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首页> 外文期刊>Scientific reports. >Assessing the Protective Metabolome Using Machine Learning in World Trade Center Particulate Exposed Firefighters at Risk for Lung Injury
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Assessing the Protective Metabolome Using Machine Learning in World Trade Center Particulate Exposed Firefighters at Risk for Lung Injury

机译:在世界贸易中心颗粒中的机器学习评估保护性代谢物暴露的消防员肺损伤风险

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The metabolome of World Trade Center (WTC) particulate matter (PM) exposure has yet to be fully defined and may yield information that will further define bioactive pathways relevant to lung injury. A subset of Fire Department of New York firefighters demonstrated resistance to subsequent loss of lung function. We intend to characterize the metabolome of never smoking WTC-exposed firefighters, stratified by resistance to WTC-Lung Injury (WTC-LI) to determine metabolite pathways significant in subjects resistant to the loss of lung function. The global serum metabolome was determined in those resistant to WTC-LI and controls (n?=?15 in each). Metabolites most important to class separation (top 5% by Random Forest (RF) of 594 qualified metabolites) included elevated amino acid and long-chain fatty acid metabolites, and reduced hexose monophosphate shunt metabolites in the resistant cohort. RF using the refined metabolic profile was able to classify cases and controls with an estimated success rate of 93.3%, and performed similarly upon cross-validation. Agglomerative hierarchical clustering identified potential influential pathways of resistance to the development of WTC-LI. These pathways represent potential therapeutic targets and warrant further research.
机译:世界贸易中心(WTC)颗粒物质(PM)暴露的代谢物尚未得到完全定义,可以产生进一步定义与肺损伤相关的生物活性途径的信息。纽约消防队员消防部门的一部分证明了对随后的肺功能丧失的抵抗力。我们打算表征从未吸烟的后造出的WTC暴露的消防员的代谢物,通过抵抗WTC-LING损伤(WTC-LI)来确定抗肺功能丧失的受试者中显着的代谢物途径。在对WTC-Li的耐抗性和对照中测定全球血清代谢物(n?=Δ15)。代谢产物对类别分离最重要(594个合格代谢物的随机森林(RF)的前5%)包括升高的氨基酸和长链脂肪酸代谢物,并在耐药队中减少了己糖单磷酸盐分流代谢物。 RF使用精细的代谢型材能够对案例和控制进行分类,估计的成功率为93.3%,并在交叉验证时进行类似地进行。附聚层次聚类确定了抗WTC-Li发育的潜在影响途径。这些途径代表潜在的治疗目标和认股权证进一步研究。

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