Key Laboratory of Carbohydrate Chemistry and Biotechnology, Ministry of Education, Jiangnan University, Wuxi, 214122, China.
Science Center for Future Foods, Ministry of Education, Jiangnan University, Wuxi, 214122, China.
Adv Sci (Weinh). 2024 Nov;11(42):e2408705. doi: 10.1002/advs.202408705. Epub 2024 Sep 17.
Given the extensive heterogeneity and variability, understanding cellular functions and regulatory mechanisms through the analysis of multi-omics datasets becomes extremely challenging. Here, a comprehensive modeling framework of multi-omics machine learning and metabolic network models are proposed that covers various cellular biological processes across multiple scales. This model on an extensive normalized compendium of Bacillus subtilis is validated, which encompasses gene expression data from environmental perturbations, transcriptional regulation, signal transduction, protein translation, and growth measurements. Comparison with high-throughput experimental data shows that EM_iBsu1209-ME, constructed on this basis, can accurately predict the expression of 605 genes and the synthesis of 23 metabolites under different conditions. This study paves the way for the construction of comprehensive biological databases and high-performance multi-omics metabolic models to achieve accurate predictive analysis in exploring complex mechanisms of cell genotypes and phenotypes.
鉴于其广泛的异质性和可变性,通过分析多组学数据集来理解细胞功能和调控机制变得极具挑战性。在这里,提出了一个涵盖多尺度多个细胞生物学过程的多组学机器学习和代谢网络模型的综合建模框架。该模型在广泛的枯草芽孢杆菌归一化综合资源库上进行了验证,其中包含了来自环境扰动、转录调控、信号转导、蛋白质翻译和生长测量的基因表达数据。与高通量实验数据的比较表明,在此基础上构建的 EM_iBsu1209-ME 可以准确预测 605 个基因的表达和 23 种代谢物在不同条件下的合成。本研究为构建全面的生物数据库和高性能多组学代谢模型铺平了道路,以实现对细胞基因型和表型复杂机制的准确预测分析。