Serial transfer can aid the evolution of autocatalytic sets.

Journal of systems chemistry Pub Date : 2014-04-26 eCollection Date: 2014-01-01 DOI:10.1186/1759-2208-5-4
Wim Hordijk, Nilesh Vaidya, Niles Lehman
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引用次数: 14

Abstract

Background: The concept of an autocatalytic set of molecules has been posited theoretically and demonstrated empirically with catalytic RNA molecules. For this concept to have significance in a realistic origins-of-life scenario, it will be important to demonstrate the evolvability of such sets. Here, we employ a Gillespie algorithm to improve and expand on previous simulations of an empirical system of self-assembling RNA fragments that has the ability to spontaneously form autocatalytic networks. We specifically examine the role of serial transfer as a plausible means to allow time-dependent changes in set composition, and compare the results to equilibrium, or "batch" scenarios.

Results: We show that the simulation model produces results that are in close agreement with the original experimental observations in terms of generating varying autocatalytic (sub)sets over time. Furthermore, the model results indicate that in a "batch" scenario the equilibrium distribution is largely determined by competition for resources and stochastic fluctuations. However, with serial transfer the system is prevented from reaching such an equilibrium state, and the dynamics are mostly determined by differences in reaction rates. This is a consistent pattern that can be repeated, or made stronger or weaker by varying the reaction rates or the duration of the transfer steps. Increasing the number of molecules in the simulation actually strengthens the potential for selection.

Conclusions: These simulations provide a more realistic emulation of wet lab conditions using self-assembling catalytic RNAs that form interaction networks. In doing so, they highlight the potential evolutionary advantage to a prebiotic scenario that involves cyclic dehydration/rehydration events. We posit that such cyclicity is a plausible means to promote evolution in primordial autocatalytic sets, which could later lead to the establishment of individual-based biology.

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串联转移有助于自催化装置的发展。
背景:一组自催化分子的概念已经在理论上提出,并通过催化RNA分子的经验证明。为了使这一概念在现实的生命起源场景中具有重要意义,证明这些集合的可进化性将是重要的。在这里,我们采用Gillespie算法来改进和扩展先前的自组装RNA片段经验系统的模拟,该系统具有自发形成自催化网络的能力。我们特别研究了串行转移的作用,作为一种合理的手段,允许在集合组成中随时间变化,并将结果与平衡或“批量”场景进行比较。结果:我们表明,模拟模型产生的结果与原始实验观察结果密切一致,随着时间的推移产生不同的自催化(子)集。此外,模型结果表明,在“批量”情况下,均衡分布在很大程度上取决于资源竞争和随机波动。然而,通过串联转移,系统无法达到这样的平衡状态,并且动力学主要由反应速率的差异决定。这是一种一致的模式,可以通过改变反应速率或转移步骤的持续时间来重复或增强或减弱。在模拟中增加分子的数量实际上加强了选择的可能性。结论:这些模拟提供了一个更现实的模拟潮湿的实验室条件下使用自组装催化rna形成相互作用网络。在这样做的过程中,他们强调了涉及循环脱水/补液事件的益生元情景的潜在进化优势。我们认为,这种循环是促进原始自催化装置进化的一种合理手段,这可能导致后来建立基于个体的生物学。
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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