AI Article Synopsis

  • Hidden Markov Models (HMMs) are crucial for multiple sequence alignment (MSA) in bioinformatics but pose challenges for effective learning.
  • A new algorithm called Random Drift Particle Swarm Optimization (RDPSO) is introduced, enhancing traditional particle swarm optimization by incorporating principles from the free electron model to improve global search capabilities.
  • The RDPSO is further refined with a diversity control method (RDPSO-DGS), showing superior performance in MSA tasks compared to standard HMM learning methods and established MSA tools like ClustalW and MAFFT.

Article Abstract

Hidden Markov Models (HMMs) are powerful tools for multiple sequence alignment (MSA), which is known to be an NP-complete and important problem in bioinformatics. Learning HMMs is a difficult task, and many meta-heuristic methods, including particle swarm optimization (PSO), have been used for that. In this paper, a new variant of PSO, called the random drift particle swarm optimization (RDPSO) algorithm, is proposed to be used for HMM learning tasks in MSA problems. The proposed RDPSO algorithm, inspired by the free electron model in metal conductors in an external electric field, employs a novel set of evolution equations that can enhance the global search ability of the algorithm. Moreover, in order to further enhance the algorithmic performance of the RDPSO, we incorporate a diversity control method into the algorithm and, thus, propose an RDPSO with diversity-guided search (RDPSO-DGS). The performances of the RDPSO, RDPSO-DGS and other algorithms are tested and compared by learning HMMs for MSA on two well-known benchmark data sets. The experimental results show that the HMMs learned by the RDPSO and RDPSO-DGS are able to generate better alignments for the benchmark data sets than other most commonly used HMM learning methods, such as the Baum-Welch and other PSO algorithms. The performance comparison with well-known MSA programs, such as ClustalW and MAFFT, also shows that the proposed methods have advantages in multiple sequence alignment.

Download full-text PDF

Source
http://dx.doi.org/10.1109/TCBB.2013.148DOI Listing

Publication Analysis

Top Keywords

multiple sequence
12
sequence alignment
12
particle swarm
12
swarm optimization
12
hidden markov
8
markov models
8
random drift
8
drift particle
8
learning hmms
8
rdpso algorithm
8

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!