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Comprehensive urinary metabolomic characterization of a genetically induced mouse model of prostatic inflammation

机译:遗传诱导的前列腺炎症小鼠模型的综合尿代谢特征

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Dysfunction of the lower urinary tract commonly afflicts the middle-aged and aging male population. The etiology of lower urinary tract symptoms (LUTS) is multifactorial. Benign prostate hyperplasia, fibrosis, smooth muscle contractility, and inflammation likely contribute. Here we aim to characterize the urinary metabolomic profile associated with prostatic inflammation, which could inform future personalized diagnosis or treatment, as well as mechanistic research. Quantitative urinary metabolomics was conducted to examine molecular changes following induction of inflammation via conditional Interleukin-1 beta expression in prostate epithelia using a novel transgenic mouse strain. To advance method development for urinary metabolomics, we also compared different urine normalization methods and found that normalizing urine samples based on osmolality prior to LC-MS most completely separated urinary metabolite profiles of mice with and without prostate inflammation via principal component analysis. Global metabolomics was combined with advanced machine learning feature selection and classification for data analysis. Key dysregulated metabolites and pathways were identified and were relevant to prostatic inflammation, some of which overlapped with our previous study of human LUTS patients. A binary classification model was established via the support vector machine algorithm to accurately differentiate control and inflammation groups, with an area-under-the-curve value of the receiver operating characteristic of 0.81, sensitivity of 0.974 and specificity of 0.995, respectively. This study generated molecular profiles of non-bacterial prostatic inflammation, which could assist future efforts to stratify LUTS patients and develop new therapies. (C) 2018 Elsevier B.V. All rights reserved.
机译:下泌尿道的功能障碍通常折磨中年和老化的男性人口。低尿路症状(LUT)的病因是多因素。良性前列腺增生,纤维化,平滑肌收缩性和炎症可能有所贡献。在这里,我们的目标是表征与前列腺炎症相关的尿代谢形式,可以为未来的个性化诊断或治疗以及机械研究。进行了定量尿代谢物,以使用新的转基因小鼠菌株通过条件白细胞介素-1β诱导诱导炎症后的分子变化。为了推进尿代谢组合的方法,我们也比较了不同的尿常规化方法,发现基于LC-MS最完全分离的小鼠的渗透压尿液中的尿液样品,通过主成分分析,没有前列腺炎症的小鼠。全球代谢组合与先进的机器学习功能选择和分类相结合,以进行数据分析。鉴定了关键的呼吸困难的代谢物和途径,与前列腺炎症有关,其中一些与我们对人类LUT患者的研究一起重叠。通过支持向量机算法建立二进制分类模型,以精确地分化控制和炎症组,接收器的曲线值为0.81的曲线值,0.974的灵敏度分别为0.995的特异性。该研究产生了非细菌前列腺炎症的分子谱,这可以帮助未来努力分层LUT患者并开发新的疗法。 (c)2018 Elsevier B.v.保留所有权利。

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