利用GraphSAGE神经网络识别糖尿病肾病的生物标志物

Sesugh Gabriel Abenga, Kehinde Seyi Olalekan, Francis Akogwu Alu, Stephen Yavenga Uyoo
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引用次数: 0

摘要

糖尿病肾病(DKD)是糖尿病常见的慢性并发症。尽管在准确识别检测和诊断这种有害疾病的生物标志物方面取得了进展,但仍然迫切需要新的生物标志物来实现DKD的早期检测。在这项研究中,我们将公开可用的转录组数据集建模为一个图问题,并使用GraphSAGE神经网络(gnn)来识别潜在的生物标志物。GraphSAGE模型有效地学习了表征,捕获了复杂的相互作用,基因之间的依赖关系,以及将样本分类为DKD和Control所必需的疾病特异性基因表达模式。最后提取出重要性的特征;鉴定出的一组基因表现出了区分健康和不健康样本的令人印象深刻的能力,尽管这些基因与以前的研究结果不同。本研究中意想不到的生物标志物变化提示更多的探索和验证研究,以发现DKD中的生物标志物。总之,我们的研究展示了将转录组数据建模为图形问题的有效性,展示了在DKD生物标志物发现中使用GraphSAGE模型,并倡导将先进的机器学习技术集成到DKD生物标志物研究中,强调需要一种整体方法来解开生物系统的复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Biomarkers for Diabetic Kidney Disease Using GraphSAGE Neural Network
Diabetic Kidney Disease (DKD) is a common chronic complication of diabetes. Despite advancements in accurately identifying biomarkers for detecting and diagnosing this harmful disease, there remains an urgent need for new biomarkers to enable early detection of DKD. In this study, we modeled publicly available transcriptome datasets as a graph problem and used GraphSAGE Neural Networks (GNNs) to identify potential biomarkers. The GraphSAGE model effectively learned representations that captured the intricate interactions, dependencies among genes, and disease-specific gene expression patterns necessary to classify samples as DKD and Control. We finally extracted the features of importance; the identified set of genes exhibited an impressive ability to distinguish between healthy and unhealthy samples, even though these genes differ from previous research findings. The unexpected biomarker variations in this study suggest more exploration and validation studies for discovering biomarkers in DKD. In conclusion, our study showcases the effectiveness of modeling transcriptome data as a graph problem, demonstrates the use of GraphSAGE models for biomarker discovery in DKD, and advocates for integrating advanced machine-learning techniques in DKD biomarker research, emphasizing the need for a holistic approach to unravel the intricacies of biological systems.
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