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基于局部低秩的多回波功能磁共振成像数据去噪及其在静息态分析中的应用。

Locally Low-Rank Denoising of Multi-Echo Functional MRI Data With Application in Resting-State Analysis.

机构信息

Department of Radiology, Mayo Clinic, Rochester, MN.

Radiology, Corewell Health William Beaumont University Hospital, Royal Oak, MI.

出版信息

Top Magn Reson Imaging. 2023 Oct 1;32(5):37-49. doi: 10.1097/RMR.0000000000000307. Epub 2023 Sep 27.

Abstract

OBJECTIVES

Locally low-rank (LLR) denoising of functional magnetic resonance imaging (fMRI) time series image data is extended to multi-echo (ME) data. The proposed method extends the capabilities of non-physiologic noise suppression beyond single-echo applications with a dedicated ME algorithm.

MATERIALS AND METHODS

Following an institutional review board (IRB) approved protocol, resting-state fMRI data were acquired in 7 healthy subjects. A compact 3T scanner enabled whole-brain acquisition of multiband ME fMRI data at high spatial resolution (1.4 × 1.4 × 2.8 mm 3 ) with a 1810 ms repetition time (TR). Image data were denoised with ME-LLR preceding functional processing. The results of connectivity maps generated from denoised data were compared with maps generated with equivalent processing of non-denoised images. To assess ME-LLR as a method to reduce scan time, comparisons were made between maps computed from image data with full and retrospectively truncated durations. Assessments were completed with seed-based connectivity analyses using echo-combined image data. In a feasibility assessment, nondenoised and denoised full-duration echo-combined data were equivalently processed with independent component analysis (ICA) and compared.

RESULTS

ME-LLR denoising yielded strengthened resting-state network connectivity maps after nuisance regression and seed-based connectivity analysis. In assessing ME-LLR as a scan reduction mechanism, maps generated from denoised data at half scan time showed comparable quality with maps generated from full-duration, non-denoised data, at both single subject and group levels. ME-LLR substantially increased temporal signal-to-noise ratio (tSNR) for image data respective to each individual echo and for image data after nuisance regression. Among echo-specific image volumes, increases in tSNR yielded by ME-LLR were most pronounced for image data with the longest echo time and thereby lowest SNR. ICA showed resting-state networks consistently identified between non-denoised and denoised data, with clearer demarcation of networks for ME-LLR.

CONCLUSIONS

ME-LLR is demonstrated to suppress non-physiologic noise, enhance functional connectivity map quality, and could potentially facilitate scan time reduction in ME-fMRI.

摘要

目的

将功能磁共振成像 (fMRI) 时间序列图像数据的局部低秩 (LLR) 去噪扩展到多回波 (ME) 数据。该方法通过专门的 ME 算法扩展了单回波应用之外的非生理噪声抑制能力。

材料与方法

在机构审查委员会 (IRB) 批准的方案下,对 7 名健康受试者进行静息态 fMRI 数据采集。紧凑的 3T 扫描仪能够以高空间分辨率 (1.4×1.4×2.8mm 3 ) 采集多频带 ME-fMRI 数据,重复时间 (TR) 为 1810ms。使用 ME-LLR 对图像数据进行去噪,然后再进行功能处理。将从去噪数据生成的连接图的结果与从等效处理的非去噪图像生成的连接图进行比较。为了评估 ME-LLR 作为减少扫描时间的方法,比较了使用完整和回顾性截断持续时间的图像数据生成的连接图。使用基于种子的连接分析完成评估,使用回波组合图像数据进行分析。在可行性评估中,使用独立成分分析 (ICA) 对未经去噪和去噪的完整回波组合数据进行等效处理,并进行比较。

结果

ME-LLR 去噪后,经过干扰回归和种子连接分析,静息状态网络连接图得到增强。在评估 ME-LLR 作为扫描减少机制时,在单个受试者和组水平上,使用一半扫描时间的去噪数据生成的连接图与使用完整、未经去噪数据生成的连接图具有可比的质量。ME-LLR 使每个个体回波的图像数据和干扰回归后的图像数据的时间信号噪声比 (tSNR) 都得到了显著提高。在特定于回波的图像体积中,ME-LLR 引起的 tSNR 增加幅度最大的是回波时间最长且 SNR 最低的图像数据。ICA 显示,非去噪和去噪数据之间始终可以识别出静息状态网络,并且 ME-LLR 更清晰地划分了网络。

结论

证明 ME-LLR 可抑制非生理噪声,提高功能连接图质量,并有可能促进 ME-fMRI 扫描时间的缩短。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/94f4/10549890/6402dd68be7b/tmri-32-37-g001.jpg

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