E-learning 2. Analýza dat 2.3. Analýza vysokohustotních proteomických dat 2.3.2. Hmotnostní spektrometrie 2.3.2.5. Poděkování a reference

Poděkování

Děkuji Davidu Cairns (MRC Research Fellow in Biostatistics), Roz Banks (Professor of Biomedical Proteomics) a Dave Perkins (Principal Research Scientist in Bioinformatics) z Ústavu Epidemiologie a Biostatistiky a výzkumné skupině klinické proteomiky, Institutu molekulární medicíny, Univerzity v Leeds, UK a Výzkumnému centru rakoviny UK za financování.

References

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Barrett JH and Cairns DA. Application of the Random Forest Classification Method to Peaks Detected from Mass Spectrometric Proteomic Profiles of Cancer Patients and Controls. Statistical Applications in Genetics and Molecular Biology 2008, 7(2), Article 4.

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Cairns DA, Barrett JH, Billingham LJ, Stanley AJ, Xinarianos G, Field JK, Johnson PJ, Selby PJ and Banks RE. Sample size determination in clinical proteomic profiling experiments using mass spectrometry for class comparison. Proteomics, 2009; 9:74-86.

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