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A novel automated lumen segmentation and classification algorithm for detection of irregular protrusion after stents deployment

机译:一种新型自动化内腔分割和分类算法,用于检测支架部署后不规则突起

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摘要

Background: Clinically, irregular protrusions and blockages after stent deployment can lead to significant adverse outcomes such as thrombotic reocclusion or restenosis. In this study, we propose a novel fully automated method for irregular lumen segmentation and normal/abnormal lumen classification. Methods: The proposed method consists of a lumen segmentation, feature extraction, and lumen classification. In total, 92 features were extracted to classify normal/abnormal lumen. The lumen classification method is a combination of supervised learning algorithm and feature selection that is a partition-membership filter method. Results: As the results, our proposed lumen segmentation method obtained the average of dice similarity coefficient (DSC) and the accuracy of proposed features and the random forest (RF) for normal/abnormal lumen classification as 97.6% and 98.2%, respectively. Conclusions: Therefore, we can lead to better understanding of the overall vascular status and help to determine cardiovascular diagnosis.
机译:背景:临床上,支架置入后不规则的突起和堵塞可导致严重的不良后果,如血栓再闭塞或再狭窄。在这项研究中,我们提出了一种新的不规则管腔分割和正常/异常管腔分类的全自动方法。方法:提出的方法包括管腔分割、特征提取和管腔分类。共提取92个特征对正常/异常管腔进行分类。管腔分类方法是监督学习算法和特征选择的组合,特征选择是一种分区隶属度滤波方法。结果:作为结果,我们提出的管腔分割方法获得了骰子相似系数(DSC)的平均值,提出的特征和正常/异常管腔分类的随机森林(RF)的准确率分别为97.6%和98.2%。结论:因此,我们可以更好地了解整体血管状况,并有助于确定心血管诊断。

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