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Transforming UTE-mDixon MR Abdomen-Pelvis Images Into CT by Jointly Leveraging Prior Knowledge and Partial Supervision

机译:通过共同利用先验知识和部分监督将UTE-MDIXON MR ABDOMEN-PELVIS图像转化为CT

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摘要

Computed tomography (CT) provides information for diagnosis, PET attenuation correction (AC), and radiation treatment planning (RTP). Disadvantages of CT include poor soft tissue contrast and exposure to ionizing radiation. While MRI can overcome these disadvantages, it lacks the photon absorption information needed for PET AC and RTP. Thus, an intelligent transformation from MR to CT, i.e., the MR-based synthetic CT generation, is of great interest as it would support PET/MR AC and MR-only RTP. Using an MR pulse sequence that combines ultra-short echo time (UTE) and modified Dixon (mDixon), we propose a novel method for synthetic CT generation jointly leveraging prior knowledge as well as partial supervision (SCT-PK-PS for short) on large-field-of-view images that span abdomen and pelvis. Two key machine learning techniques, i.e., the knowledge-leveraged transfer fuzzy c-means (KL-TFCM) and the Laplacian support vector machine (LapSVM), are used in SCT-PK-PS. The significance of our effort is threefold: 1) Using the prior knowledge-referenced KL-TFCM clustering, SCT-PK-PS is able to group the feature data of MR images into five initial clusters of fat, soft tissue, air, bone, and bone marrow. Via these initial partitions, clusters needing to be refined are observed and for each of them a few additionally labeled examples are given as the partial supervision for the subsequent semi-supervised classification using LapSVM; 2) Partial supervision is usually insufficient for conventional algorithms to learn the insightful classifier. Instead, exploiting not only the given supervision but also the manifold structure embedded primarily in numerous unlabeled data, LapSVM is capable of training multiple desired tissue-recognizers; 3) Benefiting from the joint use of KL-TFCM and LapSVM, and assisted by the edge detector filter based feature extraction, the proposed SCT-PK-PS method features good recognition accuracy of tissue types, which ultimately facilitates the good transformation from MR images to CT images of the abdomen-pelvis. Applying the method on twenty subjects' feature data of UTE-mDixon MR images, the average score of the mean absolute prediction deviation (MAPD) of all subjects is 140.72 +/- 30.60 HU which is statistically significantly better than the 241.36 +/- 21.79HU obtained using the all-water method, the 262.77 +/- 42.22 HU obtained using the four-cluster-partitioning (FCP, i.e., external-air, internal-air, fat, and soft tissue) method, and the 197.05 +/- 76.53 HU obtained via the conventional SVM method. These results demonstrate the effectiveness of our method for the intelligent transformation from MR to CT on the body section of abdomen-pelvis.
机译:计算机断层扫描(CT)提供诊断,宠物衰减校正(AC)和辐射治疗计划(RTP)的信息。 CT的缺点包括差的软组织对比和暴露于电离辐射。虽然MRI可以克服这些缺点,但它缺乏PET AC和RTP所需的光子吸收信息。因此,来自MR至CT的智能变换,即基于MR的合成CT生成,这是非常兴趣的,因为它将支持PET / AC和MR-LOST RTP。使用将超短回波时间(UTE)和改进的Dixon(Mdixon)结合的MR脉冲序列,我们提出了一种新的合成CT生成方法,共同利用先验知识以及部分监督(简称SCT-PK-PS)跨越腹部和骨盆的大视野图像。两个关键机器学习技术,即知识利用的转移模糊C-means(KL-TFCM)和Laplacian支持向量机(LAPSVM)用于SCT-PK-PS。我们的努力的重要性是三倍:1)使用先前的知识引用的KL-TFCM聚类,SCT-PK-PS能够将MR图像的特征数据分组成五个初始脂肪,软组织,空气,骨骼簇,和骨髓。通过这些初始分区,观察需要改进的集群,并且对于使用LAPSVM的后续半监督分类的部分监督,将需要改进的簇。 2)部分监督通常不足以用于学习洞察力分类器的传统算法。相反,不仅利用给定的监督,而且还利用主要在许多未标记数据中嵌入的歧管结构,LAPSVM能够培训多个所需的组织识别器; 3)受益于KL-TFCM和LAPSVM的关节使用,并由边缘检测器滤波器的特征提取辅助,所提出的SCT-PK-PS方法具有良好的组织类型的识别准确性,这最终促进了来自MR图像的良好转变到腹部骨盆的CT图像。在20个主题的UTE-MDIXON MR图像的特征数据上应用该方法,所有受试者的平均绝对预测偏差(MAPD)的平均得分为140.72 +/- 30.60 HU,其统计学上显着优于241.36 +/- 21.79使用全水方法获得的HU,使用四簇分配(FCP,即外部空气,内部空气,脂肪和软组织)方法获得262.77 +/- 42.22 HU,以及197.05 + / - 76.53 HU通过传统的SVM方法获得。这些结果表明了我们对腹部骨盆MR对CT的智能变换的方法的有效性。

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  • 作者单位

    Jiangnan Univ Sch Artificial Intelligence & Comp Sci 1800 Lihu Ave Wuxi 214122 Jiangsu Peoples R China|Jiangnan Univ Jiangsu Key Lab Media Design & Software Technol 1800 Lihu Ave Wuxi 214122 Jiangsu Peoples R China;

    Jiangnan Univ Sch Artificial Intelligence & Comp Sci 1800 Lihu Ave Wuxi 214122 Jiangsu Peoples R China|Jiangnan Univ Jiangsu Key Lab Media Design & Software Technol 1800 Lihu Ave Wuxi 214122 Jiangsu Peoples R China;

    Jiangnan Univ Sch Artificial Intelligence & Comp Sci 1800 Lihu Ave Wuxi 214122 Jiangsu Peoples R China|Jiangnan Univ Jiangsu Key Lab Media Design & Software Technol 1800 Lihu Ave Wuxi 214122 Jiangsu Peoples R China;

    Jiangnan Univ Sch Artificial Intelligence & Comp Sci 1800 Lihu Ave Wuxi 214122 Jiangsu Peoples R China|Jiangnan Univ Jiangsu Key Lab Media Design & Software Technol 1800 Lihu Ave Wuxi 214122 Jiangsu Peoples R China;

    Univ Illinois Dept Elect & Comp Engn Champaign IL 61820 USA;

    Case Western Reserve Univ Dept Radiol Cleveland OH 44106 USA|Case Western Reserve Univ Univ Hosp Case Ctr Imaging Res Cleveland OH 44106 USA;

    Case Western Reserve Univ Dept Biomed Engn Cleveland OH 44106 USA|Louis Stokes Cleveland VA Med Ctr Dept Internal Med Cleveland OH 44106 USA;

    Case Western Reserve Univ Dept Radiol Cleveland OH 44106 USA|Case Western Reserve Univ Univ Hosp Case Ctr Imaging Res Cleveland OH 44106 USA;

    Univ Hosp Cleveland Dept Radiat Oncol Med Ctr Cleveland OH 44106 USA;

    Philips Healthcare Cleveland OH 44143 USA;

    Philips Healthcare Cleveland OH 44143 USA;

    Philips Res North Amer Cambridge MA 02141 USA;

    Case Western Reserve Univ Case Ctr Imaging Res Cleveland OH 44106 USA|Case Western Reserve Univ Dept Radiat Oncol Cleveland OH 44106 USA|Univ Hosp Dept Radiat Oncol Seidman Canc Ctr Cleveland OH 44106 USA|Louis Stokes Cleveland VA Med Ctr Dept Radiat Oncol Cleveland OH 44106 USA;

    Case Western Reserve Univ Dept Radiol Cleveland OH 44106 USA|Case Western Reserve Univ Univ Hosp Case Ctr Imaging Res Cleveland OH 44106 USA;

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  • 正文语种 eng
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  • 关键词

    Abdomen; intelligent transformation; machine learning; medical images; MR; pelvis; synthetic CT;

    机译:腹部;智能转型;机器学习;医学图像;MR;骨盆;合成CT;

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