Cheminformatics Modeling of Gene Silencing for Both Natural and Chemically Modified siRNAs

Molecules. 2022 Sep 28;27(19):6412. doi: 10.3390/molecules27196412.

Abstract

In designing effective siRNAs for a specific mRNA target, it is critically important to have predictive models for the potency of siRNAs. None of the published methods characterized the chemical structures of individual nucleotides constituting a siRNA molecule; therefore, they cannot predict the potency of gene silencing by chemically modified siRNAs (cm-siRNA). We propose a new approach that can predict the potency of gene silencing by cm-siRNAs, which characterizes each nucleotide (NT) using 12 BCUT cheminformatics descriptors describing its charge distribution, hydrophobic and polar properties. Thus, a 21-NT siRNA molecule is described by 252 descriptors resulting from concatenating all the BCUT values of its composing nucleotides. Partial Least Square is employed to develop statistical models. The Huesken data (2431 natural siRNA molecules) were used to perform model building and evaluation for natural siRNAs. Our results were comparable with or superior to those from Huesken's algorithm. The Bramsen dataset (48 cm-siRNAs) was used to build and test the models for cm-siRNAs. The predictive r2 of the resulting models reached 0.65 (or Pearson r values of 0.82). Thus, this new method can be used to successfully model gene silencing potency by both natural and chemically modified siRNA molecules.

Keywords: BCUT descriptors; chemically modified siRNA; cheminformatics; gene silencing; siRNA.

MeSH terms

  • Cheminformatics*
  • Gene Silencing*
  • Nucleotides / genetics
  • RNA Interference
  • RNA, Messenger
  • RNA, Small Interfering / chemistry
  • RNA, Small Interfering / genetics

Substances

  • Nucleotides
  • RNA, Messenger
  • RNA, Small Interfering

Grants and funding

This research received no external funding.