TY - JOUR
T1 - Alternaria spore exposure in Bavaria, Germany, measured using artificial intelligence algorithms in a network of BAA500 automatic pollen monitors
AU - González-Alonso, Mónica
AU - Boldeanu, Mihai
AU - Koritnik, Tom
AU - Gonçalves, Jose
AU - Belzner, Lenz
AU - Stemmler, Tom
AU - Gebauer, Robert
AU - Grewling, Łukasz
AU - Tummon, Fiona
AU - Maya-Manzano, Jose M.
AU - Ariño, Arturo H.
AU - Schmidt-Weber, Carsten
AU - Buters, Jeroen
N1 - Publisher Copyright:
© 2022 Elsevier B.V.
PY - 2023/2/25
Y1 - 2023/2/25
N2 - Although Alternaria spores are well-known allergenic fungal spores, automatic bioaerosol recognition systems have not been trained to recognize these particles until now. Here we report the development of a new algorithm able to classify Alternaria spores with BAA500 automatic bioaerosol monitors. The best validation score was obtained when the model was trained on both data from the original dataset and artificially generated images, with a validation unweighted mean Intersection over Union (IoU), also called Jaccard Index, of 0.95. Data augmentation techniques were applied to the training set. While some particles were not recognized (false negatives), false positives were few. The results correlated well with manual counts (mean of four Hirst-type traps), with R2 = 0.78. Counts from BAA500 were 1.92 times lower than with Hirst-type traps. The algorithm was then used to re-analyze the historical automatic pollen monitoring network (ePIN) dataset (2018–2022), which lacked Alternaria spore counts. Re-analysis of past data showed that Alternaria spore exposure in Bavaria was very variable, with the highest counts in the North (Marktheidenfeld, 154 m a.s.l.), and the lowest values close to the mountains in the South (Garmisch-Partenkirchen, 735 m a.s.l.). This approach shows that in our network future algorithms can be run on past datasets. Over time, the use of different algorithms could lead to misinterpretations as stemming from climate change or other phenological causes. Our approach enables consistent, homogeneous treatment of long-term series, thus preventing variability in particle counts owing to changes in the algorithms.
AB - Although Alternaria spores are well-known allergenic fungal spores, automatic bioaerosol recognition systems have not been trained to recognize these particles until now. Here we report the development of a new algorithm able to classify Alternaria spores with BAA500 automatic bioaerosol monitors. The best validation score was obtained when the model was trained on both data from the original dataset and artificially generated images, with a validation unweighted mean Intersection over Union (IoU), also called Jaccard Index, of 0.95. Data augmentation techniques were applied to the training set. While some particles were not recognized (false negatives), false positives were few. The results correlated well with manual counts (mean of four Hirst-type traps), with R2 = 0.78. Counts from BAA500 were 1.92 times lower than with Hirst-type traps. The algorithm was then used to re-analyze the historical automatic pollen monitoring network (ePIN) dataset (2018–2022), which lacked Alternaria spore counts. Re-analysis of past data showed that Alternaria spore exposure in Bavaria was very variable, with the highest counts in the North (Marktheidenfeld, 154 m a.s.l.), and the lowest values close to the mountains in the South (Garmisch-Partenkirchen, 735 m a.s.l.). This approach shows that in our network future algorithms can be run on past datasets. Over time, the use of different algorithms could lead to misinterpretations as stemming from climate change or other phenological causes. Our approach enables consistent, homogeneous treatment of long-term series, thus preventing variability in particle counts owing to changes in the algorithms.
KW - Allergy
KW - Alternaria
KW - Automatic monitors
KW - Classification
KW - Convolutional neural networks
KW - Fungal spores
KW - Time series
KW - U-net
UR - http://www.scopus.com/inward/record.url?scp=85145178900&partnerID=8YFLogxK
U2 - 10.1016/j.scitotenv.2022.160180
DO - 10.1016/j.scitotenv.2022.160180
M3 - Article
C2 - 36403848
AN - SCOPUS:85145178900
SN - 0048-9697
VL - 861
JO - Science of the Total Environment
JF - Science of the Total Environment
M1 - 160180
ER -