Deep learning-driven imaging of cell division and cell growth across an entire eukaryotic life cycle.

IF 3.1 3区 生物学 Q3 CELL BIOLOGY
Molecular Biology of the Cell Pub Date : 2025-06-01 Epub Date: 2025-05-06 DOI:10.1091/mbc.E25-01-0009
Taylor Kennedy, Berk Yalcinkaya, Shreya Ramakanth, Sandhya Neupane, Nika Tadić, Nicolas E Buchler, Orlando Argüello-Miranda
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Abstract

The life cycle of eukaryotic microorganisms involves complex transitions between states such as dormancy, mating, meiosis, and cell division, which are often studied independently from each other. Therefore, most microbial life cycles are theoretical reconstructions from partial observations of cellular states. Here we show that complete microbial life cycles can be directly and continuously studied by combining microfluidic culturing, life cycle stage-specific segmentation of micrographs, and a novel cell tracking algorithm, FIEST, based on deep learning video frame interpolation. As proof of principle, we quantitatively imaged and compared cell growth and the activity state of the cell division kinase, Cdk1, across the life cycle of Saccharomyces cerevisiae for up to three sexually reproducing generations. Our analysis of S. cerevisiae's life cycle provided the following new insights: 1) the accumulation of cell cycle regulators, such as Whi5, is tailored to each life cycle stage; 2) cell growth always preceded exit from nonproliferative states in our conditions; 3) the temporal coordination of meiotic events is the same across sexually reproducing populations when each generation is exposed to same conditions; 4) information such as cell size and morphology resets after each sexual reproduction cycle. Image processing and tracking algorithms are available as the Python package Yeastvision, which could be used study pathogens such as Candida glabrata, Cryptococcus neoformans, Colletotrichum acutatum, and other unicellular systems.

在整个真核生物生命周期中细胞分裂和细胞生长的深度学习驱动成像。
真核微生物的生命周期涉及休眠、交配、减数分裂和细胞分裂等状态之间的复杂过渡,这些状态通常是相互独立研究的。因此,大多数微生物的生命周期是从部分观察细胞状态的理论重建。本研究表明,通过结合微流体培养、生命周期阶段特异性显微图分割和基于深度学习视频帧插值的新型细胞跟踪算法FIEST,可以直接连续地研究完整的微生物生命周期。作为原理证明,我们定量成像并比较了酵母在整个生命周期中多达三代有性繁殖的细胞生长和细胞分裂激酶Cdk1的活性状态。我们对酿酒酵母生命周期的分析提供了以下新的见解:(1)细胞周期调节因子的积累,如wh5,是为每个生命周期阶段量身定制的;(2)在我们的条件下,细胞生长总是先于非增殖状态的退出;(3)当每代暴露在相同的条件下,有性生殖群体中减数分裂事件的时间协调是相同的;(4)细胞大小和形态等信息在每个有性繁殖周期后重置。图像处理和跟踪算法可作为Python包Yeastvision,可用于研究病原体,如念珠菌,新型隐球菌,尖锐炭疽杆菌和其他单细胞系统。[媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文][媒体:见文]
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来源期刊
Molecular Biology of the Cell
Molecular Biology of the Cell 生物-细胞生物学
CiteScore
6.00
自引率
6.10%
发文量
402
审稿时长
2 months
期刊介绍: MBoC publishes research articles that present conceptual advances of broad interest and significance within all areas of cell, molecular, and developmental biology. We welcome manuscripts that describe advances with applications across topics including but not limited to: cell growth and division; nuclear and cytoskeletal processes; membrane trafficking and autophagy; organelle biology; quantitative cell biology; physical cell biology and mechanobiology; cell signaling; stem cell biology and development; cancer biology; cellular immunology and microbial pathogenesis; cellular neurobiology; prokaryotic cell biology; and cell biology of disease.
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