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Deep Learning Electronic Cleansing for Single- and Dual-Energy CT Colonography

机译:用于单能和双能CT结肠内影学的深度学习电子清洁

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摘要

Electronic cleansing (EC) is used for computational removal of residual feces and fluid tagged with an orally administered contrast agent on CT colonographic images to improve the visibility of polyps during virtual endoscopic "fly-through" reading. A recent trend in CT colonography is to perform a low-dose CT scanning protocol with the patient having undergone reduced- or noncathartic bowel preparation. Although several EC schemes exist, they have been developed for use with cathartic bowel preparation and high-radiation-dose CT, and thus, at a low dose with noncathartic bowel preparation, they tend to generate cleansing artifacts that distract and mislead readers. Deep learning can be used for improvement of the image quality with EC at CT colonography. Deep learning EC can produce substantially fewer cleansing artifacts at dual-energy than at single-energy CT colonography, because the dual-energy information can be used to identify relevant material in the colon more precisely than is possible with the single x-ray attenuation value. Because the number of annotated training images is limited at CT colonography, transfer learning can be used for appropriate training of deep learning algorithms. The purposes of this article are to review the causes of cleansing artifacts that distract and mislead readers in conventional EC schemes, to describe the applications of deep learning and dual-energy CT colonography to EC of the colon, and to demonstrate the improvements in image quality with EC and deep learning at single-energy and dual-energy CT colonography with noncathartic bowel preparation. (C) RSNA, 2018
机译:电子洁面(EC)用于计算除以CT上层图像上的口服给药造影剂的残留粪便和流体,以改善虚拟内窥镜“飞行”读数期间息肉的可见性。最近CT结肠成像的趋势是与患者进行低剂量CT扫描协议,该患者经历了降低或非疾病的肠道制剂。尽管存在几种EC方案,但已经开发了与泻药肠制剂和高辐射剂量CT一起使用,因此,在具有非分类肠道制备的低剂量下,它们倾向于产生分散注意力和误导性读取器的清洁伪像。深度学习可用于改善CT上读数的EC与EC的图像质量。深度学习EC可以在双能量下产生比单能量CT上影的少量清洁伪像,因为双能信息可以用于更精确地识别结肠中的相关材料,而不是通过单一X射线衰减值来识别结肠。由于注释的训练图像的数量受到CT上影的限制,所以转移学习可用于适当的深度学习算法训练。本文的目的是审查在传统的EC方案中仔细分散和误导读者的伪影的原因,以描述深度学习和双能CT上影的应用到结肠的EC,并展示图像质量的改善具有非能源和双能CT结子术的EC和深度学习,具有非分泌肠道准备。 (c)rsna,2018

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  • 来源
    《Radiographics》 |2018年第7期|共17页
  • 作者单位

    Massachusetts Gen Hosp Dept Radiol Imaging Res Lab 3D 25 New Chardon St Suite 400C Boston MA;

    Massachusetts Gen Hosp Dept Radiol Imaging Res Lab 3D 25 New Chardon St Suite 400C Boston MA;

    Osaka Univ Grad Sch Med Dept Med Phys &

    Engn Suita Osaka Japan;

    Massachusetts Gen Hosp Dept Radiol Imaging Res Lab 3D 25 New Chardon St Suite 400C Boston MA;

    Massachusetts Gen Hosp Dept Radiol Imaging Res Lab 3D 25 New Chardon St Suite 400C Boston MA;

    Seoul Natl Univ Hosp Dept Radiol Seoul South Korea;

    Univ Torino Dept Surg Sci Turin Italy;

    Massachusetts Gen Hosp Dept Radiol Imaging Res Lab 3D 25 New Chardon St Suite 400C Boston MA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 放射医学;
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