Liou T-H, Chan W P, Pan L-C, Lin P-W, Chou P, Chen C-H
Community Medicine Research Center and Institute of Public Health National Yang-Ming University, Taipei, Taiwan.
Int J Obes (Lond). 2006 May;30(5):844-52. doi: 10.1038/sj.ijo.0803216.
To describe and evaluate a fully automated method for characterizing abdominal adipose tissue from magnetic resonance (MR) transverse body scans.
Four MR pulse sequences were applied: SE, FLAIR, STIR, and FRFSE. On 39 subjects, each abdomen was traversed by 15 contiguous transaxial images. The total abdominal adipose tissue (TAAT) was calculated from thresholds obtained by slice histogram analysis. The same thresholds were also used in the manual volume calculation of TAAT, subcutaneous abdominal adipose tissue (SAAT) and visceral abdominal adipose tissue (VAAT). Image segmentation methods, including edge detection, mathematical morphology, and knowledge-based curve fitting, were used to automatically separate SAAT from VAAT in various 'nonstandard' cases such as those with heterogeneous magnetic fields and movement artefacts.
The percentage root mean squared errors of the method for SAAT and VAAT ranged from 1.0 to 2.7% for the four sequences. It took approximately 7 and 15 min to complete the 15-slice volume estimation of the three adipose tissue classes using automated and manual methods, respectively.
The results demonstrate that the proposed method is robust and accurate. Although the separation of SAAT and VAAT is not always perfect, this method could be especially helpful in dealing with large amounts of data such as in epidemiological studies.
描述并评估一种从磁共振(MR)横断体部扫描中表征腹部脂肪组织的全自动方法。
应用了四种MR脉冲序列:SE、FLAIR、STIR和FRFSE。对39名受试者,每个腹部由15个连续的横轴位图像进行扫描。通过切片直方图分析获得的阈值计算总腹部脂肪组织(TAAT)。相同的阈值也用于TAAT、皮下腹部脂肪组织(SAAT)和内脏腹部脂肪组织(VAAT)的手动体积计算。图像分割方法,包括边缘检测、数学形态学和基于知识的曲线拟合,用于在各种“非标准”情况下自动将SAAT与VAAT分离,例如存在不均匀磁场和运动伪影的情况。
四种序列下该方法对SAAT和VAAT的均方根误差百分比在1.0%至2.7%之间。使用自动和手动方法分别完成三种脂肪组织类别的15层体积估计大约需要7分钟和15分钟。
结果表明所提出的方法稳健且准确。虽然SAAT和VAAT的分离并不总是完美的,但该方法在处理大量数据(如在流行病学研究中)时可能特别有用。