Bea J W, Blew R M, Going S B, Hsu C-H, Lee M C, Lee V R, Caan B J, Kwan M L, Lohman T G
Department of Medicine, University of Arizona Cancer Center, Tucson, Arizona, 85724-5024.
Department of Nutritional Sciences, University of Arizona, Tucson, Arizona, 85721.
Am J Hum Biol. 2016 Nov;28(6):918-926. doi: 10.1002/ajhb.22892. Epub 2016 Jul 15.
Body composition may be a better predictor of chronic disease risk than body mass index (BMI) in older populations.
We sought to validate spine fat fraction (%) from dual energy X-ray absorptiometry (DXA) spine scans as a proxy for total abdominal fat.
Total body DXA scan abdominal fat regions of interest (ROI) that have been previously validated by magnetic resonance imaging were assessed among healthy, postmenopausal women who also had antero-posterior spine scans (n = 103). ROIs were (1) lumbar vertebrae L2-L4 and (2) L2-Iliac Crest (L2-IC), manually selected by two independent raters, and (3) trunk, auto-selected by DXA software. Intra-class correlation coefficients evaluated intra and inter-rater reliability on a random subset (N = 25). Linear regression models, validated by bootstrapping, assessed the relationship between spine fat fraction (%) and total abdominal fat (%) ROIs.
Mean age, BMI, and total body fat were 66.1 ± 4.8 y, 25.8 ± 3.8 kg/m and 40.0 ± 6.6%, respectively. There were no significant differences within or between raters. Linear regression models adjusted for several participant and scan characteristics were equivalent to using only BMI and spine fat fraction. The model predicted L2-L4 (Adj. R : 0.83) and L2-IC (Adj. R : 0.84) abdominal fat (%) well; the adjusted R for trunk fat (%) was 0.78. Model validation demonstrated minimal over-fitting (Adj. R : 0.82, 0.83, and 0.77 for L2-L4, L2-IC, and trunk fat, respectively).
The strong correlation between spine fat fraction and DXA abdominal fat measures make it suitable for further development in postmenopausal chronic disease risk prediction models. Am. J. Hum. Biol. 28:918-926, 2016. © 2016Wiley Periodicals, Inc.
在老年人群中,身体成分可能比体重指数(BMI)更能预测慢性病风险。
我们试图验证双能X线吸收法(DXA)脊柱扫描得出的脊柱脂肪分数(%)作为全腹脂肪的替代指标。
在健康的绝经后女性中评估全身DXA扫描的腹部感兴趣区域(ROI),这些区域先前已通过磁共振成像验证,她们也进行了前后位脊柱扫描(n = 103)。感兴趣区域包括:(1)腰椎L2 - L4,(2)L2 - 髂嵴(L2 - IC),由两名独立评估者手动选择,以及(3)躯干,由DXA软件自动选择。类内相关系数评估了随机子集(N = 25)上评估者内部和评估者之间的可靠性。通过自抽样验证的线性回归模型评估了脊柱脂肪分数(%)与全腹脂肪(%)感兴趣区域之间的关系。
平均年龄、BMI和全身脂肪分别为66.1±4.8岁、25.8±3.8 kg/m²和40.0±6.6%。评估者内部和评估者之间没有显著差异。针对多个参与者和扫描特征进行调整的线性回归模型等同于仅使用BMI和脊柱脂肪分数。该模型对L2 - L4(调整后R²:0.83)和L2 - IC(调整后R²:0.84)的腹部脂肪(%)预测良好;躯干脂肪(%)的调整后R²为0.78。模型验证表明过拟合最小(L2 - L4、L2 - IC和躯干脂肪的调整后R²分别为0.82、0.83和0.77)。
脊柱脂肪分数与DXA腹部脂肪测量值之间的强相关性使其适用于绝经后慢性病风险预测模型的进一步开发。《美国人类生物学杂志》28:918 - 926,2016年。©2016威利期刊公司。