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

Amin Ahmadi Adl, Xiaoning Qian, Ping Xu, Kendra Vehik, Jeffrey P Krischer
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引用次数: 7

Abstract

: Interaction among different risk factors plays an important role in the development and progress of complex disease, such as diabetes. However, traditional epidemiological methods often focus on analyzing individual or a few 'essential' risk factors, hopefully to obtain some insights into the etiology of complex disease. In this paper, we propose a systematic framework for risk factor analysis based on a synergy network, which enables better identification of potential risk factors that may serve as prognostic markers for complex disease. A spectral approximate algorithm is derived to solve this network optimization problem, which leads to a new network-based feature ranking method that improves the traditional feature ranking by taking into account the pairwise synergistic interactions among risk factors in addition to their individual predictive power. We first evaluate the performance of our method based on simulated datasets, and then, we use our method to study immunologic and metabolic indices based on the Diabetes Prevention Trial-Type 1 (DPT-1) study that may provide prognostic and diagnostic information regarding the development of type 1 diabetes. The performance comparison based on both simulated and DPT-1 datasets demonstrates that our network-based ranking method provides prognostic markers with higher predictive power than traditional analysis based on individual factors.

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基于协同网络识别DPT-1预后标志物的特征排序。
不同危险因素之间的相互作用在糖尿病等复杂疾病的发生发展中起着重要作用。然而,传统的流行病学方法往往侧重于分析单个或少数“基本”危险因素,以期对复杂疾病的病因有所了解。在本文中,我们提出了一个基于协同网络的风险因素分析的系统框架,该框架能够更好地识别可能作为复杂疾病预后标记的潜在风险因素。针对这一网络优化问题,提出了一种新的基于网络的特征排序方法,除了考虑风险因素的个体预测能力外,还考虑了风险因素之间的两两协同作用,从而改进了传统的特征排序方法。我们首先基于模拟数据集评估了我们的方法的性能,然后,我们使用我们的方法研究基于糖尿病预防试验-1 (DPT-1)研究的免疫和代谢指标,这些指标可能为1型糖尿病的发展提供预后和诊断信息。基于模拟数据集和DPT-1数据集的性能比较表明,我们基于网络的排序方法提供的预后标记比基于单个因素的传统分析具有更高的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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