Eugene Koh, Rohan Shawn Sunil, Hilbert Yuen In Lam, Marek Mutwil
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引用次数: 0
摘要
基因组学时代的到来使高通量数据和计算方法得以产生,它们成为强大的假设生成工具,用于了解植物抗逆性的基因组和基因功能基础。生物学中使用的实验和分析方法层出不穷,导致出现了大量数据的情况,但这些数据的数量和异质性给分析带来了巨大挑战。目前先进的深度学习模型已经展现出前所未有的理解力和解决问题的能力,并已被用于根据 DNA 或蛋白质序列预测基因结构、功能和表达,在农业领域的高通量表型组学中也有突出应用。然而,深度学习模型在理解基因调控和信号行为方面的应用仍处于起步阶段。我们将在这篇综述中讨论数据资源和生物信息学工具的可用性,以及这些先进的 ML/AI 模型在植物胁迫响应方面的几种应用,并演示如何使用公开可用的 LLM(ChatGPT)来得出植物胁迫研究中使用的各种实验和计算方法的知识图谱。我们希望这将进一步激发计算机科学家、计算生物学家和植物科学家之间的合作兴趣,将大量的基因组学、转录组学、蛋白质组学、代谢组学和表观组学数据提炼成可用于造福人类的有意义的知识。
Confronting the data deluge: How artificial intelligence can be used in the study of plant stress
The advent of the genomics era enabled the generation of high-throughput data and computational methods that serve as powerful hypothesis-generating tools to understand the genomic and gene functional basis of plant stress resilience. The proliferation of experimental and analytical methods used in biology has resulted in a situation where plentiful data exists, but the volume and heterogeneity of this data has made analysis a significant challenge. Current advanced deep-learning models have displayed an unprecedented level of comprehension and problem-solving ability, and have been used to predict gene structure, function and expression based on DNA or protein sequence, and prominently also their use in high-throughput phenomics in agriculture. However, the application of deep-learning models to understand gene regulatory and signalling behaviour is still in its infancy. We discuss in this review the availability of data resources and bioinformatic tools, and several applications of these advanced ML/AI models in the context of plant stress response, and demonstrate the use of a publicly available LLM (ChatGPT) to derive a knowledge graph of various experimental and computational methods used in the study of plant stress. We hope this will stimulate further interest in collaboration between computer scientists, computational biologists and plant scientists to distil the deluge of genomic, transcriptomic, proteomic, metabolomic and phenomic data into meaningful knowledge that can be used for the benefit of humanity.
期刊介绍:
Computational and Structural Biotechnology Journal (CSBJ) is an online gold open access journal publishing research articles and reviews after full peer review. All articles are published, without barriers to access, immediately upon acceptance. The journal places a strong emphasis on functional and mechanistic understanding of how molecular components in a biological process work together through the application of computational methods. Structural data may provide such insights, but they are not a pre-requisite for publication in the journal. Specific areas of interest include, but are not limited to:
Structure and function of proteins, nucleic acids and other macromolecules
Structure and function of multi-component complexes
Protein folding, processing and degradation
Enzymology
Computational and structural studies of plant systems
Microbial Informatics
Genomics
Proteomics
Metabolomics
Algorithms and Hypothesis in Bioinformatics
Mathematical and Theoretical Biology
Computational Chemistry and Drug Discovery
Microscopy and Molecular Imaging
Nanotechnology
Systems and Synthetic Biology