diagnostic MRI data could be successively put into brain morphometric study. However, less evidence has addressed the practicability of the strategy, because lack of a large-sample available real data for constructing DL model. In this work, we employed a large cohort (n = 2052) of peculiar data with both low through-plane resolution diagnostic and high-resolution isotropic brain MR images from identical subjects. By leveraging a series of SR approaches, including a proposed novel DL algorithm of Structure Constrained Super Resolution Network (SCSRN), the diagnostic images were transformed to high-resolution isotropic data to meet the criteria of brain research in voxel-based and surface-based morphometric analyses. We comprehensively assessed image quality and the practicability of the reconstructed data in a variety of morphometric analysis scenarios. We further compared the performance of SR approaches to the ground truth high-resolution isotropic data. The results showed (i) DL-based SR algorithms generally improve the quality of diagnostic images and render morphometric analysis more accurate, especially, with the most superior performance of the novel approach of SCSRN. (ii) Accuracies vary across brain structures and methods, and (iii) performance increases were higher for voxel than for surface based approaches. This study supports that DL-based image super-resolution potentially recycle huge amount of routine diagnostic brain MRI deposited in sleeping state, and turning them into useful data for neurometric research.

摘要

初步研究表明,基于深度学习(DL)的超分辨率(SR)技术对于将厚切片/间隙诊断磁共振成像重建为高分辨率各向同性数据具有可行性,如果能够成功地将大量诊断 MRI 数据应用于脑形态计量学研究,这将对脑研究领域具有重要意义。然而,由于缺乏可用于构建 DL 模型的大量可用真实数据,因此该策略的实用性证据较少。在这项工作中,我们利用了来自相同受试者的具有低平面内分辨率诊断和高分辨率各向同性脑 MR 图像的大型队列(n=2052)的特殊数据。通过利用一系列 SR 方法,包括提出的一种新的基于结构约束的超分辨率网络(SCSRN)的 DL 算法,将诊断图像转换为高分辨率各向同性数据,以满足基于体素和基于表面的形态计量分析中脑研究的标准。我们在各种形态计量分析场景中全面评估了图像质量和重建数据的实用性。我们进一步比较了 SR 方法与真实高分辨率各向同性数据的性能。结果表明:(i)基于 DL 的 SR 算法通常可以提高诊断图像的质量,并使形态计量分析更准确,特别是新颖的 SCSRN 方法的性能最优。(ii)在不同的大脑结构和方法中,准确性存在差异,(iii)基于体素的方法的性能提高幅度高于基于表面的方法。这项研究支持基于 DL 的图像超分辨率技术可以回收大量常规诊断脑 MRI 数据,这些数据可以用于神经计量研究。

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