Correlation Engine 2.0
Clear Search sequence regions


  • humans (1)
  • peptides (5)
  • target protein (1)
  • β2m (6)
  • Sizes of these terms reflect their relevance to your search.

    The bottom-up design of smart nanodevices largely depends on the accuracy by which each of the inherent nanometric components can be functionally designed with predictive methods. Here, we present a rationally designed, self-assembled nanochip capable of capturing a target protein by means of pre-selected binding sites. The sensing elements comprise computationally evolved peptides, designed to target an arbitrarily selected binding site on the surface of beta-2-Microglobulin (β2m), a globular protein that lacks well-defined pockets. The nanopatterned surface was generated by an atomic force microscopy (AFM)-based, tip force-driven nanolithography technique termed nanografting to construct laterally confined self-assembled nanopatches of single stranded (ss)DNA. These were subsequently associated with an ssDNA-peptide conjugate by means of DNA-directed immobilization, therefore allowing control of the peptide's spatial orientation. We characterized the sensitivity of such peptide-containing systems against β2m in solution by means of AFM-based differential topographic imaging and surface plasmon resonance (SPR) spectroscopy. Our results show that the confined peptides are capable of specifically capturing β2m from the surface-liquid interface with micromolar affinity, hence providing a viable proof-of-concept for our approach to peptide design.

    Citation

    Abimbola Feyisara Adedeji Olulana, Miguel A Soler, Martina Lotteri, Hendrik Vondracek, Loredana Casalis, Daniela Marasco, Matteo Castronovo, Sara Fortuna. Computational Evolution of Beta-2-Microglobulin Binding Peptides for Nanopatterned Surface Sensors. International journal of molecular sciences. 2021 Jan 15;22(2)

    Expand section icon Mesh Tags

    Expand section icon Substances


    PMID: 33467468

    View Full Text