Title
Detection of Basal Cell Carcinoma Based on Gaussian Prototype Fitting of Confocal Raman Spectra
Abstract
Confocal Raman spectroscopy is known to have strong potential for providing noninvasive dermatological diagnosis of skin cancer. According to the previous work, various well known methods including maximum a posteriori probability classifier (MAP), linear classifier using minimum squared error (MSE) and multi layer perceptron networks classifier (MLP) showed competitive results for basal cell carcinoma (BCC) detection. The experimental results are hard to interpret, however, since the classifiers uses global features obtained by principal component analysis (PCA). In this paper, we propose a method that can identify which regions of the spectra are discriminating for BCC detection. For the purpose, 5 and 7 Gaussian prototypes were built located on the typical peak position of BCC and normal (NOR) tissue spectra respectively. Every spectrum is approximated by a linear combination of the Gaussian prototypes. Decision tree is then applied to identify which prototypes are important for the detection of BCC. Among 12 prototypes, 5 discriminating prototypes were selected and the associated weights were used as an input feature vector. According to the experiments involving 216 confocal Raman spectra, support vector machines (SVM) gave 97.4% sensitivity, which confirms that the peak regions corresponding to the selected features are significant for BCC detection and the proposed fitting method is effective.
Year
DOI
Venue
2007
10.1007/978-3-540-72393-6_146
ISNN (2)
Keywords
Field
DocType
linear combination,posteriori probability classifier,gaussian prototype,basal cell carcinoma,linear classifier,selected feature,confocal raman spectra,input feature vector,confocal raman spectroscopy,gaussian prototype fitting,bcc detection,proposed fitting method,peak region,support vector machine,decision tree,raman spectra,feature vector,principal component analysis,spectrum,raman spectroscopy
Linear combination,Feature vector,Pattern recognition,Support vector machine,Mean squared error,Gaussian,Multilayer perceptron,Artificial intelligence,Maximum a posteriori estimation,Linear classifier,Machine learning,Mathematics
Conference
Volume
ISSN
Citations 
4492
0302-9743
0
PageRank 
References 
Authors
0.34
3
6
Name
Order
Citations
PageRank
SeongJoon Baek110812.18
Aaron Park221.48
Sangki Kang313.06
Yonggwan Won418625.79
Jin Young Kim549781.76
Seung You Na6115.39