Author:
Mirasbekov Yersultan,Zhumakhanova Adina,Zhantuyakova Almira,Sarkytbayev Kuanysh,Malashenkov Dmitry V.,Baishulakova Assel,Dashkova Veronika,Davidson Thomas A.,Vorobjev Ivan A.,Jeppesen Erik,Barteneva Natasha S.
Abstract
AbstractA machine learning approach was employed to detect and quantify Microcystis colonial morphospecies using FlowCAM-based imaging flow cytometry. The system was trained and tested using samples from a long-term mesocosm experiment (LMWE, Central Jutland, Denmark). The statistical validation of the classification approaches was performed using Hellinger distances, Bray–Curtis dissimilarity, and Kullback–Leibler divergence. The semi-automatic classification based on well-balanced training sets from Microcystis seasonal bloom provided a high level of intergeneric accuracy (96–100%) but relatively low intrageneric accuracy (67–78%). Our results provide a proof-of-concept of how machine learning approaches can be applied to analyze the colonial microalgae. This approach allowed to evaluate Microcystis seasonal bloom in individual mesocosms with high level of temporal and spatial resolution. The observation that some Microcystis morphotypes completely disappeared and re-appeared along the mesocosm experiment timeline supports the hypothesis of the main transition pathways of colonial Microcystis morphoforms. We demonstrated that significant changes in the training sets with colonial images required for accurate classification of Microcystis spp. from time points differed by only two weeks due to Microcystis high phenotypic heterogeneity during the bloom. We conclude that automatic methods not only allow a performance level of human taxonomist, and thus be a valuable time-saving tool in the routine-like identification of colonial phytoplankton taxa, but also can be applied to increase temporal and spatial resolution of the study.
Funder
Moscow State University
Centre for Water Technology at Aarhus University
Ministry of Sciences, Kazakhstan
Sino-Danish Centre for Education and Research
TÜBİTAK Outstanding Researchers Programme
AQUACOSM
Nazarbayev University
Publisher
Springer Science and Business Media LLC
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