Machine-learning models that learn from data to predict how protein sequence encodes function are emerging as a useful protein engineering tool. However, when using these models to suggest new protein designs, one must deal with the vast combinatorial complexity of protein sequences. Here, we review how to use a sequence-to-function machine-learning surrogate model to select sequences for experimental measurement. First, we discuss how to select sequences through a single round of machine-learning optimization. Then, we discuss sequential optimization, where the goal is to discover optimized sequences and improve the model across multiple rounds of training, optimization, and experimental measurement.
翻译:从数据中学习的机器学习模型,用以预测蛋白质序列编码功能如何成为有用的蛋白质工程工具。然而,当使用这些模型来建议新的蛋白质设计时,必须处理蛋白质序列的庞大组合复杂性。在这里,我们审查如何使用序列到功能的机器学习代孕模型来选择实验测量的序列。首先,我们讨论如何通过单轮机学习优化来选择序列。然后,我们讨论顺序优化,目的是在多个培训、优化和实验计量周期中发现优化序列并改进模型。