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RNA folding using quantum computers

机译:使用量子计算机进行RNA折叠

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The 3-dimensional fold of an RNA molecule is largely determined by patterns of intramolecular hydrogen bonds between bases. Predicting the base pairing network from the sequence, also referred to as RNA secondary structure prediction or RNA folding, is a non-deterministic polynomial-time (NP)-complete computational problem. The structure of the molecule is strongly predictive of its functions and biochemical properties, and therefore the ability to accurately predict the structure is a crucial tool for biochemists. Many methods have been proposed to efficiently sample possible secondary structure patterns. Classic approaches employ dynamic programming, and recent studies have explored approaches inspired by evolutionary and machine learning algorithms. This work demonstrates leveraging quantum computing hardware to predict the secondary structure of RNA. A Hamiltonian written in the form of a Binary Quadratic Model (BQM) is derived to drive the system toward maximizing the number of consecutive base pairs while jointly maximizing the average length of the stems. A Quantum Annealer (QA) is compared to a Replica Exchange Monte Carlo (REMC) algorithm programmed with the same objective function, with the QA being shown to be highly competitive at rapidly identifying low energy solutions. The method proposed in this study was compared to three algorithms from literature and, despite its simplicity, was found to be competitive on a test set containing known structures with pseudoknots.
机译:RNA 分子的 3 维折叠很大程度上取决于碱基之间的分子内氢键模式。从序列中预测碱基配对网络,也称为 RNA 二级结构预测或 RNA 折叠,是一个非确定性多项式时间 (NP) 完备计算问题。分子的结构强烈地预测了其功能和生化性质,因此准确预测结构的能力是生物化学家的重要工具。已经提出了许多方法来有效地对可能的二级结构模式进行采样。经典方法采用动态规划,最近的研究探索了受进化和机器学习算法启发的方法。这项工作展示了利用量子计算硬件来预测RNA的二级结构。推导了以二元二次模型 (BQM) 形式编写的哈密顿量,以驱动系统在共同最大化茎的平均长度的同时最大化连续碱基对的数量。将量子退火器 (QA) 与使用相同目标函数编程的副本交换蒙特卡洛 (REMC) 算法进行了比较,结果表明 QA 在快速识别低能耗解决方案方面具有很强的竞争力。本研究中提出的方法与文献中的三种算法进行了比较,尽管方法简单,但发现在包含已知结构的伪结测试集上具有竞争力。

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