Title
Data mining methods of lung cancer diagnosis by saliva tests using surface enhanced Raman spectroscopy
Abstract
Surface Enhanced Raman Spectroscopy (SERS) is a trace amount substance detecting technique developing quickly in recent years. In this paper, the saliva SERS spectrum of 59 lung cancer patients and 18 normal people were measured, and analyzed with data mining technology and the traditional statistical classification methods. The data were established by the Support Vector Machine (SVM), Random Forests algorithm (RF) and Fisher discriminant model, and discussed the auxiliary diagnosis efficiency for lung cancer with the models. The diagnosis indexes of the SVM and RF algorithm are higher than Fisher discriminant analysis, and it can be thought that they are judging the optimal classification model of lung cancer. Compared with the healthy people, the results show that the study on diagnosis of the lung cancer by SERS on data mining can be a new type of the lung cancer diagnosis tool.
Year
DOI
Venue
2014
10.1109/BMEI.2014.7002849
BMEI
Keywords
Field
DocType
lung cancer,saliva tests,surface enhanced raman spectroscopy,saliva sers spectrum,random processes,statistical analysis,random forest algorithm,surface enhanced raman scattering,statistical classification methods,lung,svm algorithm,fisher discriminant model,cancer,data mining,saliva,surface-enhanced raman spectroscopy,auxiliary diagnosis efficiency,medical diagnostic computing,rf algorithm,data mining technology,lung cancer patient diagnosis,patient diagnosis,support vector machines,classification algorithms,raman scattering
Saliva testing,Lung cancer,Data mining,Pattern recognition,Computer science,Surface-enhanced Raman spectroscopy,Support vector machine,Artificial intelligence,Linear discriminant analysis,Statistical classification,Random forest,Cancer
Conference
Citations 
PageRank 
References 
0
0.34
4
Authors
7
Name
Order
Citations
PageRank
Wenyan Liu100.34
Ziyan Man200.34
Lin Hua301.35
Anyu Chen400.34
Yan Wang58011.28
Kun Qian600.34
Yi Zhang700.34