Capturing Molecular Energy Landscapes With Probabilistic Conformational Roadmaps

2001 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION, VOLS I-IV, PROCEEDINGS(2001)

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摘要
Probabilistic roadmaps are an effective tool to compute the connectivity of the collision-free subset of high-dimensional robot configuration spaces. This paper extends them to capture the pertinent features of continuous functions over high-dimensional spaces. This extension has several possible applications, but the focus here is on computing energetically favorable motions of bio-molecules. Many bio-chemical processes essential to life require the interacting molecules to adopt different shapes over time. Computational tools predicting such motions can help better understand these processes and design useful molecules (e.g., new drugs). In this context, a molecule is modeled as an articulated structure moving in an energy field. The set of all its 3-D placements is the molecule's conformational space, over which the energy field is defined. A probabilistic conformational roadmap (PCR) tries to capture the connectivity of the low-energy subset of a conformational space, in the form of a network of weighted local pathways. The weight of a pathway measures the energetic difficulty for the molecule to move along it. The power of a PCR derives from its ability to compactly encode a large number of energetically favorable molecular pathways, each defined as a sequence of contiguous local pathways. This paper describes general techniques to compute and query PCRs. and presents implementations to study ligand-protein binding and protein folding.
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关键词
computer science,configuration space,context modeling,protein folding,shape,process design,protein binding,proteins,biocybernetics,predictive models,computational modeling,energy landscape,molecular biophysics,probability
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