首页> 外文会议>International Meeting on Fully Three-Dimensional Image Reconstruction in Radiology and Nuclear Medicine >A deep learning approach for dual-energy CT imaging using a single-energy CT data
【24h】

A deep learning approach for dual-energy CT imaging using a single-energy CT data

机译:一种使用单能CT数据的双能CT成像的深度学习方法

获取原文

摘要

In a standard computed tomography (CT) image, pixels having the same Hounsfield Units (HU) can correspond to different materials and it is therefore challenging to differentiate and quantify materials. Dual-energy CT (DECT) is desirable to differentiate multiple materials, but DECT scanners are not widely available as singleenergy CT (SECT) scanners. Here we develop a deep learning approach to perform DECT imaging by using standard SECT data. The end point of the deep learning approach is a model capable of providing the high-energy CT image for a given input low-energy CT image. We retrospectively studied 22 patients who received contrast-enhanced abdomen DECT scan. The difference between the predicted and original high-energy CT images are 3.47 HU, 2.95 HU, 2.38 HU, and 2.40 HU for spine, aorta, liver and stomach, respectively. The difference between virtual non-contrast (VNC) images obtained from original DECT and deep learning DECT are 4.10 HU, 3.75 HU, 2.33 HU and 2.92 HU for spine, aorta, liver and stomach, respectively. The aorta iodine quantification difference between iodine maps obtained from original DECT and deep learning DECT images is 0.9%. This study demonstrates that highly accurate DECT imaging with single low-energy data is achievable by using a deep learning approach. The proposed method can significantly simplify the DECT system design, reducing the scanning dose and imaging cost.
机译:在标准计算机断层扫描(CT)图像中,具有相同Hounsfield单元(HU)的像素可以对应于不同的材料,因此可以具有挑战性地分化和量化材料。双能CT(DECT)是希望区分多种材料,但DECT扫描仪不被广泛可用作单一的CT(SECT)扫描仪。在这里,我们开发了一种深入的学习方法,通过使用标准SECT数据来执行DECT成像。深度学习方法的终点是能够为给定输入低能量CT图像提供高能CT图像的模型。我们回顾性地研究了22例接受对比增强的腹部DECT扫描的患者。预测和原始高能量CT图像之间的差异分别为3.47u,2.95胡,2.38胡,2.40湖,分别为2.40湖,分别为脊柱,主动脉,肝胃和胃。从原始DECT和深学习DECT获得的虚拟非对比度(VNC)图像之间的差异分别为4.10 HU,3.75 HU,2.33 HU和2.92 HU用于脊柱,主动脉,肝脏和胃。从原始DECT和深度学习DECT图像获得的碘图之间的主动脉碘量化差异为0.9%。本研究表明,通过使用深度学习方法可以实现具有单个低能量数据的高度准确的DECT成像。所提出的方法可以显着简化DECT系统设计,降低扫描剂量和成像成本。

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