Persistent spectral hypergraph based machine learning (PSH-ML) for protein-ligand binding affinity prediction

Author:

Liu Xiang123,Feng Huitao24,Wu Jie35,Xia Kelin1

Affiliation:

1. Division of Mathematical Sciences, School of Physical and Mathematical Sciences, Nanyang Technological University, Singapore 637371

2. Chern Institute of Mathematics and LPMC, Nankai University, Tianjin, China, 300071

3. Center for Topology and Geometry Based Technology, Hebei Normal University, Hebei, China, 050024

4. Mathematical Science Research Center, Chongqing University of Technology, Chongqing, China, 400054

5. School of Mathematical Sciences, Hebei Normal University, Hebei, China, 050024

Abstract

Abstract Molecular descriptors are essential to not only quantitative structure activity/property relationship (QSAR/QSPR) models, but also machine learning based chemical and biological data analysis. In this paper, we propose persistent spectral hypergraph (PSH) based molecular descriptors or fingerprints for the first time. Our PSH-based molecular descriptors are used in the characterization of molecular structures and interactions, and further combined with machine learning models, in particular gradient boosting tree (GBT), for protein-ligand binding affinity prediction. Different from traditional molecular descriptors, which are usually based on molecular graph models, a hypergraph-based topological representation is proposed for protein–ligand interaction characterization. Moreover, a filtration process is introduced to generate a series of nested hypergraphs in different scales. For each of these hypergraphs, its eigen spectrum information can be obtained from the corresponding (Hodge) Laplacain matrix. PSH studies the persistence and variation of the eigen spectrum of the nested hypergraphs during the filtration process. Molecular descriptors or fingerprints can be generated from persistent attributes, which are statistical or combinatorial functions of PSH, and combined with machine learning models, in particular, GBT. We test our PSH-GBT model on three most commonly used datasets, including PDBbind-2007, PDBbind-2013 and PDBbind-2016. Our results, for all these databases, are better than all existing machine learning models with traditional molecular descriptors, as far as we know.

Funder

Nanyang Technological University

Natural Science Foundation of China

Ministry of Education

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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