Artificial Intelligence Methods and Models for Retro-Biosynthesis: A Scoping Review.

IF 3.7 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS ACS Synthetic Biology Pub Date : 2024-08-16 Epub Date: 2024-07-24 DOI:10.1021/acssynbio.4c00091
Guillaume Gricourt, Philippe Meyer, Thomas Duigou, Jean-Loup Faulon
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Abstract

Retrosynthesis aims to efficiently plan the synthesis of desirable chemicals by strategically breaking down molecules into readily available building block compounds. Having a long history in chemistry, retro-biosynthesis has also been used in the fields of biocatalysis and synthetic biology. Artificial intelligence (AI) is driving us toward new frontiers in synthesis planning and the exploration of chemical spaces, arriving at an opportune moment for promoting bioproduction that would better align with green chemistry, enhancing environmental practices. In this review, we summarize the recent advancements in the application of AI methods and models for retrosynthetic and retro-biosynthetic pathway design. These techniques can be based either on reaction templates or generative models and require scoring functions and planning strategies to navigate through the retrosynthetic graph of possibilities. We finally discuss limitations and promising research directions in this field.

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逆生物合成的人工智能方法和模型:范围审查。
逆合成的目的是通过战略性地将分子分解成容易获得的构件化合物,从而有效地规划理想化学品的合成。逆合成在化学领域有着悠久的历史,也被用于生物催化和合成生物学领域。人工智能(AI)正推动我们向合成规划和化学空间探索的新前沿迈进,这正是促进生物生产的大好时机,而生物生产将更好地与绿色化学接轨,加强环保实践。在这篇综述中,我们总结了最近在应用人工智能方法和模型进行逆合成和逆生物合成途径设计方面取得的进展。这些技术可以基于反应模板或生成模型,并需要评分函数和规划策略来浏览可能性的逆合成图。最后,我们将讨论这一领域的局限性和有前景的研究方向。
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来源期刊
CiteScore
8.00
自引率
10.60%
发文量
380
审稿时长
6-12 weeks
期刊介绍: The journal is particularly interested in studies on the design and synthesis of new genetic circuits and gene products; computational methods in the design of systems; and integrative applied approaches to understanding disease and metabolism. Topics may include, but are not limited to: Design and optimization of genetic systems Genetic circuit design and their principles for their organization into programs Computational methods to aid the design of genetic systems Experimental methods to quantify genetic parts, circuits, and metabolic fluxes Genetic parts libraries: their creation, analysis, and ontological representation Protein engineering including computational design Metabolic engineering and cellular manufacturing, including biomass conversion Natural product access, engineering, and production Creative and innovative applications of cellular programming Medical applications, tissue engineering, and the programming of therapeutic cells Minimal cell design and construction Genomics and genome replacement strategies Viral engineering Automated and robotic assembly platforms for synthetic biology DNA synthesis methodologies Metagenomics and synthetic metagenomic analysis Bioinformatics applied to gene discovery, chemoinformatics, and pathway construction Gene optimization Methods for genome-scale measurements of transcription and metabolomics Systems biology and methods to integrate multiple data sources in vitro and cell-free synthetic biology and molecular programming Nucleic acid engineering.
期刊最新文献
Genetically Encoded Trensor Circuits Report HeLa Cell Treatment with Polyplexed Plasmid DNA and Small-Molecule Transfection Modulators. Orthogonal Serine Integrases Enable Scalable Gene Storage Cascades in Bacterial Genome. Computational Synthetic Biology Enabled through JAX: A Showcase. Dynamically Regulating Homologous Recombination Enables Precise Genome Editing in Ogataea polymorpha. Integrating Deep Learning and Synthetic Biology: A Co-Design Approach for Enhancing Gene Expression via N-Terminal Coding Sequences.
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