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基于全变差的 DCE-MRI 分解,通过将病变与背景分离来估计时间-强度曲线。

Total variation based DCE-MRI decomposition by separating lesion from background for time-intensity curve estimation.

机构信息

Department of Biomedical Engineering, Dalian University of Technology, Dalian, 116024, China.

School of Information Science & Engineering and Institute of Life Sciences, Shandong Normal University, Jinan, 250014, China.

出版信息

Med Phys. 2017 Jun;44(6):2321-2331. doi: 10.1002/mp.12242. Epub 2017 May 22.

Abstract

PURPOSE

This study aims to obtain the accurate time intensity curve (TIC) of a dynamic contrast-enhanced magnetic resonance image (DCE-MRI) by eliminating the normal tissue enhancement and obtaining pure lesion information. The TIC of DCE-MRI is sometimes distorted because of the influence of normal tissue. In this paper, a new tracer-kinetic modeling based on total variation (DC-TV) is proposed to address this problem by decomposing the DCE-MRI into the normal tissue image and the lesion image. As TIC generation is not standardized and a credible program is expected, an accurate TIC generation is presented in this paper.

MATERIALS AND METHODS

We propose a new tracer-kinetic model DC-TV to decompose the lesion region in breast DCE-MRIs. The original image is decomposed into a normal tissue image and a lesion image to obtain the pure lesion enhancement information. The acquired lesion images are smooth and correspond to the diffusion of the contrast agent in the lesion. The normal tissue image sequences are stable and correspond to the enhanced normal tissue. To speed up the computational process of our convergent algorithm, the split Bregman iteration algorithm is applied. To compare the algorithm results, images generated by decomposed methods without normal tissue constraint based on total variation are compared with those generated by our method. The performance of the proposed method is evaluated by the correlation of normal tissue images with the lesion classification accuracy of lesion images.

RESULTS

Ninety-eight lesions, including 40 benign and 58 malignant, are evaluated. The dataset includes various typical pathologies of the breast such as invasive ductal carcinoma, ductal carcinoma in situ, tubular carcinoma, phyllodes tumor, hyperplasia, and fibroadenoma, among others. The area under the ROC for the pure lesion enhancement images acquired by DC-TV is greater than that acquired by the original DCE-MRIs.

CONCLUSIONS

The pure enhancement information from the original breast DCE-MRI lesions can be successfully obtained using our DC-TV. The TICs based on the acquired pure enhancement information closely conform to three-time-point model, which is a classic diagnosis rule. The experiment shows that DC-TV provide a credible TIC generation program.

摘要

目的

本研究旨在通过消除正常组织增强并获取纯病变信息,获得动态对比增强磁共振成像(DCE-MRI)的准确时间强度曲线(TIC)。由于正常组织的影响,DCE-MRI 的 TIC 有时会发生扭曲。在本文中,提出了一种基于全变差(DC-TV)的新示踪剂动力学模型,通过将 DCE-MRI 分解为正常组织图像和病变图像来解决这个问题。由于 TIC 生成没有标准化,并且需要一个可信的程序,因此本文提出了一种准确的 TIC 生成方法。

材料和方法

我们提出了一种新的示踪剂动力学模型 DC-TV,用于分解乳腺 DCE-MRI 中的病变区域。原始图像被分解为正常组织图像和病变图像,以获取纯病变增强信息。获得的病变图像是平滑的,对应于造影剂在病变中的扩散。正常组织图像序列是稳定的,对应于增强的正常组织。为了加速我们的收敛算法的计算过程,应用了分裂布格曼迭代算法。为了比较算法结果,比较了基于全变差的无正常组织约束的分解方法生成的图像与我们方法生成的图像。通过与病变图像的病变分类准确性相关的正常组织图像的相关性来评估所提出方法的性能。

结果

评估了 98 个病变,包括 40 个良性病变和 58 个恶性病变。该数据集包括乳腺的各种典型病变,如浸润性导管癌、导管原位癌、管状癌、叶状肿瘤、增生和纤维腺瘤等。基于 DC-TV 获得的纯病变增强图像的 ROC 下面积大于原始 DCE-MRI 的下面积。

结论

可以使用我们的 DC-TV 成功获得原始乳腺 DCE-MRI 病变的纯增强信息。基于获得的纯增强信息的 TIC 紧密符合三时点模型,这是一种经典的诊断规则。实验表明,DC-TV 提供了一个可信的 TIC 生成程序。

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