Landmark-Based Generation of Common Ultrasound Views and 17-Segment Model from Cardiac Computed Tomography

Christian Janorschke, Jingyang Xie, Xinyu Lu, Achim Schweikard, Melanie Grehn, Oliver Blanck
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Abstract

Abstract Complex medical therapies can require a multitude of imaging modalities and are often supervised by a team with different medical backgrounds. This necessitates the conversion of medical data between technical systems and visualizations. In the case of stereotactic arrhythmia radioablation therapy (STAR-therapy) of the left ventricle, electroanatomical mapping, ultrasound (US) and computed tomography (CT) are the central imaging modalities that are needed for defining the target volume as well as for the examination and validation pre and post treatment. In the interest of developing a motion management system for STAR-therapy, a way to transfer information and visualizations between these modalities and to compare data from different patients is needed. For this purpose, we present a landmark-based approach for the generation of commonly used ultrasound views and the 17-segment model from cardiac computed tomography (CCT) data. The developed tool can already be used to aid the examination process by extracting function-based views from CT datasets, comparing them to live US imaging, localize CT structures within the 17-segment model or to transfer information like motion or strain data from one modality to the other. In the future, it will be used in the development of a live or predictive management system for cardiac and respiratory motion.
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基于地标的常见超声图像生成和心脏计算机断层扫描的17段模型
复杂的医学治疗可能需要多种成像方式,并且通常由具有不同医学背景的团队进行监督。这就需要在技术系统和可视化之间进行医疗数据的转换。在左心室立体定向心律失常放射消融治疗(STAR-therapy)的情况下,电解剖测绘、超声(US)和计算机断层扫描(CT)是确定靶体积以及治疗前后检查和验证所需的主要成像方式。为了开发用于star治疗的运动管理系统,需要一种在这些模式之间传输信息和可视化的方法,并比较来自不同患者的数据。为此,我们提出了一种基于里程碑的方法,用于从心脏计算机断层扫描(CCT)数据中生成常用的超声视图和17段模型。开发的工具已经可以用于辅助检查过程,从CT数据集中提取基于功能的视图,将其与实时US成像进行比较,在17段模型中定位CT结构,或者将运动或应变数据等信息从一种模态传输到另一种模态。在未来,它将被用于心脏和呼吸运动的实时或预测管理系统的开发。
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来源期刊
Current Directions in Biomedical Engineering
Current Directions in Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
0.90
自引率
0.00%
发文量
239
审稿时长
14 weeks
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