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Framework for DNA Quantification and Outlier Detection Using Multidimensional Standard Curves

机译:使用多维标准曲线的DNA量化和异常值检测框架

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摘要

Real-time PCR is a highly sensitive and powerful technology for the quantification of DNA and has become the method of choice in microbiology, bioengineering, and molecular biology. Currently, the analysis of real-time PCR data is hampered by only considering a single feature of the amplification profile to generate a standard curve. The current "gold standard" is the cycle-threshold (C-t) method which is known to provide poor quantification under inconsistent reaction efficiencies. Multiple single-feature methods have been developed to overcome the limitations of the C-t method; however, there is an unexplored area of combining multiple features in order to benefit from their joint information. Here, we propose a novel framework that combines existing standard curve methods into a multidimensional standard curve. This is achieved by considering multiple features together such that each amplification curve is viewed as a point in a multidimensional space. Contrary to only considering a single-feature, in the multidimensional space, data points do not fall exactly on the standard curve, which enables a similarity measure between amplification curves based on distances between data points. We show that this framework expands the capabilities of standard curves in order to optimize quantification performance, provide a measure of how suitable an amplification curve is for a standard, and thus automatically detect outliers and increase the reliability of quantification. Our aim is to provide an affordable solution to enhance existing diagnostic settings through maximizing the amount of information extracted from conventional instruments.
机译:实时PCR是一种高度敏感和强大的技术,用于定量DNA,已成为微生物学,生物工程和分子生物学中的选择方法。目前,仅考虑放大曲线的单个特征来阻碍对实时PCR数据的分析以产生标准曲线。目前的“黄金标准”是循环阈值(C-T)方法,其已知在不一致的反应效率下提供差的定量。已经开发了多种单一特征方法来克服C-T方法的局限性;然而,有一个未探明的领域,可以组合多个特征,以便从其联合信息中受益。在这里,我们提出了一种新颖的框架,将现有的标准曲线方法结合到多维标准曲线中。这通过考虑多个特征,使得每个放大曲线被视为多维空间中的点。相反,仅考虑一个单一特征,在多维空间中,数据点不会完全落在标准曲线上,这使得基于数据点之间的距离能够在放大曲线之间的相似度测量。我们表明,该框架扩展了标准曲线的能力,以优化量化性能,提供了衡量放大曲线对于标准的合适程度,从而自动检测异常值并提高定量的可靠性。我们的目标是提供一种实惠的解决方案,可以通过最大化从传统仪器提取的信息量来增强现有的诊断设置。

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  • 来源
    《Analytical chemistry》 |2019年第11期|共9页
  • 作者单位

    Imperial Coll London Dept Elect &

    Elect Engn Ctr Bioinspired Technol London SW7 2AZ England;

    Imperial Coll London Dept Elect &

    Elect Engn Ctr Bioinspired Technol London SW7 2AZ England;

    Imperial Coll London Dept Elect &

    Elect Engn Ctr Bioinspired Technol London SW7 2AZ England;

    Imperial Coll London Dept Elect &

    Elect Engn Ctr Bioinspired Technol London SW7 2AZ England;

    Univ Warwick Sch Life Sci Coventry CV4 7AL W Midlands England;

    Imperial Coll London NIHR Hlth Protect Res Unit Healthcare Associated Hammersmith Hosp Campus London W12 0NN England;

    Imperial Coll London Dept Elect &

    Elect Engn Ctr Bioinspired Technol London SW7 2AZ England;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
  • 关键词

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