使用基于转换器的化学语言模型将多肽直接转化为多种多肽模拟物

Atsushi Yoshimori , Jürgen Bajorath
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引用次数: 0

摘要

设计具有生物活性的肽或蛋白质中的二级结构元件的药物相关化合物是药物化学中的一项重要任务。随着时间的推移,各种化学策略被开发出来,将天然肽配体转化为所谓的肽拟物。这一过程是由计算方法来识别肽类候选化合物或设计模板模仿活性肽构象的支持。然而,产生肽模拟物仍然具有挑战性。化学语言模型(CLMs)为分子设计提供了新的机会。因此,我们从不同的角度重新审视了拟肽的计算设计,并设计了一个CLM,直接将输入肽转化为拟肽候选物,而不需要中间状态。该方法的一个至关重要的方面是生成有效学习的训练数据,该数据由肽相似性的定量测量指导,这样CLM可以隐含地捕获从肽或肽样分子到具有减少或消除肽特征的化合物的转变。在此,我们介绍了CLM的拟态肽设计,并建立了该方法的原理证明。对于给定的输入肽,一般模型和针对特定应用进行微调的版本都显示出具有不同相似性,逐渐改变化学特征和减少肽相似性的候选化合物的光谱。作为我们研究的一部分,提供了CLM和数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Direct conversion of peptides into diverse peptidomimetics using a transformer-based chemical language model

Direct conversion of peptides into diverse peptidomimetics using a transformer-based chemical language model
The design of pharmaceutically relevant compounds that mimic bioactive peptides or secondary structure elements in proteins is an important task in medicinal chemistry. Over time, various chemical strategies have been developed to convert natural peptide ligands into so-called peptidomimetics. This process is supported by computational approaches to identify peptidomimetic candidate compounds or design templates mimicking active peptide conformations. However, generating peptidomimetics continues to be challenging. Chemical language models (CLMs) offer new opportunities for molecular design. Therefore, we have revisited computational design of peptidomimetics from a different perspective and devised a CLM to directly transform input peptides into peptidomimetic candidates, without requiring intermediate states. A critically important aspect of the approach has been the generation of training data for effective learning that was guided by a quantitative measure of peptide-likeness such that the CLM could implicitly capture transitions from peptides or peptide-like molecules to compounds with reduced or eliminated peptide character. Herein, we introduce the CLM for peptidomimetics design and establish proof-of-principle for the approach. For given input peptides, both the general model and a version fine-tuned for a specific application were shown to produce a spectrum of candidate compounds with varying similarity, gradually changing chemical features, and diminishing peptide-likeness. As a part of our study, the CLM and data are provided.
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