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应用机器学习和加权基因共表达网络算法探索衰老大脑中的枢纽基因。

Application of Machine Learning and Weighted Gene Co-expression Network Algorithm to Explore the Hub Genes in the Aging Brain.

作者信息

Chai Keping, Liang Jiawei, Zhang Xiaolin, Cao Panlong, Chen Shufang, Gu Huaqian, Ye Weiping, Liu Rong, Hu Wenjun, Peng Caixia, Liu Gang Logan, Shen Daojiang

机构信息

Department of Pediatrics, Zhejiang Hospital, Hangzhou, China.

College of Life Science and Technology, Huazhong University of Science and Technology, Wuhan, China.

出版信息

Front Aging Neurosci. 2021 Oct 18;13:707165. doi: 10.3389/fnagi.2021.707165. eCollection 2021.

Abstract

Aging is a major risk factor contributing to neurodegeneration and dementia. However, it remains unclarified how aging promotes these diseases. Here, we use machine learning and weighted gene co-expression network (WGCNA) to explore the relationship between aging and gene expression in the human frontal cortex and reveal potential biomarkers and therapeutic targets of neurodegeneration and dementia related to aging. The transcriptional profiling data of the human frontal cortex from individuals ranging from 26 to 106 years old was obtained from the GEO database in NCBI. Self-Organizing Feature Map (SOM) was conducted to find the clusters in which gene expressions downregulate with aging. For WGCNA analysis, first, co-expressed genes were clustered into different modules, and modules of interest were identified through calculating the correlation coefficient between the module and phenotypic trait (age). Next, the overlapping genes between differentially expressed genes (DEG, between young and aged group) and genes in the module of interest were discovered. Random Forest classifier was performed to obtain the most significant genes in the overlapping genes. The disclosed significant genes were further identified through network analysis. Through WGCNA analysis, the greenyellow module is found to be highly negatively correlated with age, and functions mainly in long-term potentiation and calcium signaling pathways. Through step-by-step filtering of the module genes by overlapping with downregulated DEGs in aged group and Random Forest classifier analysis, we found that , , , , and were co-expressed and highly correlated with aging.

摘要

衰老 是导致神经退行性变和痴呆的主要风险因素。然而,衰老如何促进这些疾病仍不清楚。在这里,我们使用机器学习和加权基因共表达网络(WGCNA)来探索人类额叶皮质中衰老与基因表达之间的关系,并揭示与衰老相关的神经退行性变和痴呆的潜在生物标志物和治疗靶点。从美国国立医学图书馆(NCBI)的基因表达综合数据库(GEO)中获取了年龄在26至106岁之间的个体的人类额叶皮质转录谱数据。进行自组织特征映射(SOM)以找到基因表达随衰老而下调的聚类。对于WGCNA分析,首先,将共表达基因聚类到不同的模块中,并通过计算模块与表型性状(年龄)之间的相关系数来识别感兴趣的模块。接下来,发现差异表达基因(年轻组和老年组之间)与感兴趣模块中的基因之间的重叠基因。进行随机森林分类器以获得重叠基因中最显著的基因。通过网络分析进一步鉴定所公开的显著基因。通过WGCNA分析,发现绿黄色模块与年龄高度负相关,主要在长时程增强和钙信号通路中发挥作用。通过将模块基因与老年组中下调的差异表达基因重叠并进行随机森林分类器分析,逐步筛选模块基因,我们发现 、 、 、 和 共表达且与衰老高度相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ce82/8558222/a28c1e8ed987/fnagi-13-707165-g001.jpg

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