Li Shan-Shan, Zhao Xin-Bo, Tian Jia-Mei, Wang Hao-Ren, Wei Tong-Huan
Department of Endocrinology, Linyi People's Hospital, Linyi, Shandong 276000, P.R. China.
Department of Pediatrics, Linyi People's Hospital, Linyi, Shandong 276000, P.R. China.
Exp Ther Med. 2019 May;17(5):4176-4182. doi: 10.3892/etm.2019.7441. Epub 2019 Mar 26.
Guilt by association (GBA) algorithm has been widely used to statistically predict gene functions, and network-based approach increases the confidence and veracity of identifying molecular signatures for diseases. This work proposed a network-based GBA method by integrating the GBA algorithm and network, to identify seed gene functions for progressive diabetic neuropathy (PDN). The inference of predicting seed gene functions comprised of three steps: i) Preparing gene lists and sets; ii) constructing a co-expression matrix (CEM) on gene lists by Spearman correlation coefficient (SCC) method and iii) predicting gene functions by GBA algorithm. Ultimately, seed gene functions were selected according to the area under the receiver operating characteristics curve (AUC) index. A total of 79 differentially expressed genes (DEGs) and 40 background gene ontology (GO) terms were regarded as gene lists and sets for the subsequent analyses, respectively. The predicted results obtained from the network-based GBA approach showed that 27.5% of all gene sets had a good classified performance with AUC >0.5. Most significantly, 3 gene sets with AUC >0.6 were denoted as seed gene functions for PDN, including binding, molecular function and regulation of the metabolic process. In summary, we predicted 3 seed gene functions for PDN compared with non-progressors utilizing network-based GBA algorithm. The findings provide insights to reveal pathological and molecular mechanism underlying PDN.
关联有罪(GBA)算法已被广泛用于统计预测基因功能,基于网络的方法提高了识别疾病分子特征的可信度和准确性。这项工作通过整合GBA算法和网络,提出了一种基于网络的GBA方法,以识别进展性糖尿病神经病变(PDN)的种子基因功能。预测种子基因功能的推理包括三个步骤:i)准备基因列表和集合;ii)通过斯皮尔曼相关系数(SCC)方法在基因列表上构建共表达矩阵(CEM),以及iii)通过GBA算法预测基因功能。最终,根据受试者工作特征曲线(AUC)指数下的面积选择种子基因功能。分别将总共79个差异表达基因(DEG)和40个背景基因本体(GO)术语视为后续分析的基因列表和集合。基于网络的GBA方法获得的预测结果表明,所有基因集中27.5%具有良好的分类性能,AUC>0.5。最显著的是,3个AUC>0.6的基因集被指定为PDN的种子基因功能,包括结合、分子功能和代谢过程的调节。总之,我们利用基于网络的GBA算法与非进展者相比预测了3个PDN的种子基因功能。这些发现为揭示PDN潜在的病理和分子机制提供了见解。