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Machine Learning and Bioinformatics Models to Identify Pathways that Mediate Influences of Welding Fumes on Cancer Progression

机译:机器学习和生物信息学模型,以识别介绍焊接烟雾对癌症进展影响的途径

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Welding generates and releases fumes that are hazardous to human health. Welding fumes (WFs) are a complex mix of metallic oxides, fluorides and silicates that can cause or exacerbate health problems in exposed individuals. In particular, WF inhalation over an extended period carries an increased risk of cancer, but how WFs may influence cancer behaviour or growth is unclear. To address this issue we employed a quantitative analytical framework to identify the gene expression effects of WFs that may affect the subsequent behaviour of the cancers. We examined datasets of transcript analyses made using microarray studies of WF-exposed tissues and of cancers, including datasets from colorectal cancer (CC), prostate cancer (PC), lung cancer (LC) and gastric cancer (GC). We constructed gene-disease association networks, identified signaling and ontological pathways, clustered protein-protein interaction network using multilayer network topology, and analyzed survival function of the significant genes using Cox proportional hazards (Cox PH) model and product-limit (PL) estimator. We observed that WF exposure causes altered expression of many genes (36, 13, 25 and 17 respectively) whose expression are also altered in CC, PC, LC and GC. Gene-disease association networks, signaling and ontological pathways, protein-protein interaction network, and survival functions of the significant genes suggest ways that WFs may influence the progression of CC, PC, LC and GC. This quantitative analytical framework has identified potentially novel mechanisms by which tissue WF exposure may lead to gene expression changes in tissue gene expression that affect cancer behaviour and, thus, cancer progression, growth or establishment.
机译:焊接产生并释放对人类健康有害的烟雾。焊接烟雾(WFS)是金属氧化物,氟化物和硅酸盐的复杂混合物,可导致暴露的个体中的健康问题引起或加剧健康问题。特别是,在延长时期的WF吸入患癌症的风险增加,但WFS如何影响癌症行为或增长尚不清楚。为了解决这个问题,我们使用定量分析框架来鉴定WFS可能影响癌症后续行为的基因表达效果。我们检查了使用WF暴露组织和癌症的微阵列研究进行的转录物分析数据集,包括来自结肠直肠癌(CC),前列腺癌(PC),肺癌(LC)和胃癌(GC)的数据集。我们通过多层网络拓扑结构构建了基因疾病关联网络,确定的信号和本体途径,聚类蛋白质 - 蛋白质相互作用网络,并使用COX比例危害(COX pH)模型和产品限制(PL)估计器分析了显着基因的存活函数。我们观察到,WF暴露会导致许多基因的表达改变,其表达在CC,PC,LC和GC中也改变。基因疾病协会网络,信号传导和本体途径,蛋白质蛋白质相互作用网络和显着基因的存活功能表明WFS可能影响CC,PC,LC和GC的进展。这种定量分析框架已经确定了组织WF暴露可能导致组织基因表达的组织基因表达的变化,这些定量分析框架鉴定了影响癌症行为的组织基因表达的变化,因此,癌症进展,生长或建立。

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