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Quantum analysis of squiggle data. | LitMetric

Quantum analysis of squiggle data.

BioData Min

Department of Chemistry and Biochemistry, University of Lethbridge, T1K3M4, Lethbridge, Alberta, Canada.

Published: October 2023

AI Article Synopsis

  • Squiggle data refers to the complex numeric output from DNA and RNA sequencing using Nanopore technology, which generates extensive current measurements over time.
  • This study explores the potential of quantum computers to improve the analysis speed of this data, focusing on designing circuits that highlight key features of the squiggle measurements.
  • While theoretical analysis showcases circuit performance, practical tests reveal the limitations of current quantum computers, but using inverse wavelet transform helps reduce data complexity, making it more manageable for these future systems.

Article Abstract

Squiggle data is the numerical output of DNA and RNA sequencing by the Nanopore next generation sequencing platform. Nanopore sequencing offers expanded applications compared to previous sequencing techniques but produces a large amount of data in the form of current measurements over time. The analysis of these segments of current measurements require more complex and computationally intensive algorithms than previous sequencing technologies. The purpose of this study is to investigate in principle the potential of using quantum computers to speed up Nanopore data analysis. Quantum circuits are designed to extract major features of squiggle current measurements. The circuits are analyzed theoretically in terms of size and performance. Practical experiments on IBM QX show the limitations of the state of the art quantum computer to tackle real life squiggle data problems. Nevertheless, pre-processing of the squiggle data using the inverse wavelet transform, as experimented and analyzed in this paper as well, reduces the dimensionality of the problem in order to fit a reasonable size quantum computer in the hopefully near future.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10557310PMC
http://dx.doi.org/10.1186/s13040-023-00343-zDOI Listing

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