QuantumBound – Interactive protein generation with one-shot learning and hybrid quantum neural networks

Eric Paquet , Farzan Soleymani , Gabriel St-Pierre-Lemieux , Herna Lydia Viktor , Wojtek Michalowski
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Abstract

This paper presents a new approach for protein generation based on one-shot learning and hybrid quantum neural networks. Given a single protein complex, the system learns how to predict the remaining unknown properties, without resorting to autoregression, from the physicochemical properties of the receptor and a prior on the physicochemical properties of the ligand. In contrast with other approaches, QuantumBound learns from a single instance, not from a large dataset, as is common in deep learning. By knowing half of the properties of the ligand, the system can predict the remaining half with an average relative error of 1.43% for a dataset consisting of one hundred and twenty Covid-19 spikes complexes. To the best of our knowledge, this is the first time that one-shot learning and hybrid quantum computing have been applied to protein generation.

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QuantumBound - 利用单次学习和混合量子神经网络生成交互式蛋白质
提出了一种基于单次学习和混合量子神经网络的蛋白质生成新方法。给定一个单一的蛋白质复合物,系统学习如何从受体的物理化学性质和配体的物理化学性质先验来预测剩余的未知性质,而无需求助于自回归。与其他方法相比,QuantumBound从单个实例中学习,而不是从深度学习中常见的大型数据集中学习。通过了解配体的一半性质,该系统可以预测剩余的一半,对于由120个Covid-19刺突复合物组成的数据集,平均相对误差为1.43%。据我们所知,这是第一次将一次性学习和混合量子计算应用于蛋白质生成。
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Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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