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Using crowd-sourced allergic rhinitis symptom data to improve grass pollen forecasts and predict individual symptoms

机译:使用人群来源的过敏性鼻炎症状数据来改善草花粉预测并预测个体症状

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摘要

Seasonal allergic rhinitis (AR), also known as hay fever, is a common respiratory condition brought on by a range of environmental triggers. Previous work has characterised the relationships between community-level AR symptoms collected using mobile apps in two Australian cities, Canberra and Melbourne, and various environmental covariates including pollen. Here, we build on these relationships by assessing the skill of models that provide a next-day forecast of an individual's risk of developing AR and that nowcast ambient grass pollen concentrations using crowd-sourced AR symptoms as a predictor. Categorical grass pollen forecasts (low/moderate/high) were made based on binning mean daily symptom scores by corresponding categories. Models for an individual's risk were constructed by forward variable selection, considering environmental, demographic, behaviour and health-related inputs, with non-linear responses permitted. Proportional-odds logistic regression was then applied with the variables selected, modelling the symptom scores on their original five-point scale. AR symptom-based estimates of today's average grass pollen concentration were more accurate than those provided by two benchmark forecasting methods using various metrics for assessing accuracy. Predictions of an individual's next-day AR symptoms rated on a five-point scale were correct in 36% of cases and within one point on this scale in 82% of cases. Both outcomes were significantly better than chance. This large-scale AR symptoms measurement program shows that crowd-sourced symptom scores can be used to predict the daily average grass pollen concentration, as well as provide a personalised AR forecast.
机译:季节性过敏性鼻炎(AR),也称为花粉症,是由多种环境触发因素引起的常见呼吸道疾病。以前的工作已经描述了在澳大利亚两个城市堪培拉和墨尔本使用移动应用程序收集的社区级AR症状与花粉等各种环境变量之间的关系。在这里,我们通过评估模型的技能来建立这些关系,这些模型提供了对个体发展AR风险的第二天预测,并使用人群来源的AR症状作为预测因子来预测周围草粉的浓度。分类的草粉花粉预测(低/中/高)是根据相应类别的平均每日症状得分进行划分的。通过考虑环境,人口,行为和健康相关输入的正向变量选择,构建个人风险模型,并允许非线性响应。然后将比例奇数逻辑回归与所选变量一起应用,以其原始的五点量表对症状评分进行建模。基于AR症状的当今平均草粉花粉浓度估算值比使用各种指标评估准确性的两种基准预测方法所提供的估算值更为准确。五分制的个人对次日AR症状的预测在36%的情况下是正确的,而在82%的情况下在该等级的一分之内是正确的。两种结果均好于偶然。这个大规模的AR症状测量程序显示,可以使用人群来源的症状评分来预测每日平均草粉花粉浓度,并提供个性化的AR预测。

著录项

  • 来源
    《The Science of the Total Environment》 |2020年第10期|137351.1-137351.11|共11页
  • 作者单位

    School of Earth Sciences University of Melbourne Parkville Victoria Australia;

    Melbourne Medical School University of Melbourne Parkville Victoria Australia Department of Allergy and Immunology Royal Melbourne Hospital Parkville Victoria Australia;

    School of Culture History and Language College of Asia and the Pacific Australian National University Canberra Canberra Australian Capital Territory Australia ARC Centre of Excellence for Australian Biodiversity and Heritage Australian National University Canberra Australian Capital Territory Australia;

    Western Sydney University and Campbelltown Hospital New South Wales Australia;

    School of BioSciences University of Melbourne Parkville Victoria Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Pollen; Modelling; Allergic rhinitis; Symptom score; Citizen science;

    机译:花粉;造型;过敏性鼻炎;症状评分;公民科学;

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