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Proposing Pseudo Amino Acid Components is an Important Milestone for Proteome and Genome Analyses

  • Kuo-Chen ChouEmail author
Article

Abstract

In this minireview paper it has been elucidated that the proposal of pseudo amino acid components represents a very important milestone for the disciplines of proteome and genome. This has been concluded by observing and analyzing the developments in the following six different sub-disciplines: (1) proteome analysis; (2) genome analysis; (3) protein structural classification; (4) protein subcellular location prediction; (5) post-translational modification (PTM) site prediction; (6) stimulating the birth of the renowned and very powerful 5-steps rule.

Keywords

Proteome and genome Milestone Five-step rules Protein structural classes Protein subcellular localization Post-translational modifications Historical recollection 

Notes

References

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Copyright information

© Springer Nature B.V. 2019

Authors and Affiliations

  1. 1.Gordon Life Science InstituteBostonUSA
  2. 2.Center for Informational BiologyUniversity of Electronic Science and Technology of ChinaChengduChina

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