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Investigation of the efficacy of a data-driven CT artifact correction scheme for sparse and truncated projection data for intracranial hemorrhage diagnosis

机译:对血液出血诊断稀疏和截断投影数据进行数据驱动CT伪影校正方案的疗效研究

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Data-driven CT-image reconstruction techniques for truncated or sparsely acquired projection data to reduce radiation dose, iodine volume, and patient motion artifacts have been proposed. These approaches have shown good performance and preservation of image quality metrics. To continue these efforts, we investigated whether these techniques affect the performance of a machine-learning algorithm to identify the presence of intracranial hemorrhage (ICH). Ten-thousand head CT scans were collected from the 2019 RSNA Intracranial Hemorrhage Detection and Classification Challenge dataset. Sinograms were simulated and then resampled in both a one-third truncated and one-third sparse manner. GANs were tasked with correcting the incomplete projection data in two ways. Firstly, in the sinogram domain, where the incomplete sinogram was filled by the GAN and then reconstructed. Secondly, in the reconstruction domain, where the incomplete data were first reconstructed and the sparse or truncation artifacts were corrected by the GAN. Eighty-five hundred images were used for artifact correction network training, and 1500 were withheld for network assessment via an already trained machine-learning algorithm tasked with diagnosis of ICH presence. Fully-sampled reconstructions were compared with the sparse and truncated reconstructions for classification accuracy. Difference in classification accuracy between the fully sampled (83.4%), sparse (82.0%), and truncated (82.3%) reconstructions was minimal, demonstrating that the network diagnosis performance is unaffected by 2/3 reduction of projection data. This work indicates that data-driven reconstructions for a sparse or truncated projection dataset can provide high diagnostic performance for ICH detection at a fraction of the typical radiation dose.
机译:已经提出了用于减少辐射剂量,碘量和患者运动伪影的截短或稀疏获取的投影数据的数据驱动的CT图像重建技术。这些方法表明了图像质量指标的良好性能和保存。为了继续进行这些努力,我们研究了这些技术是否会影响机器学习算法的性能,以识别颅内出血(ICH)的存在。从2019年RSNA颅内出血检测和分类挑战数据集中收集了十万个HEAD CT扫描。模拟了叠氏函数,然后以三分之一截断和三分之一的稀疏方式重新采样。 GANS是以两种方式纠正不完整的投影数据。首先,在Sinogram结构域中,由GaN填充不完整的Sinogram然后重建。其次,在重建域中,首先重建不完全数据并且稀疏或截断伪像被GaN校正。八十五百种图像用于工件校正网络培训,通过已经训练的机器学习算法扣留了1500次,用于网络评估任务,任务是ICH存在的诊断。将完全采样的重建与稀疏和截断的重建进行比较,以进行分类精度。完全采样(83.4%),稀疏(82.0%)和截短(82.3%)重建之间的分类准确性的差异很小,表明网络诊断性能不受2/3减少投影数据的影响。该工作表明稀疏或截断的投影数据集的数据驱动重建可以为典型辐射剂量的一部分提供高诊断性能。

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