Department of Diagnostic and Interventional Radiology, University of Tübingen, Tübingen, Germany.
J Magn Reson Imaging. 2010 Feb;31(2):430-9. doi: 10.1002/jmri.22036.
To obtain quantitative measures of human body fat compartments from whole body MR datasets for the risk estimation in subjects prone to metabolic diseases without the need of any user interaction or expert knowledge.
Sets of axial T1-weighted spin-echo images of the whole body were acquired. The images were segmented using a modified fuzzy c-means algorithm. A separation of the body into anatomic regions along the body axis was performed to define regions with visceral adipose tissue present, and to standardize the results. In abdominal image slices, the adipose tissue compartments were divided into subcutaneous and visceral compartments using an extended snake algorithm. The slice-wise areas of different tissues were plotted along the slice position to obtain topographic fat tissue distributions.
Results from automatic segmentation were compared with manual segmentation. Relatively low mean deviations were obtained for the class of total tissue (4.48%) and visceral adipose tissue (3.26%). The deviation of total adipose tissue was slightly higher (8.71%).
The proposed algorithm enables the reliable and completely automatic creation of adipose tissue distribution profiles of the whole body from multislice MR datasets, reducing whole examination and analysis time to less than half an hour.
从全身磁共振数据集获取人体脂肪含量的定量指标,用于对易患代谢疾病的个体进行风险评估,无需任何用户交互或专家知识。
获取多组全身轴向 T1 加权自旋回波图像。使用改进的模糊 C 均值算法对图像进行分割。通过沿体轴将身体分为解剖区域,以定义存在内脏脂肪组织的区域,并对结果进行标准化。在腹部图像切片中,使用扩展的蛇算法将脂肪组织分为皮下和内脏组织。沿切片位置绘制不同组织的切片面积,以获得地形脂肪组织分布。
自动分割的结果与手动分割进行了比较。对于总组织(4.48%)和内脏脂肪组织(3.26%),平均偏差相对较低。总脂肪组织的偏差略高(8.71%)。
该算法能够从多切片磁共振数据集可靠地全自动创建整个身体的脂肪组织分布图谱,将整个检查和分析时间缩短到半小时以内。