Lublinsky Svetlana, Luu Yen K, Rubin Clinton T, Judex Stefan
Department of Biomedical Engineering, Stony Brook University, Stony Brook, NY 11794-2580, USA.
J Digit Imaging. 2009 Jun;22(3):222-31. doi: 10.1007/s10278-008-9152-x. Epub 2008 Sep 3.
Reflecting its high resolution and contrast capabilities, microcomputed tomography (microCT) can provide an in vivo assessment of adiposity with excellent spatial specificity in the mouse. Herein, an automated algorithm that separates the total abdominal adiposity into visceral and subcutaneous compartments is detailed. This algorithm relies on Canny edge detection and mathematical morphological operations to automate the manual contouring process that is otherwise required to spatially delineate the different adipose deposits. The algorithm was tested and verified with microCT scans from 74 C57BL/6J mice that had a broad range of body weights and adiposity. Despite the heterogeneity within this sample of mice, the algorithm demonstrated a high degree of stability and robustness that did not necessitate changing of any of the initially set input variables. Comparisons of data between the automated and manual methods were in complete agreement (R (2) = 0.99). Compared to manual contouring, the increase in precision and accuracy, while decreasing processing time by at least an order of magnitude, suggests that this algorithm can be used effectively to separately assess the development of total, visceral, and subcutaneous adiposity. As an application of this method, preliminary data from adult mice suggest that a relative increase in either subcutaneous, visceral, or total fat negatively influences skeletal quantity and that fat infiltration in the liver is greatly increased by a high-fat diet.
微型计算机断层扫描(microCT)具有高分辨率和高对比度的特点,能够在小鼠体内对肥胖情况进行评估,且具有出色的空间特异性。本文详细介绍了一种自动算法,该算法可将腹部总脂肪量分为内脏脂肪和皮下脂肪两部分。此算法依靠Canny边缘检测和数学形态学运算,实现了手动轮廓描绘过程的自动化,而手动轮廓描绘原本是在空间上划分不同脂肪沉积所需的步骤。该算法通过对74只体重和肥胖程度各异的C57BL/6J小鼠的microCT扫描进行了测试和验证。尽管该小鼠样本存在异质性,但该算法展现出了高度的稳定性和鲁棒性,无需更改任何初始设置的输入变量。自动方法与手动方法的数据比较完全一致(R² = 0.99)。与手动轮廓描绘相比,该算法在提高精度和准确性的同时,将处理时间缩短了至少一个数量级,这表明该算法可有效用于分别评估总脂肪、内脏脂肪和皮下脂肪的发育情况。作为该方法的一个应用,成年小鼠的初步数据表明,皮下、内脏或总脂肪的相对增加对骨骼数量有负面影响,且高脂饮食会大大增加肝脏中的脂肪浸润。