【24h】

Blood Vessel Segmentation in Digital Subtraction Angiograms

机译:数字减影血管造影术中的血管分割

获取原文
获取原文并翻译 | 示例

摘要

The growing use of digital medical imaging gives rise to the question of data archiving and retrieval. Dedicated applications, i.e. telemedicine and image exchange impose severe demands on networking and storage resources. This bottleneck can be moderated using content-orientated image compression which reduces the amount of data while preserving the diagnostic information. This paper presents an new method for automated vessel segmentation which can be used for both, decision support systems and content-orientated image compression of an-giograms. Some vasculature detection approaches use differentiating operators which are problematic since they are not immune to the usually high noise level in angiograms. Histogram segmentation ignore most of the knowledge of vessel geometry. Tracking approaches with matched filters are favored here, because they do not possess the above mentioned disadvantages. However, they depend largely on exact signal and noise models, which has not been exhaustively investigated so far. In this article, an accurate vascular model is derived from angiographic imaging equations. The anatomical knowledge of blood vessels can be better exploited using a Kalman filter, which uses an explicit vessel model. This optimizing filter has an additional advantage: Some heuristic thresholds of the tracking process can be optimized with respect to sample data. A further problem is the evaluation of the detected vasculature, which is of prime importance in medical applications. Here, a new automated structural evaluation method of vessel trees by means of graph matching is presented. Tests of the new method showed very good results, also very small and hardly recognizable vessels have been detected. The structural check shows that some errors like oversegmentations can be discovered using structural knowledge.
机译:数字医学成像的日益广泛使用引起了数据归档和检索的问题。专用应用程序(例如远程医疗和图像交换)对网络和存储资源提出了严格的要求。可以使用面向内容的图像压缩来缓解此瓶颈,该压缩在保留诊断信息的同时减少了数据量。本文提出了一种用于血管自动分割的新方法,该方法可用于决策支持系统和以内容为导向的血管造影图像压缩。一些脉管系统检测方法使用区分运算符,这是有问题的,因为它们不能抵抗血管造影图中通常较高的噪声水平。直方图分割忽略了大多数血管几何知识。在这里,采用匹配滤波器的跟踪方法是有利的,因为它们不具有上述缺点。但是,它们很大程度上取决于精确的信号和噪声模型,到目前为止尚未进行详尽的研究。在本文中,从血管造影成像方程式导出了准确的血管模型。使用卡尔曼滤波器可以更好地利用血管的解剖知识,该滤波器使用显式血管模型。该优化过滤器还有一个优点:可以针对样本数据优化跟踪过程的一些启发式阈值。另一个问题是对检测到的脉管系统的评估,这在医学应用中至关重要。在此,提出了一种新的通过图匹配的血管树自动结构评价方法。新方法的测试显示出非常好的结果,还发现了非常小的且难以辨认的血管。结构检查表明,可以使用结构知识来发现一些错误,例如过度细分。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号