The Significant and Profound Impacts of Pseudo K-Tuple Nucleotide Composition

Abstract

In this short review paper, the significant and profound impacts of the “pseudo K-tuple nucleotide composition” have been briefly presented with crystal clear convincingness.

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Chou, K. (2020) The Significant and Profound Impacts of Pseudo K-Tuple Nucleotide Composition. Voice of the Publisher, 6, 91-101. doi: 10.4236/vp.2020.63009.

The “pseudo K-tuple nucleotide composition” or “PseKNC” [1], is an extended version of “pseudo amino acid composition” [2] or “PseAAC” [3].

Both PseAAC and PseKNC are of vector descriptor, but the former represents protein or peptide sequences while the latter represents DNA or RNA sequences.

Just like “PseAAC” (see, e.g., [4] - [35]) or “Pseudo amino acid composition” being very successful (see, e.g., [36] - [127]), it is indeed both significant and profound.

Conflicts of Interest

The authors declare no conflicts of interest.

References

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