Whole Body Computed Tomography with Advanced Imaging Techniques: A Research Tool for Measuring Body Composition in Dogs.

Journal of veterinary medicine Pub Date : 2013-01-01 Epub Date: 2013-10-10 DOI:10.1155/2013/610654
Dharma Purushothaman, Barbara A Vanselow, Shu-Biao Wu, Sarah Butler, Wendy Yvonne Brown
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引用次数: 7

Abstract

The use of computed tomography (CT) to evaluate obesity in canines is limited. Traditional CT image analysis is cumbersome and uses prediction equations that require manual calculations. In order to overcome this, our study investigated the use of advanced image analysis software programs to determine body composition in dogs with an application to canine obesity research. Beagles and greyhounds were chosen for their differences in morphology and propensity to obesity. Whole body CT scans with regular intervals were performed on six beagles and six greyhounds that were subjected to a 28-day weight-gain protocol. The CT images obtained at days 0 and 28 were analyzed using software programs OsiriX, ImageJ, and AutoCAT. The CT scanning technique was able to differentiate bone, lean, and fat tissue in dogs and proved sensitive enough to detect increases in both lean and fat during weight gain over a short period. A significant difference in lean : fat ratio was observed between the two breeds on both days 0 and 28 (P < 0.01). Therefore, CT and advanced image analysis proved useful in the current study for the estimation of body composition in dogs and has the potential to be used in canine obesity research.

Abstract Image

采用先进成像技术的全身计算机断层扫描:一种测量犬体成分的研究工具。
使用计算机断层扫描(CT)来评估犬的肥胖是有限的。传统的CT图像分析是繁琐的,并且使用需要人工计算的预测方程。为了克服这一点,我们的研究调查了使用先进的图像分析软件程序来确定狗的身体成分,并应用于犬类肥胖研究。选择比格犬和灰狗是因为它们在形态和肥胖倾向上的差异。研究人员对6只小猎犬和6只灰狗进行了为期28天的体重增加试验,并对它们进行了定期的全身CT扫描。使用OsiriX、ImageJ和AutoCAT软件分析第0天和第28天的CT图像。CT扫描技术能够区分狗的骨骼、瘦肉和脂肪组织,并且被证明足够敏感,可以在短时间内检测到体重增加期间瘦肉和脂肪的增加。2个品种在第0天和第28天的瘦脂比均有极显著差异(P < 0.01)。因此,CT和高级图像分析在目前的研究中被证明是有用的,可以用于估计狗的身体成分,并有可能用于犬类肥胖研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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