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基于半监督深度学习模型的全脑功能磁共振配准。

Whole-brain functional MRI registration based on a semi-supervised deep learning model.

机构信息

School of Biomedical Engineering, Southern Medical University, Guangzhou, 510515, China.

出版信息

Med Phys. 2021 Jun;48(6):2847-2858. doi: 10.1002/mp.14777. Epub 2021 Apr 15.

Abstract

PURPOSE

Traditional registration of functional magnetic resonance images (fMRI) is typically achieved through registering their coregistered structural MRI. However, it cannot achieve accurate performance in that functional units which are not necessarily located relative to anatomical structures. In addition, registration methods based on functional information focus on gray matter (GM) information but ignore the importance of white matter (WM). To overcome the limitations of exiting techniques, in this paper, we aim to register resting-state fMRI (rs-fMRI) based directly on rs-fMRI data and make full use of GM and WM information to improve the registration performance.

METHODS

We provide a robust representation of WM functional connectivity features using tissue-specific patch-based functional correlation tensors (ts-PFCTs) as auxiliary information to assist registration. Furthermore, we propose a semi-supervised deep learning model that uses GM and WM information (GM ts-PFCTs and WM ts-PFCTs) during training as a fine tweak to improve registration accuracy when such information is not provided in new test image pairs. We implement our method on the 1000 Functional Connectomes Project dataset. To evaluate our method, a group-level analysis was implemented in resting-state brain functional networks after registration, resulting in t maps.

RESULTS

Our method increases the peak t values of the t maps of default mode network, visual network, central executive network, and sensorimotor network to 21.4, 20.0, 18.4, and 19.0, respectively. Through comparison with traditional methods (FMRIB Software Library(FSL), Statistical Parametric Mapping _ Echo Planar Image(SPM_EPI), and SPM_T1), our method achieves an average improvement of 67.39%, 12.96%, and 25.14%.

CONCLUSION

We propose a semi-supervised deep learning network by adding GM and WM information as auxiliary information for resting-state fMRI registration. GM and WM information is extracted and described as GM ts-PFCTs and WM ts-PFCTs. Experimental results show that our method achieves superior registration performance.

摘要

目的

传统的功能磁共振图像(fMRI)配准通常通过配准其与结构磁共振图像配准的核心来实现。然而,它不能实现准确的性能,因为功能单元不一定位于相对于解剖结构的位置。此外,基于功能信息的配准方法侧重于灰质(GM)信息,但忽略了白质(WM)的重要性。为了克服现有技术的局限性,本文旨在直接基于静息态 fMRI(rs-fMRI)数据进行配准,并充分利用 GM 和 WM 信息来提高配准性能。

方法

我们使用组织特异性斑块功能相关张量(ts-PFCT)作为辅助信息,为 WM 功能连接特征提供稳健的表示,以协助配准。此外,我们提出了一种半监督深度学习模型,该模型在训练过程中使用 GM 和 WM 信息(GM ts-PFCT 和 WM ts-PFCT)作为微调,以在新的测试图像对中未提供此类信息时提高配准精度。我们在 1000 功能连接组项目数据集上实现了我们的方法。为了评估我们的方法,在注册后对静息态脑功能网络进行了组级分析,得到 t 映射。

结果

我们的方法将默认模式网络、视觉网络、中央执行网络和感觉运动网络的 t 映射的峰值 t 值分别提高到 21.4、20.0、18.4 和 19.0。通过与传统方法(FMRIB 软件库(FSL)、统计参数映射 _ 回波平面成像(SPM_EPI)和 SPM_T1)进行比较,我们的方法平均提高了 67.39%、12.96%和 25.14%。

结论

我们提出了一种半监督深度学习网络,通过添加 GM 和 WM 信息作为静息态 fMRI 配准的辅助信息。提取并描述 GM 和 WM 信息作为 GM ts-PFCT 和 WM ts-PFCT。实验结果表明,我们的方法实现了优越的配准性能。

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