首页> 外文期刊>Journal of biomedical optics >Combining near-infrared tomography and magnetic resonance imaging to study in vivo breast tissue: implementation of a Laplacian-type regularization to incorporate magnetic resonance structure
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Combining near-infrared tomography and magnetic resonance imaging to study in vivo breast tissue: implementation of a Laplacian-type regularization to incorporate magnetic resonance structure

机译:结合近红外层析成像和磁共振成像研究体内乳腺组织:拉普拉斯型正则化的实现,以结合磁共振结构

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摘要

An imaging system that simultaneously performs near infrared (NIR) tomography and magnetic resonance imaging (MRI) is used to study breast tissue phantoms and a healthy woman in vivo. An NIR image reconstruction that exploits the combined data set is presented that implements the MR structure as a soft-constraint in the NIR property estimation. The algorithm incorporates the MR spatially segmented regions into a regularization matrix that links locations with similar MR properties, and applies a Laplacian-type filter to minimize variation within each region. When prior knowledge of the structure of phantoms is used to guide NIR property estimation, root mean square (rms) image error decreases from 26 to 58%. For a representative in vivo case, images of hemoglobin concentration, oxygen saturation, water fraction, scattering power, and scattering amplitude are derived and the properties of adipose and fibroglandular breast tissue types, identified from MRI, are quantified. Fibroglandular tissue is observed to have more than four times as much water content as adipose tissue, almost twice as much blood volume, and slightly reduced oxygen saturation. This approach is expected to improve recovery of abnormalities within the breast, as the inclusion of structural information increases the accuracy of recovery of embedded heterogeneities, at least in phantom studies.
机译:同时执行近红外(NIR)断层扫描和磁共振成像(MRI)的成像系统用于研究体内的乳房组织体模和健康女性。提出了利用组合数据集的NIR图像重建,该重建将MR结构实现为NIR属性估计中的软约束。该算法将MR在空间上分割的区域合并到一个正则化矩阵中,该矩阵将具有相似MR属性的位置链接在一起,并应用Laplacian型滤波器以使每个区域内的变化最小。当使用体模结构的先验知识指导NIR属性估计时,均方根(rms)图像误差从26%降至58%。对于有代表性的体内情况,可以得出血红蛋白浓度,氧饱和度,水含量,散射功率和散射幅度的图像,并对通过MRI识别的脂肪和纤维腺乳腺组织类型的属性进行定量。观察到腓肠组织的水分含量是脂肪组织的四倍以上,血液量几乎是脂肪组织的两倍,并且氧饱和度略有降低。预计这种方法将改善乳房内异常的恢复,因为至少在体模研究中,包含结构信息会提高嵌入式异质性恢复的准确性。

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