School of Electrical and Information Engineering, University of Sydney, Darlington, NSW 2008, Australia.
Sydney School of Public Health, University of Sydney, Darlington, NSW 2006, Australia.
Sensors (Basel). 2021 Mar 12;21(6):2028. doi: 10.3390/s21062028.
Undernutrition in infants and young children is a major problem leading to millions of deaths every year. The objective of this study was to provide a new model for body composition assessment using near-infrared reflectance (NIR) to help correctly identify low body fat in infants and young children. Eligibility included infants and young children from 3-24 months of age. Fat mass values were collected from dual-energy x-ray absorptiometry (DXA), deuterium dilution (DD) and skin fold thickness (SFT) measurements, which were then compared to NIR predicted values. Anthropometric measures were also obtained. We developed a model using NIR to predict fat mass and validated it against a multi compartment model. One hundred and sixty-four infants and young children were included. The evaluation of the NIR model against the multi compartment reference method achieved an r value of 0.885, 0.904, and 0.818 for age groups 3-24 months (all subjects), 0-6 months, and 7-24 months, respectively. Compared with conventional methods such as SFT, body mass index and anthropometry, performance was best with NIR. NIR offers an affordable and portable way to measure fat mass in South African infants for growth monitoring in low-middle income settings.
婴幼儿营养不良是一个主要问题,每年导致数百万人死亡。本研究的目的是提供一种新的使用近红外反射(NIR)进行身体成分评估的模型,以帮助正确识别婴幼儿低体脂。纳入标准包括 3-24 个月龄的婴幼儿。体脂肪量值通过双能 X 射线吸收法(DXA)、氘稀释(DD)和皮褶厚度(SFT)测量收集,然后与 NIR 预测值进行比较。还获得了人体测量学指标。我们使用 NIR 开发了一个预测体脂肪量的模型,并对其进行了多隔室模型的验证。共纳入 164 名婴幼儿。NIR 模型与多隔室参考方法的评估,在年龄组 3-24 个月(所有受试者)、0-6 个月和 7-24 个月的 r 值分别为 0.885、0.904 和 0.818。与 SFT、体重指数和人体测量学等传统方法相比,NIR 的表现最佳。NIR 为南非婴幼儿提供了一种经济实惠且便携的方法来测量体脂肪量,以用于中低收入环境中的生长监测。