posted on 2017-04-26, 19:14authored byJustine Chervin, Marc Stierhof, Ming Him Tong, Doe Peace, Kine Østnes Hansen, Dagmar
Solveig Urgast, Jeanette Hammer Andersen, Yi Yu, Rainer Ebel, Kwaku Kyeremeh, Veronica Paget, Gabriela Cimpan, Albert Van Wyk, Hai Deng, Marcel Jaspars, Jioji N. Tabudravu
A new strategy for the identification
of known compounds in Streptomyces extracts that
can be applied in the discovery
of natural products is presented. The strategy incorporates screening
a database of 5555 natural products including 5098 structures from Streptomyces sp., using a high-throughput LCMS data processing
algorithm that utilizes HRMS data and predicted LC retention times
(tR) as filters for rapid identification
of known compounds in the natural product extract. The database, named
StrepDB, contains for each compound the structure, molecular formula,
molecular mass, and predicted LC retention time. All identified compounds
are annotated and color coded for easier visualization. It is an indirect
approach to quickly assess masses (which are not annotated) that may
potentially lead to the discovery of new or novel structures. In addition,
a spectral database named MbcDB was generated using the ACD/Spectrus
DB Platform. MbcDB contains 665 natural products, each with structure,
experimental HRESIMS, MS/MS, UV, and NMR spectra. StrepDB was used
to screen a mutant Streptomyces albus extract, which
led to the identification and isolation of two new compounds, legonmaleimides
A and B, the structures of which were elucidated with the aid of MbcDB
and spectroscopic techniques. The structures were confirmed by computer-assisted
structure elucidation (CASE) methods using ACD/Structure Elucidator
Suite. The developed methodology suggests a pipeline approach to the
dereplication of extracts and discovery of novel natural products.