益生菌
微生物群
计算机科学
机器学习
人工智能
数据集成
稳健性(进化)
计算生物学
数据科学
生化工程
计算模型
系统生物学
生物学数据
生物
数据整理
生物信息学
肠道微生物群
作者
Yu Chen,Zhuqing Xing,Jiachuan Sheng,Xiaoning Liu,Wenke Ding,Xinya Chen
标识
DOI:10.1021/acs.jafc.5c15387
摘要
With the rapid development of computational methods and high-throughput multiomics technologies, machine learning (ML) has emerged as an important analytical approach in probiotic research. This review summarizes recent ML-assisted applications across genomics, transcriptomics, metabolomics, microbiome profiling, and culturomics, and organizes current studies around four functional objectives: probiotic selection, functional prediction, metabolic activity prediction, and probiotic effectiveness optimization. We discuss how ML facilitates the integration of heterogeneous omics data to enable more systematic and quantitative probiotic development and highlight representative analytical tools and workflows. At the same time, key limitations remain, including cross-platform data heterogeneity, imbalanced functional labels, and limited robustness in capturing complex microbial and environmental interactions. Consequently, experimental validation remains essential for ensuring biological relevance. Future progress will rely on standardized multiomics integration and iterative computational-experimental frameworks to support rational probiotic optimization.
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