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STIR-Net: Deep Spatial-Temporal Image Restoration Net for Radiation Reduction in CT Perfusion

机译:STIR-Net:用于减少CT灌注辐射的深空时空图像恢复网

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摘要

Computed Tomography Perfusion (CTP) imaging is a cost-effective and fast approach to provide diagnostic images for acute stroke treatment. Its cine scanning mode allows the visualization of anatomic brain structures and blood flow; however, it requires contrast agent injection and continuous CT scanning over an extended time. In fact, the accumulative radiation dose to patients will increase health risks such as skin irritation, hair loss, cataract formation, and even cancer. Solutions for reducing radiation exposure include reducing the tube current and/or shortening the X-ray radiation exposure time. However, images scanned at lower tube currents are usually accompanied by higher levels of noise and artifacts. On the other hand, shorter X-ray radiation exposure time with longer scanning intervals will lead to image information that is insufficient to capture the blood flow dynamics between frames. Thus, it is critical for us to seek a solution that can preserve the image quality when the tube current and the temporal frequency are both low. We propose STIR-Net in this paper, an end-to-end spatial-temporal convolutional neural network structure, which exploits multi-directional automatic feature extraction and image reconstruction schema to recover high-quality CT slices effectively. With the inputs of low-dose and low-resolution patches at different cross-sections of the spatio-temporal data, STIR-Net blends the features from both spatial and temporal domains to reconstruct high-quality CT volumes. In this study, we finalize extensive experiments to appraise the image restoration performance at different levels of tube current and spatial and temporal resolution scales.The results demonstrate the capability of our STIR-Net to restore high-quality scans at as low as 11% of absorbed radiation dose of the current imaging protocol, yielding an average of 10% improvement for perfusion maps compared to the patch-based log likelihood method.
机译:计算机断层扫描灌注成像(CTP)成像是一种经济有效的快速方法,可为急性中风治疗提供诊断图像。它的电影扫描模式可以直观地显示大脑的解剖结构和血流。但是,它需要注入造影剂并长时间连续进行CT扫描。实际上,对患者的累积辐射剂量会增加健康风险,例如皮肤刺激,脱发,白内障形成,甚至癌症。减少辐射暴露的解决方案包括降低管电流和/或缩短X射线辐射暴露时间。然而,在较低的管电流下扫描的图像通常伴随着较高水平的噪声和伪像。另一方面,较短的X射线辐射曝光时间和较长的扫描间隔将导致图像信息不足以捕获帧之间的血流动态。因此,对于我们来说至关重要的是,寻找一种能够在电子管电流和时间频率都较低的情况下保持图像质量的解决方案。我们在本文中提出了STIR-Net,这是一种端到端的时空卷积神经网络结构,该结构利用多方向自动特征提取和图像重建方案来有效地恢复高质量的CT切片。利用时空数据不同横截面的低剂量和低分辨率斑块的输入,STIR-Net融合了来自时空域的特征,以重建高质量的CT量。在这项研究中,我们完成了广泛的实验,以评估在不同水平的电子管电流和时空分辨率尺度下的图像恢复性能,结果证明了STIR-Net能够以低至11%的速度恢复高质量扫描的能力。吸收了当前成像协议的辐射剂量,与基于贴片的对数似然法相比,灌注图平均提高了10%。

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