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利用磁敏感加权成像对急性有先兆偏头痛患者脑静脉进行定量分析:一种全自动定量分析算法。

Quantification of cerebral veins in patients with acute migraine with aura: A fully automated quantification algorithm using susceptibility-weighted imaging.

机构信息

Institute of Diagnostic and Interventional Radiology, Cantonal Hospital Frauenfeld, Spital Thurgau AG, Frauenfeld, Switzerland.

Institute of Diagnostic and Interventional Radiology, Cantonal Hospital Luzern, Luzern, Switzerland.

出版信息

PLoS One. 2020 Jun 3;15(6):e0233992. doi: 10.1371/journal.pone.0233992. eCollection 2020.

Abstract

INTRODUCTION

Susceptibility weighted imaging (SWI) is a very sensitive technique that often depicts prominent focal veins (PFV) in patients with acute migraine with aura (MwA). Interpretation of visual venous asymmetry (VVA) between brain hemispheres on SWI may help support the clinical diagnosis of MwA. Our goal was to develop an automated algorithm for segmentation and quantification of cerebral veins using SWI.

MATERIALS AND METHODS

Expert readers visually evaluated SWI of patients with acute MwA for VVA. Subsequently a fully automated algorithm based on 3D normalization and 2D imaging processing using SPM and MATLAB image processing software including top-hat transform was used to quantify cerebral veins and to calculate volumetric differences between hemispheres.

RESULTS

Fifty patients with MwA were examined with SWI. VVA was present in 20 of 50 patients (40%). In 95% of patients with VVA, the fully automated calculation agreed with the side that visually harboured more PFV. Our algorithm showed a sensitivity of 95%, specificity of 90% and accuracy of 92% for detecting VVA. Patients with VVA had significantly larger vein volume on the hemisphere with more PFV compared to patients without (15.90 ± 5.38 ml vs 11.93 ± 5.31 ml; p = 0.013). The mean difference in venous volume between hemispheres in patients with VVA was larger compared to patients without VVA (16.34 ± 7.76% vs 4.31 ± 3.26% p < 1E-10). The average time between aura onset and SWI correlated negatively with venous volume of the dominant brain hemisphere (r = -0.348; p = 0.038).

CONCLUSION

A fully automated algorithm can accurately identify and quantify cerebral venous distribution on SWI. Absolute quantification may be useful for the future assessment of patients with suspected diseases, which may be associated with a unilateral abnormal degree of venous oxygenation.

摘要

简介

磁敏感加权成像(SWI)是一种非常敏感的技术,常用于描绘急性有先兆偏头痛(MwA)患者的明显局灶性静脉(PFV)。SWI 上脑半球之间的视觉静脉不对称(VVA)的解读可能有助于支持 MwA 的临床诊断。我们的目标是开发一种使用 SWI 对脑静脉进行分割和定量的自动化算法。

材料和方法

专家读者对急性 MwA 患者的 SWI 进行了 VVA 视觉评估。随后,使用基于 3D 归一化和 SPM 及 MATLAB 图像处理软件的 2D 图像处理的全自动算法,包括顶帽变换,对脑静脉进行定量,并计算半球间的容积差异。

结果

对 50 例 MwA 患者进行了 SWI 检查。50 例患者中有 20 例(40%)存在 VVA。在 95%有 VVA 的患者中,全自动计算与视觉上含有更多 PFV 的一侧一致。我们的算法对 VVA 的检测具有 95%的敏感性、90%的特异性和 92%的准确性。与没有 VVA 的患者相比,有 VVA 的患者在 PFV 较多的半球上静脉容积明显更大(15.90±5.38ml 与 11.93±5.31ml;p=0.013)。VVA 患者与无 VVA 患者之间静脉容积的平均差异较大(16.34±7.76%与 4.31±3.26%;p<1E-10)。先兆发作与 SWI 之间的平均时间与优势半球的静脉容积呈负相关(r=-0.348;p=0.038)。

结论

全自动算法可以准确识别和定量 SWI 上的脑静脉分布。绝对定量可能对未来评估疑似疾病患者有用,这些患者可能与单侧静脉氧合程度异常有关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cba6/7269254/9fe0ac20a5dc/pone.0233992.g001.jpg

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