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Artificial intelligence-aided clinical annotation of a large multi-cancer genomic dataset

Author

Listed:
  • Kenneth L. Kehl

    (From Dana-Farber Cancer Institute
    Brigham and Women’s Hospital
    Harvard Medical School)

  • Wenxin Xu

    (From Dana-Farber Cancer Institute
    Brigham and Women’s Hospital
    Harvard Medical School)

  • Alexander Gusev

    (From Dana-Farber Cancer Institute
    Brigham and Women’s Hospital
    Harvard Medical School)

  • Ziad Bakouny

    (From Dana-Farber Cancer Institute
    Brigham and Women’s Hospital
    Harvard Medical School)

  • Toni K. Choueiri

    (From Dana-Farber Cancer Institute
    Brigham and Women’s Hospital
    Harvard Medical School)

  • Irbaz Bin Riaz

    (Mayo Clinic)

  • Haitham Elmarakeby

    (From Dana-Farber Cancer Institute
    Brigham and Women’s Hospital
    Harvard Medical School
    The Broad Institute)

  • Eliezer M. Allen

    (From Dana-Farber Cancer Institute
    Brigham and Women’s Hospital
    Harvard Medical School
    The Broad Institute)

  • Deborah Schrag

    (Memorial-Sloan Kettering Cancer Center)

Abstract

To accelerate cancer research that correlates biomarkers with clinical endpoints, methods are needed to ascertain outcomes from electronic health records at scale. Here, we train deep natural language processing (NLP) models to extract outcomes for participants with any of 7 solid tumors in a precision oncology study. Outcomes are extracted from 305,151 imaging reports for 13,130 patients and 233,517 oncologist notes for 13,511 patients, including patients with 6 additional cancer types. NLP models recapitulate outcome annotation from these documents, including the presence of cancer, progression/worsening, response/improvement, and metastases, with excellent discrimination (AUROC > 0.90). Models generalize to cancers excluded from training and yield outcomes correlated with survival. Among patients receiving checkpoint inhibitors, we confirm that high tumor mutation burden is associated with superior progression-free survival ascertained using NLP. Here, we show that deep NLP can accelerate annotation of molecular cancer datasets with clinically meaningful endpoints to facilitate discovery.

Suggested Citation

  • Kenneth L. Kehl & Wenxin Xu & Alexander Gusev & Ziad Bakouny & Toni K. Choueiri & Irbaz Bin Riaz & Haitham Elmarakeby & Eliezer M. Allen & Deborah Schrag, 2021. "Artificial intelligence-aided clinical annotation of a large multi-cancer genomic dataset," Nature Communications, Nature, vol. 12(1), pages 1-9, December.
  • Handle: RePEc:nat:natcom:v:12:y:2021:i:1:d:10.1038_s41467-021-27358-6
    DOI: 10.1038/s41467-021-27358-6
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