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Separation of Cortical Arteries and Veins Using Intrinsic Optical Signals Extracted by Canonical Correlation Analysis

机译:利用典型相关分析提取的固有光信号分离皮质动脉和静脉

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This paper presents an artery-vein separation method in cerebral cortical image with optical imaging of intrinsic signals. The method utiLizes three distinct intrinsic signal sources including low frequency oscillation, respiration and heartbeat, which are extracted from the recorded optical signals by temporal canonical correlation analysis, to reflect the artery-vein difference in temporal domain. Each signal source constructs a correlation-coefficient map to reveal the spatial structure of a specific type of vessel. Low frequency oscillation and heartbeat sources reveal the arterial structure while respiration source reveals the venous structure. Based on the three feature maps, classification of vessel types is achieved by SVM on segmented vessel network. With hand-labeled arteries and veins as the reference standard, the algorithm gives 95.7% true positive rates (TPR) and 7.5% false positive rates (FPR) for the arteries, as well as 92.5% TPR and 4.1% FPR for the veins when tested on ten sets of image sequence. Comparison with previously reported methods demonstrates that this method improves the artery-vein separation performance.
机译:本文提出了一种通过固有信号的光学成像对大脑皮层图像进行动脉-静脉分离的方法。该方法利用了三个独特的固有信号源,包括低频振荡,呼吸和心跳,这些信号源是通过时间典型相关分析从记录的光信号中提取出来的,以反映时域中的脉脉差异。每个信号源构建一个相关系数图,以揭示特定类型船只的空间结构。低频振荡和心跳源显示动脉结构,而呼吸源显示静脉结构。基于这三个特征图,通过SVM在分段船只网络上对船只类型进行分类。以手动标记的动脉和静脉为参考标准,该算法可得出动脉的95.7%真阳性率(TPR)和7.5%的假阳性率(FPR),以及92.5%的TPR和4.1%的FPR在十组图像序列上进行了测试。与以前报道的方法进行比较表明,该方法改善了动脉-静脉分离的性能。

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