Literature DB >> 32763377

Integrating multi-omics data by learning modality invariant representations for improved prediction of overall survival of cancer.

Li Tong1, Hang Wu2, May D Wang3.   

Abstract

Breast and ovarian cancers are the second and the fifth leading causes of cancer death among women. Predicting the overall survival of breast and ovarian cancer patients can facilitate the therapeutics evaluation and treatment decision making. Multi-scale multi-omics data such as gene expression, DNA methylation, miRNA expression, and copy number variations can provide insights on personalized survival. However, how to effectively integrate multi-omics data remains a challenging task. In this paper, we develop multi-omics integration methods to improve the prediction of overall survival for breast cancer and ovarian cancer patients. Because multi-omics data for the same patient jointly impact the survival of cancer patients, features from different -omics modality are related and can be modeled by either association or causal relationship (e.g., pathways). By extracting these relationships among modalities, we can get rid of the irrelevant information from high-throughput multi-omics data. However, it is infeasible to use the Brute Force method to capture all possible multi-omics interactions. Thus, we use deep neural networks with novel divergence-based consensus regularization to capture multi-omics interactions implicitly by extracting modality-invariant representations. In comparing the concatenation-based integration networks with our new divergence-based consensus networks, the breast cancer overall survival C-index is improved from 0.655±0.062 to 0.671±0.046 when combing DNA methylation and miRNA expression, and from 0.627±0.062 to 0.667±0.073 when combing miRNA expression and copy number variations. In summary, our novel deep consensus neural network has successfully improved the prediction of overall survival for breast cancer and ovarian cancer patients by implicitly learning the multi-omics interactions.
Copyright © 2020. Published by Elsevier Inc.

Entities:  

Keywords:  Consensus learning; Modality-invariant representation; Multi-omics integration; Survival analysis

Year:  2020        PMID: 32763377     DOI: 10.1016/j.ymeth.2020.07.008

Source DB:  PubMed          Journal:  Methods        ISSN: 1046-2023            Impact factor:   3.608


  4 in total

Review 1.  A roadmap for multi-omics data integration using deep learning.

Authors:  Mingon Kang; Euiseong Ko; Tesfaye B Mersha
Journal:  Brief Bioinform       Date:  2022-01-17       Impact factor: 11.622

Review 2.  Emerging technologies and their impact on regulatory science.

Authors:  Elke Anklam; Martin Iain Bahl; Robert Ball; Richard D Beger; Jonathan Cohen; Suzanne Fitzpatrick; Philippe Girard; Blanka Halamoda-Kenzaoui; Denise Hinton; Akihiko Hirose; Arnd Hoeveler; Masamitsu Honma; Marta Hugas; Seichi Ishida; George En Kass; Hajime Kojima; Ira Krefting; Serguei Liachenko; Yan Liu; Shane Masters; Uwe Marx; Timothy McCarthy; Tim Mercer; Anil Patri; Carmen Pelaez; Munir Pirmohamed; Stefan Platz; Alexandre Js Ribeiro; Joseph V Rodricks; Ivan Rusyn; Reza M Salek; Reinhilde Schoonjans; Primal Silva; Clive N Svendsen; Susan Sumner; Kyung Sung; Danilo Tagle; Li Tong; Weida Tong; Janny van den Eijnden-van-Raaij; Neil Vary; Tao Wang; John Waterton; May Wang; Hairuo Wen; David Wishart; Yinyin Yuan; William Slikker
Journal:  Exp Biol Med (Maywood)       Date:  2021-11-16

Review 3.  Machine Learning in Epigenomics: Insights into Cancer Biology and Medicine.

Authors:  Emre Arslan; Jonathan Schulz; Kunal Rai
Journal:  Biochim Biophys Acta Rev Cancer       Date:  2021-07-07       Impact factor: 10.680

4.  Multimodal deep learning models for early detection of Alzheimer's disease stage.

Authors:  Janani Venugopalan; Li Tong; Hamid Reza Hassanzadeh; May D Wang
Journal:  Sci Rep       Date:  2021-02-05       Impact factor: 4.379

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.