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DELINEATION OF CORONARY STENTS IN INTRAVASCULAR ULTRASOUND PULLBACKS

机译:描绘血管内超声回拉中的冠状动脉支架

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Ischemic heart disease remains one of the leading causes of death worldwide. Percutaneous coronary interventions (PCIs) for implanting coronary stents are preferred for patients with acute myocardial infarction but may also be performed in patients with chronic coronary syndromes to improve symptoms and outcome. During the PCI, the assessment of stent apposition, evaluation of in-stent restenosis or guidance for complex stenting of bifurcation lesions may be improved by intravascular imaging such as intravascular ultrasound (IVUS). However, advanced interpretation of the image often requires expertise and training. To approach this issue, we introduce an automatic delineation of stent struts within the IVUS pullback. We propose a cascaded segmentation based on data-driven learning with a neural encoder-decoder architecture. The learning process uses 80 IVUS sequences from 28 patients which were acquired and partially annotated by the Department of Cardiology, University Heart & Vascular Center Hamburg, Germany. The annotations include 1108, 555 and 355 frames with delineated lumen, stent and calcium as well as 13696 and 10689 frame-wise stent and no-stent indications. The network was pre-trained on lumen segmentation and refined to first identify stent frames using an encoder network and subsequently segment the struts with a decoder. Quantitative evaluation using 3-fold cross-validation revealed 88.3% precision, 92.4% recall and 0.824 Dice for the encoder and 67.0%, 60.3% and 0.611 for the decoder. We conclude that the encoder successfully leverages the larger number of high-level annotations to reject non-stent frames avoiding unnecessary false positives for the decoder trained on much less, but fine-granular annotations.
机译:缺血性心脏病仍然是全世界死亡的主要原因之一。对于急性心肌梗死的患者,植入冠状动脉的经皮冠状动脉干预(PCIS)是优选的,但也可以在慢性冠状动脉综合征患者中进行,以改善症状和结果。在PCI期间,通过血管内成像(例如血管内超声(IVUS),可以改善支架链接的支架和转诊或复杂支架的转诊或指导的评估。但是,对图像的高级解释通常需要专业知识和培训。为了解决这个问题,我们在IVUS回调中介绍了一定的支架支柱。我们提出了一种基于数据驱动学习的级联分割,具有神经编码器解码器架构。学习过程使用来自28名患者的80个IVUS序列,该患者被德国心脏病学,大学心脏&血管中心汉堡汉堡省内生物学和部分注释。注释包括1108,555和355帧,其中横向腔,支架和钙,以及13696和10689帧框架,标注指示。该网络预先培训了Lumen分段,并通过编码器网络精制识别支架帧,然后用解码器划分支柱。使用3倍交叉验证的定量评估显示出88.3%的精度,92.4%召回和编码器的0.824骰子,67.0%,60.3%和0.611用于解码器。我们得出结论,编码器成功利用了较大数量的高级注释来拒绝避免对解码器的不必要的误报件,以越来越小,但细粒度的注释。

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