Maxim Lippeveld, Daniel Peralta, Assaf Vardi, Flora Vincent, Yvan Saeys
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引用次数: 0
摘要
浮游植物,如球藻Gephyrocapsa huxleyi (G. huxleyi),通过光合作用(氧气和有机物的生产)对生态产生重要影响。huxleyi种群面临的一个重大威胁是特定的Gephyrocapsa huxleyi病毒(GhV)感染。先前的研究为G. huxleyi的感染周期提供了重要的见解。然而,包括感染细胞的定量形态学信息在内的研究是缺乏的,这可能掩盖了感染周期的异质性。在这项研究中,我们提出了一种机器学习(ML)管道,将形态学分析纳入感染G. huxleyi群体的空间分辨单分子mRNA荧光原位杂交(smFISH)成像流式细胞术(IFC)数据的分析中。首先,我们建议通过使用不依赖mRNA染色的分类模型来简化感染监测。其次,我们提出了一个探索性的数据分析管道,以解开感染培养物中细胞死亡的两种模式和健康细胞亚群,这些细胞可能不会死于感染,而是死于程序性细胞死亡(PCD)。总体而言,我们表明smFISH-IFC数据的形态分析非常适合研究浮游植物种群中的微生物相互作用。
Morphological Profiling of Imaging Flow Cytometry Data Uncovers Heterogeneity in Infected Gephyrocapsa huxleyi Cultures.
Phytoplankton, such as the coccolitophore Gephyrocapsa huxleyi (G. huxleyi), has a major ecological impact through photosynthesis-the production of oxygen and organic material. A significant threat to G. huxleyi populations is viral infection with the specific Gephyrocapsa huxleyi virus (GhV). Previous research has provided important insight into the infection cycle of G. huxleyi. However, research including quantitative morphological information on infected cells is lacking, potentially masking heterogeneity in the infection cycle. In this study, we propose a machine learning (ML) pipeline to incorporate morphological profiling into the analysis of spatially resolved single-molecule mRNA fluorescence in situ hybridization (smFISH)-imaging flow cytometry (IFC) data acquired on infected G. huxleyi populations. First, we propose to simplify infection monitoring by using a classification model that does not rely on mRNA staining. Second, we propose an exploratory data analysis pipeline to disentangle two modes of cell death in infected cultures and a subpopulation of healthy cells that potentially will not die from infection, but from programmed cell death (PCD). Overall, we show that morphological profiling of smFISH-IFC data is highly suited for studying microbial interactions in phytoplankton populations.
期刊介绍:
Cytometry Part A, the journal of quantitative single-cell analysis, features original research reports and reviews of innovative scientific studies employing quantitative single-cell measurement, separation, manipulation, and modeling techniques, as well as original articles on mechanisms of molecular and cellular functions obtained by cytometry techniques.
The journal welcomes submissions from multiple research fields that fully embrace the study of the cytome:
Biomedical Instrumentation Engineering
Biophotonics
Bioinformatics
Cell Biology
Computational Biology
Data Science
Immunology
Parasitology
Microbiology
Neuroscience
Cancer
Stem Cells
Tissue Regeneration.