Literature DB >> 32325552

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

Jeremy D Silver1, Kymble Spriggs2, Simon G Haberle3, Constance H Katelaris4, Edward J Newbigin5, Edwin R Lampugnani6.   

Abstract

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.
Copyright © 2020 Elsevier B.V. All rights reserved.

Entities:  

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

Mesh:

Substances:

Year:  2020        PMID: 32325552     DOI: 10.1016/j.scitotenv.2020.137351

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  5 in total

1.  Validation Parameters of Patient-Generated Data for Digitally Recorded Allergic Rhinitis Symptom and Medication Scores in the @IT.2020 Project: Exploratory Study.

Authors:  Stephanie Dramburg; Serena Perna; Marco Di Fraia; Salvatore Tripodi; Stefania Arasi; Sveva Castelli; Danilo Villalta; Francesca Buzzulini; Ifigenia Sfika; Valeria Villella; Ekaterina Potapova; Maria Antonia Brighetti; Alessandro Travaglini; Pierluigi Verardo; Simone Pelosi; Paolo Maria Matricardi
Journal:  JMIR Mhealth Uhealth       Date:  2022-06-03       Impact factor: 4.947

Review 2.  The applications of eHealth technologies in the management of asthma and allergic diseases.

Authors:  Alberto Alvarez-Perea; Ves Dimov; Florin-Dan Popescu; José Manuel Zubeldia
Journal:  Clin Transl Allergy       Date:  2021-09-06       Impact factor: 5.657

3.  Community Response to the Impact of Thunderstorm Asthma Using Smart Technology.

Authors:  Ala AlQuran; Mehak Batra; Nugroho Harry Susanto; Anne E Holland; Janet M Davies; Bircan Erbas; Edwin R Lampugnani
Journal:  Allergy Rhinol (Providence)       Date:  2021-04-26

4.  5-grass-pollen SLIT effectiveness in seasonal allergic rhinitis: Impact of sensitization to subtropical grass pollen.

Authors:  Sheryl A van Nunen; Melanie B Burk; Pamela K Burton; Geoffrey Ford; Richard J Harvey; Alexander Lozynsky; Elizabeth Pickford; Janet S Rimmer; Joanne Smart; Michael F Sutherland; Francis Thien; Heinrich C Weber; Harry Zehnwirth; Ed Newbigin; Constance H Katelaris
Journal:  World Allergy Organ J       Date:  2022-02-23       Impact factor: 4.084

Review 5.  mHealth and telemedicine utility in the monitoring of allergic diseases.

Authors:  Violeta Kvedarienė; Paulina Burzdikaitė; Inga Česnavičiūtė
Journal:  Front Allergy       Date:  2022-09-02
  5 in total

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