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A Statistical Model for Microarrays, Optimal Estimation Algorithms, and Limits of Performance

机译:微阵列的统计模型,最佳估计算法和性能极限

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摘要

DNA microarray technology relies on the hybridization process, which is stochastic in nature. Currently, probabilistic cross hybridization of nonspecific targets, as well as the shot noise (Poisson noise) originating from specific targets binding, are among the main obstacles for achieving high accuracy in DNA microarray analysis. In this paper, statistical techniques are used to model the hybridization and cross-hybridization processes and, based on the model, optimal algorithms are employed to detect the targets and to estimate their quantities. To verify the theory, two sets of microarray experiments are conducted: one with oligonucleotide targets and the other with complementary DNA (cDNA) targets in the presence of biological background. Both experiments indicate that, by appropriately modeling the cross-hybridization interference, significant improvement in the accuracy over conventional methods such as direct readout can be obtained. This substantiates the fact that the accuracy of microarrays can become exclusively noise limited, rather than interference (i.e., cross-hybridization) limited. The techniques presented in this paper potentially increase considerably the signal-to-noise ratio (SNR), dynamic range, and resolution of DNA and protein microarrays as well as other affinity-based biosensors. A preliminary study of the Cramer-Rao bound for estimating the target concentrations suggests that, in some regimes, cross hybridization may even be beneficial--a result with potential ramifications for probe design, which is currently focused on minimizing cross hybridization. Finally, in its current form, the proposed method is best suited to low-density arrays arising in diagnostics, single nucleotide polymorphism (SNP) detection, toxicology, etc. How to scale it to high-density arrays (with many thousands of spots) is an interesting challenge.
机译:DNA微阵列技术依赖于杂交过程,该过程本质上是随机的。当前,非特异性靶标的概率交叉杂交以及源自特异性靶标结合的散粒噪声(泊松噪声)是在DNA微阵列分析中实现高精度的主要障碍之一。在本文中,使用统计技术对杂交和交叉杂交过程进行建模,并基于该模型,采用最佳算法来检测目标并估计其数量。为了验证该理论,进行了两组微阵列实验:一组在生物背景下,以寡核苷酸为靶标,另一组以互补DNA(cDNA)为靶标。这两个实验均表明,通过对交叉杂交干扰进行适当建模,与常规方法(例如直接读出)相比,可以显着提高准确性。这证实了这样的事实,即微阵列的精确度可以仅受噪声限制,而不受干扰(即交叉杂交)的限制。本文介绍的技术可能会大大提高DNA和蛋白质微阵列以及其他基于亲和力的生物传感器的信噪比(SNR),动态范围以及分辨率。对Cramer-Rao限用于估计目标浓度的初步研究表明,在某些情况下,交叉杂交甚至可能是有益的-探针设计潜在的后果,目前主要致力于使交叉杂交最小化。最后,以目前的形式,所提出的方法最适合于诊断,单核苷酸多态性(SNP)检测,毒理学等方面出现的低密度阵列。如何将其缩放到高密度阵列(具有成千上万个斑点)是一个有趣的挑战。

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