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Identification of key candidate biomarkers for severe influenza infection by integrated bioinformatical analysis and initial clinical validation

机译:鉴定综合生物信息分析和初期临床验证的严重流感感染的关键候选生物标志物

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摘要

One of the key barriers for early identification and intervention of severe influenza cases is a lack of reliable immunologic indicators. In this study, we utilized differentially expressed genes screening incorporating weighted gene co‐expression network analysis in one eligible influenza GEO data set ({"type":"entrez-geo","attrs":{"text":"GSE111368","term_id":"111368"}}GSE111368) to identify hub genes associated with clinical severity. A total of 10 genes (PBI, MMP8, TCN1, RETN, OLFM4, ELANE, LTF, LCN2, DEFA4 and HP) were identified. Gene set enrichment analysis (GSEA) for single hub gene revealed that these genes had a close association with antimicrobial response and neutrophils activity. To further evaluate these genes' ability for diagnosis/prognosis of disease developments, we adopted double validation with (a) another new independent data set ({"type":"entrez-geo","attrs":{"text":"GSE101702","term_id":"101702"}}GSE101702); and (b) plasma samples collected from hospitalized influenza patients. We found that 10 hub genes presented highly correlation with disease severity. In particular, BPI and MMP8 encoding proteins in plasma achieved higher expression in severe and dead cases, which indicated an adverse disease development and suggested a frustrating prognosis. These findings provide new insight into severe influenza pathogenesis and identify two significant candidate genes that were superior to the conventional clinical indicators. These candidate genes or encoding proteins could be biomarker for clinical diagnosis and therapeutic targets for severe influenza infection.
机译:早期鉴定和严重流感病例的干预的关键障碍之一是缺乏可靠的免疫指标。在本研究中,我们利用差异表达的基因筛选在一个合理的流感地理数据集中掺入加权基因共表达网络分析({“类型”:“entrez-geo”,“attrs”:{“text”:“gse111368”, “Term_ID”:“111368”}} GSE111368)识别与临床严重程度相关的轮毂基因。鉴定了总共10基因(PBI,MMP8,TCN1,RETN,OLFM4,ELANE,LTF,LCN2,DEFA4和HP)。单个集线基因的基因设定富集分析(GSEA)显示,这些基因与抗微生物反应和中性粒细胞活性密切相关。为了进一步评估这些基因的诊断/预后疾病发展的能力,我们通过(a)另一个新的独立数据集({“类型”:“entrez-geo”,“attrs”:{“text”:{“text”:{“text” GSE101702“,”term_id“:”101702“}} GSE101702); (b)从住院流感患者收集的血浆样品。我们发现,10个枢纽基因与疾病严重程度高度相关。特别地,BPI和MMP8在血浆中编码蛋白质在严重和死亡情况下实现了更高的表达,这表明了不良疾病的发展,并提出了令人沮丧的预后。这些调查结果为严重流感发病机制提供了新的洞察力,并确定了常规临床指标优于常规临床指标的两个重要候选基因。这些候选基因或编码蛋白质可以是临床诊断和治疗靶标的生物标志物,用于严重流感感染。

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