基于表面增强拉曼散射的细菌性脑膜炎病原菌的混合SVM/CART分类

Chung-Yueh Huang, Tsung-Heng Tsai, Bing-Cheng Wen, Chia-Wen Chung, Yung-Jui Li, Ya-Ching Chuang, Wen-Jie Lin, Li-Li Li, Juen-Kai Wang, Yuh‐Lin Wang, Chi-Hung Lin, Da-Wei Wang
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引用次数: 3

摘要

细菌性脑膜炎仍然是一种危及生命的疾病,病原的早期诊断对提高生存率至关重要。利用本小组开发的表面增强拉曼散射(SERS)平台,可以根据病原体的SERS光谱进行区分,认为这些光谱与病原体的表面化学成分有关。我们采集了10种病原菌的SERS光谱:肺炎链球菌(Spn)、无乳链球菌(B群链球菌,GBS)、金黄色葡萄球菌(Sa)、铜绿假单胞菌(Psa)、鲍曼不动杆菌(Ab)、肺炎克雷伯菌(Kp)、脑膜炎奈瑟菌(Nm)、单核增生李斯特菌(Lm)、流感嗜血杆菌(Hi)和大肠杆菌(E. coli)。这些样本来自台湾大学附属医院的病人,并被认为代表了临床病原体的真正多样性。使用支持向量机(SVM)方法,分类准确率可以达到88%左右。然而,我们注意到SVM不能区分[E。大肠杆菌,Kp]和[Sa, Hi],因为这两组病原体的全球特征非常相似。因此,我们采用了一种分类树方法,可以关注分类规则中的局部差异。这将准确率提高到90%。为了更好地理解SERS信号,我们还比较了其他几种分类方法。此外,还讨论了试图解释分类器失败或成功原因的规则提取方法。我们的初步结果是有趣的,令人鼓舞的,并等待更彻底的调查。
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Hybrid SVM/CART classification of pathogenic species of bacterial meningitis with surface-enhanced Raman scattering
Bacterial meningitis is still a life-threatening disease, and early diagnosis of pathogen can be crucial to improving survival rate. Using the surface-enhanced Raman scattering (SERS) platform developed by our group, the pathogens can be differentiated on the basis of their SERS spectra which are believed to related to their surface chemical components. We collected the SERS spectra of ten pathogens: Streptococcus pneumoniae(Spn), Streptococcus agalactiae (group B streptococcus, GBS), Staphylococcus aureus (Sa), Pseudomonas aeruginosae (Psa), Acinetobacter baumannii (Ab), Klebsiella pneumoniae (Kp), Neisseria meningitidis (Nm), Listeria monocy-togenes (Lm), Haemophilus influenzae (Hi), and Escherichia coli (E. coli). These samples were obtained from patients in National Taiwan University Hospital, and were believed to represent the real diversity of clinical pathogens. Using the support vector machine (SVM) method, the classification accuracy can achieve around 88%. However, we noted that SVM cannot distinguish between [E. coli, Kp] and [Sa, Hi] due to the fact that the global features of these two groups of pathogens are very similar. We therefore incorporated a classification tree method that can focus on local differences in classification rules. This improved the accuracy to 90%. To get a better understanding of the SERS signals, we also compared several other classification methods. In addition, rule extraction method which attempts to explain why classifier fail or succeed is also discussed. Our preliminary results are interesting, encouraging, and await more thorough investigation.
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