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Novel Analytical Methods Applied to Type 1 Diabetes Genome-Scan Data

机译:应用于1型糖尿病基因组扫描数据的新颖分析方法

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摘要

Complex traits like type 1 diabetes mellitus (T1DM) are generally taken to be under the influence of multiple genes interacting with each other to confer disease susceptibility and/or protection. Although novel methods are being developed, analyses of whole-genome scans are most often performed with multipoint methods that work under the assumption that multiple trait loci are unrelated to each other; that is, most models specify the effect of only one locus at a time. We have applied a novel approach, which includes decision-tree construction and artificial neural networks, to the analysis of T1DM genome-scan data. We demonstrate that this approach (1) allows identification of all major susceptibility loci identified by nonparametric linkage analysis, (2) identifies a number of novel regions as well as combinations of markers with predictive value for T1DM, and (3) may be useful in characterizing markers in linkage disequilibrium with protective-gene variants. Furthermore, the approach outlined here permits combined analyses of genetic-marker data and information on environmental and clinical covariates.
机译:诸如1型糖尿病(T1DM)等复杂性状通常被认为是受多个相互影响的基因的影响,从而赋予了疾病易感性和/或保护性。尽管正在开发新的方法,但全基因组扫描的分析最常使用多点方法进行,这些方法在假设多个特征基因座彼此无关的前提下起作用。也就是说,大多数模型一次仅指定一个位置的影响。我们已将一种新颖的方法(包括决策树构建和人工神经网络)应用于T1DM基因组扫描数据的分析。我们证明这种方法(1)可以识别通过非参数连锁分析确定的所有主要易感基因座,(2)可以识别许多新区域以及具有T1DM预测价值的标志物组合,并且(3)可能对连锁不平衡与保护基因变异的特征标记。此外,此处概述的方法允许对环境和临床协变量的遗传标记数据和信息进行综合分析。

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