Title of article
Bagged super wavelets reduction for boosted prostate cancer classification of seldi-tof mass spectral serum profiles
Author/Authors
Donald، نويسنده , , David C. Hancock، نويسنده , , Tim and Coomans، نويسنده , , Danny and Everingham، نويسنده , , Yvette، نويسنده ,
Issue Information
دوفصلنامه با شماره پیاپی سال 2006
Pages
6
From page
2
To page
7
Abstract
Wavelet based analysis for mass spectrometry (MS) profiles of three groups of patients are analyzed for the purpose of developing a classification model. The first step in our model uses a DWT for feature extraction, using a linear combination of Symlets, Daubechies and Coiflets wavelet bases – collectively known as a super wavelet. Random Forests and Treeboost are then used to analyze the super wavelet coefficients to form the classification model. The method is illustrated using the publicly available prostate SELDI-TOF MS data from the American National Cancer Institute (NCI). The NCI data consists of 322 MS profiles with 15154 M / Z ratios, comprising of 69 malignant, 190 benign and 63 control patients, which we randomly divided into 70% training and 30% testing. From the Random Forest models, the super wavelet performed 2.7% to 5.7% better than other single wavelet types to give a 100% test set prediction rate for cancerous patients.
Journal title
Chemometrics and Intelligent Laboratory Systems
Serial Year
2006
Journal title
Chemometrics and Intelligent Laboratory Systems
Record number
1461597
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