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Комплексные методы спектрального анализа MALDI-TOF данных
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УДК: 65.011
Мова публікації: Англійська
Stuc. intelekt. 2011; 16; (4):10-18
Анотація: The article presents a review of methods of MALDI-TOF data. There are many steps of mass spectrometry data analysis. It is complex task and it should cover several platforms. It is important to do comprehensive analysis to obtain useful results. The analysis should cover preprocessing and signals analysis, databases searching and peaks classification.
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Посилання:
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