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Towards Optimal Microarray Universal Reference Sample Designs: An In-Silico Optimization Approach

机译:朝着最佳的微阵列通用参考样品设计:硅片优化方法

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Assessment of the reliability of microarray experiments as well as their cross-laboratory/platform reproducibility rise as the major need. A critical challenge concerns the design of optimal Universal Reference RNA (URR) samples in order to maximize detectable spots in two-color/channel microarray experiments, decrease the variability of microarray data, and finally ease the comparison between heterogeneous microarray datasets. Towards this target we devised and present an in-silico (binary) optimization process the solutions of which present optimal URR sample designs. Setting a cut-off threshold value over which a gene is considered as detectably expressed enables the process. Experimental results are quite encouraging and the related discussion highlights the suitability and flexibility of the approach.
机译:评估微阵列实验的可靠性以及它们作为主要需求的跨实验室/平台再现性上升。临界挑战涉及最佳通用参考RNA(URR)样品的设计,以便最大化双色/通道微阵列实验中的可检测点,降低微阵列数据的可变性,最后缓解异构微阵列数据集之间的比较。对于该目标,我们设计并呈现了硅中的(二元)优化过程,其解决方案目前最佳的URR样品设计。设置截止阈值,在其上被认为是可检测的表达的基因使得能够实现该过程。实验结果非常令人鼓舞,相关讨论突出了这种方法的适用性和灵活性。

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