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Feature selection and classification of urinary mRNA microarray data by iterative random forest to diagnose renal fibrosis: a two-stage study

机译:迭代随机森林对尿mRNA基因芯片数据进行特征选择和分类以诊断肾纤维化的两阶段研究

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摘要

Renal fibrosis is a common pathological pathway of progressive chronic kidney disease (CKD). However, kidney function parameters are suboptimal for detecting early fibrosis, and therefore, novel biomarkers are urgently needed. We designed a 2-stage study and constructed a targeted microarray to detect urinary mRNAs of CKD patients with renal biopsy and healthy participants. We analysed the microarray data by an iterative random forest method to select candidate biomarkers and produce a more accurate classifier of renal fibrosis. Seventy-six and 49 participants were enrolled into stage I and stage II studies, respectively. By the iterative random forest method, we identified a four-mRNA signature in urinary sediment, including TGFβ1, MMP9, TIMP2, and vimentin, as important features of tubulointerstitial fibrosis (TIF). All four mRNAs significantly correlated with TIF scores and discriminated TIF with high sensitivity, which was further validated in the stage-II study. The combined classifiers showed excellent sensitivity and outperformed serum creatinine and estimated glomerular filtration rate measurements in diagnosing TIF. Another four mRNAs significantly correlated with glomerulosclerosis. These findings showed that urinary mRNAs can serve as sensitive biomarkers of renal fibrosis, and the random forest classifier containing urinary mRNAs showed favourable performance in diagnosing early renal fibrosis.
机译:肾纤维化是进行性慢性肾脏病(CKD)的常见病理途径。然而,肾功能参数对于检测早期纤维化是次优的,因此,迫切需要新的生物标记。我们设计了一个2期研究并构建了靶向微阵列,以检测患有肾脏活检和健康参与者的CKD患者的尿液mRNA。我们通过迭代随机森林方法分析了微阵列数据,以选择候选生物标志物并产生更准确的肾纤维化分类器。分别有76名和49名参与者参加了I期和II期研究。通过迭代随机森林方法,我们确定了尿沉渣中的四个mRNA表达,包括TGFβ1,MMP9,TIMP2和波形蛋白,是肾小管间质纤维化(TIF)的重要特征。所有四种mRNA与TIF得分均显着相关,并以高灵敏度区分了TIF,这在II期研究中得到了进一步验证。组合的分类器在诊断TIF时显示出极好的敏感性,表现优于血清肌酐,并估计肾小球滤过率。另外四个mRNA与肾小球硬化显着相关。这些发现表明,尿mRNAs可以作为肾纤维化的敏感生物标志物,而含有尿mRNA的随机森林分类器在诊断早期肾纤维化方面表现出良好的表现。

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