Last edited by Nikogor
Thursday, April 23, 2020 | History

4 edition of Computational and Statistical Approaches to Genomics found in the catalog.

Computational and Statistical Approaches to Genomics

  • 285 Want to read
  • 24 Currently reading

Published by Springer .
Written in English

    Subjects:
  • Cellular biology,
  • DNA,
  • Zoology & animal sciences,
  • Mathematics,
  • Genomics,
  • Genetic Code,
  • Mathematical Statistics,
  • Science,
  • Mathematical models,
  • Science/Mathematics,
  • Life Sciences - Evolution,
  • General,
  • Genetics,
  • Science / Zoology,
  • Data processing,
  • Probability & Statistics - General,
  • Life Sciences - Genetics & Genomics,
  • Statistical methods,
  • DNA microarrays

  • Edition Notes

    ContributionsWei Zhang (Editor), Ilya Shmulevich (Editor)
    The Physical Object
    FormatHardcover
    Number of Pages344
    ID Numbers
    Open LibraryOL8372315M
    ISBN 101402070233
    ISBN 109781402070235


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