Literature DB >> 34059743

Neural networks for increased accuracy of allergenic pollen monitoring.

Marcel Polling1, Chen Li2, Lu Cao2, Fons Verbeek2, Letty A de Weger3, Jordina Belmonte4, Concepción De Linares4, Joost Willemse5, Hugo de Boer6, Barbara Gravendeel7.   

Abstract

Monitoring of airborne pollen concentrations provides an important source of information for the globally increasing number of hay fever patients. Airborne pollen is traditionally counted under the microscope, but with the latest developments in image recognition methods, automating this process has become feasible. A challenge that persists, however, is that many pollen grains cannot be distinguished beyond the genus or family level using a microscope. Here, we assess the use of Convolutional Neural Networks (CNNs) to increase taxonomic accuracy for airborne pollen. As a case study we use the nettle family (Urticaceae), which contains two main genera (Urtica and Parietaria) common in European landscapes which pollen cannot be separated by trained specialists. While pollen from Urtica species has very low allergenic relevance, pollen from several species of Parietaria is severely allergenic. We collect pollen from both fresh as well as from herbarium specimens and use these without the often used acetolysis step to train the CNN model. The models show that unacetolyzed Urticaceae pollen grains can be distinguished with > 98% accuracy. We then apply our model on before unseen Urticaceae pollen collected from aerobiological samples and show that the genera can be confidently distinguished, despite the more challenging input images that are often overlain by debris. Our method can also be applied to other pollen families in the future and will thus help to make allergenic pollen monitoring more specific.

Entities:  

Year:  2021        PMID: 34059743     DOI: 10.1038/s41598-021-90433-x

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  9 in total

1.  Automatic and Online Pollen Monitoring.

Authors:  Jose Oteros; Gudrun Pusch; Ingrid Weichenmeier; Ulrich Heimann; Rouven Möller; Stefani Röseler; Claudia Traidl-Hoffmann; Carsten Schmidt-Weber; Jeroen T M Buters
Journal:  Int Arch Allergy Immunol       Date:  2015-08-19       Impact factor: 2.749

Review 2.  Allergenic pollen and pollen allergy in Europe.

Authors:  G D'Amato; L Cecchi; S Bonini; C Nunes; I Annesi-Maesano; H Behrendt; G Liccardi; T Popov; P van Cauwenberge
Journal:  Allergy       Date:  2007-05-22       Impact factor: 13.146

3.  Classifying black and white spruce pollen using layered machine learning.

Authors:  Surangi W Punyasena; David K Tcheng; Cassandra Wesseln; Pietra G Mueller
Journal:  New Phytol       Date:  2012-09-03       Impact factor: 10.151

Review 4.  Principles and methods for automated palynology.

Authors:  K A Holt; K D Bennett
Journal:  New Phytol       Date:  2014-08       Impact factor: 10.151

Review 5.  Pollen-related allergy in the European Mediterranean area.

Authors:  G D'Amato; G Liccardi
Journal:  Clin Exp Allergy       Date:  1994-03       Impact factor: 5.018

6.  Parietaria judaica flowering phenology, pollen production, viability and atmospheric circulation, and expansive ability in the urban environment: impacts of environmental factors.

Authors:  Christina Fotiou; Athanasios Damialis; Nikolaos Krigas; John M Halley; Despoina Vokou
Journal:  Int J Biometeorol       Date:  2010-04-22       Impact factor: 3.787

7.  Cross-reactivity between Parietaria judaica and Parietaria officinalis.

Authors:  A L Corbi; A Pelaez; E Errigo; J Carreira
Journal:  Ann Allergy       Date:  1985-02

Review 8.  Parietaria pollinosis: a review.

Authors:  G D'Amato; A Ruffilli; G Sacerdoti; S Bonini
Journal:  Allergy       Date:  1992-10       Impact factor: 13.146

9.  Changes to airborne pollen counts across Europe.

Authors:  Chiara Ziello; Tim H Sparks; Nicole Estrella; Jordina Belmonte; Karl C Bergmann; Edith Bucher; Maria Antonia Brighetti; Athanasios Damialis; Monique Detandt; Carmen Galán; Regula Gehrig; Lukasz Grewling; Adela M Gutiérrez Bustillo; Margrét Hallsdóttir; Marie-Claire Kockhans-Bieda; Concepción De Linares; Dorota Myszkowska; Anna Pàldy; Adriana Sánchez; Matthew Smith; Michel Thibaudon; Alessandro Travaglini; Agnieszka Uruska; Rosa M Valencia-Barrera; Despoina Vokou; Reinhard Wachter; Letty A de Weger; Annette Menzel
Journal:  PLoS One       Date:  2012-04-13       Impact factor: 3.240

  9 in total
  3 in total

1.  Development and application of a method to classify airborne pollen taxa concentration using light scattering data.

Authors:  Kenji Miki; Toshio Fujita; Norio Sahashi
Journal:  Sci Rep       Date:  2021-11-16       Impact factor: 4.379

2.  Detecting Airborne Pollen Using an Automatic, Real-Time Monitoring System: Evidence from Two Sites.

Authors:  Maria Pilar Plaza; Franziska Kolek; Vivien Leier-Wirtz; Jens Otto Brunner; Claudia Traidl-Hoffmann; Athanasios Damialis
Journal:  Int J Environ Res Public Health       Date:  2022-02-21       Impact factor: 3.390

3.  DNA metabarcoding using nrITS2 provides highly qualitative and quantitative results for airborne pollen monitoring.

Authors:  Marcel Polling; Melati Sin; Letty A de Weger; Arjen G C L Speksnijder; Mieke J F Koenders; Hugo de Boer; Barbara Gravendeel
Journal:  Sci Total Environ       Date:  2021-09-21       Impact factor: 7.963

  3 in total

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