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Feature ranking based on synergy networks to identify prognostic markers in DPT-1

机译:基于协同网络的特征排名以识别DPT-1中的预后标记

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ABSTRACT Traditional epidemiologic methods test hypotheses focusing on individual risk factors for studying disease of interest. However, complex diseases are triggered and progress due to complicated interactions among both genetic and environmental risk factors. In this paper, we propose a network-based approach by integration of pairwise synergistic interactions to identify potential risk factors and their interactions in disease development. Specifically, we study immunologic and metabolic indices that may provide prognostic and diagnostic information regarding the development of Type-1 Diabetes (T1D) by analyzing measurements from oral glucose tolerance tests (OGTTs) and intravenous glucose tolerance tests (IVGTTs) in subjects with high risk from the Diabetes Prevention Trial-Type 1 (DPT-1) study. Performance comparison of our network-based method with individual factor based analysis demonstrates that the systematic analysis of all potential factors by considering their synergistic relationships help predict the development of clinical T1D better.
机译:摘要传统的流行病学方法会检验假设,这些假设侧重于研究目标疾病的个体危险因素。然而,由于遗传和环境风险因素之间复杂的相互作用,引发了复杂的疾病并不断发展。在本文中,我们通过整合成对的协同相互作用来提出一种基于网络的方法,以识别潜在的危险因素及其在疾病发展中的相互作用。具体来说,我们通过分析高风险受试者的口服葡萄糖耐量测试(OGTT)和静脉葡萄糖耐量测试(IVGTT)的测量值,研究可能为1型糖尿病(T1D)的发展提供预后和诊断信息的免疫学和代谢指标来自1型糖尿病预防试验(DPT-1)的研究。我们基于网络的方法与基于单个因素的分析的性能比较表明,通过考虑潜在因素的协同关系对所有潜在因素进行系统分析有助于更好地预测临床T1D的发展。

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