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首页> 外文期刊>Cardiovascular engineering and technology. >A State-Of-The-Art Review on Coronary Artery Border Segmentation Algorithms for Intravascular Ultrasound (IVUS) Images
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A State-Of-The-Art Review on Coronary Artery Border Segmentation Algorithms for Intravascular Ultrasound (IVUS) Images

机译:血管内超声 (IVUS) 图像冠状动脉边界分割算法的最新进展

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Intravascular Ultrasound images (IVUS) is a useful guide for medical practitioners to identify the vascular status of coronary arteries in human beings. IVUS is a unique intracoronary imaging modality that is used as an adjunct to angioplasty to view vessel structures using a catheter with high resolutions. Segmentation of IVUS images has always remained a challenging task due to various impediments, for example, similar tissue components, vessel structures, and artifacts imposed during the acquisition process. Many researchers have applied various techniques to develop standard methods of image interpretation, however, the ultimate goal is still elusive to most researchers. This challenge was presented at the MICCAI- Computing and Visualization for (Intra)Vascular Imaging (CVII) workshop in 2011. This paper presents a major review of recently reported work in the field, with a detailed analysis of various segmentation techniques applied in IVUS, and highlights the directions for future research. The findings recommend a reference database with a larger number of samples acquired at varied transducer frequencies with special consideration towards complex lesions, suitable validation metrics, and ground-truth definition as a standard against which to compare new and current algorithms.
机译:血管内超声图像(IVUS)是医生识别人体冠状动脉血管状态的有用指南。IVUS是一种独特的冠状动脉内成像方式,用作血管成形术的辅助手段,使用高分辨率的导管观察血管结构。由于各种障碍,例如,在采集过程中施加的相似组织成分、血管结构和伪影,IVUS图像的分割一直是一项具有挑战性的任务。许多研究人员已经应用各种技术来开发图像解释的标准方法,然而,对于大多数研究人员来说,最终目标仍然难以捉摸。这一挑战在 2011 年的 MICCAI-(内)血管成像 (CVII) 的计算和可视化研讨会上提出。本文对该领域最近报道的工作进行了主要回顾,详细分析了IVUS中应用的各种分割技术,并强调了未来研究的方向。研究结果建议建立一个参考数据库,其中包含在不同换能器频率下采集的大量样本,并特别考虑复杂的病变、合适的验证指标和地面实况定义,作为比较新算法和当前算法的标准。

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