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Segmentation of arteriovenous malformations nidus and vessel in digital subtraction angiography images based on an iterative thresholding method

机译:基于迭代阈值法的数字减影血管造影图像中动静脉畸形和血管的分割

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Digital subtraction angiography (DSA) plays an important role in the diagnosis and therapy of vascular diseases. Segmentation of nidus and vessel in DSA images is an essential step in the diagnosis of arteriovenous malformations (AVM). In this paper, a novel segmentation method based on the global and iterative local thresholding is proposed to segment the nidus and vessel in DSA images. Firstly, the original image is divided into proper subimages. For each subimage, Ostu's method is primarily used and pixels are classified into two groups by the threshold. Then, according to the variance of the subimage intensities, the mean or median values of two groups are calculated to sort the pixels into three classes. These three classes represent the dark AVM and vessel, the bright background and undetermined regions in the original DSA image. The first two classes are determined directly and will not be processed further. The undetermined regions are processed in the next iteration to segment tiny vessels until the thresholds between two iterations are less than a preset one. Finally, all classes are combined to create the segmentation result. We test this method on DSA images of the AVM. Experimental results show that the proposed method performs better than the other state-of-the-art methods in the segmentation of DSA images. The proposed method can identify fine and tiny vessel structures, as well as distinguish large AVM nidus in one framework.
机译:数字减影血管造影(DSA)在血管疾病的诊断和治疗中起着重要作用。 DSA图像中的nidus和血管的分割是动静脉畸形(AVM)诊断的重要步骤。本文提出了一种基于全局和局部迭代阈值的分割方法,用于对DSA图像中的nidus和血管进行分割。首先,将原始图像分为适当的子图像。对于每个子图像,主要使用Ostu方法,并且按阈值将像素分为两组。然后,根据子图像强度的变化,计算两组的平均值或中值以将像素分为三类。这三个类别代表原始DSA图像中的深色AVM和血管,明亮的背景和不确定的区域。前两个类别是直接确定的,将不再进行进一步处理。未确定的区域将在下一次迭代中进行处理,以细分细小的血管,直到两次迭代之间的阈值小于预设的阈值为止。最后,将所有类组合在一起以创建分割结果。我们在AVM的DSA图像上测试此方法。实验结果表明,所提出的方法在分割DSA图像方面比其他最先进的方法表现更好。所提出的方法可以识别精细和微小的血管结构,并在一个框架中区分大型AVM巢。

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