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Machine learning meets genome assembly. | LitMetric

AI Article Synopsis

  • Recent advancements in DNA sequencing have made genetic analysis more accessible, especially in health sciences, but challenges like DNA fragment assembly from unsequenced organisms persist, classified as NP-hard problems.* -
  • Machine learning algorithms have been applied to improve solutions for the DNA assembly problem, though current implementations have seen limited success.* -
  • This paper reviews significant literature on artificial intelligence-based DNA assemblers, focusing on machine learning methods to summarize current techniques and encourage further research.*

Article Abstract

Motivation: With the recent advances in DNA sequencing technologies, the study of the genetic composition of living organisms has become more accessible for researchers. Several advances have been achieved because of it, especially in the health sciences. However, many challenges which emerge from the complexity of sequencing projects remain unsolved. Among them is the task of assembling DNA fragments from previously unsequenced organisms, which is classified as an NP-hard (nondeterministic polynomial time hard) problem, for which no efficient computational solution with reasonable execution time exists. However, several tools that produce approximate solutions have been used with results that have facilitated scientific discoveries, although there is ample room for improvement. As with other NP-hard problems, machine learning algorithms have been one of the approaches used in recent years in an attempt to find better solutions to the DNA fragment assembly problem, although still at a low scale.

Results: This paper presents a broad review of pioneering literature comprising artificial intelligence-based DNA assemblers-particularly the ones that use machine learning-to provide an overview of state-of-the-art approaches and to serve as a starting point for further study in this field.

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Source
http://dx.doi.org/10.1093/bib/bby072DOI Listing

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