1. Proteoform characterization based on top-down mass spectrometry
- Author
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Fang-Xiang Wu, Jianxin Wang, Wei Peng, Chushu Zhang, Minzhu Xie, Yusui Sun, and Jiancheng Zhong
- Subjects
Identification methods ,0303 health sciences ,Computer science ,Efficient algorithm ,010401 analytical chemistry ,Scoring methods ,Proteins ,A protein ,Top-down and bottom-up design ,Computational biology ,01 natural sciences ,Mass Spectrometry ,0104 chemical sciences ,Characterization (materials science) ,03 medical and health sciences ,Identification (information) ,Medical profession ,Amino Acid Sequence ,Databases, Protein ,Molecular Biology ,Algorithms ,030304 developmental biology ,Information Systems - Abstract
Proteins are dominant executors of living processes. Compared to genetic variations, changes in the molecular structure and state of a protein (i.e. proteoforms) are more directly related to pathological changes in diseases. Characterizing proteoforms involves identifying and locating primary structure alterations (PSAs) in proteoforms, which is of practical importance for the advancement of the medical profession. With the development of mass spectrometry (MS) technology, the characterization of proteoforms based on top-down MS technology has become possible. This type of method is relatively new and faces many challenges. Since the proteoform identification is the most important process in characterizing proteoforms, we comprehensively review the existing proteoform identification methods in this study. Before identifying proteoforms, the spectra need to be preprocessed, and protein sequence databases can be filtered to speed up the identification. Therefore, we also summarize some popular deconvolution algorithms, various filtering algorithms for improving the proteoform identification performance and various scoring methods for localizing proteoforms. Moreover, commonly used methods were evaluated and compared in this review. We believe our review could help researchers better understand the current state of the development in this field and design new efficient algorithms for the proteoform characterization.
- Published
- 2020
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