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Deep learning-based multi-omics data integration reveals two prognostic subtypes in high-risk neuroblastoma

  • Li Zhang
  • , Chenkai Lv
  • , Yaqiong Jin
  • , Ganqi Cheng
  • , Yibao Fu
  • , Dongsheng Yuan
  • , Yiran Tao
  • , Yongli Guo
  • , Xin Ni
  • , Tieliu Shi*
  • *此作品的通讯作者
  • East China Normal University
  • Capital Medical University

科研成果: 期刊稿件文章同行评审

摘要

High-risk neuroblastoma is a very aggressive disease, with excessive tumor growth and poor outcomes. A proper stratification of the high-risk patients by prognostic outcome is important for treatment. However, there is still a lack of survival stratification for the high-risk neuroblastoma. To fill the gap, we adopt a deep learning algorithm, Autoencoder, to integrate multi-omics data, and combine it with K-means clustering to identify two subtypes with significant survival differences. By comparing the Autoencoder with PCA, iCluster, and DGscore about the classification based on multi-omics data integration, Autoencoder-based classification outperforms the alternative approaches. Furthermore, we also validated the classification in two independent datasets by training machine-learning classification models, and confirmed its robustness. Functional analysis revealed that MYCN amplification was more frequently occurred in the ultra-high-risk subtype, in accordance with the overexpression of MYC/MYCN targets in this subtype. In summary, prognostic subtypes identified by deep learning-based multi-omics integration could not only improve our understanding of molecular mechanism, but also help the clinicians make decisions.

源语言英语
文章编号477
期刊Frontiers in Genetics
9
OCT
DOI
出版状态已出版 - 18 10月 2018

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