Litcius/Paper detail

Bidirectional Deep Neural Networks to Integrate RNA and DNA Data for Predicting Outcome for Patients with Hepatocellular Carcinoma

Guojun Huang, Cheng Wang, Xi Fu

2021Future Oncology17 citationsDOI

Abstract

Aims: Individualized patient profiling is instrumental for personalized management in hepatocellular carcinoma (HCC). This study built a model based on bidirectional deep neural networks (BiDNNs), an unsupervised machine-learning approach, to integrate multi-omics data and predict survival in HCC. Methods: DNA methylation and mRNA expression data for HCC samples from the The Cancer Genome Atlas database were integrated using BiDNNs. With optimal clusters as labels, a support vector machine model was developed to predict survival. Results: Using the BiDNN-based model, samples were clustered into two survival subgroups. The survival subgroup classification was an independent prognostic factor. BiDNNs were superior to multimodal autoencoders. Conclusion: This study constructed and validated a BiDNN-based model for predicting prognosis in HCC, with implications for individualized therapies in HCC.

Topics & Concepts

Hepatocellular carcinomaMedicineOncologyRNAArtificial neural networkInternal medicineComputational biologyArtificial intelligenceGeneticsGeneComputer scienceBiologyCancer-related molecular mechanisms researchFerroptosis and cancer prognosisRNA modifications and cancer