Improved candidate biomarker detection based on mass spectrometry data using the hilbert-huang transform

Li Ching Wu, Ping Heng Hsieh, Jorng Tzong Horng, Yu Jen Jou, Chia Der Lin, Kuang Fu Cheng, Cheng Wen Lin, Shih Yin Chen

Research output: Contribution to journalArticlepeer-review

Abstract

Mass spectrometry biomarker discovery may assist patient's diagnosis in time and realize the characteristics of new diseases. Our previous work built a preprocess method called HHTmass which is capable of removing noise, but HHTmass only a proof of principle to be peak detectable and did not tested for peak reappearance rate and used on medical data. We developed a modified version of biomarker discovery method called Enhance HHTMass (E-HHTMass) for MALDI-TOF and SELDI-TOF mass spectrometry data which improved old HHTMass method by removing the interpolation and the biomarker discovery process. E-HHTMass integrates the preprocessing and classification functions to identify significant peaks. The results show that most known biomarker can be found and high peak appearance rate achieved comparing to MSCAP and old HHTMass2. E-HHTMass is able to adapt to spectra with a small increasing interval. In addition, new peaks are detected which can be potential biomarker after further validation.

Original languageEnglish
Pages (from-to)120-129
Number of pages10
JournalProtein and Peptide Letters
Volume19
Issue number1
DOIs
StatePublished - Jan 2012

Keywords

  • Biomarker discovery
  • Hilbert-huang transform
  • MALDI-TOF
  • Mass spectrometry
  • SELDI-TOF

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