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MetastaSite: Predicting metastasis to different sites using deep learning with gene expression data

  • Somayah Albaradei
  • , Abdurhman Albaradei
  • , Asim Alsaedi
  • , Mahmut Uludag
  • , Maha A. Thafar
  • , Takashi Gojobori
  • , Magbubah Essack
  • , Xin Gao

研究成果: Article同行評審

10   連結會在新分頁中開啟 引文 斯高帕斯(Scopus)

摘要

Deep learning has massive potential in predicting phenotype from different omics profiles. However, deep neural networks are viewed as black boxes, providing predictions without explanation. Therefore, the requirements for these models to become interpretable are increasing, especially in the medical field. Here we propose a computational framework that takes the gene expression profile of any primary cancer sample and predicts whether patients’ samples are primary (localized) or metastasized to the brain, bone, lung, or liver based on deep learning architecture. Specifically, we first constructed an AutoEncoder framework to learn the non-linear relationship between genes, and then DeepLIFT was applied to calculate genes’ importance scores. Next, to mine the top essential genes that can distinguish the primary and metastasized tumors, we iteratively added ten top-ranked genes based upon their importance score to train a DNN model. Then we trained a final multi-class DNN that uses the output from the previous part as an input and predicts whether samples are primary or metastasized to the brain, bone, lung, or liver. The prediction performances ranged from AUC of 0.93–0.82. We further designed the model’s workflow to provide a second functionality beyond metastasis site prediction, i.e., to identify the biological functions that the DL model uses to perform the prediction. To our knowledge, this is the first multi-class DNN model developed for the generic prediction of metastasis to various sites.

原文English
文章編號913602
期刊Frontiers in Molecular Biosciences
9
DOIs
出版狀態Published - 2022 7月 22

UN SDG

此研究成果有助於以下永續發展目標

  1. SDG 3 - 良好的健康和福祉
    SDG 3 良好的健康和福祉

All Science Journal Classification (ASJC) codes

  • 生物化學
  • 分子生物學
  • 生物化學、遺傳與分子生物學(雜項)

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