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Integration of reference data from different Rapid-E devices supports automatic pollen detection in more locations.
Matavulj, Predrag; Cristofori, Antonella; Cristofolini, Fabiana; Gottardini, Elena; Brdar, Sanja; Sikoparija, Branko.
Affiliation
  • Matavulj P; BioSensе Institute - Research Institute for Information Technologies in Biosystems, University of Novi Sad, Dr Zorana Djindjica 1, 21000 Novi Sad, Serbia. Electronic address: matavulj.predrag@biosense.rs.
  • Cristofori A; Research and Innovation Centre - Fondazione Edmund Mach, Via E. Mach, 1, 38010 San Michele all'Adige, Italy.
  • Cristofolini F; Research and Innovation Centre - Fondazione Edmund Mach, Via E. Mach, 1, 38010 San Michele all'Adige, Italy.
  • Gottardini E; Research and Innovation Centre - Fondazione Edmund Mach, Via E. Mach, 1, 38010 San Michele all'Adige, Italy.
  • Brdar S; BioSensе Institute - Research Institute for Information Technologies in Biosystems, University of Novi Sad, Dr Zorana Djindjica 1, 21000 Novi Sad, Serbia.
  • Sikoparija B; BioSensе Institute - Research Institute for Information Technologies in Biosystems, University of Novi Sad, Dr Zorana Djindjica 1, 21000 Novi Sad, Serbia.
Sci Total Environ ; 851(Pt 2): 158234, 2022 Dec 10.
Article in En | MEDLINE | ID: mdl-36007635
ABSTRACT
Pollen is the most common cause of seasonal allergies, affecting over 33 % of the European population, even when considering only grasses. Informing the population and clinicians in real-time about the actual presence of pollen in the atmosphere is essential to reduce its harmful health and economic impact. Thus, there is a growing network of automatic particle analysers, and the reproducibility and transferability of implemented models are recommended since a reference dataset for local pollen of interest needs to be collected for each device to classify pollen, which is complex and time-consuming. Therefore, it would be beneficial to incorporate the reference dataset collected from other devices in different locations. However, it must be considered that laser-induced data are prone to device-specific noise due to laser and detector sensibility. This study collected data from two Rapid-E bioaerosol identifiers in Serbia and Italy and implemented a multi-modal convolutional neural network for pollen classification. We showed that models lost their performance when trained on data from one and tested on another device, not only in terms of the recognition ability but also in comparison with the manual measurements from Hirst-type traps. To enable pollen classification with just one model in both study locations, we first included the missing pollen classes in the dataset from the other study location, but it showed poor results, implying that data of one pollen class from different devices are more different than data of different pollen classes from one device. Combining all available reference data in a single model enabled the classification of a higher number of pollen classes in both study locations. Finally, we implemented a domain adaptation method, which improved the recognition ability and the correlations of transferred models only for several pollen classes.
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Full text: 1 Database: MEDLINE Main subject: Pollen / Neural Networks, Computer Type of study: Diagnostic_studies / Guideline / Prognostic_studies Language: En Journal: Sci Total Environ Year: 2022 Type: Article

Full text: 1 Database: MEDLINE Main subject: Pollen / Neural Networks, Computer Type of study: Diagnostic_studies / Guideline / Prognostic_studies Language: En Journal: Sci Total Environ Year: 2022 Type: Article