Artificial intelligence

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ISSN 2710-1673

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Classification of Maldi-tof Mass Spectrometry Data in the Analysis of Cancer Patients

Plechawska M.1
1 Lublin University of Technology

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UDC: 65.011
Publication Language: English
Stuc. intelekt. 2010; 15(3):45-52

Abstract: The article presents a case study of Maldi-Tof (Matrix-Assisted Laser Desorption Ionization – Time Of Flight) data analysis and classification. Row mass spectrometry data are preprocessed and decomposed with Gaussian Mixture Model. Gaussian mask is calculated and put at all spectra separately. In further dimension reduction RFE, PLS and T test are used. The classification is done with Support Vector Machine (SVM) method with Gaussian Radial Basis Function kernel.

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