从机制到应用:通过几何深度学习解密光调节反硝化微生物组

IF 23.7 Q1 MICROBIOLOGY
iMeta Pub Date : 2024-01-06 DOI:10.1002/imt2.162
Yang Liao, Jing Zhao, Jiyong Bian, Ziwei Zhang, Siqi Xu, Yijian Qin, Shiyu Miao, Rui Li, Ruiping Liu, Meng Zhang, Wenwu Zhu, Huijuan Liu, Jiuhui Qu
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引用次数: 0

摘要

对反硝化微生物组的调控对于可持续工业生物技术和生态氮循环至关重要。元组学可以提供微生物组的整体基因图谱。然而,对高度复杂的微生物组和相应的元组学数据集进行精确解密和进一步应用仍然是巨大的挑战。在这里,我们将光遗传学和几何深度学习结合起来,形成了一个发现-建模-学习-进步(DMLA)循环,用于反硝化微生物组的加密和调控。图神经网络(GNN)在整合生物知识和识别共表达基因面板方面表现出卓越的性能,可用于预测未知表型、阐明分子生物学机制和推动生物技术发展。通过 DMLA 循环,我们发现了波长差异分泌系统和硝酸盐-超氧化物核心调控,实现了细胞外蛋白产量增加 83.8%,硝酸盐去除率提高 99.9%。我们的研究展示了由 GNNs 驱动的光遗传学方法在调节反硝化作用方面的潜力,并加速了微生物组的机理发现,从而促进了深入研究和广泛应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

From mechanism to application: Decrypting light-regulated denitrifying microbiome through geometric deep learning

From mechanism to application: Decrypting light-regulated denitrifying microbiome through geometric deep learning

Regulation on denitrifying microbiomes is crucial for sustainable industrial biotechnology and ecological nitrogen cycling. The holistic genetic profiles of microbiomes can be provided by meta-omics. However, precise decryption and further applications of highly complex microbiomes and corresponding meta-omics data sets remain great challenges. Here, we combined optogenetics and geometric deep learning to form a discover–model–learn–advance (DMLA) cycle for denitrification microbiome encryption and regulation. Graph neural networks (GNNs) exhibited superior performance in integrating biological knowledge and identifying coexpression gene panels, which could be utilized to predict unknown phenotypes, elucidate molecular biology mechanisms, and advance biotechnologies. Through the DMLA cycle, we discovered the wavelength-divergent secretion system and nitrate-superoxide coregulation, realizing increasing extracellular protein production by 83.8% and facilitating nitrate removal with 99.9% enhancement. Our study showcased the potential of GNNs-empowered optogenetic approaches for regulating denitrification and accelerating the mechanistic discovery of microbiomes for in-depth research and versatile applications.

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