Classification accuracy and compatibility across devices of a new Rapid-E+ flow cytometer
-
Published:2024-09-03
Issue:17
Volume:17
Page:5051-5070
-
ISSN:1867-8548
-
Container-title:Atmospheric Measurement Techniques
-
language:en
-
Short-container-title:Atmos. Meas. Tech.
Author:
Sikoparija Branko, Matavulj Predrag, Simovic IsidoraORCID, Radisic Predrag, Brdar Sanja, Minic Vladan, Tesendic DanijelaORCID, Kadantsev EvgenyORCID, Palamarchuk Julia, Sofiev MikhailORCID
Abstract
Abstract. The study evaluated a new model of a Plair SA airflow cytometer, Rapid-E+, and assessed its suitability for airborne pollen monitoring within operational networks. Key features of the new model are compared with the previous one, Rapid-E. A machine learning algorithm is constructed and evaluated for (i) classification of reference pollen types in laboratory conditions and (ii) monitoring in real-life field campaigns. The second goal of the study was to evaluate the device usability in forthcoming monitoring networks, which would require similarity and reproducibility of the measurement signal across devices. We employed three devices and analysed (dis-)similarities of their measurements in laboratory conditions. The lab evaluation showed similar recognition performance to that of Rapid-E, but field measurements in conditions when several pollen types were present in the air simultaneously showed notably lower agreement of Rapid-E+ with manual Hirst-type observations than those of the older model. An exception was the total-pollen measurements. Comparison across the Rapid-E+ devices revealed noticeable differences in fluorescence measurements between the three devices tested. As a result, application of the recognition algorithm trained on the data from one device to another led to large errors. The study confirmed the potential of the fluorescence measurements for discrimination between different pollen classes, but each instrument needed to be trained individually to achieve acceptable skills. The large uncertainty of fluorescence measurements and their variability between different devices need to be addressed to improve the device usability.
Funder
HORIZON EUROPE Global Challenges and European Industrial Competitiveness Ministarstvo Prosvete, Nauke i Tehnološkog Razvoja
Publisher
Copernicus GmbH
Reference31 articles.
1. Brdar, S., Panić, M., Matavulj, P., Stanković, M., Bartolić, D., and Šikoparija, B.: Explainable AI for unveiling deep learning pollen classification model based on fusion of scattered light patterns and fluorescence spectroscopy, Sci. Rep.-UK, 13, 3205, https://doi.org/10.1038/s41598-023-30064-6, 2023. 2. Bruffaerts, N., Graf, E., Matavulj, P., Tiwari, A., Pyrri, I., Zeder, Y., Erb, S., Plaza, M., Dietler, S., Bendinelli, T., D'hooge, E., and Sikoparija, B.: Advancing automated identification of airborne fungal spores: guidelines for cultivation and reference dataset creation, Aerobiologia, in review, 2024. 3. Buters, J., Clot, B., Galán, C., Gehrig, R. Gilge, S. Hentges, F., O'Connor, D., Sikoparija, B., Skjøth, C., Tummon, F., Adams-Groom, B., Antunes, C., Bruffaerts, N., Celenk, S., Crouzy, B., Guillaud, G., Hajkova, L., Seliger, A., Oliver, G., Ribeiro, H., Rodinkova, V., Saarto, A., Sauliene, I., Sozinova, O., and Stjepanovic, B.: Automatic detection of airborne pollen: an overview, Aerobiologia, 40, 13–37, https://doi.org/10.1007/s10453-022-09750-x, 2022. 4. CEN: EN 16868: Ambient air - Sampling and analysis of airborne pollen grains and fungal spores for networks related to allergy - Volumetric Hirst method, CEN, 2019. 5. Crouzy, B., Stella, M., Konzelmann, T., Calpini, B., and Clot, B.: All-optical automatic pollen identification: Towards an operational system, Atmos. Environ., 140, 202–212, https://doi.org/10.1016/j.atmosenv.2016.05.062, 2016.
|
|