GET THE APP

Sparse-matrix analysis of small molecules and protein targets for drug discovery
..

Molecular and Genetic Medicine

ISSN: 1747-0862

Open Access

Sparse-matrix analysis of small molecules and protein targets for drug discovery


3rd International Conference on Genomics & Pharmacogenomics

September 21-23, 2015 San Antonio, USA

Gerald J Wyckoff, Jeffrey C Murphy and Ada K Solidar

University of Missouri, USA

Scientific Tracks Abstracts: J Mol Genet Med

Abstract :

We have established a rapid and practical methodology for the clustering of small molecule similarity. This is a known technique for analysis of next-gen sequence, expression data and other types of â??big dataâ?. However, this technique has not been deployed for small molecules because there has not been a good methodology for representing chemical similarity that lends itself to clustering across broad ranges of molecule similarity. We have developed a chemical fingerprinting system from earlier work that gives a bitwise score or â??signatureâ? for any molecule that can be represented in three-dimensional space (normally in a PDB or PDBQT file). Because of this, the mathematical difference between two small molecules bitwise scores acts as a traditional â??distanceâ? measure would enabling clustering of small molecules. When matched with traditional protein phylogenetic clustering, we derive a â??sparse matrixâ? graph. The X-axis is populated by clustered small molecules; the Y-axis is populated by phylogenetically clustered protein targets. In the center of the graph, we record if a small molecule is known to interact with a specific protein target. These graphs enable drug discovery. Structure-based virtual screening is an important tool in the drug discovery process. The use of computational tools has allowed for the screening of large libraries of chemical compounds to identify putative ligand-receptor interactions. The identification of valid targets and therapeutic compounds has long-term importance both to public health and the economic strength of the pharmaceutical industry. Extending this technology by enabling small molecule clustering and results visualization is the next logical evolution of the technology.

Biography :

Gerald J Wyckoff is a Molecular Evolutionary Geneticist. He was trained in finding faint signatures of positive selection in a sea of genomic noise. This led him to become involved with large scale genomic, and later proteomic, projects and these are his areas of interest. This has allowed him to extend his knowledge in drug discovery towards chemical information signatures for high-throughput screening of compounds.

Email: wyckoffg@umkc.edu

Google Scholar citation report
Citations: 3919

Molecular and Genetic Medicine received 3919 citations as per Google Scholar report

Molecular and Genetic Medicine peer review process verified at publons

Indexed In

 
arrow_upward arrow_upward