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Identification of candidate biomarkers of liver hydatid disease via microarray profiling, bioinformatics analysis, and machine learning

机译:通过微阵列分析,生物信息学分析和机器学习鉴定肝脏粘虫病的候选生物标志物

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Objectives Liver echinococcosis is a severe zoonotic disease caused by Echinococcus (tapeworm) infection, which is epidemic in the Qinghai region of China. Here, we aimed to explore biomarkers and establish a predictive model for the diagnosis of liver echinococcosis. Methods Microarray profiling followed by Gene Ontology and Kyoto Encyclopedia of Genes and Genomes analysis was performed in liver tissue from patients with liver hydatid disease and from healthy controls from the Qinghai region of China. A protein–protein interaction (PPI) network and random forest model were established to identify potential biomarkers and predict the occurrence of liver echinococcosis, respectively. Results Microarray profiling identified 1152 differentially expressed genes (DEGs), including 936 upregulated genes and 216 downregulated genes. Several previously unreported biological processes and signaling pathways were identified. The FCGR2B and CTLA4 proteins were identified by the PPI networks and random forest model. The random forest model based on FCGR2B and CTLA4 reliably predicted the occurrence of liver hydatid disease, with an area under the receiver operator characteristic curve of 0.921. Conclusion Our findings give new insight into gene expression in patients with liver echinococcosis from the Qinghai region of China, improving our understanding of hepatic hydatid disease.
机译:目的肝超声波能病症是由棘突(绦虫)感染引起的严重的动物疾病,这是中国青海地区的流行病。在这里,我们旨在探索生物标志物,并建立肝超胰腺炎的诊断预测模型。方法对肝脏包虫病患者的肝脏组织和中国青海地区的健康对照进行肝脏组织和基因组细胞的微阵列剖析和基因组细胞的分析。建立了蛋白质 - 蛋白质相互作用(PPI)网络和随机林模型,以鉴定潜在的生物标志物,并分别预测肝超胰蛋白酶的发生。结果微阵列分析鉴定了1152个差异表达基因(DEGS),包括936个上调基因和216个下调基因。鉴定了几个先前未报告的生物过程和信号通路。通过PPI网络和随机林模型鉴定FCGR2B和CTLA4蛋白。基于FCGR2B和CTLA4的随机森林模型可靠地预测肝包虫病的发生,其中接收器操作员特征曲线为0.921。结论我们的调查结果为来自中国青海地区肝超声波病变患者的基因表达提供了新的洞察力,提高了我们对肝卫生态疾病的理解。

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