基于人工智能的高耐受糠醛和生产丁醇梭菌的筛选

IF 3.7 3区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Biochemical Engineering Journal Pub Date : 2024-07-23 DOI:10.1016/j.bej.2024.109435
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引用次数: 0

摘要

由于溶解梭菌的生理复杂性,丁醇生物合成菌株培育的进展相当有限。本研究利用人工智能,为乙酰丁酸梭菌开发了一种高通量筛选方法,以寻找耐抑制剂且丁醇产量高的菌株。通过 ARTP 诱变从 C. acetobutylicum ATCC 824 中产生了一个突变体库,并使用颜色指标对生理特征进行了数字化。比较了机器学习算法(PCA、PLS、SVM、ANN)对不同丁醇生产菌株的分类性能。在筛选出的 2000 株菌株中,确定了 C. acetobutylicum Tust-f3,它能耐受 4.5 克/升糠醛,并能从未脱毒的木质纤维素水解物中产生 10.5 克/升丁醇。蛋白质组分析表明,38 种蛋白质可能发挥了关键作用。随后,通过在大肠杆菌中进行异源表达,确定了糠醛的 7 种通用解毒成分 基因 CA_RS19590 和 CA_RS08810 显示出显著的生长改善(与对照相比,分别为 14.44 倍和 14.28 倍)。这项研究凸显了机器学习在菌种选育方面的潜力。
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AI-based screening of Clostridium acetobutylicum with high furfural tolerance and butanol production

Advances in strain breeding for butanol biosynthesis were quite limited because of physiological complexity of solventogenic Clostridia. Using AI, this study developed a high-throughput screening method for Clostridium acetobutylicum to find strains with inhibitor tolerance and high butanol production. A mutant library was generated from C. acetobutylicum ATCC 824 through ARTP mutagenesis and physiological traits were digitized using color indicators. The classification performance of Machine learning algorithms (PCA, PLS, SVM, ANN) were compared for different butanol-producing strains. Among 2000 strains screened, C. acetobutylicum Tust-f3 was identified, which could tolerate 4.5 g/L furfural and yield 10.5 g/L butanol from undetoxified lignocellulosic hydrolysate. Proteome analysis reveals that 38 proteins may play a crucial role. Subsequently, seven universal detoxification components for furfural were identified via heterologous expression in E. coli Genes CA_RS19590 and CA_RS08810 showed significant growth improvement (14.44 and 14.28-fold, respectively, compared to control). This study highlights the potential of machine learning in strain selection and breeding.

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来源期刊
Biochemical Engineering Journal
Biochemical Engineering Journal 工程技术-工程:化工
CiteScore
7.10
自引率
5.10%
发文量
380
审稿时长
34 days
期刊介绍: The Biochemical Engineering Journal aims to promote progress in the crucial chemical engineering aspects of the development of biological processes associated with everything from raw materials preparation to product recovery relevant to industries as diverse as medical/healthcare, industrial biotechnology, and environmental biotechnology. The Journal welcomes full length original research papers, short communications, and review papers* in the following research fields: Biocatalysis (enzyme or microbial) and biotransformations, including immobilized biocatalyst preparation and kinetics Biosensors and Biodevices including biofabrication and novel fuel cell development Bioseparations including scale-up and protein refolding/renaturation Environmental Bioengineering including bioconversion, bioremediation, and microbial fuel cells Bioreactor Systems including characterization, optimization and scale-up Bioresources and Biorefinery Engineering including biomass conversion, biofuels, bioenergy, and optimization Industrial Biotechnology including specialty chemicals, platform chemicals and neutraceuticals Biomaterials and Tissue Engineering including bioartificial organs, cell encapsulation, and controlled release Cell Culture Engineering (plant, animal or insect cells) including viral vectors, monoclonal antibodies, recombinant proteins, vaccines, and secondary metabolites Cell Therapies and Stem Cells including pluripotent, mesenchymal and hematopoietic stem cells; immunotherapies; tissue-specific differentiation; and cryopreservation Metabolic Engineering, Systems and Synthetic Biology including OMICS, bioinformatics, in silico biology, and metabolic flux analysis Protein Engineering including enzyme engineering and directed evolution.
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