| Literature DB >> 33346087 |
Jun Wang1, Xueying Xie2, Junchao Shi3, Wenjun He4, Qi Chen3, Liang Chen5, Wanjun Gu6, Tong Zhou7.
Abstract
Precise biomarker development is a key step in disease management. However, most of the published biomarkers were derived from a relatively small number of samples with supervised approaches. Recent advances in unsupervised machine learning promise to leverage very large datasets for making better predictions of disease biomarkers. Denoising autoencoder (DA) is one of the unsupervised deep learning algorithms, which is a stochastic version of autoencoder techniques. The principle of DA is to force the hidden layer of autoencoder to capture more robust features by reconstructing a clean input from a corrupted one. Here, a DA model was applied to analyze integrated transcriptomic data from 13 published lung cancer studies, which consisted of 1916 human lung tissue samples. Using DA, we discovered a molecular signature composed of multiple genes for lung adenocarcinoma (ADC). In independent validation cohorts, the proposed molecular signature is proved to be an effective classifier for lung cancer histological subtypes. Also, this signature successfully predicts clinical outcome in lung ADC, which is independent of traditional prognostic factors. More importantly, this signature exhibits a superior prognostic power compared with the other published prognostic genes. Our study suggests that unsupervised learning is helpful for biomarker development in the era of precision medicine.Entities:
Keywords: Denoising autoencoder; Lung cancer; Molecular signature; Prognosis; Unsupervised learning
Year: 2020 PMID: 33346087 DOI: 10.1016/j.gpb.2019.02.003
Source DB: PubMed Journal: Genomics Proteomics Bioinformatics ISSN: 1672-0229 Impact factor: 7.691