Department of Radiology, Uppsala University, Uppsala, Sweden.
Department of Information Technology, Uppsala University, Uppsala, Sweden.
Sci Rep. 2017 Jun 8;7(1):3064. doi: 10.1038/s41598-017-01586-7.
Human brown adipose tissue (BAT), with a major site in the cervical-supraclavicular depot, is a promising anti-obesity target. This work presents an automated method for segmenting cervical-supraclavicular adipose tissue for enabling time-efficient and objective measurements in large cohort research studies of BAT. Fat fraction (FF) and R maps were reconstructed from water-fat magnetic resonance imaging (MRI) of 25 subjects. A multi-atlas approach, based on atlases from nine subjects, was chosen as automated segmentation strategy. A semi-automated reference method was used to validate the automated method in the remaining subjects. Automated segmentations were obtained from a pipeline of preprocessing, affine registration, elastic registration and postprocessing. The automated method was validated with respect to segmentation overlap (Dice similarity coefficient, Dice) and estimations of FF, R and segmented volume. Bias in measurement results was also evaluated. Segmentation overlaps of Dice = 0.93 ± 0.03 (mean ± standard deviation) and correlation coefficients of r > 0.99 (P < 0.0001) in FF, R and volume estimates, between the methods, were observed. Dice and BMI were positively correlated (r = 0.54, P = 0.03) but no other significant bias was obtained (P ≥ 0.07). The automated method compared well with the reference method and can therefore be suitable for time-efficient and objective measurements in large cohort research studies of BAT.
人体棕色脂肪组织(BAT)主要位于颈部锁骨上窝,是一种很有前途的抗肥胖靶点。本研究提出了一种自动分割颈部锁骨上窝脂肪组织的方法,以便在 BAT 的大型队列研究中进行高效、客观的测量。对 25 名受试者的水脂磁共振成像(MRI)进行了脂肪分数(FF)和 R 图重建。选择基于 9 名受试者图谱的多图谱方法作为自动分割策略。半自动化参考方法用于验证其余受试者的自动方法。自动分割是从预处理、仿射配准、弹性配准和后处理的流水线获得的。该自动方法是针对分割重叠(Dice 相似系数,Dice)和 FF、R 和分割体积的估计值进行验证的。还评估了测量结果的偏差。观察到两种方法之间 FF、R 和体积估计的 Dice 重叠为 0.93±0.03(平均值±标准差)和相关系数 r>0.99(P<0.0001)。Dice 和 BMI 呈正相关(r=0.54,P=0.03),但没有得到其他显著的偏差(P≥0.07)。该自动方法与参考方法相比表现良好,因此可适用于 BAT 的大型队列研究中的高效、客观的测量。