| Literature DB >> 33552965 |
Jianyong Wang1, Nan Chen2, Jixiang Guo1, Xiuyuan Xu1, Lunxu Liu2, Zhang Yi1.
Abstract
Survival analysis is important for guiding further treatment and improving lung cancer prognosis. It is a challenging task because of the poor distinguishability of features and the missing values in practice. A novel multi-task based neural network, SurvNet, is proposed in this paper. The proposed SurvNet model is trained in a multi-task learning framework to jointly learn across three related tasks: input reconstruction, survival classification, and Cox regression. It uses an input reconstruction mechanism cooperating with incomplete-aware reconstruction loss for latent feature learning of incomplete data with missing values. Besides, the SurvNet model introduces a context gating mechanism to bridge the gap between survival classification and Cox regression. A new real-world dataset of 1,137 patients with IB-IIA stage non-small cell lung cancer is collected to evaluate the performance of the SurvNet model. The proposed SurvNet achieves a higher concordance index than the traditional Cox model and Cox-Net. The difference between high-risk and low-risk groups obtained by SurvNet is more significant than that of high-risk and low-risk groups obtained by the other models. Moreover, the SurvNet outperforms the other models even though the input data is randomly cropped and it achieves better generalization performance on the Surveillance, Epidemiology, and End Results Program (SEER) dataset.Entities:
Keywords: deep neural networks; missing value; multi-task learning; prognosis prediction; survival analysis
Year: 2021 PMID: 33552965 PMCID: PMC7855857 DOI: 10.3389/fonc.2020.588990
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244