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 NS  Vol.12 No.9 , September 2020
The Significant and Profound Impacts of Chou’s Pseudo Amino Acid Composition or PseAAC
Abstract: In this short review paper, the significant and profound impacts of the Pseudo Amino Acid Composition or PseAAC have been briefly presented with crystal clear convincingness.

The “pseudo amino acid composition” [1] and “PseAAC” [2] were originally introduced by Kuo- Chen Chou in 2001 and 2005, respectively, to represent protein samples for improving protein subcellular localization prediction and membrane protein type prediction (see, e.g., [3-33]).

However, beyond the aforementioned purpose, their impacts to many other fields are both significantly and profoundly as well (see, e.g., [34-161]).

Cite this paper: Chou, K. (2020) The Significant and Profound Impacts of Chou’s Pseudo Amino Acid Composition or PseAAC. Natural Science, 12, 647-658. doi: 10.4236/ns.2020.129054.
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[152]   Akbar, S. and Hayat, M. (2018) iMethyl-STTNC: Identification of N(6)-methyladenosine Sites by Extending the Idea of SAAC into Chou’s PseAAC to Formulate RNA Sequences. Journal of Theoretical Biology, 455, 205-211.
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