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Low-Dose Micro-CT Imaging for Vascular Segmentation and Analysis Using Sparse-View Acquisitions

机译:低剂量微CT成像用于使用稀疏视图采集的血管分割和分析

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摘要

The aim of this study is to investigate whether reliable and accurate 3D geometrical models of the murine aortic arch can be constructed from sparse-view data in vivo micro-CT acquisitions. This would considerably reduce acquisition time and X-ray dose. In vivo contrast-enhanced micro-CT datasets were reconstructed using a conventional filtered back projection algorithm (FDK), the image space reconstruction algorithm (ISRA) and total variation regularized ISRA (ISRA-TV). The reconstructed images were then semi-automatically segmented. Segmentations of high- and low-dose protocols were compared and evaluated based on voxel classification, 3D model diameters and centerline differences. FDK reconstruction does not lead to accurate segmentation in the case of low-view acquisitions. ISRA manages accurate segmentation with 1024 or more projection views. ISRA-TV needs a minimum of 256 views. These results indicate that accurate vascular models can be obtained from micro-CT scans with 8 times less X-ray dose and acquisition time, as long as regularized iterative reconstruction is used.
机译:这项研究的目的是调查是否可以从体内显微CT采集中的稀疏视图数据构建可靠且准确的鼠主动脉弓3D几何模型。这将大大减少采集时间和X射线剂量。使用常规的过滤反投影算法(FDK),图像空间重建算法(ISRA)和总变化正则化ISRA(ISRA-TV)重建了体内对比度增强的微CT数据集。然后将重建的图像进行半自动分割。根据体素分类,3D模型直径和中心线差异,比较和评估了高剂量和低剂量方案的细分。在低视角采集的情况下,FDK重建不会导致准确的分割。 ISRA使用1024或更多的投影视图管理准确的细分。 ISRA-TV至少需要观看256次。这些结果表明,只要使用规则的迭代重建,就可以通过X射线剂量和采集时间少8倍的微型CT扫描获得准确的血管模型。

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