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首页> 外文期刊>Physics in medicine and biology. >Classification-based summation of cerebral digital subtraction angiography series for image post-processing algorithms.
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Classification-based summation of cerebral digital subtraction angiography series for image post-processing algorithms.

机译:基于分类的脑数字减影血管造影系列的总和,用于图像后处理算法。

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X-ray-based 2D digital subtraction angiography (DSA) plays a major role in the diagnosis, treatment planning and assessment of cerebrovascular disease, i.e. aneurysms, arteriovenous malformations and intracranial stenosis. DSA information is increasingly used for secondary image post-processing such as vessel segmentation, registration and comparison to hemodynamic calculation using computational fluid dynamics. Depending on the amount of injected contrast agent and the duration of injection, these DSA series may not exhibit one single DSA image showing the entire vessel tree. The interesting information for these algorithms, however, is usually depicted within a few images. If these images would be combined into one image the complexity of segmentation or registration methods using DSA series would drastically decrease. In this paper, we propose a novel method automatically splitting a DSA series into three parts, i.e. mask, arterial and parenchymal phase, to provide one final image showing all important vessels with less noise and moving artifacts. This final image covers all arterial phase images, either by image summation or by taking the minimum intensities. The phase classification is done by a two-step approach. The mask/arterial phase border is determined by a Perceptron-based method trained from a set of DSA series. The arterial/parenchymal phase border is specified by a threshold-based method. The evaluation of the proposed method is two-sided: (1) comparison between automatic and medical expert-based phase selection and (2) the quality of the final image is measured by gradient magnitudes inside the vessels and signal-to-noise (SNR) outside. Experimental results show a match between expert and automatic phase separation of 93%/50% and an average SNR increase of up to 182% compared to summing up the entire series.
机译:基于X射线的2D数字减影血管造影(DSA)在脑血管疾病(即动脉瘤,动静脉畸形和颅内狭窄)的诊断,治疗计划和评估中起着重要作用。 DSA信息越来越多地用于二次图像后处理,例如血管分割,配准以及与使用计算流体动力学进行的血液动力学计算的比较。根据注入的造影剂的量和注入的持续时间,这些DSA系列可能不会显示一张显示整个血管树的DSA图像。但是,这些算法的有趣信息通常在几幅图像中描述。如果将这些图像组合成一个图像,则使用DSA系列的分割或配准方法的复杂性将大大降低。在本文中,我们提出了一种新颖的方法,可将DSA系列自动分成三个部分,即面罩,动脉和实质阶段,以提供一张最终图像,显示所有重要血管的噪声和运动伪影更少。该最终图像通过图像求和或采用最小强度覆盖了所有动脉相位图像。阶段分类通过两步法完成。掩膜/动脉相边界是通过基于DSA系列训练的基于感知器的方法确定的。动脉/实质相位边界是通过基于阈值的方法指定的。提出的方法的评估有两个方面:(1)自动和基于医学专家的相位选择之间的比较;(2)通过血管内的梯度幅度和信噪比(SNR)测量最终图像的质量)以外。实验结果表明,与对整个序列求和相比,专家相分离和自动相分离之间的匹配度为93%/ 50%,平均SNR提高了182%。

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