Literature DB >> 33628643

Predicting lung adenocarcinoma disease progression using methylation-correlated blocks and ensemble machine learning classifiers.

Xin Yu1,2, Qian Yang2, Dong Wang1,2, Zhaoyang Li2, Nianhang Chen2, De-Xin Kong1,2.   

Abstract

Applying the knowledge that methyltransferases and demethylases can modify adjacent cytosine-phosphorothioate-guanine (CpG) sites in the same DNA strand, we found that combining multiple CpGs into a single block may improve cancer diagnosis. However, survival prediction remains a challenge. In this study, we developed a pipeline named "stacked ensemble of machine learning models for methylation-correlated blocks" (EnMCB) that combined Cox regression, support vector regression (SVR), and elastic-net models to construct signatures based on DNA methylation-correlated blocks for lung adenocarcinoma (LUAD) survival prediction. We used methylation profiles from the Cancer Genome Atlas (TCGA) as the training set, and profiles from the Gene Expression Omnibus (GEO) as validation and testing sets. First, we partitioned the genome into blocks of tightly co-methylated CpG sites, which we termed methylation-correlated blocks (MCBs). After partitioning and feature selection, we observed different diagnostic capacities for predicting patient survival across the models. We combined the multiple models into a single stacking ensemble model. The stacking ensemble model based on the top-ranked block had the area under the receiver operating characteristic curve of 0.622 in the TCGA training set, 0.773 in the validation set, and 0.698 in the testing set. When stratified by clinicopathological risk factors, the risk score predicted by the top-ranked MCB was an independent prognostic factor. Our results showed that our pipeline was a reliable tool that may facilitate MCB selection and survival prediction. ©2021 Yu et al.

Entities:  

Keywords:  Ensemble model; Lung adenocarcinoma; Methylation correlated blocks

Year:  2021        PMID: 33628643      PMCID: PMC7894106          DOI: 10.7717/peerj.10884

Source DB:  PubMed          Journal:  PeerJ        ISSN: 2167-8359            Impact factor:   2.984


  1 in total

1.  A Methylation Diagnostic Model Based on Random Forests and Neural Networks for Asthma Identification.

Authors:  Dong-Dong Li; Ting Chen; You-Liang Ling; YongAn Jiang; Qiu-Gen Li
Journal:  Comput Math Methods Med       Date:  2022-09-28       Impact factor: 2.809

  1 in total

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