Molecular Dynamics (MD)-Derived Features for Canonical and Noncanonical Amino Acids.

IF 5.3 2区 化学 Q1 CHEMISTRY, MEDICINAL Journal of Chemical Information and Modeling Pub Date : 2025-02-24 Epub Date: 2025-02-02 DOI:10.1021/acs.jcim.4c02102
Tiffani Hui, Maxim Secor, Minh Ngoc Ho, Nomindari Bayaraa, Yu-Shan Lin
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Abstract

Machine learning (ML) models have become increasingly popular for predicting and designing structures and properties of peptides and proteins. These ML models typically use peptides and proteins containing only canonical amino acids as the training data. Consequently, these models struggle to make accurate predictions for peptides and proteins containing new amino acids that are absent in the training data set (e.g., noncanonical amino acids). One approach to improve the accuracy of the models is to collect more training data with the desired amino acids. However, this strategy is suboptimal as new data may not be easily attainable, and additional time is required to retrain the ML models. Alternatively, the extendibility of the ML models can be improved if the amino acid features used are representative and generalizable to the unseen amino acids. Herein, we develop amino acid features using molecular dynamics (MD) simulation results. Specifically, for a given amino acid, we perform MD simulation of its dipeptide to create features based on its backbone (ϕ, ψ) distributions and its electrostatic potentials. We demonstrate that these new features enable our ML models to more accurately predict the structural ensembles of cyclic peptides containing amino acids not present in the original training data set. For example, we build ML models to predict cyclic pentapeptide structures, with the training data set containing a library of 15 amino acids and the test data set containing the same 15-amino-acid library or an extended 50-amino-acid library. When using popular features such as Morgan fingerprints and MACCS keys to represent amino acids, the ML models achieve R2 = 0.963 for structural predictions of test cyclic pentapeptides containing the same 15-amino-acid library. However, these models' performances decrease significantly to R2 = 0.430 and R2 = 0.508, respectively, when tasked to predict the structures of cyclic pentapeptides containing a library of 50 amino acids. On the other hand, the model using our backbone (ϕ, ψ) features outperforms those using Morgan fingerprints and MACCS keys, with R2 = 0.700. Overall, instead of having to collect more training data, our new features enable predictions of peptide sequences containing amino acids not originally present in the training data set at the mere cost of performing new dipeptide simulations for the new amino acids.

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典型和非典型氨基酸的分子动力学(MD)衍生特征。
机器学习(ML)模型在预测和设计多肽和蛋白质的结构和性质方面越来越受欢迎。这些机器学习模型通常使用仅含有典型氨基酸的肽和蛋白质作为训练数据。因此,这些模型很难对含有训练数据集中不存在的新氨基酸(例如,非规范氨基酸)的肽和蛋白质做出准确的预测。提高模型准确性的一种方法是收集更多具有所需氨基酸的训练数据。然而,这种策略不是最优的,因为新数据可能不容易获得,并且需要额外的时间来重新训练ML模型。另外,如果使用的氨基酸特征具有代表性并且可推广到未见过的氨基酸,则可以提高ML模型的可扩展性。在此,我们利用分子动力学(MD)模拟结果开发氨基酸特征。具体而言,对于给定的氨基酸,我们执行其二肽的MD模拟,以创建基于其主干(ϕ, ψ)分布和静电电位的特征。我们证明,这些新特征使我们的ML模型能够更准确地预测含有原始训练数据集中不存在的氨基酸的环肽的结构集合。例如,我们构建ML模型来预测环五肽结构,训练数据集包含15个氨基酸库,测试数据集包含相同的15个氨基酸库或扩展的50个氨基酸库。当使用Morgan指纹和MACCS密钥等流行特征来表示氨基酸时,ML模型对于含有相同15个氨基酸库的测试环五肽的结构预测达到R2 = 0.963。然而,当用于预测含有50个氨基酸的环状五肽的结构时,这些模型的性能显著下降,分别为R2 = 0.430和R2 = 0.508。另一方面,使用我们的主干(ϕ, ψ)特征的模型优于使用摩根指纹和MACCS密钥的模型,R2 = 0.700。总的来说,而不是必须收集更多的训练数据,我们的新功能能够预测肽序列包含氨基酸最初不存在于训练数据集中,在执行新的二肽模拟新氨基酸的成本。
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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来源期刊
CiteScore
9.80
自引率
10.70%
发文量
529
审稿时长
1.4 months
期刊介绍: The Journal of Chemical Information and Modeling publishes papers reporting new methodology and/or important applications in the fields of chemical informatics and molecular modeling. Specific topics include the representation and computer-based searching of chemical databases, molecular modeling, computer-aided molecular design of new materials, catalysts, or ligands, development of new computational methods or efficient algorithms for chemical software, and biopharmaceutical chemistry including analyses of biological activity and other issues related to drug discovery. Astute chemists, computer scientists, and information specialists look to this monthly’s insightful research studies, programming innovations, and software reviews to keep current with advances in this integral, multidisciplinary field. As a subscriber you’ll stay abreast of database search systems, use of graph theory in chemical problems, substructure search systems, pattern recognition and clustering, analysis of chemical and physical data, molecular modeling, graphics and natural language interfaces, bibliometric and citation analysis, and synthesis design and reactions databases.
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