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Topological data analysis can extract subgroups with high incidence rates of Type 2 diabetes

机译:拓扑数据分析可以提取2型糖尿病高发生率的亚组

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Type 2 diabetes (T2D) is now a rapidly increasing, worldwide scourge, and the identification of genetic contributors is vital. However, current analyses of multiple, disease-contributing factors, and their combined interactions, remains quite difficult, using traditional approaches. Topological data analysis (TDA) shows what shape a data set can have, facilitating clustering analysis, by determining which components are close to each other. Thus, TDA can generate a network, using single-nucleotide polymorphism (SNP) data, revealing the genetic relatedness of specific individuals, and can derive multiple ordered subgroups, from one with a low patient concentration, to one with a high patient concentration. Since it is widely accepted that T2D pathogenesis is affected by multiple genetic factors, we performed TDA on T2D data from the Korea Association REsource (KARE) project, a population-based, genome-wide association study of the Korean adult population. Since KARE data contains follow-up information about the incidence of T2D, we compared the T2D status of each individual, at baseline, with that of 10 years later. For the TDA network-driven subgroups, ordered by prevalence, we compared the T2D incidence rate, after 10 years, for individuals initially without T2D. As a result, we found that the TDA network-driven, ordered subgroups had significantly increased incidence rates, linearly correlated with prevalence (p-value =0.006914). Our results demonstrate the usefulness of TDA in both identifying genetic contributors (e.g., SNPs), and their interrelationships, in the pathology of complex diseases.
机译:2型糖尿病(T2D)现在是一个迅速增加的全球性祸害,对遗传贡献者的鉴定至关重要。但是,使用传统方法,当前对多种疾病造成因素及其组合相互作用的分析仍然非常困难。拓扑数据分析(TDA)通过确定哪些组件彼此靠近来显示数据集的形状,从而有助于聚类分析。因此,TDA可以利用单核苷酸多态性(SNP)数据生成一个网络,揭示特定个体的遗传相关性,并且可以从患者浓度低的一个到患者浓度高的一个派生多个有序的亚组。由于T2D发病机理受多种遗传因素影响已被广泛接受,因此我们根据韩国成年人群的基于人群,全基因组的关联研究,来自韩国协会资源(KARE)项目的T2D数据进行了TDA。由于KARE数据包含有关T2D发生率的后续信息,因此我们比较了基线时和10年后每个人的T2D状况。对于TDA网络驱动的亚组,按患病率排序,我们比较了10年后最初没有T2D的个体的T2D发生率。结果,我们发现TDA网络驱动的有序亚组的发病率显着增加,与患病率呈线性相关(p值= 0.006914)。我们的结果证明了TDA在鉴定复杂疾病病理学中的遗传因素(例如SNP)及其相互关系方面的有用性。

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