Compound identification using penalized linear regression

نویسندگان

  • Ruiqi Liu
  • Dongfeng Wu
  • Xiang Zhang
  • Seongho Kim
چکیده

s Service (CAS) registry number. In the simulation studies, we consider the mass spectra extracted from the NIST Chemistry WebBook (NIST library) as a reference library and the repetitive library as query (experimental) data. In addition, since we assume that the NIST library has the mass spectrum information for all the

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تاریخ انتشار 2017