array(2) { ["lab"]=> string(4) "1409" ["publication"]=> string(5) "12636" } A novel Cox proportional hazards model for high-dimensional genomic data in cancer prognosis - Liang Yong | LabXing

A novel Cox proportional hazards model for high-dimensional genomic data in cancer prognosis

2019
期刊 IEEE/ACM Transactions on Computational Biology and Bioinformatics
The Cox proportional hazards model is a popular method to study the connection between feature and survival time. Because of the high-dimensionality of genomic data, existing Cox models trained on any specific dataset often generalize poorly to other independent datasets. In this paper, we suggest a novel strategy for the cox model. This strategy is included a new learning technique, self-paced learning (SPL), and a new gene selection method, SCAD-Net penalty. The SPL method is adopted to aid to build a more accurate prediction with its built-in mechanism of learning from easy samples first and adaptively learning from hard samples. The SCAD-Net penalty has fixed the problem of the SCAD method without an inherent mechanism to fuse the prior graphical information. We combined the SPL with the SCAD-Net penalty to the Cox model (SSNC). The simulation shows that the SSNC outperforms the …

  • IEEE