Machine learning inference of continuous single-cell state transitions during myoblast differentiation and fusion.

IF 8.5 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Molecular Systems Biology Pub Date : 2024-03-01 Epub Date: 2024-01-18 DOI:10.1038/s44320-024-00010-3
Amit Shakarchy, Giulia Zarfati, Adi Hazak, Reut Mealem, Karina Huk, Tamar Ziv, Ori Avinoam, Assaf Zaritsky
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Abstract

Cells modify their internal organization during continuous state transitions, supporting functions from cell division to differentiation. However, tools to measure dynamic physiological states of individual transitioning cells are lacking. We combined live-cell imaging and machine learning to monitor ERK1/2-inhibited primary murine skeletal muscle precursor cells, that transition rapidly and robustly from proliferating myoblasts to post-mitotic myocytes and then fuse, forming multinucleated myotubes. Our models, trained using motility or actin intensity features from single-cell tracking data, effectively tracked real-time continuous differentiation, revealing that differentiation occurs 7.5-14.5 h post induction, followed by fusion ~3 h later. Co-inhibition of ERK1/2 and p38 led to differentiation without fusion. Our model inferred co-inhibition leads to terminal differentiation, indicating that p38 is specifically required for transitioning from terminal differentiation to fusion. Our model also predicted that co-inhibition leads to changes in actin dynamics. Mass spectrometry supported these in silico predictions and suggested novel fusion and maturation regulators downstream of differentiation. Collectively, this approach can be adapted to various biological processes to uncover novel links between dynamic single-cell states and their functional outcomes.

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肌母细胞分化和融合过程中连续单细胞状态转换的机器学习推断。
细胞在连续的状态转换过程中改变其内部组织,支持从细胞分裂到分化的功能。然而,目前还缺乏测量单个过渡细胞动态生理状态的工具。我们将活体细胞成像与机器学习相结合,对ERK1/2抑制的原代小鼠骨骼肌前体细胞进行了监测,这些细胞从增殖的肌母细胞快速而稳健地过渡到有丝分裂后的肌细胞,然后融合形成多核肌管。我们的模型是利用单细胞追踪数据中的运动或肌动蛋白强度特征训练的,能有效追踪实时连续分化,揭示了分化发生在诱导后 7.5-14.5 小时,然后在约 3 小时后融合。同时抑制ERK1/2和p38会导致分化而不发生融合。我们的模型推断共同抑制会导致末期分化,这表明从末期分化过渡到融合特别需要 p38。我们的模型还预测,共同抑制会导致肌动蛋白动力学发生变化。质谱分析支持了这些硅学预测,并提出了分化下游的新型融合和成熟调节因子。总之,这种方法可适用于各种生物过程,以发现单细胞动态状态与其功能结果之间的新联系。
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来源期刊
Molecular Systems Biology
Molecular Systems Biology 生物-生化与分子生物学
CiteScore
18.50
自引率
1.00%
发文量
62
审稿时长
6-12 weeks
期刊介绍: Systems biology is a field that aims to understand complex biological systems by studying their components and how they interact. It is an integrative discipline that seeks to explain the properties and behavior of these systems. Molecular Systems Biology is a scholarly journal that publishes top-notch research in the areas of systems biology, synthetic biology, and systems medicine. It is an open access journal, meaning that its content is freely available to readers, and it is peer-reviewed to ensure the quality of the published work.
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