DualMarker:一种基于双层异构网络的乳腺癌预后生物标志物多源融合识别方法。

Xingyi Li, Zhelin Zhao, Junming Li, Ju Xiang, Jialu Hu, Xuequn Shang
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引用次数: 0

摘要

乳腺癌是一种复杂的疾病,由多种因素引起,包括遗传、年龄和环境因素。乳腺癌的预后预测是一项具有挑战性的任务,迫切需要解决。预后生物标志物可以帮助预测乳腺癌患者的临床结果,基于网络的方法经常被用来识别这些生物标志物。然而,由于单个生物网络相互作用不完全,这些基于单源生物网络的方法的准确性较差。一些整合多个生物网络的基于网络的方法没有考虑网络去噪,这可能导致这些方法的准确性有待提高。我们提出了一种名为DualMarker的乳腺癌预后生物标志物多源融合识别方法。该方法通过整合多个生物源,构建了一个双层异构网络。为了减少生物网络中不完全相互作用的负面影响,我们对构建的网络进行去噪。通过网络传播算法和初始评分策略对特征进行排序。与其他六种基于网络的方法相比,DualMarker在六个乳腺癌数据集上表现出最好的性能。此外,我们还证明了DualMarker识别的生物标志物具有生物学上的可解释性,并且与乳腺癌患者的预后密切相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DualMarker: A multi-source fusion identification method for prognostic biomarkers of breast cancer based on dual-layer heterogeneous network.

Breast cancer is a complex disease that arises from multiple factors, including genetics, age, and environmental factors. Prognosis prediction for breast cancer is a challenging task that urgently needs to be addressed. Prognostic biomarkers can aid in predicting clinical outcomes for breast cancer patients, and network-based approaches are frequently employed to identify such biomarkers. However, the accuracy of these approaches based on single source biological network is poor due to incomplete interactions of single biological network. Some network-based approaches that integrate multiple biological networks have not considered network denoising, which may lead to the accuracy of these approaches to be improved. We propose a multi-source fusion identification method named DualMarker for prognostic biomarkers of breast cancer. This method constructs a dual-layer heterogeneous network by integrating multiple biological sources. To decrease the negative effects of incomplete interactions in biological networks, we denoise the constructed network. The ranking of features is obtained by the network propagation algorithm and the initial scoring strategy. Compared with six other network-based methods, DualMarker shows the best performance in six breast cancer datasets. Moreover, we have also demonstrated that the biomarkers identified by DualMarker are of interpretability biologically and closely associated with breast cancer patients' prognosis.

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