Gene activity fully predicts transcriptional bursting dynamics.

ArXiv Pub Date : 2024-06-28
Po-Ta Chen, Michal Levo, Benjamin Zoller, Thomas Gregor
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Abstract

Transcription commonly occurs in bursts, with alternating productive (ON) and quiescent (OFF) periods, governing mRNA production rates. Yet, how transcription is regulated through bursting dynamics remains unresolved. Here, we conduct real-time measurements of endogenous transcriptional bursting with single-mRNA sensitivity. Leveraging the diverse transcriptional activities in early fly embryos, we uncover stringent relationships between bursting parameters. Specifically, we find that the durations of ON and OFF periods are linked. Regardless of the developmental stage or body-axis position, gene activity levels predict individual alleles' average ON and OFF periods. Lowly transcribing alleles predominantly modulate OFF periods (burst frequency), while highly transcribing alleles primarily tune ON periods (burst size). These relationships persist even under perturbations of cis-regulatory elements or trans-factors and account for bursting dynamics measured in other species. Our results suggest a novel mechanistic constraint governing bursting dynamics rather than a modular control of distinct parameters by distinct regulatory processes.

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常见的爆发关系是真核生物转录动力学的基础。
转录通常发生在由交替的生产期(ON)和静止期(OFF)引起的爆发中。然而,如何调节转录爆发来确定时空转录活性仍不清楚。在这里,我们对苍蝇胚胎中的关键发育基因进行了实时转录成像,具有单一聚合酶敏感性。单等位基因转录率和多聚合酶爆发的量化揭示了所有基因之间在时间和空间上的共同爆发关系,以及顺式和反式扰动。我们确定等位基因的ON概率是转录速率的主要决定因素,而转录起始速率的变化是有限的。任何给定的开启概率都决定了平均开启和关闭时间的特定组合,从而保持恒定的特征爆破时间尺度。我们的研究结果表明,主要影响开启概率的各种调节过程的趋同,从而控制mRNA的产生,而不是开启和关闭时间的机制特异性调节。因此,我们的研究结果激励并指导了对实现这些爆发规则和调控转录调控机制的新研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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