4.8 Article

Tailoring Molecular Specificity Toward a Crystal Facet: a Lesson From Biorecognition Toward Pt{111}

期刊

NANO LETTERS
卷 13, 期 2, 页码 840-846

出版社

AMER CHEMICAL SOC
DOI: 10.1021/nl400022g

关键词

Inorganic binding peptides; surfactants; metal nanocrystal; facet specificity; molecular dynamic simulation; organic-inorganic interface

资金

  1. Office of Naval Research (ONR) [N00014-08-1-0985]
  2. Army Research Office (ARO) [54709-MS-PCS]
  3. Sloan Research Fellowship
  4. National Science Foundation [DMR 0955071]
  5. Air Force Research Laboratory (AFRL)
  6. Air Force Research Laboratory (UES, Inc.)
  7. University of Akron
  8. Division Of Materials Research
  9. Direct For Mathematical & Physical Scien [0955071] Funding Source: National Science Foundation

向作者/读者索取更多资源

Surfactants with preferential adsorption to certain crystal facets have been widely employed to manipulate morphologies of colloidal nanocrystals, while mechanisms regarding the origin of facet selectivity remain an enigma. Similar questions exist in biomimetic syntheses concerning biomolecular recognition to materials and crystal surfaces. Here we present mechanistic studies on the molecular origin of the recognition toward platinum {111} facet. By manipulating the conformations and chemical compositions of a platinum {111} facet specific peptide, phenylalanine is identified as the dominant motif to differentiate {111} from other facets. The discovered recognition motif is extended to convert nonspecific peptides into {111} specific peptides. Further extension of this mechanism allows the rational design of small organic molecules that demonstrate preferential adsorption to the {111} facets of both platinum and rhodium nanocrystals. This work represents an advance in understanding the organic-inorganic interfacial interactions in colloidal systems and paves the way to rational and predictable nanostructure modulations for many applications.

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