Literature DB >> 34245839

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

Emre Arslan1, Jonathan Schulz1, Kunal Rai2.   

Abstract

The recent deluge of genome-wide technologies for the mapping of the epigenome and resulting data in cancer samples has provided the opportunity for gaining insights into and understanding the roles of epigenetic processes in cancer. However, the complexity, high-dimensionality, sparsity, and noise associated with these data pose challenges for extensive integrative analyses. Machine Learning (ML) algorithms are particularly suited for epigenomic data analyses due to their flexibility and ability to learn underlying hidden structures. We will discuss four overlapping but distinct major categories under ML: dimensionality reduction, unsupervised methods, supervised methods, and deep learning (DL). We review the preferred use cases of these algorithms in analyses of cancer epigenomics data with the hope to provide an overview of how ML approaches can be used to explore fundamental questions on the roles of epigenome in cancer biology and medicine.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Cancer; Chromatin; Deep learning; Epigenomics; Machine learning

Mesh:

Year:  2021        PMID: 34245839      PMCID: PMC8595561          DOI: 10.1016/j.bbcan.2021.188588

Source DB:  PubMed          Journal:  Biochim Biophys Acta Rev Cancer        ISSN: 0304-419X            Impact factor:   10.680


  156 in total

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3.  Integrating distal and proximal information to predict gene expression via a densely connected convolutional neural network.

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Authors:  Hans-Ulrich Klein; Martin Schäfer; David A Bennett; Holger Schwender; Philip L De Jager
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7.  Chromatin state dynamics confers specific therapeutic strategies in enhancer subtypes of colorectal cancer.

Authors:  Elias Orouji; Ayush T Raman; Anand K Singh; Alexey Sorokin; Emre Arslan; Archit K Ghosh; Jonathan Schulz; Christopher Terranova; Shan Jiang; Ming Tang; Mayinuer Maitituoheti; Scot C Callahan; Praveen Barrodia; Katarzyna Tomczak; Yingda Jiang; Zhiqin Jiang; Jennifer S Davis; Sukhen Ghosh; Hey Min Lee; Laura Reyes-Uribe; Kyle Chang; Yusha Liu; Huiqin Chen; Ali Azhdarinia; Jeffrey Morris; Eduardo Vilar; Kendra S Carmon; Scott E Kopetz; Kunal Rai
Journal:  Gut       Date:  2021-05-31       Impact factor: 23.059

8.  Constructing 3D interaction maps from 1D epigenomes.

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9.  Epigenetic profiling for the molecular classification of metastatic brain tumors.

Authors:  Javier I J Orozco; Theo A Knijnenburg; Ayla O Manughian-Peter; Matthew P Salomon; Garni Barkhoudarian; John R Jalas; James S Wilmott; Parvinder Hothi; Xiaowen Wang; Yuki Takasumi; Michael E Buckland; John F Thompson; Georgina V Long; Charles S Cobbs; Ilya Shmulevich; Daniel F Kelly; Richard A Scolyer; Dave S B Hoon; Diego M Marzese
Journal:  Nat Commun       Date:  2018-11-06       Impact factor: 14.919

10.  PDRLGB: precise DNA-binding residue prediction using a light gradient boosting machine.

Authors:  Lei Deng; Juan Pan; Xiaojie Xu; Wenyi Yang; Chuyao Liu; Hui Liu
Journal:  BMC Bioinformatics       Date:  2018-12-31       Impact factor: 3.169

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  2 in total

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