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Converting tabular data into images for deep learning with convolutional neural networks

  1. Author:
    Zhu, Yitan
    Brettin, Thomas
    Xia, Fangfang
    Partin, Alexander
    Shukla, Maulik
    Yoo, Hyunseung
    Evrard,Yvonne
    Doroshow, James H.
    Stevens, Rick L.
  2. Author Address

    Argonne Natl Lab, Comp Environm & Life Sci, Lemont, IL 60439 USA.Leidos Biomed Res Inc, Frederick Natl Lab Canc Res, Frederick, MD 21702 USA.NCI, Dev Therapeut Branch, Bethesda, MD 20892 USA.Univ Chicago, Dept Comp Sci, Chicago, IL 60637 USA.
    1. Year: 2021
    2. Date: May 31
    3. Epub Date: 2021 05 31
  1. Journal: Scientific reports
  2. NATURE RESEARCH,
    1. 11
    2. 1
  3. Type of Article: Article
  4. Article Number: 11325
  5. ISSN: 2045-2322
  1. Abstract:

    Convolutional neural networks (CNNs) have been successfully used in many applications where important information about data is embedded in the order of features, such as speech and imaging. However, most tabular data do not assume a spatial relationship between features, and thus are unsuitable for modeling using CNNs. To meet this challenge, we develop a novel algorithm, image generator for tabular data (IGTD), to transform tabular data into images by assigning features to pixel positions so that similar features are close to each other in the image. The algorithm searches for an optimized assignment by minimizing the difference between the ranking of distances between features and the ranking of distances between their assigned pixels in the image. We apply IGTD to transform gene expression profiles of cancer cell lines (CCLs) and molecular descriptors of drugs into their respective image representations. Compared with existing transformation methods, IGTD generates compact image representations with better preservation of feature neighborhood structure. Evaluated on benchmark drug screening datasets, CNNs trained on IGTD image representations of CCLs and drugs exhibit a better performance of predicting anti-cancer drug response than both CNNs trained on alternative image representations and prediction models trained on the original tabular data.

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External Sources

  1. DOI: 10.1038/s41598-021-90923-y
  2. PMID: 34059739
  3. WOS: 000659202000013

Library Notes

  1. Fiscal Year: FY2020-2021
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