Ultrasensitive plasma-based monitoring of tumor burden using machine-learning-guided signal enrichment. Academic Article uri icon

Overview

abstract

  • In solid tumor oncology, circulating tumor DNA (ctDNA) is poised to transform care through accurate assessment of minimal residual disease (MRD) and therapeutic response monitoring. To overcome the sparsity of ctDNA fragments in low tumor fraction (TF) settings and increase MRD sensitivity, we previously leveraged genome-wide mutational integration through plasma whole-genome sequencing (WGS). Here we now introduce MRD-EDGE, a machine-learning-guided WGS ctDNA single-nucleotide variant (SNV) and copy-number variant (CNV) detection platform designed to increase signal enrichment. MRD-EDGESNV uses deep learning and a ctDNA-specific feature space to increase SNV signal-to-noise enrichment in WGS by ~300× compared to previous WGS error suppression. MRD-EDGECNV also reduces the degree of aneuploidy needed for ultrasensitive CNV detection through WGS from 1 Gb to 200 Mb, vastly expanding its applicability within solid tumors. We harness the improved performance to identify MRD following surgery in multiple cancer types, track changes in TF in response to neoadjuvant immunotherapy in lung cancer and demonstrate ctDNA shedding in precancerous colorectal adenomas. Finally, the radical signal-to-noise enrichment in MRD-EDGESNV enables plasma-only (non-tumor-informed) disease monitoring in advanced melanoma and lung cancer, yielding clinically informative TF monitoring for patients on immune-checkpoint inhibition.

authors

publication date

  • June 14, 2024

Research

keywords

  • Circulating Tumor DNA
  • DNA Copy Number Variations
  • Machine Learning
  • Neoplasm, Residual
  • Tumor Burden

Identity

Scopus Document Identifier

  • 85195853582

Digital Object Identifier (DOI)

  • 10.1038/s41591-024-03040-4

PubMed ID

  • 38877116

Additional Document Info

volume

  • 30

issue

  • 6