The International Union of Pure and Applied Chemistry (IUPAC) was formed in 1919 by chemists from indus- try and academia (1). Over nearly nine decades the Union has succeeded in fostering worldwide communications in the chemical sciences and in uniting chemistry - academic, industrial and government - in a common language. As one of the results of the Union, IUPAC names nowadays serve as a commonly agreed text representation of chemical structures in patents, publications and databases. In public databases of chemical compounds, like PubChem with more than 12 million entries, chemical structures are identified by default using their IUPAC names (2). We report a very fast linguistic method to extract the implicit information contained in IUPAC names to statistically predict pharmacologically relevant proper- ties. This provides an efficient annotation tool that can be used to assess the likelihood of a given compound as a drug candidate and renders the entire chemical literature a searchable database for virtual screening experiments and data mining.