Successful completion of a semi-automated enzyme-free cloning method.

Stefano Bonacci, Scilla Buccato, Domenico Maione, Roberto Petracca
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引用次数: 2

Abstract

Nowadays, in scientific fields such as Structural Biology or Vaccinology, there is an increasing need of fast, effective and reproducible gene cloning and expression processes. Consequently, the implementation of robotic platforms enabling the automation of protocols is becoming a pressing demand. The main goal of our study was to set up a robotic platform devoted to the high-throughput automation of the polymerase incomplete primer extension cloning method, and to evaluate its efficiency compared to that achieved manually, by selecting a set of bacterial genes that were processed either in the automated platform (330) or manually (94). Here we show that we successfully set up a platform able to complete, with high efficiency, a wide range of molecular biology and biochemical steps. 329 gene targets (99 %) were effectively amplified using the automated procedure and 286 (87 %) of these PCR products were successfully cloned in expression vectors, with cloning success rates being higher for the automated protocols respect to the manual procedure (93.6 and 74.5 %, respectively).

成功完成半自动化无酶克隆方法。
如今,在结构生物学或疫苗学等科学领域,越来越需要快速、有效和可重复的基因克隆和表达过程。因此,实现自动化协议的机器人平台正成为一个迫切的需求。我们研究的主要目标是建立一个机器人平台,专门用于聚合酶不完全引物延伸克隆方法的高通量自动化,并通过选择一组在自动平台(330)或手动(94)中处理的细菌基因,来评估其与人工克隆方法的效率。在这里,我们展示了我们成功地建立了一个能够高效地完成广泛的分子生物学和生化步骤的平台。329个基因靶点(99%)被自动扩增,286个(87%)PCR产物成功克隆到表达载体上,克隆成功率高于人工扩增(分别为93.6%和74.5%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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