利用生成式人工智能精确预测物理化学状态的动力学序列

IF 7.6 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Palash Bera, Jagannath Mondal
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引用次数: 0

摘要

捕获时间演化和预测物理化学系统状态的动力学序列由于精度和计算工作量的要求而面临重大挑战。在这项研究中,我们证明了“生成预训练转换器(GPT)”,一种以机器翻译和自然语言处理而闻名的人工智能模型,可以有效地用于预测生物相关物理化学系统的动态状态到状态转换动力学。具体而言,通过使用类似于语言词汇语料库的分子动力学(MD)模拟轨迹中的时间离散状态序列,我们证明了基于gpt的模型可以学习轨迹中复杂的句法和语义关系。这使得GPT能够以比传统MD模拟快得多的速度,以比其他基线时间序列预测方法更高的效率,预测不同复杂性的各种生物分子的动态准确的状态序列。更重要的是,该方法被发现同样擅长于预测不保持详细平衡的失平衡主动系统的时间演化。对GPT内在机制的分析揭示了“自我注意机制”在获取准确的状态到状态转换预测所需的长期相关性方面的关键作用。总之,我们的研究结果突出了生成式人工智能以统计精度生成物理化学系统状态的动力学序列的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate Prediction of the Kinetic Sequence of Physicochemical States Using Generative Artificial Intelligence
Capturing the time evolution and predicting kinetic sequences of states of physicochemical systems present significant challenges due to the precision and computational effort required. In this study, we demonstrate that ` Generative Pre-trained Transformer (GPT)', an artificial intelligence model renowned for machine translation and natural language processing, can be effectively adapted to predict the dynamical state-to-state transition kinetics of biologically relevant physicochemical systems. Specifically, by using sequences of time-discretized states from Molecular Dynamics (MD) simulation trajectories akin to vocabulary corpus of a language, we show that a GPT-based model can learn the complex syntactic and semantic relationships within the trajectory. This enables GPT to predict kinetically accurate sequences of states for a diverse set of biomolecules of varying complexity, at a much quicker pace than traditional MD simulations and with a better efficiency than other base-line time-series prediction approaches. More significantly, the approach is found to be equally adept at forecasting the time evolution of out-of-equilibrium active systems that do not maintain detailed balance. An analysis of the mechanism inherent in GPT reveals crucial role of `self-attention mechanism' in capturing the long-range correlations necessary for accurate state-to-state transition predictions. Together, our results highlight the generative artificial intelligence’s ability to generate kinetic sequence of states of physicochemical systems with statistical precision.
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来源期刊
Chemical Science
Chemical Science CHEMISTRY, MULTIDISCIPLINARY-
CiteScore
14.40
自引率
4.80%
发文量
1352
审稿时长
2.1 months
期刊介绍: Chemical Science is a journal that encompasses various disciplines within the chemical sciences. Its scope includes publishing ground-breaking research with significant implications for its respective field, as well as appealing to a wider audience in related areas. To be considered for publication, articles must showcase innovative and original advances in their field of study and be presented in a manner that is understandable to scientists from diverse backgrounds. However, the journal generally does not publish highly specialized research.
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