OBJECTIVE: To develop a new bioinformatic tool based on a data-mining approach for extraction of the most informative proteins that could be used to find the potential biomarkers for the detection of cancer. METHODS: Two independent datasets from serum samples of 253 ovarian cancer and 167 breast cancer patients were used. The samples were examined by surface-enhanced laser desorption/ionization time-of-flight mass spectrometry (SELDI-TOF MS). The datasets were used to extract the informative proteins using a data-mining method in the discrete stationary wavelet transform domain. As a dimensionality reduction procedure, the hard thresholding method was applied to reduce the number of wavelet coefficients. Also, a distance measure was used to select the most discriminative coefficients. To find the potential biomarkers using the selected wavelet coefficients, we applied the inverse discrete stationary wavelet transform combined with a two-sided t-test. RESULTS: From the ovarian cancer dataset, a set of five proteins were detected as potential biomarkers that could be used to identify the cancer patients from the healthy cases with accuracy, sensitivity, and specificity of 100%. Also, from the breast cancer dataset, a set of eight proteins were found as the potential biomarkers that could separate the healthy cases from the cancer patients with accuracy of 98.26%, sensitivity of 100%, and specificity of 95.6%. CONCLUSION: The results have shown that the new bioinformatic tool can be used in combination with the high-throughput proteomic data such as SELDI-TOF MS to find the potential biomarkers with high discriminative power.
OBJECTIVE: To develop a new bioinformatic tool based on a data-mining approach for extraction of the most informative proteins that could be used to find the potential biomarkers for the detection of cancer. METHODS: Two independent datasets from serum samples of 253 ovarian cancer and 167 breast cancerpatients were used. The samples were examined by surface-enhanced laser desorption/ionization time-of-flight mass spectrometry (SELDI-TOF MS). The datasets were used to extract the informative proteins using a data-mining method in the discrete stationary wavelet transform domain. As a dimensionality reduction procedure, the hard thresholding method was applied to reduce the number of wavelet coefficients. Also, a distance measure was used to select the most discriminative coefficients. To find the potential biomarkers using the selected wavelet coefficients, we applied the inverse discrete stationary wavelet transform combined with a two-sided t-test. RESULTS: From the ovarian cancer dataset, a set of five proteins were detected as potential biomarkers that could be used to identify the cancerpatients from the healthy cases with accuracy, sensitivity, and specificity of 100%. Also, from the breast cancer dataset, a set of eight proteins were found as the potential biomarkers that could separate the healthy cases from the cancerpatients with accuracy of 98.26%, sensitivity of 100%, and specificity of 95.6%. CONCLUSION: The results have shown that the new bioinformatic tool can be used in combination with the high-throughput proteomic data such as SELDI-TOF MS to find the potential biomarkers with high discriminative power.
Authors: Dariya I Malyarenko; William E Cooke; Bao-Ling Adam; Gunjan Malik; Haijian Chen; Eugene R Tracy; Michael W Trosset; Maciek Sasinowski; O John Semmes; Dennis M Manos Journal: Clin Chem Date: 2004-11-18 Impact factor: 8.327
Authors: Jeffrey S Morris; Kevin R Coombes; John Koomen; Keith A Baggerly; Ryuji Kobayashi Journal: Bioinformatics Date: 2005-01-26 Impact factor: 6.937
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Authors: Kevin R Coombes; Spiridon Tsavachidis; Jeffrey S Morris; Keith A Baggerly; Mien-Chie Hung; Henry M Kuerer Journal: Proteomics Date: 2005-11 Impact factor: 3.984
Authors: Xuegong Zhang; Xin Lu; Qian Shi; Xiu-Qin Xu; Hon-Chiu E Leung; Lyndsay N Harris; James D Iglehart; Alexander Miron; Jun S Liu; Wing H Wong Journal: BMC Bioinformatics Date: 2006-04-10 Impact factor: 3.169