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首页> 外文期刊>Gut: Journal of the British Society of Gastroenterology >A novel urine peptide biomarker-based algorithm for the prognosis of necrotising enterocolitis in human infants
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A novel urine peptide biomarker-based algorithm for the prognosis of necrotising enterocolitis in human infants

机译:基于新型尿肽生物标志物的人类婴儿坏死性小肠结肠炎预后算法

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摘要

Objective Necrotising enterocolitis (NEC) is a major source of neonatal morbidity and mortality. The management of infants with NEC is currently complicated by our inability to accurately identify those at risk for progression of disease prior to the development of irreversible intestinal necrosis. We hypothesised that integrated analysis of clinical parameters in combination with urine peptide biomarkers would lead to improved prognostic accuracy in the NEC population. Design Infants under suspicion of having NEC (n=550) were prospectively enrolled from a consortium consisting of eight university-based paediatric teaching hospitals. Twenty-seven clinical parameters were used to construct a multivariate predictor of NEC progression. Liquid chromatography/mass spectrometry was used to profile the urine peptidomes from a subset of this population (n=65) to discover novel biomarkers of NEC progression. An ensemble model for the prediction of disease progression was then created using clinical and biomarker data. Results The use of clinical parameters alone resulted in a receiver-operator characteristic curve with an area under the curve of 0.817 and left 40.1% of all patients in an 'indeterminate' risk group. Three validated urine peptide biomarkers (fibrinogen peptides: FGA1826, FGA1883 and FGA2659) produced a receiver-operator characteristic area under the curve of 0.856. The integration of clinical parameters with urine biomarkers in an ensemble model resulted in the correct prediction of NEC outcomes in all cases tested. Conclusions Ensemble modelling combining clinical parameters with biomarker analysis dramatically improves our ability to identify the population at risk for developing progressive NEC.
机译:目的坏死性小肠结肠炎(NEC)是新生儿发病率和死亡率的主要来源。目前,由于我们无法在不可逆转的肠坏死发生之前无法准确识别出有疾病进展风险的婴儿,因此对NEC婴儿的管理变得复杂。我们假设临床参数结合尿肽生物标志物的综合分析将导致NEC人群预后准确性的提高。怀疑患有NEC(n = 550)的“设计婴儿”是从由八所大学附属儿科教学医院组成的财团中招募的。二十七项临床参数用于构建NEC进展的多变量预测因子。液相色谱/质谱法用于分析该人群的一部分(n = 65)的尿肽,以发现NEC进展的新生物标记。然后使用临床和生物标志物数据创建了用于预测疾病进展的整体模型。结果仅使用临床参数就可得出接收者-操作者特征曲线,曲线下面积为0.817,“不确定”风险组中的所有患者均占40.1%。三种经过验证的尿液肽生物标志物(纤维蛋白原肽:FGA1826,FGA1883和FGA2659)在0.856的曲线下产生了接收者-操作者特征区域。在整体模型中将临床参数与尿液生物标志物整合在一起,可以在所有测试病例中正确预测NEC结果。结论将临床参数与生物标志物分析相结合的集成模型可极大地提高我们识别发展为进行性NEC风险人群的能力。

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