Fractal genomics modeling: a new approach to genomic analysis and biomarker discovery.

Sandy Shaw, Paul Shapshak
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Abstract

Reverse engineering of genetics networks generally requires establishing correlative behavior within and between a very large number of genes. This becomes a difficult analytical problem for even a few hundred genes and the difficulty tends to grow exponentially as more genes are examined. Using a hybrid data analysis method known as Fractal Genomics Modeling (FGM), this problem is reduced to examining correlative behavior within small gene groups that can then be compared and integrated to produce a picture of larger networks using a type pf shotgun approach. We have applied FGM toward examining genetic networks involved in HIV infection in the brain. These networks have relevance both to processes related to HIV infection and neurodegenerative disorders. Our preliminary findings have produced conjectures of related pathways and networks as well new candidates for genetic markers in HIV brain infection. Evidence has also been produced which appears to show the presence of a hierarchical network structure within the genes studied. We will discuss the background and methodology of FGM as well as our recent findings.

分形基因组建模:基因组分析和生物标志物发现的新方法。
遗传网络的逆向工程通常需要在大量基因内部和基因之间建立相关行为。即使对几百个基因来说,这也成为一个困难的分析问题,而且随着检测的基因越来越多,难度呈指数级增长。使用一种称为分形基因组建模(FGM)的混合数据分析方法,这个问题被简化为检查小基因组内的相关行为,然后可以使用霰弹枪方法进行比较和整合,以产生更大网络的图片。我们已经将女性生殖器切割用于检测大脑中与HIV感染有关的遗传网络。这些网络与HIV感染和神经退行性疾病相关的过程相关。我们的初步发现已经产生了相关途径和网络的猜想,以及HIV脑感染遗传标记的新候选物。也有证据表明,在被研究的基因中似乎存在一个等级网络结构。我们将讨论女性生殖器切割的背景和方法以及我们最近的发现。
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