Single-cell RNA sequencing demonstrates the molecular and cellular reprogramming of metastatic lung adenocarcinoma

Nayoung Kim(Samsung Medical Center), Hong Kwan Kim(Samsung Medical Center), Kyungjong Lee(Samsung Medical Center), Yourae Hong(Samsung (South Korea)), Jong Ho Cho(Samsung Medical Center), Jung Won Choi(Samsung Medical Center), Jung-Il Lee(Samsung Medical Center), Yeon‐Lim Suh(Samsung Medical Center), Bo Mi Ku(Samsung Medical Center), Hye Hyeon Eum(Samsung Medical Center), Soyean Choi(Samsung Medical Center), Yoon‐La Choi(Samsung (South Korea)), Je‐Gun Joung(Samsung Medical Center), Woong‐Yang Park(Samsung (South Korea)), Hyun Ae Jung(Samsung Medical Center), Jong‐Mu Sun(Samsung Medical Center), Se‐Hoon Lee(Samsung Medical Center), Jin Seok Ahn(Samsung Medical Center), Keunchil Park(Samsung Medical Center), Myung‐Ju Ahn(Samsung Medical Center), Hae‐Ock Lee(Samsung (South Korea))
Nature Communications
May 8, 2020
Cited by 1,321Open Access
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Abstract

Abstract Advanced metastatic cancer poses utmost clinical challenges and may present molecular and cellular features distinct from an early-stage cancer. Herein, we present single-cell transcriptome profiling of metastatic lung adenocarcinoma, the most prevalent histological lung cancer type diagnosed at stage IV in over 40% of all cases. From 208,506 cells populating the normal tissues or early to metastatic stage cancer in 44 patients, we identify a cancer cell subtype deviating from the normal differentiation trajectory and dominating the metastatic stage. In all stages, the stromal and immune cell dynamics reveal ontological and functional changes that create a pro-tumoral and immunosuppressive microenvironment. Normal resident myeloid cell populations are gradually replaced with monocyte-derived macrophages and dendritic cells, along with T-cell exhaustion. This extensive single-cell analysis enhances our understanding of molecular and cellular dynamics in metastatic lung cancer and reveals potential diagnostic and therapeutic targets in cancer-microenvironment interactions.


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