• Title of article

    RAMRSGL: A Robust Adaptive Multinomial Regression Model for Multicancer Classification

  • Author/Authors

    Wang, Lei Department of Basic Science Teaching - Henan Polytechnic Institute - Nanyang - Henan, China , Li, Juntao Henan Normal University - Xinxiang - Henan, China , Liu, Juanfang Henan Normal University - Xinxiang - Henan, China , Chang, Mingming Henan Normal University - Xinxiang - Henan, China

  • Pages
    12
  • From page
    1
  • To page
    12
  • Abstract
    In view of the challenges of the group Lasso penalty methods for multicancer microarray data analysis, e.g., dividing genes into groups in advance and biological interpretability, we propose a robust adaptive multinomial regression with sparse group Lasso penalty (RAMRSGL) model. By adopting the overlapping clustering strategy, affinity propagation clustering is employed to obtain each cancer gene subtype, which explores the group structure of each cancer subtype and merges the groups of all subtypes. In addition, the data-driven weights based on noise are added to the sparse group Lasso penalty, combining with the multinomial log-likelihood function to perform multiclassification and adaptive group gene selection simultaneously. The experimental results on acute leukemia data verify the effectiveness of the proposed method.
  • Keywords
    RAMRSGL , Robust , Multicancer , DNA
  • Journal title
    Computational and Mathematical Methods in Medicine
  • Serial Year
    2021
  • Record number

    2614980