Lacoste Jeanson Alizé, Dupej Ján, Villa Chiara, Brůžek Jaroslav
Faculty of Natural Sciences, Department of Anthropology and Human Genetics, Charles University, Prague, Czech Republic.
Faculty of Mathematics and Physics, Department of Software and Computer Science Education, Charles University, Prague, Czech Republic.
PeerJ. 2017 May 18;5:e3302. doi: 10.7717/peerj.3302. eCollection 2017.
Estimating volumes and masses of total body components is important for the study and treatment monitoring of nutrition and nutrition-related disorders, cancer, joint replacement, energy-expenditure and exercise physiology. While several equations have been offered for estimating total body components from MRI slices, no reliable and tested method exists for CT scans. For the first time, body composition data was derived from 41 high-resolution whole-body CT scans. From these data, we defined equations for estimating volumes and masses of total body AT and LT from corresponding tissue areas measured in selected CT scan slices.
We present a new semi-automatic approach to defining the density cutoff between adipose tissue (AT) and lean tissue (LT) in such material. An intra-class correlation coefficient (ICC) was used to validate the method. The equations for estimating the whole-body composition volume and mass from areas measured in selected slices were modeled with ordinary least squares (OLS) linear regressions and support vector machine regression (SVMR).
The best predictive equation for total body AT volume was based on the AT area of a single slice located between the 4th and 5th lumbar vertebrae (L4-L5) and produced lower prediction errors (|PE| = 1.86 liters, %PE = 8.77) than previous equations also based on CT scans. The LT area of the mid-thigh provided the lowest prediction errors (|PE| = 2.52 liters, %PE = 7.08) for estimating whole-body LT volume. We also present equations to predict total body AT and LT masses from a slice located at L4-L5 that resulted in reduced error compared with the previously published equations based on CT scans. The multislice SVMR predictor gave the theoretical upper limit for prediction precision of volumes and cross-validated the results.
估计全身各组成部分的体积和质量对于营养及营养相关疾病、癌症、关节置换、能量消耗和运动生理学的研究及治疗监测具有重要意义。虽然已有多个方程可用于从MRI切片估计全身组成部分,但对于CT扫描尚无可靠且经过验证的方法。首次从41例高分辨率全身CT扫描中获取了身体成分数据。基于这些数据,我们定义了根据选定CT扫描切片中测量的相应组织面积来估计全身脂肪组织(AT)和瘦组织(LT)体积及质量的方程。
我们提出了一种新的半自动方法来定义此类材料中脂肪组织(AT)和瘦组织(LT)之间的密度界限。使用组内相关系数(ICC)来验证该方法。通过普通最小二乘法(OLS)线性回归和支持向量机回归(SVMR)对根据选定切片中测量面积估计全身组成物体积和质量的方程进行建模。
全身AT体积的最佳预测方程基于第4和第5腰椎(L4-L5)之间单个切片的AT面积,与同样基于CT扫描的先前方程相比,产生的预测误差更低(|PE| = 1.86升,%PE = 8.77)。大腿中部的LT面积在估计全身LT体积时提供了最低的预测误差(|PE| = 2.52升,%PE = 7.08)。我们还给出了根据L4-L5处切片预测全身AT和LT质量的方程,与先前基于CT扫描发表的方程相比,误差有所降低。多层SVMR预测器给出了体积预测精度的理论上限,并对结果进行了交叉验证。