Computed tomography (CT) imaging of the thorax is widely used for the detection and monitoring of pulmonary embolism (PE). However, CT images can contain artifacts due to the acquisition or the processes involved in image reconstruction. Radiologists often have to distinguish between such artifacts and actual PEs. Our main contribution comes in the form of a scalable hypothesis testing method for CT, to enable quantifying uncertainty of possible PEs. In particular, we introduce a Bayesian Framework to quantify the uncertainty of an observed compact structure that can be identified as a PE. We assess the ability of the method to operate under high noise environments and with insufficient data.
翻译:在检测和监测肺栓塞(PE)时,广泛使用Thorax成像(CT)计算成像,但是,由于获取或重建图像的过程,CT图像可能含有文物,放射学家往往必须区分这些文物和实际的PE。我们的主要贡献是CT可缩放的假设测试方法,以便能够量化可能的PE的不确定性。特别是,我们引入了Bayesian框架,以量化可被确定为PE的已观察到的紧凑结构的不确定性。我们评估了在高噪音环境中操作的方法的能力,而数据不足。