Genomic evolutionary trajectory of metastatic squamous cell carcinoma of the lung

肺转移性鳞状细胞癌的基因组进化轨迹

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作者:Arthur Krause, Luca Roma, Thomas Lorber, Tanja Dietsche, Valeria Perrina, David C Müller, Didier Lardinois, Christian Ruiz, Spasenija Savic Prince, Salvatore Piscuoglio, Charlotte K Y Ng, Lukas Bubendorf

Background

The extent of inter- and intratumoral genomic heterogeneity and the clonal evolution of metastatic squamous cell carcinoma of the lung (LUSC) are poorly understood. Genomic studies of LUSC are challenged by their low tumor cell content. We sought to define the genomic landscape and evolutionary trajectories of metastatic LUSC combining nuclei-flow sorting and whole exome sequencing.

Conclusions

Our results demonstrate a close genomic relationship between primary LUSCs and their matched metastases, suggesting late dissemination of the metastases from the primary tumors during tumor evolution.

Methods

Five patients with primary LUSC and six matched metastases were investigated. Tumor nuclei were sorted based on ploidy and expression of cytokeratin to enrich for tumor cells for whole exome sequencing.

Results

Flow-sorting increased the mean tumor purity from 26% (range, 12-50%) to 73% (range, 42-93%). Overall, primary LUSCs and their matched metastases shared a median of 79% (range, 67-85%) of copy number aberrations (CNAs) and 74% (range, 65-94%) of non-synonymous mutations, including in tumor suppressor genes such as TP53. Furthermore, the ploidy of the tumors remained unchanged between primary and metastasis in 4/5 patients over time. We found differences in the mutational signatures of shared mutations compared to the private mutations in the primary or metastasis. Conclusions: Our results demonstrate a close genomic relationship between primary LUSCs and their matched metastases, suggesting late dissemination of the metastases from the primary tumors during tumor evolution.

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