MDSCAN: RMSD-based HDBSCAN clustering of long molecular dynamics

Author:

González-Alemán Roy12ORCID,Platero-Rochart Daniel1ORCID,Rodríguez-Serradet Alejandro1,Hernández-Rodríguez Erix W3,Caballero Julio4ORCID,Leclerc Fabrice2,Montero-Cabrera Luis1

Affiliation:

1. Laboratorio de Química Computacional y Teórica (LQCT), Facultad de Química, Universidad de La Habana , La Habana 10400, Cuba

2. Institute for Integrative Biology of the Cell (I2BC), CEA, CNRS, Université Paris Saclay , Gif-sur-Yvette F-91198, France

3. Laboratorio de Bioinformática y Química Computacional, Departamento de Medicina Traslacional, Facultad de Medicina, Universidad Católica del Maule , Talca 3480094, Chile

4. Departamento de Bioinformática, Facultad de Ingeniería, Centro de Bioinformática, Simulación y Modelado (CBSM), Universidad de Talca , Talca, Chile

Abstract

Abstract Motivation The term clustering designates a comprehensive family of unsupervised learning methods allowing to group similar elements into sets called clusters. Geometrical clustering of molecular dynamics (MD) trajectories is a well-established analysis to gain insights into the conformational behavior of simulated systems. However, popular variants collapse when processing relatively long trajectories because of their quadratic memory or time complexity. From the arsenal of clustering algorithms, HDBSCAN stands out as a hierarchical density-based alternative that provides robust differentiation of intimately related elements from noise data. Although a very efficient implementation of this algorithm is available for programming-skilled users (HDBSCAN*), it cannot treat long trajectories under the de facto molecular similarity metric RMSD. Results Here, we propose MDSCAN, an HDBSCAN-inspired software specifically conceived for non-programmers users to perform memory-efficient RMSD-based clustering of long MD trajectories. Methodological improvements over the original version include the encoding of trajectories as a particular class of vantage-point tree (decreasing time complexity), and a dual-heap approach to construct a quasi-minimum spanning tree (reducing memory complexity). MDSCAN was able to process a trajectory of 1 million frames using the RMSD metric in about 21 h with <8 GB of RAM, a task that would have taken a similar time but more than 32 TB of RAM with the accelerated HDBSCAN* implementation generally used. Availability and implementation The source code and documentation of MDSCAN are free and publicly available on GitHub (https://github.com/LQCT/MDScan.git) and as a PyPI package (https://pypi.org/project/mdscan/). Supplementary information Supplementary data are available at Bioinformatics online.

Funder

Cuban Oficina de Gestión de Fondos y Proyectos Internacionales

Eiffel Scholarship Program of Excellence of Campus France

Project Hubert Curien-Carlos J. Finlay

Fondo Nacional de Desarrollo Científico y Tecnológico

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computational Theory and Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Statistics and Probability

Reference23 articles.

1. An algorithm for finding nearest neighbors;Baskett;IEEE Trans. Comput,1975

2. Density-based clustering;Campello;WIREs Data Mining Knowl. Discov,2020

3. BitClust: fast geometrical clustering of long molecular dynamics simulations;González-Alemán;J. Chem. Inf. Model,2020

4. Quality threshold clustering of molecular dynamics: a word of caution;González-Alemán;J. Chem. Inf. Model,2020

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