Witzel Angela L, Kirk Claudia A, Henry George A, Toll Philip W, Brejda John J, Paetau-Robinson Inke
Department of Small Animal Clinical Sciences, College of Veterinary Medicine, University of Tennessee, Knoxville, TN 37996.
J Am Vet Med Assoc. 2014 Jun 1;244(11):1279-84. doi: 10.2460/javma.244.11.1279.
To develop morphometric equations for prediction of body composition and create a body fat index (BFI) to estimate body fat percentage in overweight and obese dogs.
Prospective evaluation study.
83 overweight or obese dogs ≥ 1 year of age.
Body condition score (BCS) was assessed on a 5-point scale, morphometric measurements were made, and visual and palpation-based assessments and dual-energy x-ray absorptiometry (DEXA) were performed. Equations for predicting lean body mass, fat mass, and body fat as a percentage of total body weight (ie, body fat percentage) on the basis of morphometric measurements were generated with best-fit statistical models. Visual and palpation-based descriptors were used to develop a BFI. Predicted values for body composition components were compared with DEXA-measured values.
For the study population, the developed morphometric equations accounted for 98% of the variation in lean body mass and fat mass and 82% of the variation in body fat percentage. The proportion of dogs with predicted values within 10% of the DEXA values was 66 of 83 (80%) for lean body mass, 56 of 83 (68%) for fat mass, and 56 of 83 (67%) for body fat percentage. The BFI accurately predicted body fat percentage in 25 of 47 (53%) dogs, whereas the value predicted with BCS was accurate in 6 of 47 (13%) dogs.
Morphometric measurements and the BFI appeared to be more accurate than the 5-point BCS method for estimation of body fat percentage in overweight and obese dogs. Further research is needed to assess the applicability of these findings to other populations of dogs.
建立用于预测身体成分的形态测量方程,并创建一个体脂指数(BFI)来估计超重和肥胖犬的体脂百分比。
前瞻性评估研究。
83只1岁及以上的超重或肥胖犬。
采用5分制评估身体状况评分(BCS),进行形态测量,并进行基于视觉和触诊的评估以及双能X线吸收法(DEXA)。使用最佳拟合统计模型生成基于形态测量预测瘦体重、脂肪量和体脂占总体重百分比(即体脂百分比)的方程。基于视觉和触诊的描述符用于开发BFI。将身体成分各部分的预测值与DEXA测量值进行比较。
对于研究群体,所建立的形态测量方程解释了瘦体重和脂肪量变异的98%以及体脂百分比变异的82%。预测值在DEXA值的10%以内的犬只比例,瘦体重为83只中的66只(80%),脂肪量为83只中的56只(68%),体脂百分比为83只中的56只(67%)。BFI准确预测了47只犬中25只(53%)的体脂百分比,而BCS预测值在47只犬中只有6只(13%)是准确的。
形态测量和BFI在估计超重和肥胖犬的体脂百分比方面似乎比5分制BCS方法更准确。需要进一步研究以评估这些发现对其他犬类群体的适用性。