Weighted persistent homology for biomolecular data analysis
Zhenyu Meng, D Vijay Anand, Yunpeng Lu, Jie Wu, Kelin Xia

TL;DR
This paper introduces a localized weighted persistent homology (LWPH) approach for biomolecular data analysis, enabling detailed local structure characterization and successful discrimination of DNA types and states, surpassing traditional geometric methods.
Contribution
The paper proposes the first localized weighted persistent homology model that decomposes biomolecules into local domains for enhanced structural analysis.
Findings
LWPH successfully discriminates DNA A-, B-, and Z-types.
LWPH identifies DNA configurational states in ion liquids.
LWPH captures local structural variations comparable to geometric models.
Abstract
In this paper, we systematically review weighted persistent homology (WPH) models and their applications in biomolecular data analysis. Essentially, the weight value, which reflects physical, chemical and biological properties, can be assigned to vertices (atom centers), edges (bonds), or higher order simplexes (cluster of atoms), depending on the biomolecular structure, function, and dynamics properties. Further, we propose the first localized weighted persistent homology (LWPH). Inspired by the great success of element specific persistent homology (ESPH), we do not treat biomolecules as an inseparable system like all previous weighted models, instead we decompose them into a series of local domains, which may be overlapped with each other. The general persistent homology or weighted persistent homology analysis is then applied on each of these local domains. In this way, functional…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Homotopy and Cohomology in Algebraic Topology
