Compendiums of cancer transcriptomes for machine learning applications.

Journal: Scientific data
Published Date:

Abstract

There are massive transcriptome profiles in the form of microarray. The challenge is that they are processed using diverse platforms and preprocessing tools, requiring considerable time and informatics expertise for cross-dataset analyses. If there exists a single, integrated data source, data-reuse can be facilitated for discovery, analysis, and validation of biomarker-based clinical strategy. Here, we present merged microarray-acquired datasets (MMDs) across 11 major cancer types, curating 8,386 patient-derived tumor and tumor-free samples from 95 GEO datasets. Using machine learning algorithms, we show that diagnostic models trained from MMDs can be directly applied to RNA-seq-acquired TCGA data with high classification accuracy. Machine learning optimized MMD further aids to reveal immune landscape across various carcinomas critically needed in disease management and clinical interventions. This unified data source may serve as an excellent training or test set to apply, develop, and refine machine learning algorithms that can be tapped to better define genomic landscape of human cancers.

Authors

  • Su Bin Lim
    Department of Biomedical Engineering, National University of Singapore, 9 Engineering Drive 1, Singapore, 117575, Republic of Singapore.
  • Swee Jin Tan
    Regional Scientific Affairs, Sysmex Asia Pacific, Singapore, Singapore.
  • Wan-Teck Lim
    Division of Medical Oncology, National Cancer Centre Singapore, Singapore, Singapore.
  • Chwee Teck Lim
    NUS Graduate School for Integrative Sciences & Engineering, National University of Singapore, Singapore, Singapore. ctlim@nus.edu.sg.