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Functional Brain Areas Mapping in Patients with Glioma Based on Resting-State fMRI Data Decomposition

机译:基于静息状态的静脉瘤患者的功能性大脑区域测绘静态FMRI数据分解

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In current work we propose a three-step approach to automatic and efficient functional brain areas mapping as well demonstrate in case studies on three patients with gliomas the potential applicability of constrained source separation technique (semiblind Independent Component Analysis, ICA) to brain networks discovery and the similarity of task-based-fMRI (t-fMRI) and resting state-fMRI (rs-fMRI) results. Blind and semiblind ICA-analysis was applied for both methods t-fMRI and rs-fMRI. To measure similarity between spatial maps we used Dice coefficient, which shows the ratio of overlapping voxels and all active voxels in two compared maps for each patient Based on the analysis of Dice coefficients, there was a fairly high degree of overlap between the t-fMRI active areas, Broca and Wernicke and the language network obtained from rs-fMRI. The degree of motor areas overlap with sensorimotor network is less pronounced, but the activation sites correspond to anatomical landmarks - a complex of central gyri and supplementary motor area. In general, in comparisons of the functional brain areas obtained with t-fMRI and rs-fMRI, there is a greater specificity of semiblind ICA compared to blind ICA. RSNs of interest (motor and language) discovered by rs-fMRI highly correlate with t-fMRI reference and are located in anticipated anatomical regions. As a result, rs-fMRI maps seem as a good approximation of t-fMRI maps, especially in case of semiblind ICA decomposition. We hope that further our research of individual changes in sensorimotor and language networks based on functional rs-MRI will allow predicting the activity of neural network architectures and non-invasive mapping of functional areas for preoperative planning.
机译:在当前工作中,我们提出了一种三步骤方法来自动和有效的功能性脑区域映射的情况下,研究以及表明在三个患者胶质瘤约束源分离技术(半盲独立分量分析,ICA)到大脑网络发现的潜在适用性和的相似性任务的基于功能磁共振成像(叔功能磁共振成像)和静息状态的fMRI(RS-fMRI)技术的结果。盲和半盲ICA-分析应用于这两种方法叔功能磁共振成像和RS-功能磁共振成像。为了测量,我们使用骰子系数,其示出了重叠在两个比较的地图的体素和所有活动体素为基于骰子系数的分析每个病人的比率空间地图之间的相似性,有T形的fMRI之间相当高程度的重叠有源区,布罗卡和韦尼克和从RS-功能磁共振成像得到的语言网络。运动区的程度与感觉运动网络不太明显重叠,但激活站点对应解剖标志 - 一个复杂的中央脑回和辅助运动区的。通常,在用叔功能磁共振成像和RS-功能磁共振成像得到的脑功能区的比较,有相比盲ICA半盲ICA的更大特异性。感兴趣(电机和语言)匹配的RSN发现通过RS-功能磁共振成像与T-fMRI的基准高度相关,且位于预期的解剖区域。其结果是,RS-fMRI的地图似乎为T-fMRI的地图的一个很好的近似,特别是在半盲ICA分解的情况。我们希望,我们进一步基于功能RS-MRI将使预测神经网络结构和术前规划功能区非侵入性映射的活性感觉和语言的网络个人变化的研究。

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