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Systems analysis of complex biological data for bioprocess enhancement.

机译:用于增强生物过程的复杂生物数据的系统分析。

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摘要

Recent advances in data-driven knowledge discovery approaches, such as ‘omics’ technologies, provide enormous opportunities to uncover the multifarious determinants of several pharmaceutically relevant biological traits. This work focuses on the challenges, which include: (i) Deciphering the regulation of antibiotic production in Streptomyces coelicolor , and (ii) Elucidating the attributes of high recombinant protein productivity in mammalian cell culture processes.;The phenotypic complexity of Streptomycetes, which produce several clinically relevant antibiotics and other natural products, manifests in their diversity of secondary metabolism and morphological differentiation. To identify the dynamic gene regulatory networks that confer such complex phenotypes, the temporal transcriptomic characteristics of the model organism S. coelicolor , under more than twenty-five diverse genetic and environmental perturbations, were integrated with other functional and genomic features. A whole-genome operon map was also predicted, and a significant portion of the map was experimentally verified. Such a systems approach can reveal several insights about the functional processes relevant for antibiotics production.;The therapeutic value of recombinant proteins has brought about a continuously rising demand that is met by development of hyper-producing mammalian cell lines. However, the molecular ingredients of high productivity are not well understood. The transcriptomes of several recombinant antibody-producing NS0 cell lines with a wide productivity range were surveyed in an attempt to identify the physiological functions that are modulated in high-producing cells. Cell culture process enhancement also entails an understanding of the process parameters and their interactions, which are critical determinants of high recombinant protein productivity. The comprehensive process archives of modern production plants present vast, underutilized resources containing information that, if unearthed, can enhance process robustness. The on-line and off-line process data of several production ‘trains’ from a commercial manufacturing facility were investigated using kernel-based machine learning tools to elucidate predictive correlations between process parameters and the outcome.;Together, such discovery strategies based on integrative data mining hold immense potential for enhancing our understanding of industrially relevant biological processes.
机译:数据驱动的知识发现方法(例如“组学”技术)的最新进展为揭示几种药学上相关的生物学特性的多种决定因素提供了巨大的机会。这项工作着眼于挑战,包括:(i)解释天蓝色链霉菌中抗生素产生的调控,以及(ii)阐明哺乳动物细胞培养过程中重组蛋白生产率高的特性。;产生链霉菌的表型复杂性几种临床相关的抗生素和其他天然产物表现为它们的次级代谢多样性和形态分化。为了确定赋予这种复杂表型的动态基因调控网络,将模式生物S. coelicolor的时间转录组特征,在超过25种多样的遗传和环境扰动下,与其他功能和基因组特征进行了整合。还预测了全基因组操纵子图,并通过实验验证了该图的重要部分。这种系统方法可以揭示有关与抗生素生产有关的功能过程的一些见解。重组蛋白的治疗价值带来了持续增长的需求,而这种需求可以通过生产高产哺乳动物细胞系来满足。但是,人们对高生产率的分子成分还不甚了解。调查了几种具有宽生产力范围的重组产生抗体的NS0细胞系的转录组,以试图鉴定在高产生细胞中被调节的生理功能。细胞培养过程的增强还需要理解过程参数及其相互作用,这是高重组蛋白生产率的关键决定因素。现代生产工厂的综合过程档案库提供了大量未充分利用的资源,其中包含的信息如果能够发掘出来,则可以增强过程的鲁棒性。使用基于内核的机器学习工具研究了来自商业制造工厂的几条生产“火车”的在线和离线过程数据,以阐明过程参数与结果之间的预测相关性。一起,这些基于集成的发现策略数据挖掘在增强我们对与工业相关的生物过程的理解方面具有巨大的潜力。

著录项

  • 作者

    Charaniya, Salim Pyarali.;

  • 作者单位

    University of Minnesota.;

  • 授予单位 University of Minnesota.;
  • 学科 Engineering Chemical.;Biology Bioinformatics.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 190 p.
  • 总页数 190
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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