Machine learning models for segmentation and classification of cyanobacterial cells.

IF 2.9 3区 生物学 Q2 PLANT SCIENCES Photosynthesis Research Pub Date : 2025-02-08 DOI:10.1007/s11120-025-01140-x
Clair A Huffine, Zachary L Maas, Anton Avramov, Christian M Brininger, Jeffrey C Cameron, Jian Wei Tay
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Abstract

Timelapse microscopy has recently been employed to study the metabolism and physiology of cyanobacteria at the single-cell level. However, the identification of individual cells in brightfield images remains a significant challenge. Traditional intensity-based segmentation algorithms perform poorly when identifying individual cells in dense colonies due to a lack of contrast between neighboring cells. Here, we describe a newly developed software package called Cypose which uses machine learning (ML) models to solve two specific tasks: segmentation of individual cyanobacterial cells, and classification of cellular phenotypes. The segmentation models are based on the Cellpose framework, while classification is performed using a convolutional neural network named Cyclass. To our knowledge, these are the first developed ML-based models for cyanobacteria segmentation and classification. When compared to other methods, our segmentation models showed improved performance and were able to segment cells with varied morphological phenotypes, as well as differentiate between live and lysed cells. We also found that our models were robust to imaging artifacts, such as dust and cell debris. Additionally, the classification model was able to identify different cellular phenotypes using only images as input. Together, these models improve cell segmentation accuracy and enable high-throughput analysis of dense cyanobacterial colonies and filamentous cyanobacteria.

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来源期刊
Photosynthesis Research
Photosynthesis Research 生物-植物科学
CiteScore
6.90
自引率
8.10%
发文量
91
审稿时长
4.5 months
期刊介绍: Photosynthesis Research is an international journal open to papers of merit dealing with both basic and applied aspects of photosynthesis. It covers all aspects of photosynthesis research, including, but not limited to, light absorption and emission, excitation energy transfer, primary photochemistry, model systems, membrane components, protein complexes, electron transport, photophosphorylation, carbon assimilation, regulatory phenomena, molecular biology, environmental and ecological aspects, photorespiration, and bacterial and algal photosynthesis.
期刊最新文献
Machine learning models for segmentation and classification of cyanobacterial cells. Aquatic plant Myriophyllum spicatum displays contrasting morphological, photosynthetic, and transcriptomic responses between its aquatic and terrestrial morphotypes. Elucidating light-induced changes in excitation energy transfer of photosystem I and II in whole cells of two model cyanobacteria. Primary charge separation in Chloroflexus aurantiacus reaction centers at room temperature: ultrafast transient absorption measurements on QA-depleted preparations with native and chemically modified bacteriopheophytin composition. Adaptive significance of age- and light-related variation in needle structure, photochemistry, and pigments in evergreen coniferous trees.
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