Department of Microbiology, Oregon State Universitygrid.4391.f, Corvallis, Oregon, USA.
Department of Pharmaceutical Sciences, Oregon State Universitygrid.4391.f, Corvallis, Oregon, USA.
mSystems. 2022 Feb 22;7(1):e0105821. doi: 10.1128/msystems.01058-21. Epub 2022 Jan 18.
A growing body of research has established that the microbiome can mediate the dynamics and functional capacities of diverse biological systems. Yet, we understand little about what governs the response of these microbial communities to host or environmental changes. Most efforts to model microbiomes focus on defining the relationships between the microbiome, host, and environmental features within a specified study system and therefore fail to capture those that may be evident across multiple systems. In parallel with these developments in microbiome research, computer scientists have developed a variety of machine learning tools that can identify subtle, but informative, patterns from complex data. Here, we recommend using deep transfer learning to resolve microbiome patterns that transcend study systems. By leveraging diverse public data sets in an unsupervised way, such models can learn contextual relationships between features and build on those patterns to perform subsequent tasks (e.g., classification) within specific biological contexts.
越来越多的研究表明,微生物组可以调节多种生物系统的动态和功能能力。然而,我们对这些微生物群落对宿主或环境变化的反应是由什么控制的知之甚少。大多数微生物组建模的努力都集中在定义微生物组、宿主和特定研究系统内环境特征之间的关系,因此无法捕捉到可能在多个系统中明显存在的关系。随着微生物组研究的发展,计算机科学家开发了多种机器学习工具,可以从复杂数据中识别出微妙但有信息的模式。在这里,我们建议使用深度迁移学习来解决超越研究系统的微生物组模式。通过以非监督的方式利用多样化的公共数据集,这些模型可以学习特征之间的上下文关系,并在此基础上构建模式,以便在特定的生物学背景下执行后续任务(例如分类)。