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脂肪-水分离磁共振成像中脂肪组织的全自动非参数定量分析

Fully automatic and nonparametric quantification of adipose tissue in fat-water separation MR imaging.

作者信息

Wang Defeng, Shi Lin, Chu Winnie C W, Hu Miao, Tomlinson Brian, Huang Wen-Hua, Wang Tianfu, Heng Pheng Ann, Yeung David K W, Ahuja Anil T

机构信息

Department of Imaging and Interventional Radiology, The Chinese University of Hong Kong, Sha Tin, Hong Kong, People's Republic of China.

Research Center for Medical Image Computing, The Chinese University of Hong Kong, Sha Tin, Hong Kong, People's Republic of China.

出版信息

Med Biol Eng Comput. 2015 Nov;53(11):1247-54. doi: 10.1007/s11517-015-1347-y. Epub 2015 Aug 6.

Abstract

Despite increasing demand and research efforts, currently there is no consensus on the protocol for automated and reliable quantification of adipose tissue (AT) and visceral adipose tissue (VAT) using MRI. The purpose of this study was to propose a novel computational method with enhanced objectiveness for the quantification of AT and VAT in fat-water separation MRI. 3T data from IDEAL were acquired for the fat-water separation. Fat tissues were separated from nonfat regions (background air, bone, water, and other nonfat tissues) using K-means clustering (K = 2). From the binary fat mask, arm regions were separated from body based on the relative size of connected component. AT was obtained from the binary body fat mask. With the initial contour as the outer boundary of body fat, the subcutaneous adipose tissue (SAT) and VAT were separated using deformable model driven by a specifically generated deformation field pointing to the inner boundary of SAT. The proposed method was tested on 16 patients with dyslipidemia and evaluated by comparing the correlation with semi-automatic segmentation results. Good robustness was also observed in the proposed method from the Bland-Altman plots. Compared to other established fat segmentation methods, the proposed method is highly objective for fat-water separation MRI with minimal variability induced by subjective parameter settings.

摘要

尽管需求不断增加且研究工作持续推进,但目前对于使用MRI自动且可靠地定量脂肪组织(AT)和内脏脂肪组织(VAT)的方案尚无共识。本研究的目的是提出一种新颖的计算方法,用于在脂肪-水分离MRI中对AT和VAT进行定量,该方法具有更高的客观性。从IDEAL采集3T数据用于脂肪-水分离。使用K均值聚类(K = 2)将脂肪组织与非脂肪区域(背景空气、骨骼、水和其他非脂肪组织)分离。从二元脂肪掩码中,根据连通分量的相对大小将手臂区域与身体分离。AT从二元身体脂肪掩码中获取。以初始轮廓作为身体脂肪的外边界,使用由专门生成的指向皮下脂肪组织(SAT)内边界的变形场驱动的可变形模型来分离SAT和VAT。该方法在16例血脂异常患者身上进行了测试,并通过与半自动分割结果的相关性进行评估。从布兰德-奥特曼图中也观察到该方法具有良好的稳健性。与其他已建立的脂肪分割方法相比,该方法对于脂肪-水分离MRI具有高度客观性,主观参数设置引起的变异性最小。

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