...
首页> 外文期刊>BMC research notes >Processing of Agilent microRNA array data
【24h】

Processing of Agilent microRNA array data

机译:处理安捷伦microRNA阵列数据

获取原文

摘要

Background The Agilent microRNA microarray platform interrogates each microRNA with several copies of distinct oligonucleotide probes and integrates the results into a total gene signal (TGS), using a proprietary algorithm that makes use of the background subtracted signal. The TGS can be normalized between arrays, and the Agilent recommendation is either not to normalize or to normalize to the 75th percentile signal intensity. The robust multiarray average algorithm (RMA) is an alternative method, originally developed to obtain a summary measure of mRNA Affymetrix gene expression arrays by using a linear model that takes into account the probe affinity effect. The RMA method has been shown to improve the accuracy and precision of expression measurements relative to other competing methods. There is also evidence that it might be preferable to use non-corrected signals for the processing of microRNA data, rather than background-corrected signals. In this study we assess the use of the RMA method to obtain a summarized microRNA signal for the Agilent arrays. Findings We have adapted the RMA method to obtain a processed signal for the Agilent arrays and have compared the RMA summarized signal to the TGS generated with the image analysis software provided by the vendor. We also compared the use of the RMA algorithm with uncorrected and background-corrected signals, and compared quantile normalization with the normalization method recommended by the vendor. The pre-processing methods were compared in terms of their ability to reduce the variability (increase precision) of the signals between biological replicates. Application of the RMA method to non-background corrected signals produced more precise signals than either the RMA-background-corrected signal or the quantile-normalized Agilent TGS. The Agilent TGS normalized to the 75% percentile showed more variation than the other measures. Conclusions Used without background correction, a summarized signal that takes into account the probe effect might provide a more precise estimate of microRNA expression. The variability of quantile normalization was lower compared with the normalization method recommended by the vendor.
机译:背景技术安捷伦microRNA微阵列平台使用专有的算法(利用背景扣除信号),用几个不同的寡核苷酸探针的副本来查询每个microRNA,并将结果整合到总基因信号(TGS)中。可以在阵列之间对TGS进行归一化,而安捷伦(Agilent)建议不要对75个百分位信号强度进行归一化或将其归一化。鲁棒的多阵列平均算法(RMA)是一种替代方法,最初是通过使用考虑了探针亲和效应的线性模型来获得对mRNA Affymetrix基因表达阵列的汇总度量。相对于其他竞争方法,已证明RMA方法可提高表达测量的准确性和精确度。也有证据表明,使用未校正的信号处理微RNA数据比处理背景校正的信号更可取。在这项研究中,我们评估了使用RMA方法获得用于安捷伦阵列的汇总microRNA信号的方法。结果我们调整了RMA方法以获得安捷伦阵列的处理信号,并将RMA汇总信号与使用供应商提供的图像分析软件生成的TGS进行了比较。我们还将RMA算法与未经校正和经背景校正的信号进行了比较,并将分位数归一化与供应商推荐的归一化方法进行了比较。对预处理方法进行了比较,以减少它们在生物复制之间的信号变异性(提高精度)。与非RMA背景校正信号或分位数归一化的Agilent TGS相比,将RMA方法应用于非背景校正信号可产生更精确的信号。归一化为75%百分数的安捷伦TGS显示出比其他方法更大的变化。结论在不进行背景校正的情况下,考虑到探针效应的信号汇总可能会提供更精确的microRNA表达估计。分位数归一化的变异性低于供应商推荐的归一化方法。

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