基于特征选择的数据挖掘方法识别不稳定心绞痛住院患者的代谢物生物标志物

Huihui Zhao, Jianxin Chen, Na Hou, Chenglong Zheng, Wei Wang
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引用次数: 2

摘要

不稳定型心绞痛(UA)是一种最危险的冠心病(CHD),在世界范围内引起越来越多的死亡率和发病率。在代谢组学水平上鉴定UA的生物标志物是了解其内在机制的较好途径。我们对UA住院患者和对照组进行临床流行病学采集血浆。代谢组学数据通过气相色谱技术获得。我们提出了一种新的计算策略,在数据中选择尽可能少的生物标志物。我们结合独立t检验和基于分类的数据挖掘方法以及反向消除技术,尽可能少地选择具有最佳分类性能的代谢物生物标志物。通过这种新方法,我们选择了5种UA代谢物。相关的生物医学文献支持这一发现。这里提出的新方法提供了一个更好的洞察疾病的病理。基于特征选择的数据挖掘方法更适合UA生物标志物的识别
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Metabolite Biomarkers in Unstable Angina In-Patients by Feature Selection Based Data Mining Methods
Unstable angina (UA) is a most dangerous type of Coronary Heart Disease (CHD) that causing more and more mortality and morbidity world wide. Identification of biomarkers for UA in the level of metabolomics is a better avenue to understand the inner mechanism of it. We carried out clinical epidemiology to collect plasmas of UA in-patients and controls. Metabolomics data are obtained by gas chromatography techniques. We presented a novel computational strategy to select biomarkers as few as possible for UA in the data. We combined independent t test and classification based data mining methods as well as backward elimination technique to select as few as possible metabolite biomarkers with best classification performances. By the novel method, we select five metabolites for UA. The associated biomedical literatures support the finding. The novel method presented here provides a better insight into the pathology of a disease. Feature selection based data mining methods better suit to identifying biomarkers for UA
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