High-Speed Combinatorial Polymerization through Kinetic-Trap Encoding.

IF 9 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY Physical review letters Pub Date : 2025-01-24 DOI:10.1103/PhysRevLett.134.038402
Félix Benoist, Pablo Sartori
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Abstract

Like the letters in the alphabet forming words, reusing components of a heterogeneous mixture is an efficient strategy for assembling a large number of target structures. Examples range from synthetic DNA origami to proteins self-assembling into complexes. The standard self-assembly paradigm views target structures as free-energy minima of a mixture. While this is an appealing picture, at high speed structures may be kinetically trapped in local minima, reducing self-assembly accuracy. How then can high speed, high accuracy, and combinatorial usage of components coexist? We propose to reconcile these three concepts not by avoiding kinetic traps, but by exploiting them to encode target structures. This can be achieved by sculpting the kinetic pathways of the mixture, instead of its free-energy landscape. We formalize these ideas in a minimal toy model, for which we analytically estimate the encoding capacity and kinetic characteristics, in agreement with simulations. Our results may be generalized to other soft-matter systems capable of computation, such as liquid mixtures or elastic networks, and pave the way for high-dimensional information processing far from equilibrium.

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基于动态阱编码的高速组合聚合。
就像字母表中的字母组成单词一样,重用异质混合物的成分是组装大量目标结构的有效策略。例子包括从合成DNA折纸到蛋白质自组装成复合物。标准的自组装范式将目标结构视为混合物的自由能最小值。虽然这是一个吸引人的画面,但在高速下,结构可能会在动力学上被困在局部最小值中,从而降低自组装精度。那么,高速、高精度和组件组合使用如何共存呢?我们建议调和这三个概念不是通过避免动力学陷阱,而是通过利用它们来编码目标结构。这可以通过塑造混合物的动力学路径来实现,而不是它的自由能景观。我们将这些想法形式化在最小玩具模型中,我们分析估计编码容量和动力学特性,与模拟一致。我们的结果可以推广到其他能够计算的软物质系统,如液体混合物或弹性网络,并为远离平衡的高维信息处理铺平道路。
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来源期刊
Physical review letters
Physical review letters 物理-物理:综合
CiteScore
16.50
自引率
7.00%
发文量
2673
审稿时长
2.2 months
期刊介绍: Physical review letters(PRL)covers the full range of applied, fundamental, and interdisciplinary physics research topics: General physics, including statistical and quantum mechanics and quantum information Gravitation, astrophysics, and cosmology Elementary particles and fields Nuclear physics Atomic, molecular, and optical physics Nonlinear dynamics, fluid dynamics, and classical optics Plasma and beam physics Condensed matter and materials physics Polymers, soft matter, biological, climate and interdisciplinary physics, including networks
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