论文标题

使用多任务学习同时估算X射线后筛和前筛

Simultaneous Estimation of X-ray Back-Scatter and Forward-Scatter using Multi-Task Learning

论文作者

Roser, Philipp, Zhong, Xia, Birkhold, Annette, Preuhs, Alexander, Syben, Christopher, Hoppe, Elisabeth, Strobel, Norbert, Kowarschik, Markus, Fahrig, Rebecca, Maier, Andreas

论文摘要

散射辐射是两种方式影响X射线图像引导程序的主要问题。首先,在复杂的干预措施期间,背部碎片显着导致患者(皮肤)剂量。其次,向前散射的辐射减少了投影图像中的对比度,并在3-D重建中引入了伪影。虽然传统使用的抗碎片网格通过阻止X射线来改善图像质量,但由于检测器处的​​抗散片网格引起的额外衰减需要由较高的患者入学剂量来补偿。这也增加了房间剂量,影响了照顾患者的工作人员。对于皮肤剂量量化,通常通过将预定的标量后筛分因子或线性点扩散功能应用于主KERMA向前投影到患者表面点上。但是,随着患者的形状不同,常规方法的概括受到限制。在这里,我们提出了一种新颖的方法,将传统技术与基于学习的方法相结合,以同时估计到达检测器的前向筛分以及影响患者皮肤剂量的后片。了解前射手,我们可以纠正X射线预测,而对后筛分成分的良好估计有助于改善皮肤剂量评估。为了同时估算前向筛子和后刻表,我们通过将X射线物理学与神经网络相结合,提出了一种多任务方法,用于接头背面和前向筛评估。我们表明,从理论上讲,两种情况下都有高度准确的散射估计。此外,我们总体上确定了多任务框架和基于学习的散点估计的研究方向。

Scattered radiation is a major concern impacting X-ray image-guided procedures in two ways. First, back-scatter significantly contributes to patient (skin) dose during complicated interventions. Second, forward-scattered radiation reduces contrast in projection images and introduces artifacts in 3-D reconstructions. While conventionally employed anti-scatter grids improve image quality by blocking X-rays, the additional attenuation due to the anti-scatter grid at the detector needs to be compensated for by a higher patient entrance dose. This also increases the room dose affecting the staff caring for the patient. For skin dose quantification, back-scatter is usually accounted for by applying pre-determined scalar back-scatter factors or linear point spread functions to a primary kerma forward projection onto a patient surface point. However, as patients come in different shapes, the generalization of conventional methods is limited. Here, we propose a novel approach combining conventional techniques with learning-based methods to simultaneously estimate the forward-scatter reaching the detector as well as the back-scatter affecting the patient skin dose. Knowing the forward-scatter, we can correct X-ray projections, while a good estimate of the back-scatter component facilitates an improved skin dose assessment. To simultaneously estimate forward-scatter as well as back-scatter, we propose a multi-task approach for joint back- and forward-scatter estimation by combining X-ray physics with neural networks. We show that, in theory, highly accurate scatter estimation in both cases is possible. In addition, we identify research directions for our multi-task framework and learning-based scatter estimation in general.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源