Transient streamlines: texture synthesis for in vivo flow visualisation.

G Z Yang, P J Kilner, R H Mohiaddin, D N Firmin
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引用次数: 5

Abstract

Magnetic resonance (MR) imaging is a versatile technique for providing detailed information on blood vessel morphology and function. With its ability to acquire multi-dimensional cine flow data, MR is also an important tool for providing insight into blood flow patterns in vivo. The purpose of this paper is to describe the application of texture synthesis for flow visualisation. Two related issues are addressed, one is the removal of image noise from the acquired velocity data to ensure a correct representation of the underlying flow structure, and the other is the formation of transient streamlines through flow texture synthesis. The process of noise removal is achieved by using a convex projection algorithm based on the principle of mass conservation, whereas transient streamlines are formed via an iterative orientated pattern formation and enhancement procedure. The method described provides realistic visualisation of the flow patterns and avoids distortions caused by integration errors associated with conventional streamline tracking techniques. Effectiveness of the method applied to MR flow data acquired in healthy volunteers and patients is demonstrated.

瞬态流线:体内流动可视化的纹理合成。
磁共振成像是一种多功能的技术,可以提供血管形态和功能的详细信息。凭借其获取多维血流数据的能力,MR也是深入了解体内血流模式的重要工具。本文的目的是描述纹理合成在流动可视化中的应用。解决了两个相关的问题,一个是从获取的速度数据中去除图像噪声,以确保正确表示底层流结构,另一个是通过流纹理合成形成瞬态流线。噪声去除过程是通过基于质量守恒原理的凸投影算法实现的,而瞬态流线是通过迭代定向模式形成和增强过程形成的。所描述的方法提供了流型的逼真可视化,并避免了与传统流线跟踪技术相关的集成误差引起的扭曲。证明了该方法应用于健康志愿者和患者的磁共振血流数据的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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