Guo Penghong, Rivera Daniel E, Pauley Abigail M, Leonard Krista S, Savage Jennifer S, Downs Danielle S
School for Engineering of Matter, Transport, and Energy, Arizona State University, Tempe, AZ 85281 USA.
Exercise Psychology Laboratory, Department of Kinesiology, Penn State University, University Park, PA, USA.
IFAC Pap OnLine. 2018;51(15):144-149. doi: 10.1016/j.ifacol.2018.09.105. Epub 2018 Oct 8.
Energy intake underreporting is a frequent concern in weight control interventions. In prior work, a series of estimation approaches were developed to better understand the issue of underreporting of energy intake; among these is an approach based on semi-physical identification principles that adjusts energy intake self-reports by obtaining a functional relationship for the extent of underreporting. In this paper, this global modeling approach is extended, and for comparison purposes, a local modeling approach based on the concept of Model-on-Demand (MoD) is developed. The local approach displays comparable performance, but involves reduced engineering e ort and demands less information. Cross-validation is utilized to evaluate both approaches, which in practice serves as the basis for selecting parsimonious yet accurate models. The effectiveness of the enhanced global and MoD local estimation methods is evaluated with data obtained from , a novel gestational weight intervention study focused on the needs of obese and overweight women.
能量摄入报告不足是体重控制干预中经常关注的问题。在先前的研究中,开发了一系列估计方法以更好地理解能量摄入报告不足的问题;其中一种方法基于半物理识别原理,通过获取报告不足程度的函数关系来调整能量摄入自我报告。在本文中,扩展了这种全局建模方法,并且为了进行比较,开发了一种基于按需建模(MoD)概念的局部建模方法。局部方法表现出可比的性能,但涉及的工程工作量减少且所需信息更少。使用交叉验证来评估这两种方法,在实践中这是选择简洁而准确模型的基础。通过从一项针对肥胖和超重女性需求的新型孕期体重干预研究中获得的数据,评估了增强的全局和MoD局部估计方法的有效性。