Global-to-local protein shape similarity system driven by digital elevation models

2017 2nd International Conference on Bio-engineering for Smart Technologies (BioSMART)(2017)

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摘要
We are currently developing a bio-shape similarity system for supplying high-throughput protein shape similarity applications within massive datasets. The proposed system is powered by a global-to-local shape similarity system which exploits shape elevation and local convexity attributes. In the first step, a global similarity is computed between the shape descriptors associated to each protein input. The procedure outputs best N similarities chosen by the user, within a query-to-cluster approach. The second stage is a patch-based local similarity computation method which is designed to find the best similar target from the cluster for supplying query-to-target protein retrieval applications. The local patch-based similarity comparison benefits of a multi-CPU implementation, offering thus fast query search capabilities within massive datasets. Experimental results on the SHREC 2017 BioShape dataset [4] composed of 5484 models, illustrate the effectiveness of the proposed system.
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关键词
digital elevation models,bio-shape similarity system,protein shape similarity applications,global-to-local shape similarity system,shape elevation,local convexity attributes,protein input,query-to-cluster approach,query-to-target protein retrieval applications,global-to-local protein shape similarity system,patch-based local similarity computation method,query search capabilities,SHREC 2017 BioShape dataset
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