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Predicate-Based Focus-and-Context Visualization for 3D Ultrasound

机译:基于谓词的3D超声焦点和上下文可视化

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Direct volume visualization techniques offer powerful insight into volumetric medical images and are part of the clinical routine for many applications. Up to now, however, their use is mostly limited to tomographic imaging modalities such as CT or MRI. With very few exceptions, such as fetal ultrasound, classic volume rendering using one-dimensional intensity-based transfer functions fails to yield satisfying results in case of ultrasound volumes. This is particularly due its gradient-like nature, a high amount of noise and speckle, and the fact that individual tissue types are rather characterized by a similar texture than by similar intensity values. Therefore, clinicians still prefer to look at 2D slices extracted from the ultrasound volume. In this work, we present an entirely novel approach to the classification and compositing stage of the volume rendering pipeline, specifically designed for use with ultrasonic images. We introduce point predicates as a generic formulation for integrating the evaluation of not only low-level information like local intensity or gradient, but also of high-level information, such as non-local image features or even anatomical models. Thus, we can successfully filter clinically relevant from non-relevant information. In order to effectively reduce the potentially high dimensionality of the predicate configuration space, we propose the predicate histogram as an intuitive user interface. This is augmented by a scribble technique to provide a comfortable metaphor for selecting predicates of interest. Assigning importance factors to the predicates allows for focus-and-context visualization that ensures to always show important (focus) regions of the data while maintaining as much context information as possible. Our method naturally integrates into standard ray casting algorithms and yields superior results in comparison to traditional methods in terms of visualizing a specific target anatomy in ultrasound volumes.
机译:直接体积可视化技术可提供对体积医学图像的强大洞察力,并且是许多应用程序临床常规操作的一部分。但是,到目前为止,它们的使用大多限于CT或MRI等断层扫描成像模式。除了很少的例外,例如胎儿超声,在使用超声体积的情况下,使用基于一维强度的传递函数的经典体积渲染无法产生令人满意的结果。这尤其是由于其类似梯度的性质,大量的噪声和斑点,以及单个组织类型的特征在于相似的纹理而不是相似的强度值这一事实。因此,临床医生仍然喜欢看从超声体积中提取的2D切片。在这项工作中,我们为体绘制管线的分类和合成阶段提出了一种全新的方法,该方法专门设计用于超声图像。我们引入点谓词作为通用公式,不仅可以集成对诸如局部强度或梯度之类的低级信息的评估,而且还可以集成诸如非局部图像特征甚至解剖模型之类的高级信息的评估。因此,我们可以从非相关信息中成功过滤出临床相关信息。为了有效减少谓词配置空间的潜在高维性,我们提出谓词直方图作为直观的用户界面。通过涂抹技术可以增强此功能,从而为选择感兴趣谓词提供一个舒适的隐喻。为谓词分配重要因素可以实现焦点和上下文可视化,从而确保始终显示数据的重要(焦点)区域,同时保留尽可能多的上下文信息。我们的方法自然地集成到标准射线投射算法中,并且在可视化超声体积中的特定目标解剖结构方面,与传统方法相比,可产生更好的结果。

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