Rutledge Robert G, Stewart Don
Natural Resources Canada, Canadian Forest Service, 1055 du PEPS, Quebec, Quebec G1V 4C7, Canada.
BMC Biotechnol. 2008 May 8;8:47. doi: 10.1186/1472-6750-8-47.
Based upon defining a common reference point, current real-time quantitative PCR technologies compare relative differences in amplification profile position. As such, absolute quantification requires construction of target-specific standard curves that are highly resource intensive and prone to introducing quantitative errors. Sigmoidal modeling using nonlinear regression has previously demonstrated that absolute quantification can be accomplished without standard curves; however, quantitative errors caused by distortions within the plateau phase have impeded effective implementation of this alternative approach.
Recognition that amplification rate is linearly correlated to amplicon quantity led to the derivation of two sigmoid functions that allow target quantification via linear regression analysis. In addition to circumventing quantitative errors produced by plateau distortions, this approach allows the amplification efficiency within individual amplification reactions to be determined. Absolute quantification is accomplished by first converting individual fluorescence readings into target quantity expressed in fluorescence units, followed by conversion into the number of target molecules via optical calibration. Founded upon expressing reaction fluorescence in relation to amplicon DNA mass, a seminal element of this study was to implement optical calibration using lambda gDNA as a universal quantitative standard. Not only does this eliminate the need to prepare target-specific quantitative standards, it relegates establishment of quantitative scale to a single, highly defined entity. The quantitative competency of this approach was assessed by exploiting "limiting dilution assay" for absolute quantification, which provided an independent gold standard from which to verify quantitative accuracy. This yielded substantive corroborating evidence that absolute accuracies of +/- 25% can be routinely achieved. Comparison with the LinReg and Miner automated qPCR data processing packages further demonstrated the superior performance of this kinetic-based methodology.
Called "linear regression of efficiency" or LRE, this novel kinetic approach confers the ability to conduct high-capacity absolute quantification with unprecedented quality control capabilities. The computational simplicity and recursive nature of LRE quantification also makes it amenable to software implementation, as demonstrated by a prototypic Java program that automates data analysis. This in turn introduces the prospect of conducting absolute quantification with little additional effort beyond that required for the preparation of the amplification reactions.
基于定义一个共同的参考点,当前的实时定量PCR技术比较扩增曲线位置的相对差异。因此,绝对定量需要构建目标特异性标准曲线,这需要大量资源且容易引入定量误差。先前使用非线性回归的S形建模表明,无需标准曲线即可完成绝对定量;然而,平台期内的失真所导致的定量误差阻碍了这种替代方法的有效实施。
认识到扩增速率与扩增子数量呈线性相关,从而推导出两个S形函数,可通过线性回归分析进行目标定量。除了规避平台期失真产生的定量误差外,这种方法还可以确定单个扩增反应内的扩增效率。绝对定量首先将各个荧光读数转换为以荧光单位表示的目标量,然后通过光学校准转换为目标分子数。基于将反应荧光与扩增子DNA质量相关联,本研究的一个关键要素是使用λ基因组DNA作为通用定量标准进行光学校准。这不仅消除了制备目标特异性定量标准的需要,还将定量尺度的建立归结为一个单一的、高度明确的实体。通过利用“有限稀释分析”进行绝对定量来评估这种方法的定量能力,该分析提供了一个独立的金标准来验证定量准确性。这产生了大量确凿的证据,表明通常可以实现±25%的绝对准确度。与LinReg和Miner自动qPCR数据处理软件包的比较进一步证明了这种基于动力学方法的卓越性能。
这种新颖的动力学方法称为“效率线性回归”(LRE),具有以前所未有的质量控制能力进行高容量绝对定量的能力。LRE定量的计算简单性和递归性质也使其适合软件实现,一个自动化数据分析的原型Java程序证明了这一点。这反过来又带来了一种前景,即除了扩增反应所需的努力之外,只需付出很少的额外努力就可以进行绝对定量。