Detector-based spectral computed tomography is a recent dual-energy CT (DECT) technology that offers the possibility of obtaining spectral information. From this spectral data, different types of images can be derived, amongst others virtual monoenergetic (monoE) images. MonoE images potentially exhibit decreased artifacts, improve contrast, and overall contain lower noise values, making them ideal candidates for better delineation and thus improved diagnostic accuracy of vascular abnormalities. In this paper, we are training convolutional neural networks~(CNN) that can emulate the generation of monoE images from conventional single energy CT acquisitions. For this task, we investigate several commonly used image-translation methods. We demonstrate that these methods while creating visually similar outputs, lead to a poorer performance when used for automatic classification of pulmonary embolism (PE). We expand on these methods through the use of a multi-task optimization approach, under which the networks achieve improved classification as well as generation results, as reflected by PSNR and SSIM scores. Further, evaluating our proposed framework on a subset of the RSNA-PE challenge data set shows that we are able to improve the Area under the Receiver Operating Characteristic curve (AuROC) in comparison to a na\"ive classification approach from 0.8142 to 0.8420.
翻译:检测以光谱为基础的光谱计算断层造影是一种最近的双能CT(DECT)技术,它提供了获得光谱信息的可能性。从这一光谱数据中,可以得出不同类型的图像,其中包括虚拟单极(monoE)图像。MonoE可能展示的图像会减少人工制品,改善对比,总体上含有较低的噪音值,使其最理想的候选产品能够更好地划界,从而改进血管异常的诊断性精度。在本文中,我们正在培训可效仿常规单一能源CT获取中生成单电子图像的进化神经网络~(CNN) (CNN) 。为此,我们调查了几种常用的图像转换方法。我们证明,这些方法在创造视觉相似的产出的同时,在使用肺栓状(PE)自动分类时,其性能更差。我们通过采用多功能优化方法扩大这些方法,根据多功能优化和生成结果实现更好的分类,如PSNR和SSIM的分数。此外,我们评估了在RSNA-PE的子子子组中,从0.8A类的运行图象变变变变图图显示我们能够改进了0.A的0.18A区域的运行图。