A cfDNA methylation-based tissue-of-origin classifier for cancers of unknown primary

Nat Commun. 2024 Apr 17;15(1):3292. doi: 10.1038/s41467-024-47195-7.

Abstract

Cancers of Unknown Primary (CUP) remains a diagnostic and therapeutic challenge due to biological heterogeneity and poor responses to standard chemotherapy. Predicting tissue-of-origin (TOO) molecularly could help refine this diagnosis, with tissue acquisition barriers mitigated via liquid biopsies. However, TOO liquid biopsies are unexplored in CUP cohorts. Here we describe CUPiD, a machine learning classifier for accurate TOO predictions across 29 tumour classes using circulating cell-free DNA (cfDNA) methylation patterns. We tested CUPiD on 143 cfDNA samples from patients with 13 cancer types alongside 27 non-cancer controls, with overall sensitivity of 84.6% and TOO accuracy of 96.8%. In an additional cohort of 41 patients with CUP CUPiD predictions were made in 32/41 (78.0%) cases, with 88.5% of the predictions clinically consistent with a subsequent or suspected primary tumour diagnosis, when available (23/26 patients). Combining CUPiD with cfDNA mutation data demonstrated potential diagnosis re-classification and/or treatment change in this hard-to-treat cancer group.

MeSH terms

  • Biomarkers, Tumor / genetics
  • Cell-Free Nucleic Acids* / genetics
  • DNA Methylation
  • Humans
  • Liquid Biopsy
  • Neoplasms, Unknown Primary* / genetics

Substances

  • Cell-Free Nucleic Acids
  • Biomarkers, Tumor