Literature DB >> 33737557

Integrated multi-omics analysis of ovarian cancer using variational autoencoders.

Muta Tah Hira1, M A Razzaque2, Claudio Angione3, James Scrivens1, Saladin Sawan4, Mosharraf Sarkar1.   

Abstract

Cancer is a complex disease that deregulates cellular functions at various molecular levels (e.g., DNA, RNA, and proteins). Integrated multi-omics analysis of data from these levels is necessary to understand the aberrant cellular functions accountable for cancer and its development. In recent years, Deep Learning (DL) approaches have become a useful tool in integrated multi-omics analysis of cancer data. However, high dimensional multi-omics data are generally imbalanced with too many molecular features and relatively few patient samples. This imbalance makes a DL based integrated multi-omics analysis difficult. DL-based dimensionality reduction technique, including variational autoencoder (VAE), is a potential solution to balance high dimensional multi-omics data. However, there are few VAE-based integrated multi-omics analyses, and they are limited to pancancer. In this work, we did an integrated multi-omics analysis of ovarian cancer using the compressed features learned through VAE and an improved version of VAE, namely Maximum Mean Discrepancy VAE (MMD-VAE). First, we designed and developed a DL architecture for VAE and MMD-VAE. Then we used the architecture for mono-omics, integrated di-omics and tri-omics data analysis of ovarian cancer through cancer samples identification, molecular subtypes clustering and classification, and survival analysis. The results show that MMD-VAE and VAE-based compressed features can respectively classify the transcriptional subtypes of the TCGA datasets with an accuracy in the range of 93.2-95.5% and 87.1-95.7%. Also, survival analysis results show that VAE and MMD-VAE based compressed representation of omics data can be used in cancer prognosis. Based on the results, we can conclude that (i) VAE and MMD-VAE outperform existing dimensionality reduction techniques, (ii) integrated multi-omics analyses perform better or similar compared to their mono-omics counterparts, and (iii) MMD-VAE performs better than VAE in most omics dataset.

Entities:  

Year:  2021        PMID: 33737557     DOI: 10.1038/s41598-021-85285-4

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  2 in total

1.  Diagnosis and Management of Ovarian Cancer.

Authors:  Chyke A Doubeni; Anna R Doubeni; Allison E Myers
Journal:  Am Fam Physician       Date:  2016-06-01       Impact factor: 3.292

2.  Module Analysis Captures Pancancer Genetically and Epigenetically Deregulated Cancer Driver Genes for Smoking and Antiviral Response.

Authors:  Magali Champion; Kevin Brennan; Tom Croonenborghs; Andrew J Gentles; Nathalie Pochet; Olivier Gevaert
Journal:  EBioMedicine       Date:  2017-12-01       Impact factor: 8.143

  2 in total
  6 in total

Review 1.  Multimodal deep learning for biomedical data fusion: a review.

Authors:  Sören Richard Stahlschmidt; Benjamin Ulfenborg; Jane Synnergren
Journal:  Brief Bioinform       Date:  2022-03-10       Impact factor: 11.622

2.  XOmiVAE: an interpretable deep learning model for cancer classification using high-dimensional omics data.

Authors:  Eloise Withnell; Xiaoyu Zhang; Kai Sun; Yike Guo
Journal:  Brief Bioinform       Date:  2021-11-05       Impact factor: 11.622

3.  Data-Driven Identification of Biomarkers for In Situ Monitoring of Drug Treatment in Bladder Cancer Organoids.

Authors:  Lucas Becker; Felix Fischer; Julia L Fleck; Niklas Harland; Alois Herkommer; Arnulf Stenzl; Wilhelm K Aicher; Katja Schenke-Layland; Julia Marzi
Journal:  Int J Mol Sci       Date:  2022-06-23       Impact factor: 6.208

4.  An Integrated  Approach for Cancer Survival Prediction Using Data Mining Techniques.

Authors:  Ishleen Kaur; M N Doja; Tanvir Ahmad; Musheer Ahmad; Amir Hussain; Ahmed Nadeem; Ahmed A Abd El-Latif
Journal:  Comput Intell Neurosci       Date:  2021-12-28

Review 5.  Machine Learning: A New Prospect in Multi-Omics Data Analysis of Cancer.

Authors:  Babak Arjmand; Shayesteh Kokabi Hamidpour; Akram Tayanloo-Beik; Parisa Goodarzi; Hamid Reza Aghayan; Hossein Adibi; Bagher Larijani
Journal:  Front Genet       Date:  2022-01-27       Impact factor: 4.599

6.  A benchmark study of deep learning-based multi-omics data fusion methods for cancer.

Authors:  Dongjin Leng; Linyi Zheng; Yuqi Wen; Yunhao Zhang; Lianlian Wu; Jing Wang; Meihong Wang; Zhongnan Zhang; Song He; Xiaochen Bo
Journal:  Genome Biol       Date:  2022-08-09       Impact factor: 17.906

  6 in total

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