Machine Learning Predictability of Clinical Next Generation Sequencing for Hematologic Malignancies to Guide High-Value Precision Medicine.

Journal: AMIA ... Annual Symposium proceedings. AMIA Symposium
Published Date:

Abstract

Advancing diagnostic testing capabilities such as clinical next generation sequencing methods offer the potential to diagnose, risk stratify, and guide specialized treatment, but must be balanced against the escalating costs of healthcare to identify patient cases most likely to benefit from them. Heme-STAMP (Stanford Actionable Mutation Panel for Hematopoietic and Lymphoid Malignancies) is one such next generation sequencing test. Our objective is to assess how well Heme-STAMP pathological variants can be predicted given electronic health records data available at the time of test ordering. The model demonstrated AUROC 0.74 (95% CI: [0.72, 0.76]) with 99% negative predictive value at 6% specificity. A benchmark for comparison is the prevalence of positive results in the dataset at 58.7%. Identifying patients with very low or very high predicted probabilities of finding actionable mutations (positive result) could guide more precise high-value selection of patient cases to test.

Authors

  • Grace Y E Kim
    Department of Computer Science, Stanford, CA.
  • Morteza Noshad
    Stanford Center for Biomedical Informatics Research, Stanford, CA.
  • Henning Stehr
    Department of Pathology, Stanford, CA.
  • Rebecca Rojansky
    Department of Pathology, Stanford, CA.
  • Dita Gratzinger
    Department of Pathology, Stanford, CA.
  • Jean Oak
    Department of Pathology, Stanford, CA.
  • Rondeep Brar
    Department of Hematology, Stanford, CA.
  • David Iberri
    Department of Hematology, Stanford, CA.
  • Christina Kong
    Department of Pathology, Stanford, CA.
  • James Zehnder
    Department of Pathology, Stanford, CA.
  • Jonathan H Chen
    Stanford Center for Biomedical Informatics Research, Stanford, CA.