Literature DB >> 31288637

Deep learning with evolutionary and genomic profiles for identifying cancer subtypes.

Chun-Yu Lin1, Peiying Ruan2, Ruiming Li1, Jinn-Moon Yang3, Simon See4, Jiangning Song5, Tatsuya Akutsu1.   

Abstract

Cancer subtype identification is an unmet need in precision diagnosis. Recently, evolutionary conservation has been indicated to contain informative signatures for functional significance in cancers. However, the importance of evolutionary conservation in distinguishing cancer subtypes remains largely unclear. Here, we identified the evolutionarily conserved genes (i.e. core genes) and observed that they are primarily involved in cellular pathways relevant to cell growth and metabolisms. By using these core genes, we developed two novel strategies, namely a feature-based strategy (FES) and an image-based strategy (IMS) by integrating their evolutionary and genomic profiles with the deep learning algorithm. In comparison with the FES using the random set and the strategy using the PAM50 classifier, the core gene set-based FES achieved a higher accuracy for identifying breast cancer subtypes. The IMS and FES using the core gene set yielded better performances than the other strategies, in terms of classifying both breast cancer subtypes and multiple cancer types. Moreover, the IMS is reproducible even using different gene expression data (i.e. RNA-seq and microarray). Comprehensive analysis of eight cancer types demonstrates that our evolutionary conservation-based models represent a valid and helpful approach for identifying cancer subtypes and the core gene set offers distinguishable clues of cancer subtypes.

Entities:  

Keywords:  Cancer subtype; cancer genomics; convolutional neural network; copy number alteration; deep learning; evolutionary conservation; gene expression

Year:  2019        PMID: 31288637     DOI: 10.1142/S0219720019400055

Source DB:  PubMed          Journal:  J Bioinform Comput Biol        ISSN: 0219-7200            Impact factor:   1.122


  1 in total

1.  Convolutional neural network for human cancer types prediction by integrating protein interaction networks and omics data.

Authors:  Yi-Hsuan Chuang; Sing-Han Huang; Tzu-Mao Hung; Xiang-Yu Lin; Jung-Yu Lee; Wen-Sen Lai; Jinn-Moon Yang
Journal:  Sci Rep       Date:  2021-10-19       Impact factor: 4.379

  1 in total

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