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Statistical-Model Based Identification of Complete Vessel-Tree Frames in Coronary Angiograms'

机译:基于冠状动脉血管造影中完整船只树框架的统计模型“

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Coronary angiograms are pre-interventionally recorded moving X-ray images of a patient's beating heart, where the coronary arteries are made visible by a contrast medium. They serve to diagnose, e.g., stenoses, and as roadmaps during the intervention itself. Covering about three to four heart cycles, coronary angiograms consist of three underlying states: inflow, when the contrast medium flows into the vessels, filled state, when the whole vessel tree is visible and outflow, when the contrast medium is washed out. Obviously, only that part of the sequence showing the full vessel tree is useful as a roadmap. We therefore describe methods for automatic identification of these frames. To this end, a vessel map with enhanced vessels and compressed background is first computed. Vessel enhancement is based on the observation that vessels are the locally darkest oriented structures with significant motion. The vessel maps can be regarded as containing two classes, viz. (bright) vessels and (dark) background. From a histogram analysis of each vessel map image, a time-dependent feature curve is computed in which the states inflow, filled state and outflow can already visually be distinguished. We then describe two approaches to segment the feature curve into these states: the first method models the observations in each state by a polynomial, and seeks the segmentation which allows the best fit of three polynomials as measured by a Maximum-Likelihood criterion. The second method models the state sequence by a Hidden Markov model, and estimates it using the Maximum a Posteriori (MAP)-criterion. We will present results for a number of angiograms recorded in clinical routine.
机译:冠状动脉血管造影是预介入的患者搏动心脏的移动X射线图像,其中冠状动脉通过造影剂可见。它们用于诊断,例如缩减,以及在干预期间的路线图。覆盖大约三到四个心脏周期,冠状动脉血管造影包括三个底层状态:流入,当造影剂流入血管时,填充状态,当整个血管树是可见的并且流出时,当被造影剂被冲出时。显然,只有显示完整血管树的序列的一部分是可用作路线图。因此,我们描述了用于自动识别这些帧的方法。为此,首先计算具有增强血管和压缩背景的船只图。血管增强基于观察,即容器是具有显着运动的局部偏热的面向结构。船舶地图可以被视为包含两个类,viz。 (明亮)血管和(暗)背景。根据每个船舶地图图像的直方图分析,计算时间依赖的特征曲线,其中可以在其目视中已经区分了状态流入,填充状态和流出。然后,我们描述了两种将特征曲线分段为这些状态的方法:第一种方法通过多项式模拟每个状态的观察,并寻求允许通过最大似然标准测量的三种多项式的分段。第二种方法通过隐藏的Markov模型模拟状态序列,并使用最大后验(MAP) - 克里施估计它。我们将在临床常规中记录的许多血管造影的结果。

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