Deciphering cell lineage specification of human lung adenocarcinoma with single-cell RNA sequencing

Zhoufeng Wang(Chinese Academy of Medical Sciences & Peking Union Medical College), Zhe Li(Sinotech Genomics (China)), Kun Zhou(Sichuan University), Chengdi Wang(Sichuan University), Lili Jiang(Sichuan University), Li Zhang(Sichuan University), Ying Yang(Sichuan University), Wenxin Luo(Sichuan University), Wenliang Qiao(Sichuan University), Gang Wang(Sichuan University), Yinyun Ni(Sichuan University), Shuiping Dai(Sichuan University), Tingting Guo(Sichuan University), Guiyi Ji(Sichuan University), Minjie Xu(Sinotech Genomics (China)), Yiying Liu(Sinotech Genomics (China)), Zhixi Su(Sinotech Genomics (China)), Guowei Che(Sichuan University), Weimin Li(Chinese Academy of Medical Sciences & Peking Union Medical College)
Nature Communications
November 11, 2021
Cited by 196Open Access
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Abstract

Lung adenocarcinomas (LUAD) arise from precancerous lesions such as atypical adenomatous hyperplasia, which progress into adenocarcinoma in situ and minimally invasive adenocarcinoma, then finally into invasive adenocarcinoma. The cellular heterogeneity and molecular events underlying this stepwise progression remain unclear. In this study, we perform single-cell RNA sequencing of 268,471 cells collected from 25 patients in four histologic stages of LUAD and compare them to normal cell types. We detect a group of cells closely resembling alveolar type 2 cells (AT2) that emerged during atypical adenomatous hyperplasia and whose transcriptional profile began to diverge from that of AT2 cells as LUAD progressed, taking on feature characteristic of stem-like cells. We identify genes related to energy metabolism and ribosome synthesis that are upregulated in early stages of LUAD and may promote progression. MDK and TIMP1 could be potential biomarkers for understanding LUAD pathogenesis. Our work shed light on the underlying transcriptional signatures of distinct histologic stages of LUAD progression and our findings may facilitate early diagnosis.


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