Literature DB >> 23780494

Development and validation of a 5-day-ahead hay fever forecast for patients with grass-pollen-induced allergic rhinitis.

Letty A de Weger1, Thijs Beerthuizen, Pieter S Hiemstra, Jacob K Sont.   

Abstract

One-third of the Dutch population suffers from allergic rhinitis, including hay fever. In this study, a 5-day-ahead hay fever forecast was developed and validated for grass pollen allergic patients in the Netherlands. Using multiple regression analysis, a two-step pollen and hay fever symptom prediction model was developed using actual and forecasted weather parameters, grass pollen data and patient symptom diaries. Therefore, 80 patients with a grass pollen allergy rated the severity of their hay fever symptoms during the grass pollen season in 2007 and 2008. First, a grass pollen forecast model was developed using the following predictors: (1) daily means of grass pollen counts of the previous 10 years; (2) grass pollen counts of the previous 2-week period of the current year; and (3) maximum, minimum and mean temperature (R (2)=0.76). The second modeling step concerned the forecasting of hay fever symptom severity and included the following predictors: (1) forecasted grass pollen counts; (2) day number of the year; (3) moving average of the grass pollen counts of the previous 2 week-periods; and (4) maximum and mean temperatures (R (2)=0.81). Since the daily hay fever forecast is reported in three categories (low-, medium- and high symptom risk), we assessed the agreement between the observed and the 1- to 5-day-ahead predicted risk categories by kappa, which ranged from 65 % to 77 %. These results indicate that a model based on forecasted temperature and grass pollen counts performs well in predicting symptoms of hay fever up to 5 days ahead.

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Year:  2013        PMID: 23780494     DOI: 10.1007/s00484-013-0692-5

Source DB:  PubMed          Journal:  Int J Biometeorol        ISSN: 0020-7128            Impact factor:   3.787


  14 in total

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Authors:  C Geller-Bernstein; C Lahoz; B Cárdaba; G Hassoun; M Iancovici-Kidon; R Kenett; Y Waisel
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Review 4.  Allergic Rhinitis and its Impact on Asthma (ARIA) 2008 update (in collaboration with the World Health Organization, GA(2)LEN and AllerGen).

Authors:  J Bousquet; N Khaltaev; A A Cruz; J Denburg; W J Fokkens; A Togias; T Zuberbier; C E Baena-Cagnani; G W Canonica; C van Weel; I Agache; N Aït-Khaled; C Bachert; M S Blaiss; S Bonini; L-P Boulet; P-J Bousquet; P Camargos; K-H Carlsen; Y Chen; A Custovic; R Dahl; P Demoly; H Douagui; S R Durham; R Gerth van Wijk; O Kalayci; M A Kaliner; Y-Y Kim; M L Kowalski; P Kuna; L T T Le; C Lemiere; J Li; R F Lockey; S Mavale-Manuel; E O Meltzer; Y Mohammad; J Mullol; R Naclerio; R E O'Hehir; K Ohta; S Ouedraogo; S Palkonen; N Papadopoulos; G Passalacqua; R Pawankar; T A Popov; K F Rabe; J Rosado-Pinto; G K Scadding; F E R Simons; E Toskala; E Valovirta; P van Cauwenberge; D-Y Wang; M Wickman; B P Yawn; A Yorgancioglu; O M Yusuf; H Zar; I Annesi-Maesano; E D Bateman; A Ben Kheder; D A Boakye; J Bouchard; P Burney; W W Busse; M Chan-Yeung; N H Chavannes; A Chuchalin; W K Dolen; R Emuzyte; L Grouse; M Humbert; C Jackson; S L Johnston; P K Keith; J P Kemp; J-M Klossek; D Larenas-Linnemann; B Lipworth; J-L Malo; G D Marshall; C Naspitz; K Nekam; B Niggemann; E Nizankowska-Mogilnicka; Y Okamoto; M P Orru; P Potter; D Price; S W Stoloff; O Vandenplas; G Viegi; D Williams
Journal:  Allergy       Date:  2008-04       Impact factor: 13.146

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Authors:  F T Spieksma
Journal:  Allergy       Date:  1980-10       Impact factor: 13.146

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Authors:  Alexander N Greiner; Peter W Hellings; Guiseppina Rotiroti; Glenis K Scadding
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Authors:  J Hellgren; A Cervin; S Nordling; A Bergman; L O Cardell
Journal:  Allergy       Date:  2009-11-26       Impact factor: 13.146

8.  Evaluation of atmospheric Poaceae pollen concentration using a neural network applied to a coastal Atlantic climate region.

Authors:  F J Rodríguez-Rajo; G Astray; J A Ferreiro-Lage; M J Aira; M V Jato-Rodriguez; J C Mejuto
Journal:  Neural Netw       Date:  2009-06-27

9.  Seasonal allergic rhinitis is associated with a detrimental effect on examination performance in United Kingdom teenagers: case-control study.

Authors:  Samantha Walker; Saba Khan-Wasti; Monica Fletcher; Paul Cullinan; Jessica Harris; Aziz Sheikh
Journal:  J Allergy Clin Immunol       Date:  2007-06-08       Impact factor: 10.793

10.  Undertreatment of rhinitis symptoms in Europe: findings from a cross-sectional questionnaire survey.

Authors:  M Maurer; T Zuberbier
Journal:  Allergy       Date:  2007-06-20       Impact factor: 13.146

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