首页> 外文学位 >Bioinformatics and cell-free protein expression for enzyme engineering.
【24h】

Bioinformatics and cell-free protein expression for enzyme engineering.

机译:用于酶工程的生物信息学和无细胞蛋白质表达。

获取原文
获取原文并翻译 | 示例

摘要

Bioinformatics and cell-free protein expression have shown themselves to be natural allies to metabolic engineering efforts. Bioinformatic techniques require information in order to tie proteins to each other, to tie sequence to structure and function. Here we demonstrate the use of the Bayesian sequence-based bioinformatics algorithms PROBE and Classifier to mine nature's existing data on protein function. We identify a low-scoring motif, residues 193--208, a strand-turn-strand motif, in the alignment model of the subtilisin superfamily, and make the functional prediction of association with thermal stability without resort to structural information. We validate the hypothesis by engineering increased thermal stability into the non-thermally stable protease subtilisin E.; This technique is most useful when functional information is available for a sample of the members of a protein superfamily. Cell-free protein synthesis provides a quick way to synthesize and screen small quantities of protein in large numbers. We demonstrate the use of cell-free protein synthesis in a non-natural environment, on surface-bound DNA, such as may be used in a microfluidic biochip. The use of cell-free protein synthesis on surface-attached DNA also bodes well for the demonstration of functionality of DNA in other non-natural environments, such as bound to carbon nanotubes.; In addition to utilizing in vitro protein synthesis in a biochip-type environment, we have also demonstrated the synthesis of two metabolic pathway enzymes, malonyl-CoA synthetase and THN synthetase. We show functionality of both enzymes, including of a previous uncharacterized putative malonyl-coA synthetase.
机译:生物信息学和无细胞蛋白表达已证明它们是代谢工程研究的天然盟友。生物信息技术需要信息以使蛋白质彼此结合,将序列与结构和功能结合。在这里,我们演示了基于贝叶斯序列的生物信息学算法PROBE和Classifier的使用,以挖掘自然界中有关蛋白质功能的现有数据。我们在枯草杆菌蛋白酶超家族的比对模型中确定了一个低得分的基序,即残基193--208,一个链转链基序,并在不求助于结构信息的情况下进行了与热稳定性相关的功能预测。我们通过将增加的热稳定性工程化为非热稳定蛋白酶枯草杆菌蛋白酶E来验证该假设。当功能信息可用于蛋白质超家族成员的样本时,此技术最有用。无细胞蛋白质合成提供了一种快速合成和筛选大量蛋白质的快速方法。我们证明了在非自然环境中,在表面结合的DNA上使用无细胞蛋白质合成,例如可用于微流控生物芯片。在表面附着的DNA上使用无细胞蛋白质合成方法也预示着DNA在其他非天然环境(例如与碳纳米管结合)中的功能性证明。除了在生物芯片类型的环境中利用体外蛋白质合成外,我们还证明了两种代谢途径酶,丙二酰辅酶A合成酶和THN合成酶的合成。我们展示了这两种酶的功能,包括以前未鉴定的推定丙二酰辅酶A合成酶。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号