4.8 Article

Distinct biological subtypes and patterns of genome evolution in lymphoma revealed by circulating tumor DNA

Journal

SCIENCE TRANSLATIONAL MEDICINE
Volume 8, Issue 364, Pages -

Publisher

AMER ASSOC ADVANCEMENT SCIENCE
DOI: 10.1126/scitranslmed.aai8545

Keywords

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Funding

  1. Damon Runyon Cancer Research Foundation [71-14, 09-16]
  2. American Society of Hematology Scholar Award
  3. V Foundation for Cancer Research Abeloff Scholar Award
  4. German Research Foundation [SCHE 1870/1-1]
  5. Stanford TRAM (Translational Research and Applied Medicine) Pilot Grant
  6. American Society of Clinical Oncology Young Investigator Award
  7. National Cancer Institute [R01CA188298, 1K99CA187192-01A1]
  8. U.S. NIH Director's New Innovator Award Program [1-DP2-CA186569]
  9. Ludwig Institute for Cancer Research

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Patients with diffuse large B cell lymphoma (DLBCL) exhibit marked diversity in tumor behavior and outcomes, yet the identification of poor-risk groups remains challenging. In addition, the biology underlying these differences is incompletely understood. We hypothesized that characterization of mutational heterogeneity and genomic evolution using circulating tumor DNA (ctDNA) profiling could reveal molecular determinants of adverse outcomes. To address this hypothesis, we applied cancer personalized profiling by deep sequencing (CAPP-Seq) analysis to tumor biopsies and cell-free DNA samples from 92 lymphoma patients and 24 healthy subjects. At diagnosis, the amount of ctDNA was found to strongly correlate with clinical indices and was independently predictive of patient outcomes. We demonstrate that ctDNA genotyping can classify transcriptionally defined tumor subtypes, including DLBCL cell of origin, directly from plasma. By simultaneously tracking multiple somatic mutations in ctDNA, our approach outperformed immunoglobulin sequencing and radiographic imaging for the detection of minimal residual disease and facilitated noninvasive identification of emergent resistance mutations to targeted therapies. In addition, we identified distinct patterns of clonal evolution distinguishing indolent follicular lymphomas from those that transformed into DLBCL, allowing for potential noninvasive prediction of histological transformation. Collectively, our results demonstrate that ctDNA analysis reveals biological factors that underlie lymphoma clinical outcomes and could facilitate individualized therapy.

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