JIANG Shengli, ZHANG Junying, XU Jin. A New Method for Recognition Proteomic Mass spectrometry Data Using Double-Time Projections[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2009,48(6):27-32.
JIANG Shengli, ZHANG Junying, XU Jin. A New Method for Recognition Proteomic Mass spectrometry Data Using Double-Time Projections[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2009,48(6):27-32.DOI:
The use of mass spectrometry as a proteomics tool is poised to revolutionize early disease diagnosis and treat. Unfortunately
due to existing “the curse of dimensionality”
most standard machine learning techniques cannot be directly applied to recognition proteomic mass spectrometry
and these methods also faced with the problem of poor recognition performance. For better efficiency to use principal component analysis (PCA) and local linear discriminant embedding (LLDE) for face recognition
a Double-Time Projections method and a Modified Double-Time Projections method are proposed for recognition proteomic mass spectrometry. The proposed methods first do denoising and dimension reduction by T-test
and then obtain first projection feature vectors with minimum mean square error and get second projection feature vectors with maximum separability. Finally
preprocessed data are projected in the sub space based on two feature vectors and
are classified. The experimental result from the dataset of ovarian cancer proteomic mass spectrometry indicates that the proposed methods have a better accuracy than available methods.
关键词
蛋白质谱主分量分析局部线性嵌入最大边界准则模式识别
Keywords
proteomic mass spectrometryprincipal component analysislocally linear embeddingmaximum margin criterionpattern recognition