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基于样本网络优化的疾病生物标志物识别

Disease biomarker identification based on sample network optimization.

作者信息

Wei Pi-Jing, Ma Wenwen, Li Yanxin, Su Yansen

机构信息

Information Materials and Intelligent Sensing Laboratory of Anhui Province, Institutes of Physical Science and Information Technology, Anhui University, 111 Jiulong Road, 230601 Hefei, Anhui, China.

Key Laboratory of Intelligent Computing and Signal Processing, School of Computer Science and Technology, Anhui University, 111 Jiulong Road, 230601 Hefei, China.

出版信息

Methods. 2023 May;213:42-49. doi: 10.1016/j.ymeth.2023.03.005. Epub 2023 Mar 29.

Abstract

A large amount of evidence shows that biomarkers are discriminant features related to disease development. Thus, the identification of disease biomarkers has become a basic problem in the analysis of complex diseases in the medical fields, such as disease stage judgment, disease diagnosis and treatment. Research based on networks have become one of the most popular methods. Several algorithms based on networks have been proposed to identify biomarkers, however the networks of genes or molecules ignored the similarities and associations among the samples. It is essential to further understand how to construct and optimize the networks to make the identified biomarkers more accurate. On this basis, more effective strategies can be developed to improve the performance of biomarkers identification. In this study, a multi-objective evolution algorithm based on sample similarity networks has been proposed for disease biomarker identification. Specifically, we design the sample similarity networks to extract the structural characteristic information among samples, which used to calculate the influence of the sample to each class. Besides, based on the networks and the group of biomarkers we choose in every iteration, we can divide samples into different classes by the importance for each class. Then, in the process of evolution algorithm population iteration, we develop the elite guidance strategy and fusion selection strategy to select the biomarkers which make the sample classification more accurate. The experiment results on the five gene expression datasets suggests that the algorithm we proposed is superior over some state-of-the-art disease biomarker identification methods.

摘要

大量证据表明,生物标志物是与疾病发展相关的判别特征。因此,疾病生物标志物的识别已成为医学领域复杂疾病分析中的一个基本问题,如疾病阶段判断、疾病诊断和治疗。基于网络的研究已成为最流行的方法之一。已经提出了几种基于网络的算法来识别生物标志物,然而基因或分子网络忽略了样本之间的相似性和关联性。进一步了解如何构建和优化网络以使识别出的生物标志物更准确至关重要。在此基础上,可以开发更有效的策略来提高生物标志物识别的性能。在本研究中,提出了一种基于样本相似性网络的多目标进化算法用于疾病生物标志物识别。具体而言,我们设计样本相似性网络以提取样本之间的结构特征信息,该信息用于计算样本对每个类别的影响。此外,基于网络以及我们在每次迭代中选择的生物标志物组,我们可以根据样本对每个类别的重要性将其分为不同类别。然后,在进化算法种群迭代过程中,我们开发精英引导策略和融合选择策略来选择使样本分类更准确的生物标志物。在五个基因表达数据集上的实验结果表明,我们提出的算法优于一些最先进的疾病生物标志物识别方法。

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