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位置取向自适应平滑在扩散加权成像中的影响——从扩散指标到纤维束追踪。

The impact of position-orientation adaptive smoothing in diffusion weighted imaging-From diffusion metrics to fiber tractography.

机构信息

Department of Neurosurgery, University of Marburg, Marburg, Germany.

Department of Neurosurgery, The First Affiliated Hospital of Sun Yat-sen University, Guangzhou, China.

出版信息

PLoS One. 2020 May 20;15(5):e0233474. doi: 10.1371/journal.pone.0233474. eCollection 2020.

Abstract

In contrast to commonly used approaches to improve data quality in diffusion weighted imaging, position-orientation adaptive smoothing (POAS) provides an edge-preserving post-processing approach. This study aims to investigate its potential and effects on image quality, diffusion metrics, and fiber tractography of the corticospinal tract in relation to non-post-processed and averaged data. 22 healthy volunteers were included in this study. For each volunteer five clinically applicable diffusion weighted imaging data sets were acquired and post-processed by standard averaging and POAS. POAS post-processing led to significantly higher signal-to-noise-ratios (p < 0.001), lower fractional anisotropy across the whole brain (p < 0.05) and reduced intra-subject variability of diffusion weighted imaging signal intensity and fractional anisotropy (p < 0.001, p = 0.006). Fiber tractography of the corticospinal tract resulted in significantly (p = 0.027, p = 0.014) larger tract volumes while fiber density was the lowest. Similarity across tractography results was highest for POAS post-processed data (p < 0.001). POAS post-processing enhances image quality, decreases the intra-subject variability of signal intensity and fractional anisotropy, increases fiber tract volume of the corticospinal tract, and leads to higher reproducibility of tractography results. Thus, POAS post-processing supports a reliable and more accurate fiber tractography of the corticospinal tract, being mandatory for the clinical use.

摘要

与常用于提高弥散加权成像数据质量的方法不同,位置-取向自适应平滑(POAS)提供了一种保持边缘的后处理方法。本研究旨在探讨其在皮质脊髓束的图像质量、弥散指标和纤维追踪方面的潜力和效果,以与未经后处理和平均化的数据进行比较。本研究纳入了 22 名健康志愿者。每位志愿者均采集了五个临床适用的弥散加权成像数据集,并分别进行标准平均和 POAS 后处理。POAS 后处理导致信号噪声比显著提高(p<0.001),全脑各向异性分数显著降低(p<0.05),弥散加权成像信号强度和各向异性分数的个体内变异性降低(p<0.001,p=0.006)。皮质脊髓束的纤维追踪结果导致束体积显著增大(p=0.027,p=0.014),而纤维密度最低。POAS 后处理数据的追踪结果之间的相似性最高(p<0.001)。POAS 后处理增强了图像质量,降低了信号强度和各向异性分数的个体内变异性,增加了皮质脊髓束的纤维束体积,并提高了纤维追踪结果的可重复性。因此,POAS 后处理支持皮质脊髓束的可靠和更准确的纤维追踪,是临床应用所必需的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/723e/7239461/f6b59f8e7c9f/pone.0233474.g001.jpg

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