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Newborn Screening System Based on Adaptive Feature Selection and Support Vector Machines

机译:基于自适应特征选择和支持向量机的新生儿筛查系统

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The clinical symptoms of metabolic disorders during neonatal period are often not apparent, if not treated early irreversible damages such as mental retardation may occur, even death. Therefore, practicing newborn screening is very important to prevent neonatal from these damages. In this paper, the newborn screening system used support vector machines (SVM) classification technique is proposed in place of cut-off value decision to evaluate the metabolic substances concentration raw data obtained from tandem mass spectrometry (MS/MS) and determine whether the newborn has some kinds of metabolic disorder diseases. On the basis of the proposed features, new analytic combinations are identified with superior discriminatory performance compared with the best published combinations. Classifiers built with the feature selection to find C3/C2, C3 and C16 of three key point features achieved diagnostic sensitivities, specificities and accuracy approaching 100%.
机译:新生儿期间代谢障碍的临床症状往往是不明显的,如果未治疗早期的不可逆转损害,例如精神迟缓可能发生,甚至死亡。因此,练习新生儿筛查对于防止新生儿来防止这些损害非常重要。在本文中,提出了使用支持向量机(SVM)分类技术的新生儿筛选系统代替截止值决定评估从串联质谱(MS / MS)获得的代谢物质浓度原料数据并确定新生儿是否有一些新陈代谢紊乱的疾病。在拟议的特征的基础上,与最佳出版的组合相比,新的分析组合以卓越的歧视性能确定。使用特征选择构建的分类器以查找三个关键点特征的C3 / C2,C3和C16,实现了100%的诊断敏感性,特殊性和准确性。

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