Enzyme Activity Prediction of Sequence Variants on Novel Substrates using Improved Substrate Encodings and Convolutional Pooling.

Zhiqing Xu, Jinghao Wu, Yun S Song, Radhakrishnan Mahadevan
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Abstract

Protein engineering is currently being revolutionized by deep learning applications, especially through natural language processing (NLP) techniques. It has been shown that state-of-the-art self-supervised language models trained on entire protein databases capture hidden contextual and structural information in amino acid sequences and are capable of improving sequence-to-function predictions. Yet, recent studies have reported that current compound-protein modeling approaches perform poorly on learning interactions between enzymes and substrates of interest within one protein family. We attribute this to low-grade substrate encoding methods and over-compressed sequence representations received by downstream predictive models. In this study, we propose a new substrate-encoding based on Extended Connectivity Fingerprints (ECFPs) and a convolutional-pooling of the sequence embeddings. Through testing on an activity profiling dataset of haloalkanoate dehalogenase superfamily that measures activities of 218 phosphatases against 168 substrates, we show substantial improvements in predictive performances of compound-protein interaction modeling. In addition, we also test the workflow on three other datasets from the halogenase, kinase and aminotransferase families and show that our pipeline achieves good performance on these datasets as well. We further demonstrate the utility of this downstream model architecture by showing that it achieves good performance with six different protein embeddings, including ESM-1b (Rives et al., 2021), TAPE (Rao et al., 2019), ProtBert, ProtAlbert, ProtT5, and ProtXLNet (Elnaggar et al., 2021). This study provides a new workflow for activity prediction on novel substrates that can be used to engineer new enzymes for sustainability applications.

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基于改进底物编码和卷积池的新底物序列变异酶活性预测。
蛋白质工程目前正在通过深度学习应用,特别是通过自然语言处理(NLP)技术发生革命性的变化。研究表明,在整个蛋白质数据库上训练的最先进的自监督语言模型可以捕获氨基酸序列中隐藏的上下文和结构信息,并能够改进序列到功能的预测。然而,最近的研究报道,目前的化合物蛋白质建模方法在学习一个蛋白质家族中酶和底物之间的相互作用方面表现不佳。我们将此归因于低级底物编码方法和下游预测模型接收的过度压缩序列表示。在这项研究中,我们提出了一种新的基于扩展连接指纹(ECFPs)和序列嵌入的卷积池的基板编码。通过测试卤代烷酸脱卤酶超家族的活性分析数据集(测量218种磷酸酶对168种底物的活性),我们发现化合物-蛋白质相互作用模型的预测性能有了实质性的改进。此外,我们还在来自卤化酶,激酶和转氨酶家族的其他三个数据集上测试了工作流,并表明我们的管道在这些数据集上也取得了良好的性能。我们进一步证明了这种下游模型架构的有效性,表明它在六种不同的蛋白质嵌入中实现了良好的性能,包括ESM-1b (Rives等人,2021)、TAPE (Rao等人,2019)、ProtBert、ProtAlbert、ProtT5和ProtXLNet (Elnaggar等人,2021)。该研究为新型底物的活性预测提供了新的工作流程,可用于设计可持续性应用的新酶。
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