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Noise and rank-dependent geometrical filter improves sensitivity of highly specific discovery by microarrays

机译:噪声和与等级相关的几何滤波器提高了微阵列高度特异性发现的敏感性

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Summary: MASH is a mathematical algorithm that discovers highly specific states of expression from genomic profiling by micro-arrays. The goal at the outset of this analysis was to improve the sensitivity of MASH. The geometrical representations of microarray datasets in the 3D space are rank-dependent and unique to each dataset. The first filter (F1) of MASH defines a zone of Instability whose F1-sensitive ratios have large variations. A new filter (Fs) constructs in the 3D space rank-dependent lower and upper-bound contour surfaces, which are modeled based on the geometry of the unique noise intrinsic to each dataset. As compared with MASH, Fs increases sensitivity significantly without lowering the high specificity of discovery. Fs facilitates studies in functional genomics and systems biology.
机译:简介:MASH是一种数学算法,可通过微阵列从基因组分析中发现高度特定的表达状态。该分析开始时的目标是提高MASH的敏感性。 3D空间中微阵列数据集的几何表示形式与等级相关,并且对于每个数据集都是唯一的。 MASH的第一个过滤器(F1)定义了一个不稳定区域,其F1敏感比率有很大的差异。在3D空间相关的上下边界轮廓表面中构造了一个新的滤波器(Fs),这些轮廓表面是基于每个数据集固有的唯一噪声的几何形状进行建模的。与MASH相比,Fs显着提高了灵敏度,而又不降低发现的高特异性。 Fs促进了功能基因组学和系统生物学的研究。

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