论文标题
基于图的主动机器学习方法,用于多种和新型抗菌肽的生成和选择
Graph-Based Active Machine Learning Method for Diverse and Novel Antimicrobial Peptides Generation and Selection
论文作者
论文摘要
由于抗生素耐药细菌菌株在全球范围内迅速传播,因此这些菌株引起的感染正在成为一场全球危机,导致每年数百万人死亡。抗菌肽(AMP)是解决此问题的候选者之一,因为它们的潜在多样性以及有利地调节宿主免疫反应的能力。但是,对新放大器候选人的大规模筛查是昂贵的,耗时的,现在在发展中国家负担得起的,这是最需要治疗的。在这项工作中,我们提出了一个新型的基于机器学习的新型框架,该框架从统计上最大程度地减少了设计新放大器所需的湿lab实验数量,同时确保了在湿LAB AMP筛选设置的多轮中产生的AMPS序列的高度多样性和新颖性。我们提出的方法结合了复发性神经网络模型和基于图的过滤器(GraphCC),可提供新颖和多样化的候选者,并根据我们的定义指标表现出更好的性能。
As antibiotic-resistant bacterial strains are rapidly spreading worldwide, infections caused by these strains are emerging as a global crisis causing the death of millions of people every year. Antimicrobial Peptides (AMPs) are one of the candidates to tackle this problem because of their potential diversity, and ability to favorably modulate the host immune response. However, large-scale screening of new AMP candidates is expensive, time-consuming, and now affordable in developing countries, which need the treatments the most. In this work, we propose a novel active machine learning-based framework that statistically minimizes the number of wet-lab experiments needed to design new AMPs, while ensuring a high diversity and novelty of generated AMPs sequences, in multi-rounds of wet-lab AMP screening settings. Combining recurrent neural network models and a graph-based filter (GraphCC), our proposed approach delivers novel and diverse candidates and demonstrates better performances according to our defined metrics.