Highlights<'/> A computational model-based approach for atlas construction of aortic Doppler velocity profiles for segmentation purposes
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A computational model-based approach for atlas construction of aortic Doppler velocity profiles for segmentation purposes

机译:一种基于计算模型的主动脉多普勒速度剖面图集构建方法

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HighlightsA framework that couples circulation model and atlas construction method is proposed.The model quickly simulates virtual patients with diverse conditions of aortic valve.Their Doppler images are obtained via fluid dynamics and imaging modality properties.The atlas created from simulated images was applied for segmenting clinical images.Applied atlas construction method proves favorable for heterogeneous conditions.AbstractEchocardiography is the leading imaging modality for cardiac disorders in clinical practice. During an echocardiographic exam, geometry and blood flow are quantified in order to assess cardiac function. In clinical practice, these image-based measurements are currently performed manually. An automated approach is needed if more advanced analysis is desired.In this article, we propose a new hybrid framework for the construction of a disease-specific atlas to improve Doppler aortic outflow velocity profile segmentation. The proposed method is based on combining realistic computational simulations of the cardiovascular system for common cardiac conditions (using CircAdapt) with a validated image-based atlas construction method. The coupling is realized via model-based generation of echocardiographic images of virtual populations with a statistically approved parameter variation. We created virtual populations of 100 healthy individuals and 100 patients with aortic stenosis, synthesized their aortic Doppler velocity images and constructed the corresponding atlases. We validated atlases’ performances by comparing their segmentation of real clinical images with the manually segmented ground truth. The experimental results show that the segmentation accuracy obtained using the proposed atlases is comparable to the accuracy obtained using classical clinical image-based atlases. Moreover, this framework eliminates the time-consuming acquisition of a sufficient number of representative images in clinical practice, offering a substantial time efficiency and flexibility in creating a disease specific atlas and ensuring an observer-independent automated segmentation. The proposed approach can easily be extended towards the creation of atlases for segmenting any Doppler trace in the cardiovascular circulation in a specific disease.
机译: 突出显示 提出了一个将流通模型与地图集构建方法相结合的框架。 该模型可以快速模拟具有多种主动脉瓣状况的虚拟患者。 他们的多普勒仪图像是通过流体动力学和成像模态属性获得的。 < ce:para id =“ par0020” view =“ all”>地图集创建来自仿真图像的d用于分割临床图像。 < ce:para id =“ par0025” view =“ all”>适用的地图集构造方法被证明适用于异构条件。 摘要 在本文中,我们提出了一种用于构建的新混合框架疾病特定图集的改进,以改善多普勒主动脉流出速度轮廓分割。所提出的方法是基于将针对常见心脏病的心血管系统的实际计算模拟(使用CircAdapt)与经过验证的基于图像的地图集构建方法相结合的。耦合是通过基于模型的虚拟人群超声心动图图像的生成而实现的,具有统计上认可的参数变化。我们创建了100个健康个体和100个主动脉瓣狭窄患者的虚拟人群,合成了他们的主动脉多普勒速度图像并构建了相应的地图集。我们通过比较地图集的真实临床图像分割与手动分割的地面真实情况,验证了地图集的性能。实验结果表明,使用建议的地图集所获得的分割精度可与使用基于经典临床图像的地图集所获得的精度相媲美。此外,该框架消除了临床实践中耗时的足够数量的代表性图像的获取,在创建特定于疾病的图集方面提供了显着的时间效率和灵活性,并确保了独立于观察者的自动分割。所提议的方法可以很容易地扩展到创建地图集,以分割特定疾病的心血管循环中的任何多普勒痕迹。

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