生物
噬菌体
传染性
计算生物学
噬菌体展示
系统生物学
噬菌体
人工智能
计算机科学
病毒学
遗传学
病毒
基因
大肠杆菌
抗体
作者
Cédric Lood,Dimitri Boeckaerts,Michiel Stock,Bernard De Baets,Rob Lavigne,Vera van Noort,Yves Briers
标识
DOI:10.1016/j.coviro.2021.12.004
摘要
Machine learning has been broadly implemented to investigate biological systems. In this regard, the field of phage biology has embraced machine learning to elucidate and predict phage-host interactions, based on receptor-binding proteins, (anti-)defense systems, prophage detection, and life cycle recognition. Here, we highlight the enormous potential of integrating information from omics data with insights from systems biology to better understand phage-host interactions. We conceptualize and discuss the potential of a multilayer model that mirrors the phage infection process, integrating adsorption, bacterial pan-immune components and hijacking of the bacterial metabolism to predict phage infectivity. In the future, this model can offer insights into the underlying mechanisms of the infection process, and digital phagograms can support phage cocktail design and phage engineering.
科研通智能强力驱动
Strongly Powered by AbleSci AI