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尿液中常见毒品微量检测的表面增强拉曼光谱识别; Surface Enhanced Raman Scattering Spectrum Recognition for Trace Detection of Common Drugs in Urine
王磊 ; 郭淑霞 ; 戴吟臻 ; 杨良保 ; 刘国坤
2015-01-15
关键词拉曼光谱 滤波 小波变换 支持向量机 Raman spectrum Smoothing Wavelet transform Support vector machine
英文摘要通过将自适应平滑滤波器和结合小波变换的支持向量机(SuPPOrT VECTOr MACHInE,SVM)分类器有机组合,建立了低信噪比拉曼光谱的模式识别方法。首先,通过自适应平滑滤波器进行光谱去噪,滤波窗口宽度根据信噪比估计值进行调整,从而在保证特征峰信号强度的同时达到更好的噪声滤波效果;其次,由小波变换实现光谱数据降维,通过小波分解层数优化可以获得训练集的最佳分类准确率;最后,由SVM进行分类,通过交叉验证(CrOSS VAlIdATIOn,CV)实现SVM参数寻优,并根据交叉验证与分类器之间的准确率关系,得出分类器可用参数需满足的条件。基于表面增强拉曼光谱技术,本方法实现了人体尿液中甲基苯丙胺(METHAMPHETAMInE,MAMP)和亚甲基二氧基甲基苯丙胺(3,4-METHylEnEdIO-XyMETHAMPHETAMInE,MdMA)的定性微量分析。实验使用中国科学院合肥智能机械研究所研发的金纳米棒拉曼光谱增强基底,由dElTA nu公司的InSPECTOr型便携拉曼光谱仪采集光谱,激发光波长785 nM,曝光时间为5 S,整体检测准确率高于95.0%。; Assembling an adapted smoothing method and a classifier of wavelet transform combined support vector machine( SVM),a Raman spectrum recognition approach was built for low signal noise ratio situation.Firstly,spectra data were denoised by the adapted smoothing method.The smoothing window was adapted to the signal noise ratio,which would effectively remove noise with the intensity of the signal well remained.Secondly,the wavelet transform was used for dimension reduction of the data.The decomposition level of wavelet transform was optimized according to the best classification result of the training set.Lastly,SVM was used for classification.Cross Validation( CV) was applied to obtain the optimized parameters of SVM.Conditions for the effective parameters were searched considering the relation between the cross-validation result and the classification accuracy.Combined with the surface enhanced Raman scattering( SERS)technology,the developed spectrum recognition approach was used for qualitative analysis of methamphetamine( MAMP) and 3,4-methylenedioxymethamphetamine( MDMA) in people' s urine,where the detecting accuracy is above 95.0%.The uniform Au nanorods( NRs) SERS substrate synthetized by the Hefei Institute of Intelligent Machines of Chinese Academy of Sciences was used for the experiment.Raman spectra were acquired using an Inspector Raman( Delta Nu) spectrometer,with the excitation wavelength of 785 nm and the integrate time of 5 seconds.; 国家重大科学仪器设备开发专项(No.2011YQ030124); 国家自然科学基金(No.21373173)资助项目~~
语种zh_CN
内容类型期刊论文
源URL[http://dspace.xmu.edu.cn/handle/2288/105943]  
专题航空航天-已发表论文
推荐引用方式
GB/T 7714
王磊,郭淑霞,戴吟臻,等. 尿液中常见毒品微量检测的表面增强拉曼光谱识别, Surface Enhanced Raman Scattering Spectrum Recognition for Trace Detection of Common Drugs in Urine[J],2015.
APA 王磊,郭淑霞,戴吟臻,杨良保,&刘国坤.(2015).尿液中常见毒品微量检测的表面增强拉曼光谱识别..
MLA 王磊,et al."尿液中常见毒品微量检测的表面增强拉曼光谱识别".(2015).
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