array(2) { ["lab"]=> string(4) "1409" ["publication"]=> string(5) "12621" } Complex harmonic regularization with differential evolution in a memetic framework for biomarker selection - Liang Yong | LabXing

Complex harmonic regularization with differential evolution in a memetic framework for biomarker selection

2019
期刊 PloS one
For studying cancer and genetic diseases, the issue of identifying high correlation genes from high-dimensional data is an important problem. It is a great challenge to select relevant biomarkers from gene expression data that contains some important correlation structures, and some of the genes can be divided into different groups with a common biological function, chromosomal location or regulation. In this paper, we propose a penalized accelerated failure time model CHR-DE using a non-convex regularization (local search) with differential evolution (global search) in a wrapper-embedded memetic framework. The complex harmonic regularization (CHR) can approximate to the combination ℓ p ( 1 2 ≤ p < 1 ) and ℓq (1 ≤ q < 2) for selecting biomarkers in group. And differential evolution (DE) is utilized to globally optimize the CHR’s hyperparameters, which make CHR-DE achieve strong capability of selecting groups of genes in high-dimensional biological data. We also developed an efficient path seeking algorithm to optimize this penalized model. The proposed method is evaluated on synthetic and three gene expression datasets: breast cancer, hepatocellular carcinoma and colorectal cancer. The experimental results demonstrate that CHR-DE is a more effective tool for feature selection and learning prediction.

  • 卷 14
  • 期 2
  • 页码 e0210786
  • Public Library of Science