methCancer-gen: a DNA methylome dataset generator for user-specified cancer type based on conditional variational autoencoder
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초록

BackgroundRecently, DNA methylation has drawn great attention due to its strong correlation with abnormal gene activities and informative representation of the cancer status. As a number of studies focus on DNA methylation signatures in cancer, demand for utilizing publicly available methylome dataset has been increased. To satisfy this, large-scale projects were launched to discover biological insights into cancer, providing a collection of the dataset. However, public cancer data, especially for certain cancer types, is still limited to be used in research. Several simulation tools for producing epigenetic dataset have been introduced in order to alleviate the issue, still, to date, generation for user-specified cancer type dataset has not been proposed.ResultsIn this paper, we present methCancer-gen, a tool for generating DNA methylome dataset considering type for cancer. Employing conditional variational autoencoder, a neural network-based generative model, it estimates the conditional distribution with latent variables and data, and generates samples for specified cancer type.ConclusionsTo evaluate the simulation performance of methCancer-gen for the user-specified cancer type, our proposed model was compared to a benchmark method and it could successfully reproduce cancer type-wise data with high accuracy helping to alleviate the lack of condition-specific data issue. methCancer-gen is publicly available at https://github.com/cbi-bioinfo/methCancer-gen.

키워드

DNA methylationCancerGeneratorConditional variational autoencoderSimulator
제목
methCancer-gen: a DNA methylome dataset generator for user-specified cancer type based on conditional variational autoencoder
저자
Choi, JoungminChae, Heejoon
DOI
10.1186/s12859-020-3516-8
발행일
2020-05
유형
Article
저널명
BMC Bioinformatics
21
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