Guo Shumei, Siervogel Roger M, Roche Alex F, Chumlea Wm Cameron
Department of Mathematics and Statistics, Wright State University, Yellow Springs, Ohio 45387-1695.
Division of Human Biology, Department of Community Health, Wright State University, Yellow Springs, Ohio 45387-1695.
Am J Hum Biol. 1992;4(1):93-104. doi: 10.1002/ajhb.1310040112.
Kernel regression is a nonparametric procedure that provides good approximations to individual serial data. The method is useful and flexible when a parametric method is inappropriate due to restricted assumptions on the shape of the curve. In the present study, we compared kernel regression in fitting human stature growth with two models, one of which incorporates the possible existence of the midgrowth spurt while the other does not. Two families of mathematical functions and a nonparametric kernel regression were fitted to serial measures of stature on 227 participants enrolled in the Fels Longitudinal Study. The growth parameters that describe the timing, magnitude, and duration of the growth spurt, such as midgrowth spurt and pubertal spurts, were derived from the fitted models and kernel regression for each participant. The two parametric models and kernel regression were compared in regard to their overall goodness of fit and their capabilities to quantify the timing, rate of increase, and duration of the growth events. The Preece-Baines model does not describe the midgrowth spurt. The dervied growth parameters from the Preece-Baines model show an earlier onset and a longer duration of the pubertal spurt, and a slower increase in velocity. The kernel regression with bandwidth 2 years and a second-order polynomial kernel function yields relatively good fits compared with the triple logistic model. The derived biological parameters for the pubertal spurt are similar between the kernel regression and the triple logistic model. Kernel regression estimates an earlier onset and a more rapid increase of velocity for the midgrowth spurt.
核回归是一种非参数方法,可对个体序列数据提供良好的近似值。当由于对曲线形状的假设受限而使参数方法不适用时,该方法既有用又灵活。在本研究中,我们将核回归与两种模型拟合人类身高增长的情况进行了比较,其中一种模型考虑了生长中期突增可能存在的情况,而另一种则没有。将两类数学函数和非参数核回归应用于参加费尔斯纵向研究的227名参与者的身高序列测量值。从拟合模型和每个参与者的核回归中得出描述生长突增的时间、幅度和持续时间的生长参数,如生长中期突增和青春期突增。比较了这两种参数模型和核回归在整体拟合优度以及量化生长事件的时间、增长速度和持续时间方面的能力。普里斯-贝恩斯模型没有描述生长中期突增。从普里斯-贝恩斯模型得出的生长参数显示青春期突增开始时间更早、持续时间更长,且速度增加较慢。与三重逻辑模型相比,带宽为2年的核回归和二阶多项式核函数能产生相对较好的拟合效果。核回归和三重逻辑模型得出的青春期突增的生物学参数相似。核回归估计生长中期突增开始时间更早,速度增加更快。