通过比较生物信息学确定生物合成基因簇边界。

4区 生物学 Q3 Biochemistry, Genetics and Molecular Biology
Methods in enzymology Pub Date : 2025-01-01 Epub Date: 2025-05-16 DOI:10.1016/bs.mie.2025.04.001
Jerry Cui, Kou-San Ju
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引用次数: 0

摘要

测序、“组学”和生物信息学的现代进步促进了基因组挖掘领域的兴起,基因组挖掘被宽泛地定义为使用基因组数据来指导天然产物(NP)的发现。这项技术运用我们对生物合成逻辑的理解来预测编码新化合物生产的基因。主要步骤包括这些生物合成基因簇(bgc)的鉴定、分类和后续实验的优先顺序。尽管经过了几十年的努力,在没有实验验证的情况下确定聚类边界仍然是基因组挖掘中最大的挑战之一。BGC内编码的基因是所有下游分析的基础。因此,准确测定基因簇含量对于有效地确定bgc的优先级和预测其产物至关重要。同源性,或同源基因及其排列的保守性,为预测这些边界提供了有效的解决方案。在进化过程中,基因的转移和重排导致bgc周围的变异,因此这些功能单位的保护自然中断。在本章中,我们提供了一种综合的方法来使用协同来描绘BGC边界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determining biosynthetic gene cluster boundaries through comparative bioinformatics.

Modern advances in sequencing, "-omics," and bioinformatics have given rise to the field of genome mining, loosely defined as the use of genomic data to guide natural product (NP) discovery. This technique applies our understanding of biosynthetic logic to predict the genes encoding for production of novel compounds. The major steps include identification of these biosynthetic gene clusters (BGCs), their classification, and prioritization for subsequent experimentation. Despite decades of effort, determination of cluster boundaries without experimental validation remains one of the greatest challenges in genome mining. Genes encoded within a BGC are the foundation for all downstream analysis. Thus, accurate determination of gene cluster content is critical for effective prioritization of BGCs and prediction of their products. Synteny, or the conservation of homologous genes and their arrangement, provides an effective solution for predicting these borders. Over evolutionary time, transfer and rearrangement of genes results in variability surrounding BGCs, such that natural breaks in conservation underlie these functional units. In this chapter, we provide a comprehensive approach for using synteny to delineate BGC boundaries.

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来源期刊
Methods in enzymology
Methods in enzymology 生物-生化研究方法
CiteScore
2.90
自引率
0.00%
发文量
308
审稿时长
3-6 weeks
期刊介绍: The critically acclaimed laboratory standard for almost 50 years, Methods in Enzymology is one of the most highly respected publications in the field of biochemistry. Each volume is eagerly awaited, frequently consulted, and praised by researchers and reviewers alike. Now with over 500 volumes the series contains much material still relevant today and is truly an essential publication for researchers in all fields of life sciences, including microbiology, biochemistry, cancer research and genetics-just to name a few. Five of the 2013 Nobel Laureates have edited or contributed to volumes of MIE.
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