BCL::Cluster : A method for clustering biological molecules coupled with visualization in the Pymol Molecular Graphics System

Clustering algorithms are used as data analysis tools in a wide variety of applications in Biology. Clustering has become especially important in protein structure prediction and virtual high throughput screening methods. In protein structure prediction, clustering is used to structure the conformational space of thousands of protein models. In virtual high throughput screening, databases with millions of drug-like molecules are organized by structural similarity, e.g. common scaffolds. The tree-like dendrogram structure obtained from hierarchical clustering can provide a qualitative overview of the results, which is important for focusing detailed analysis. However, in practice it is difficult to relate specific components of the dendrogram directly back to the objects of which it is comprised and to display all desired information within the two dimensions of the dendrogram. The current work presents a hierarchical agglomerative clustering method termed bcl::Cluster. bcl::Cluster utilizes the Pymol Molecular Graphics System to graphically depict dendrograms in three dimensions. This allows simultaneous display of relevant biological molecules as well as additional information about the clusters and the members comprising them.  Additional details on how to use BCL::Cluster are available in the manual pdf-download.

 

Image

 

Image




Alumni Project Members: Nathan Alexander , Nils Woetzel

Download the BCL to get this and many other applications
Mac OS X 10.4 - 10.14 Linux x86_64 (64-bit)
CentOS 6+ / RedHat 6+
pre-RH6 compile from source
available from the license server
Windows x86 (32-bit)
bcl-4.3.1.dmg bcl-4.3.1-Linux-x86_64.sh bcl-4.3.1-Windows-x86.exe
To run bcl applications, academic users need a license from our license server
Commercial users need to contact us at bcl-commercial-support@meilerlab.org for licensing and pricing information