CryptKeeper:一种减少细菌无意基因表达的消极设计工具。

IF 2.6 Q2 BIOCHEMICAL RESEARCH METHODS
Synthetic biology (Oxford, England) Pub Date : 2024-12-02 eCollection Date: 2024-01-01 DOI:10.1093/synbio/ysae018
Cameron T Roots, Jeffrey E Barrick
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引用次数: 0

摘要

分子生物学的基础技术,如克隆基因、标记纯化或鉴定的生物分子,以及过度表达重组蛋白,都依赖于将非天然或合成的DNA序列引入生物体。这些序列可能在新的环境中被转录和翻译机制以意想不到的方式识别。有时导致的隐性基因表达已被证明会产生遗传不稳定性并掩盖实验信号。计算工具已经被开发出来预测个体类型的基因表达元素,但是对于研究人员来说,将他们的集体产出置于背景中是很困难的。在这里,我们介绍CryptKeeper,这是一个可视化预测大肠杆菌基因表达信号的软件管道,并估计DNA序列可能带来的翻译负担。我们研究了几个已发表的例子,其中大肠杆菌中的隐性基因表达干扰了实验。CryptKeeper准确地预测真核病毒感染克隆和导致遗传不稳定的单个蛋白质中不需要的基因表达。它还可以识别导致截断混淆蛋白质纯化的脱靶基因表达元件。使用CryptKeeper将负面设计纳入反向遗传学和合成生物学工作流程可以帮助减轻克隆挑战,避免因意外基因表达而导致的无法解释的失败和并发症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CryptKeeper: a negative design tool for reducing unintentional gene expression in bacteria.

Foundational techniques in molecular biology-such as cloning genes, tagging biomolecules for purification or identification, and overexpressing recombinant proteins-rely on introducing non-native or synthetic DNA sequences into organisms. These sequences may be recognized by the transcription and translation machinery in their new context in unintended ways. The cryptic gene expression that sometimes results has been shown to produce genetic instability and mask experimental signals. Computational tools have been developed to predict individual types of gene expression elements, but it can be difficult for researchers to contextualize their collective output. Here, we introduce CryptKeeper, a software pipeline that visualizes predictions of Escherichia coli gene expression signals and estimates the translational burden possible from a DNA sequence. We investigate several published examples where cryptic gene expression in E. coli interfered with experiments. CryptKeeper accurately postdicts unwanted gene expression from both eukaryotic virus infectious clones and individual proteins that led to genetic instability. It also identifies off-target gene expression elements that resulted in truncations that confounded protein purification. Incorporating negative design using CryptKeeper into reverse genetics and synthetic biology workflows can help to mitigate cloning challenges and avoid unexplained failures and complications that arise from unintentional gene expression.

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