Genome Biology (Jun 2024)

An integrated single-cell RNA-seq map of human neuroblastoma tumors and preclinical models uncovers divergent mesenchymal-like gene expression programs

  • Richard H. Chapple,
  • Xueying Liu,
  • Sivaraman Natarajan,
  • Margaret I. M. Alexander,
  • Yuna Kim,
  • Anand G. Patel,
  • Christy W. LaFlamme,
  • Min Pan,
  • William C. Wright,
  • Hyeong-Min Lee,
  • Yinwen Zhang,
  • Meifen Lu,
  • Selene C. Koo,
  • Courtney Long,
  • John Harper,
  • Chandra Savage,
  • Melissa D. Johnson,
  • Thomas Confer,
  • Walter J. Akers,
  • Michael A. Dyer,
  • Heather Sheppard,
  • John Easton,
  • Paul Geeleher

DOI
https://doi.org/10.1186/s13059-024-03309-4
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 26

Abstract

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Abstract Background Neuroblastoma is a common pediatric cancer, where preclinical studies suggest that a mesenchymal-like gene expression program contributes to chemotherapy resistance. However, clinical outcomes remain poor, implying we need a better understanding of the relationship between patient tumor heterogeneity and preclinical models. Results Here, we generate single-cell RNA-seq maps of neuroblastoma cell lines, patient-derived xenograft models (PDX), and a genetically engineered mouse model (GEMM). We develop an unsupervised machine learning approach (“automatic consensus nonnegative matrix factorization” (acNMF)) to compare the gene expression programs found in preclinical models to a large cohort of patient tumors. We confirm a weakly expressed, mesenchymal-like program in otherwise adrenergic cancer cells in some pre-treated high-risk patient tumors, but this appears distinct from the presumptive drug-resistance mesenchymal programs evident in cell lines. Surprisingly, however, this weak-mesenchymal-like program is maintained in PDX and could be chemotherapy-induced in our GEMM after only 24 h, suggesting an uncharacterized therapy-escape mechanism. Conclusions Collectively, our findings improve the understanding of how neuroblastoma patient tumor heterogeneity is reflected in preclinical models, provides a comprehensive integrated resource, and a generalizable set of computational methodologies for the joint analysis of clinical and pre-clinical single-cell RNA-seq datasets.