Identifying Leukemia-related Genes based on Time-series Dynamical Network by Integrating Differential Genes.

Jin A, Ju Xiang, Xiangmao Meng, Yue Sheng, Hongling Peng, Min Li
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Abstract

Leukemia is a malignant disease of progressive accumulation characterized by high morbidity and mortality rates, and investigating its disease genes is crucial for understanding its etiology and pathogenesis. Network propagation methods have emerged and been widely employed in disease gene prediction, but most of them focus on static biological networks, which hinders their applicability and effectiveness in the study of progressive diseases. Moreover, there is currently a lack of special algorithms for the identification of leukemia disease genes. Here, we proposed DyNDG, a novel dynamic network-based model, which integrates differentially expressed genes to identify leukemia-related genes. Initially, we constructed a time-series dynamic network to model the development trajectory of leukemia. Then, we built a background-temporal multilayer network by integrating both the dynamic network and the static background network, which was initialized with differentially expressed genes at each stage. To quantify the associations between genes and leukemia, we extended a random walk process to the background-temporal multilayer network. The experimental results demonstrate that DyNDG achieves superior accuracy compared to several state-of-the-art methods. Moreover, after excluding housekeeping genes, DyNDG yields a set of promising candidate genes associated with leukemia progression or potential biomarkers, indicating the value of dynamic network information in identifying leukemia-related genes. The implementation of DyNDG is available at both https://ngdc.cncb.ac.cn/biocode/tool/BT7617 and https://github.com/CSUBioGroup/D yNDG.

基于差分基因整合的时间序列动态网络识别白血病相关基因。
白血病是一种高发病率、高死亡率的进行性积累性恶性疾病,研究其疾病基因对了解其病因和发病机制至关重要。网络传播方法已经出现并被广泛应用于疾病基因预测中,但它们大多集中在静态生物网络上,这阻碍了它们在研究进展性疾病中的适用性和有效性。此外,目前还缺乏专门用于白血病疾病基因鉴定的算法。在这里,我们提出了DyNDG,一个新的动态网络模型,整合差异表达基因来识别白血病相关基因。首先,我们构建了一个时间序列动态网络来模拟白血病的发展轨迹。然后,我们将动态背景网络和静态背景网络结合,构建了一个背景-时间多层网络,并在每个阶段初始化差异表达基因。为了量化基因与白血病之间的关联,我们将随机漫步过程扩展到背景-时间多层网络。实验结果表明,与几种最先进的方法相比,DyNDG具有更高的精度。此外,在排除管家基因后,DyNDG产生了一组与白血病进展或潜在生物标志物相关的有希望的候选基因,这表明动态网络信息在识别白血病相关基因方面的价值。DyNDG的实现可以在https://ngdc.cncb.ac.cn/biocode/tool/BT7617和https://github.com/CSUBioGroup/D yNDG上找到。
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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