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Automatic segmentation of bioabsorbable vascular stents in Intravascular optical coherence images using weakly supervised attention network

机译:弱监督网络中血管内光学相干图像中生物可吸收血管支架的自动分割

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摘要

Coronary heart disease has become a disease with high mortality in the world. The main treatment for coronary heart disease is stent implantation, and there is now a consensus that bioabsorbable vascular stent (BVS) is the most advanced stent. However, the accuracy of current methods to detect and segment the BVS is still not effctive enough to meet the medical needs, or it is difficult to generalize. Meanwhile, due to the influence of blood artifact, the gray-based method also has great errors and uncertainties. In this paper, we propose a new framework to segment the BVS, in order to segment the contour of BVS more accurately, we use the U-Net network as the main part of the proposed network structure, add convolutional attention layer and dilated convolution module, and finally use weakly supervised learning strategy to further enhance performance. Extensive experiments demonstrate that each designed module in our proposed network can effectively improve the accuracy of the segmentation result, and when compared with other state-of-the-art methods, the overall performance on different criterias is higher.
机译:冠心病已成为世界上死亡率高的疾病。冠心病的主要治疗是支架植入,现在已经共有一种共识,即生物可吸收的血管支架(BVS)是最先进的支架。然而,目前检测和分割BVS的方法的准确性仍然不足以满足医疗需求,或者难以概括。同时,由于血液伪影的影响,灰色的方法也具有很大的错误和不确定性。在本文中,我们提出了一个新的框架来分割BVS,以便更准确地分割BVS的轮廓,我们将U-Net网络作为所提出的网络结构的主要部分,添加卷积注意层和扩张卷积模块,最后使用弱监督的学习策略进一步提高性能。广泛的实验表明,我们所提出的网络中的每个设计模块都可以有效地提高分割结果的准确性,并且与其他最先进的方法相比,不同标准的整体性能更高。

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