首页> 外文会议>Conference on Medical Imaging: Physics of Medical Imaging >Dual-contrast decomposition of dual-energy CT using convolutional neural networks
【24h】

Dual-contrast decomposition of dual-energy CT using convolutional neural networks

机译:使用卷积神经网络双对比度分解双能CT

获取原文

摘要

Liver lesion detection and characterization presents a longstanding challenge for radiologists. Since liver lesions are mainly characterized from information obtained at both arterial and portal venous circulatory phases, current hepatic Computed tomography (CT) protocols involve intravenous contrast injection and subsequent multiple CT acquisitions. Because detection of lesions by CT often requires further investigation with MRI, improved differentiation CT capabilities are highly desirable. Recently developed imaging protocols for spectral photon-counting CT enable simultaneous mapping of arterial and portal-venous enhancements by injecting two different contrast agents sequentially, allowing robust pixel-to-pixel spatial alignment between the different contrast phases with a reduction of radiation exposure. Here we propose a method that allows to quantitatively and reliably distinguish between two contrast agents in a single dual-energy CT (DECT) acquisition by taking advantage of the unique abilities of modern self-learning algorithms for non-linear mapping, feature extraction, and feature representation. For this purpose, we designed a U-net architecture convolutional neural network (CNN). To overcome training data requirements, we utilizing clinical DECT images to simulate dual-contrast spectral datasets. With the unique network architecture and training datasets, we demonstrate reliable dual-contrast quantifications from DECT. Our results demonstrate an ability to quantify densities of water, iodine and gadolinium, with root mean square errors of 0.2 g/ml, 1.32 mg/ml and 1.04 mg/ml, respectively. While observing some material-cross artifacts, our model demonstrated a high robustness to noise. With the rapid increase in DECT usage, our results pave the way for improved diagnostics and better patient outcome with available hardware implementations.
机译:肝脏病变检测和表征为放射科医师提供了长期挑战。由于肝脏病变主要是由动脉和门静脉循环阶段获得的信息,因此目前的肝脏计算断层扫描(CT)方案涉及静脉内对比注射和随后的多个CT采集。由于CT的病变检测通常需要进一步与MRI进行进一步调查,因此非常需要改善的分化CT能力。最近开发了用于光谱光子计数CT的成像协议,通过顺序地注入两个不同的对比剂来同时映射动脉和门静脉增强,允许不同对比度相位与减少辐射曝光的不同对比度相之间的鲁棒像素到像素空间对准。在这里,我们提出了一种方法,其允许通过利用现代自学习算法的独特能力来定量和可靠地区分在单个双能CT(DECT)采集中的两个造影剂,从而利用现代自学算法的非线性映射,特征提取和特征表示。为此目的,我们设计了U-Net架构卷积神经网络(CNN)。为了克服培训数据要求,我们利用临床DECT图像来模拟双对比度频谱数据集。通过独特的网络架构和培训数据集,我们从DECT展示了可靠的双对比度量化。我们的结果表明,量化水,碘和钆的密度,分别具有0.2g / ml,1.32mg / ml和1.04mg / ml的根部均线误差。在观察一些材料交叉伪影的同时,我们的模型对噪声表现出高的稳健性。随着DECT使用的快速增加,我们的结果为改进的诊断和更好的患者结果提供了可用的硬件实现。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号