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A new data mining approach for profiling and categorizing kinetic patterns of metabolic biomarkers after myocardial injury

机译:一种新的数据挖掘方法用于对心肌损伤后代谢生物标志物的动力学模式进行分析和分类

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摘要

>Motivation: The discovery of new and unexpected biomarkers in cardiovascular disease is a highly data-driven process that requires the complementary power of modern metabolite profiling technologies, bioinformatics and biostatistics. Clinical biomarkers of early myocardial injury are lacking. A prospective biomarker cohort study was carried out to identify, categorize and profile kinetic patterns of early metabolic biomarkers of planned myocardial infarction (PMI) and spontaneous (SMI) myocardial infarction. We applied a targeted mass spectrometry (MS)-based metabolite profiling platform to serial blood samples drawn from carefully phenotyped patients undergoing alcohol septal ablation for hypertrophic obstructive cardiomyopathy serving as a human model of PMI. Patients with SMI and patients undergoing catheterization without induction of myocardial infarction served as positive and negative controls to assess generalizability of markers identified in PMI.>Results: To identify metabolites of high predictive value in tandem mass spectrometry data, we introduced a new feature selection method for the categorization of metabolic signatures into three classes of weak, moderate and strong predictors, which can be easily applied to both paired and unpaired samples. Our paradigm outperformed standard null-hypothesis significance testing and other popular methods for feature selection in terms of the area under the receiver operating curve and the product of sensitivity and specificity. Our results emphasize that this new method was able to identify, classify and validate alterations of levels in multiple metabolites participating in pathways associated with myocardial injury as early as 10 min after PMI.>Availability: The algorithm as well as is available for download at: >Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:在心血管疾病中发现新的和出乎意料的生物标记物是一个高度数据驱动的过程,需要现代代谢物分析技术,生物信息学和生物统计学的互补作用。缺乏早期心肌损伤的临床生物标志物。进行了一项前瞻性生物标志物队列研究,以鉴定,分类和描述计划性心肌梗死(PMI)和自发性(SMI)心肌梗死的早期代谢生物标志物的动力学模式。我们应用了基于目标质谱(MS)的代谢物谱分析平台,以对从表型明确的患者(接受酒精中隔消融治疗肥厚性梗阻性心肌病,作为PMI的人类模型)采集的系列血液样本进行分析。 SMI患者和未进行心肌梗塞诱导的导管插入患者作为阳性和阴性对照,以评估在PMI中鉴定出的标记的通用性。>结果:在串联质谱数据中鉴定具有高预测价值的代谢物介绍了一种新的特征选择方法,用于将代谢特征分类为弱,中和强三类预测因子,可以轻松应用于配对和非配对样本。就接收器工作曲线下的面积以及灵敏度和特异性的乘积而言,我们的范例优于标准的零假设重要性检验和其他流行的特征选择方法。我们的结果强调,这种新方法能够早在PMI后10分钟就能够识别,分类和验证参与心肌损伤相关途径的多种代谢产物的水平变化。>可用性:可从以下地址下载:>联系方式: >补充信息:可在线访问生物信息学。

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