作者
Adane L Mamuye, Matteo Rucco, Luca Tesei, Emanuela Merelli
发表日期
2016/12/5
期刊
Computational and Mathematical Biophysics
卷号
4
期号
1
出版商
De Gruyter Open
简介
Topological data analysis has been recently used to extract meaningful information frombiomolecules. Here we introduce the application of persistent homology, a topological data analysis tool, for computing persistent features (loops) of the RNA folding space. The scaffold of the RNA folding space is a complex graph from which the global features are extracted by completing the graph to a simplicial complex via the notion of clique and Vietoris-Rips complexes. The resulting simplicial complexes are characterised in terms of topological invariants, such as the number of holes in any dimension, i.e. Betti numbers. Our approach discovers persistent structural features, which are the set of smallest components to which the RNA folding space can be reduced. Thanks to this discovery, which in terms of data mining can be considered as a space dimension reduction, it is possible to extract a new insight that is crucial for …
引用总数
学术搜索中的文章
AL Mamuye, M Rucco, L Tesei, E Merelli - Computational and Mathematical Biophysics, 2016