Communications Engineering and Information Department, University of Murcia, 30100, Murcia, Spain.
Department of Genetics and Genomic Medicine Research and Teaching, UCL GOS Institute of Child Health, London, WC1N 1EH, UK.
Sci Rep. 2024 Jul 19;14(1):16675. doi: 10.1038/s41598-024-67329-7.
Weighted Gene Co-expression Network Analysis (WGCNA) is a widely used approach for the generation of gene co-expression networks. However, networks generated with this tool usually create large modules with a large set of functional annotations hard to decipher. We have developed TGCN, a new method to create Targeted Gene Co-expression Networks. This method identifies the transcripts that best predict the trait of interest based on gene expression using a refinement of the LASSO regression. Then, it builds the co-expression modules around those transcripts. Algorithm properties were characterized using the expression of 13 brain regions from the Genotype-Tissue Expression project. When comparing our method with WGCNA, TGCN networks lead to more precise modules that have more specific and yet rich biological meaning. Then, we illustrate its applicability by creating an APP-TGCN on The Religious Orders Study and Memory and Aging Project dataset, aiming to identify the molecular pathways specifically associated with APP role in Alzheimer's disease. Main biological findings were further validated in two independent cohorts. In conclusion, we provide a new framework that serves to create targeted networks that are smaller, biologically relevant and useful in high throughput hypothesis driven research. The TGCN R package is available on Github: https://github.com/aliciagp/TGCN .
加权基因共表达网络分析(WGCNA)是一种广泛用于生成基因共表达网络的方法。然而,该工具生成的网络通常会创建具有大量功能注释的大型模块,难以理解。我们开发了 TGCN,这是一种创建靶向基因共表达网络的新方法。该方法使用 LASSO 回归的改进版本,根据基因表达来识别最能预测目标性状的转录本。然后,它围绕这些转录本构建共表达模块。使用基因型组织表达项目中的 13 个大脑区域的表达来描述算法特性。在将我们的方法与 WGCNA 进行比较时,TGCN 网络生成的模块更精确,具有更具体但又丰富的生物学意义。然后,我们通过在宗教秩序研究和记忆与衰老项目数据集上创建一个 APP-TGCN,说明了其适用性,旨在识别与 APP 在阿尔茨海默病中的作用特别相关的分子途径。主要生物学发现进一步在两个独立的队列中得到验证。总之,我们提供了一个新的框架,用于创建更小、生物学上相关且在高通量假设驱动研究中有用的靶向网络。TGCN R 包可在 Github 上获得:https://github.com/aliciagp/TGCN。