Literature DB >> 28982688

Deep Learning-Based Multi-Omics Integration Robustly Predicts Survival in Liver Cancer.

Kumardeep Chaudhary1, Olivier B Poirion1, Liangqun Lu1,2, Lana X Garmire3,2.   

Abstract

Identifying robust survival subgroups of hepatocellular carcinoma (HCC) will significantly improve patient care. Currently, endeavor of integrating multi-omics data to explicitly predict HCC survival from multiple patient cohorts is lacking. To fill this gap, we present a deep learning (DL)-based model on HCC that robustly differentiates survival subpopulations of patients in six cohorts. We built the DL-based, survival-sensitive model on 360 HCC patients' data using RNA sequencing (RNA-Seq), miRNA sequencing (miRNA-Seq), and methylation data from The Cancer Genome Atlas (TCGA), which predicts prognosis as good as an alternative model where genomics and clinical data are both considered. This DL-based model provides two optimal subgroups of patients with significant survival differences (P = 7.13e-6) and good model fitness [concordance index (C-index) = 0.68]. More aggressive subtype is associated with frequent TP53 inactivation mutations, higher expression of stemness markers (KRT19 and EPCAM) and tumor marker BIRC5, and activated Wnt and Akt signaling pathways. We validated this multi-omics model on five external datasets of various omics types: LIRI-JP cohort (n = 230, C-index = 0.75), NCI cohort (n = 221, C-index = 0.67), Chinese cohort (n = 166, C-index = 0.69), E-TABM-36 cohort (n = 40, C-index = 0.77), and Hawaiian cohort (n = 27, C-index = 0.82). This is the first study to employ DL to identify multi-omics features linked to the differential survival of patients with HCC. Given its robustness over multiple cohorts, we expect this workflow to be useful at predicting HCC prognosis prediction. Clin Cancer Res; 24(6); 1248-59. ©2017 AACR. ©2017 American Association for Cancer Research.

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Year:  2017        PMID: 28982688      PMCID: PMC6050171          DOI: 10.1158/1078-0432.CCR-17-0853

Source DB:  PubMed          Journal:  Clin Cancer Res        ISSN: 1078-0432            Impact factor:   12.531


  54 in total

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4.  Transcriptome classification of HCC is related to gene alterations and to new therapeutic targets.

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Journal:  Hepatology       Date:  2007-01       Impact factor: 17.425

Review 5.  Dysregulation of Wnt/β-catenin signaling in gastrointestinal cancers.

Authors:  Bryan D White; Andy J Chien; David W Dawson
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Review 9.  Challenges of advanced hepatocellular carcinoma.

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Review 10.  More Is Better: Recent Progress in Multi-Omics Data Integration Methods.

Authors:  Sijia Huang; Kumardeep Chaudhary; Lana X Garmire
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Review 7.  Computational approaches for characterizing the tumor immune microenvironment.

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10.  Integrating Clinical Data and Imputed Transcriptome from GWAS to Uncover Complex Disease Subtypes: Applications in Psychiatry and Cardiology.

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