Nonlinear manipulation and analysis of large DNA datasets.

Journal: Nucleic acids research
PMID:

Abstract

Information processing functions are essential for organisms to perceive and react to their complex environment, and for humans to analyze and rationalize them. While our brain is extraordinary at processing complex information, winner-take-all, as a type of biased competition is one of the simplest models of lateral inhibition and competition among biological neurons. It has been implemented as DNA-based neural networks, for example, to mimic pattern recognition. However, the utility of DNA-based computation in information processing for real biotechnological applications remains to be demonstrated. In this paper, a biased competition method for nonlinear manipulation and analysis of mixtures of DNA sequences was developed. Unlike conventional biological experiments, selected species were not directly subjected to analysis. Instead, parallel computation among a myriad of different DNA sequences was carried out to reduce the information entropy. The method could be used for various oligonucleotide-encoded libraries, as we have demonstrated its application in decoding and data analysis for selection experiments with DNA-encoded chemical libraries against protein targets.

Authors

  • Meiying Cui
    B CUBE, Center for Molecular Bioengineering, Technische Universität Dresden, Dresden, Germany.
  • Xueping Zhao
    School of Mathematical Sciences, Xiamen University, China.
  • Francesco V Reddavide
    DyNAbind GmbH, Dresden, Germany.
  • Michelle Patino Gaillez
    B CUBE, Center for Molecular Bioengineering, Technische Universität Dresden, Dresden, Germany.
  • Stephan Heiden
    DyNAbind GmbH, Dresden, Germany.
  • Luca Mannocci
    DECLTech consulting, Switzerland.
  • Michael Thompson
    Childrens Healthcare of Atlanta.
  • Yixin Zhang
    Beijing Institute of Radiation Medicine, Beijing, China.