Therapy-Induced Evolution of Human Lung Cancer Revealed by Single-Cell RNA Sequencing

单细胞RNA测序揭示治疗诱导的人类肺癌演变

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作者:Ashley Maynard,Caroline E McCoach,Julia K Rotow,Lincoln Harris,Franziska Haderk,D Lucas Kerr,Elizabeth A Yu,Erin L Schenk,Weilun Tan,Alexander Zee,Michelle Tan,Philippe Gui,Tasha Lea,Wei Wu,Anatoly Urisman,Kirk Jones,Rene Sit,Pallav K Kolli,Eric Seeley,Yaron Gesthalter,Daniel D Le,Kevin A Yamauchi,David M Naeger,Sourav Bandyopadhyay,Khyati Shah,Lauren Cech,Nicholas J Thomas,Anshal Gupta,Mayra Gonzalez,Hien Do,Lisa Tan,Bianca Bacaltos,Rafael Gomez-Sjoberg,Matthew Gubens,Thierry Jahan,Johannes R Kratz,David Jablons,Norma Neff,Robert C Doebele,Jonathan Weissman,Collin M Blakely,Spyros Darmanis,Trever G Bivona

Abstract

Lung cancer, the leading cause of cancer mortality, exhibits heterogeneity that enables adaptability, limits therapeutic success, and remains incompletely understood. Single-cell RNA sequencing (scRNA-seq) of metastatic lung cancer was performed using 49 clinical biopsies obtained from 30 patients before and during targeted therapy. Over 20,000 cancer and tumor microenvironment (TME) single-cell profiles exposed a rich and dynamic tumor ecosystem. scRNA-seq of cancer cells illuminated targetable oncogenes beyond those detected clinically. Cancer cells surviving therapy as residual disease (RD) expressed an alveolar-regenerative cell signature suggesting a therapy-induced primitive cell-state transition, whereas those present at on-therapy progressive disease (PD) upregulated kynurenine, plasminogen, and gap-junction pathways. Active T-lymphocytes and decreased macrophages were present at RD and immunosuppressive cell states characterized PD. Biological features revealed by scRNA-seq were biomarkers of clinical outcomes in independent cohorts. This study highlights how therapy-induced adaptation of the multi-cellular ecosystem of metastatic cancer shapes clinical outcomes.

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