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首页> 外文期刊>Talanta: The International Journal of Pure and Applied Analytical Chemistry >Simultaneous detection of multiple inherited metabolic diseases using GC-MS urinary metabolomics by chemometrics multi-class classification strategies
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Simultaneous detection of multiple inherited metabolic diseases using GC-MS urinary metabolomics by chemometrics multi-class classification strategies

机译:通过Chemometrics多级分类策略同时使用GC-MS尿代谢组学同时检测多重遗传的代谢疾病

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摘要

Metabonomics has been widely used in disease diagnosis and clinically practical methods often require the detection of multi-class bio-samples. In this work, multi-class classification methods were investigated to simultaneously discriminate among 6 inherited metabolic diseases (IMDs) and the normal instances using gas chromatography-mass spectrometry (GC-MS) of urine samples. Two common multi-class classification strategies, one-against-all (OAA) and one-against-one (OAO) were compared and enhanced using a novel ensemble classification strategy (ECS), which developed a set of sequential sub-classifiers by fusion of OAA and OAO and made the final classification decisions using softmax function. GC-MS data of 240 instances of 6 IMDs and healthy controls were classified by different strategies based on orthogonal partial least squares discriminant analysis (OPLS-DA) and particle swarm optimization (PSO) algorithm was performed for feature selection. By OAA and OAO, the classification accuracies were 70.00% and 82.86%, respectively. Using the two methods based on ECS, the total classification accuracies were 0.9143 and 0.9429. The newly proposed ECS will provide a useful multi class classification tool for simultaneous detection of clinically similar IMDs and promote practical and reliable diagnosis of IMDs using metabonomics data.
机译:代谢农学学已广泛用于疾病诊断和临床实践方法通常需要检测多级生物样本。在这项工作中,研究了多级分类方法,同时使用尿液样品的气相色谱 - 质谱(GC-MS)在6个遗传的代谢疾病(IMDS)和正常情况下判别。使用新的集合分类策略(ECS)进行比较和增强两个常见的多级分类策略,一体化的多级分类策略,一个反对 - 所有(OAA)和一个反对一(OAO),并通过融合开发了一组连续的子分类器OAA和OAO,使用Softmax功能进行了最终分类决策。通过基于正交部分最小二乘判别分析(OPLS-DA)和粒子群优化(PSO)算法进行特征选择,通过基于正交部分最小二乘判别分析(OPLS-DA)和粒子群优化(PSO)算法进行分类的GC-MS数据。通过OAA和OAO,分类准确性分别为70.00%和82.86%。使用基于ECS的两种方法,总分类精度为0.9143和0.9429。新建议的ECS将提供有用的多级分类工具,用于同时检测临床相似的IMD,并使用代谢族数据促进IMD的实际和可靠的诊断。

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