Title of article :
A Mass Spectrometric Analysis Method Based on PPCA and SVM for Early Detection of Ovarian Cancer
Author/Authors :
Wu, Jiang Jilin University - Changchun, China , Ji, Yanju Jilin University - Changchun, China , Zhao, Ling First Hospital - Jilin University - Changchun, China , Ji, Mengying Jilin University - Changchun, China , Ye, Zhuang First Hospital - Jilin University - Changchun, China , Li, Suyi Jilin University - Changchun, China
Pages :
6
From page :
1
To page :
6
Abstract :
Background. Surfaced-enhanced laser desorption-ionization-time of flight mass spectrometry (SELDI-TOF-MS) technology plays an important role in the early diagnosis of ovarian cancer. However, the raw MS data is highly dimensional and redundant. Therefore, it is necessary to study rapid and accurate detection methods from the massive MS data. Methods. The clinical data set used in the experiments for early cancer detection consisted of 216 SELDI-TOF-MS samples. An MS analysis method based on probabilistic principal components analysis (PPCA) and support vector machine (SVM) was proposed and applied to the ovarian cancer early classification in the data set. Additionally, by the same data set, we also established a traditional PCA-SVM model. Finally we compared the two models in detection accuracy, specificity, and sensitivity. Results. Using independent training and testing experiments 10 times to evaluate the ovarian cancer detection models, the average prediction accuracy, sensitivity, and specificity of the PCA-SVM model were 83.34%, 82.70%, and 83.88%, respectively. In contrast, those of the PPCA-SVM model were 90.80%, 92.98%, and 88.97%, respectively. Conclusions. The PPCA-SVM model had better detection performance. an‎d the model combined with the SELDI-TOF-MS technology had a prospect in early clinical detection and diagnosis of ovarian cancer.
Keywords :
SVM , PPCA , SELDI-TOF-MS , PCA-SVM
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2016
Full Text URL :
Record number :
2606732
Link To Document :
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