论文标题
从环境的特征中推断出儿童人口中体育活动的空间分布
Inferring the Spatial Distribution of Physical Activity in Children Population from Characteristics of the Environment
论文作者
论文摘要
肥胖会影响儿童和青少年人口的增长,导致生活质量下降和合并症的风险增加。尽管肥胖的主要原因是已知的,但肥胖行为表现为个人与生活环境的复杂相互作用。因此,解决儿童肥胖仍然是一个充满挑战的问题。 Bigo项目(https://bigoprampram.eu)依靠大规模的行为和环境数据收集来创建支持政策制定和干预设计的工具。在这项工作中,我们提出了一种新颖的分析方法,用于建模预期的人口行为与当地环境的关系。我们通过使用城市环境特征来预测小地理区域的预期体育活动水平,从实验中评估这种方法。从156名儿童和青少年收集的数据进行的实验验证了拟议方法的潜力。具体而言,我们训练可以预测一个地区体育活动水平的模型,可实现81%的保留准确性。此外,我们利用模型预测来自动可视化感兴趣领域中预期人口行为的热图,从中我们获得有用的见解。总体而言,预测模型和自动热图是对人口行为的空间分布的直接感知的有希望的工具,并具有公共卫生当局的潜在用途。
Obesity affects a rising percentage of the children and adolescent population, contributing to decreased quality of life and increased risk for comorbidities. Although the major causes of obesity are known, the obesogenic behaviors manifest as a result of complex interactions of the individual with the living environment. For this reason, addressing childhood obesity remains a challenging problem for public health authorities. The BigO project (https://bigoprogram.eu) relies on large-scale behavioral and environmental data collection to create tools that support policy making and intervention design. In this work, we propose a novel analysis approach for modeling the expected population behavior as a function of the local environment. We experimentally evaluate this approach in predicting the expected physical activity level in small geographic regions using urban environment characteristics. Experiments on data collected from 156 children and adolescents verify the potential of the proposed approach. Specifically, we train models that predict the physical activity level in a region, achieving 81% leave-one-out accuracy. In addition, we exploit the model predictions to automatically visualize heatmaps of the expected population behavior in areas of interest, from which we draw useful insights. Overall, the predictive models and the automatic heatmaps are promising tools in gaining direct perception for the spatial distribution of the population's behavior, with potential uses by public health authorities.