A quantitative model for the transcription of 2D patterns into functional 3D architectures

Nat Chem. 2012 Sep;4(9):746-50. doi: 10.1038/nchem.1429. Epub 2012 Aug 19.

Abstract

Self-sorting on surfaces is one of the big challenges that must be addressed in preparing the organic materials of the future. Here, we introduce a theoretical framework for templated self-sorting on surfaces, and validate it experimentally. In our approach, the transcription of two-dimensional information encoded in a monolayer on the surface into three-dimensional supramolecular architectures is quantified by the intrinsic templation efficiency, a thickness-independent value describing the fidelity of transcription per layer. The theoretical prediction that exceedingly high intrinsic efficiencies will be needed to experimentally observe templated self-sorting is then confirmed experimentally. Intrinsic templation efficiencies of up to 97%, achieved with a newly introduced templated synthesis strategy, result in maximal 47% effective templation efficiency at a thickness of 70 layers. The functional relevance of surface-templated self-sorting and meaningful dependences of templation efficiencies on structural modifications are demonstrated.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Chemistry, Organic
  • Models, Chemical*
  • Molecular Conformation
  • Organic Chemicals / chemistry*
  • Pattern Recognition, Automated
  • Polymerization
  • Surface Properties

Substances

  • Organic Chemicals

Associated data

  • PubChem-Substance/136959037
  • PubChem-Substance/136959038
  • PubChem-Substance/136959039
  • PubChem-Substance/136959040
  • PubChem-Substance/136959041
  • PubChem-Substance/136959042
  • PubChem-Substance/136959043
  • PubChem-Substance/136959044