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A fully automated method for quantitative cerebral hemodynamic analysis using DSC–MRI

机译:使用DSC–MRI的定量脑血流动力学定量分析的全自动方法

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摘要

Dynamic susceptibility contrast (DSC)-based perfusion analysis from MR images has become an established method for analysis of cerebral blood volume (CBV) in glioma patients. To date, little emphasis has, however, been placed on quantitative perfusion analysis of these patients, mainly due to the associated increased technical complexity and lack of sufficient stability in a clinical setting. The aim of our study was to develop a fully automated analysis framework for quantitative DSC-based perfusion analysis. The method presented here generates quantitative hemodynamic maps without user interaction, combined with automatic segmentation of normal-appearing cerebral tissue. Validation of 101 patients with confirmed glioma after surgery gave mean values for CBF, CBV, and MTT, extracted automatically from normal-appearing whole-brain white and gray matter, in good agreement with literature values. The measured age- and gender-related variations in the same parameters were also in agreement with those in the literature. Several established analysis methods were compared and the resulting perfusion metrics depended significantly on method and parameter choice. In conclusion, we present an accurate, fast, and automatic quantitative perfusion analysis method where all analysis steps are based on raw DSC data only.
机译:基于动态敏感性对比(DSC)的MR图像灌注分析已成为分析神经胶质瘤患者脑血容量(CBV)的既定方法。迄今为止,主要由于相关的技术复杂性增加和在临床环境中缺乏足够的稳定性,因此很少对这些患者进行定量灌注分析。我们研究的目的是为基于DSC的定量灌注分析开发一个全自动分析框架。此处介绍的方法无需用户交互即可生成定量的血流动力学图,并结合正常出现的脑组织的自动分割。对101名经证实的神经胶质瘤患者进行了手术后的验证,得出了CBF,CBV和MTT的平均值,这些平均值是从正常出现的全脑白和灰质中自动提取的,与文献值相吻合。在相同参数下测得的与年龄和性别相关的变化也与文献中的一致。比较了几种已建立的分析方法,得出的灌注指标在很大程度上取决于方法和参数的选择。总之,我们提出了一种准确,快速,自动的定量灌注分析方法,其中所有分析步骤仅基于原始DSC数据。

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