前列腺癌
癌症研究
癌细胞
细胞
循环肿瘤细胞
人口
抗体
癌症干细胞
生物
癌症
化学
干细胞
细胞生物学
医学
免疫学
转移
内科学
生物化学
环境卫生
作者
Kenji Yumoto,Jibraan Rashid,Kristina G. Ibrahim,Steven P. Zielske,Yu Wang,Maiko Omi,Ann M. Decker,Younghun Jung,Dan Sun,Henriette A. Remmer,Yuji Mishina,Laura Buttitta,Russell S. Taichman,Frank C. Cackowski
标识
DOI:10.1016/j.tranon.2023.101642
摘要
Quiescent prostate cancer (PCa) cells are common in tumors but are often resistant to chemotherapy. Quiescent PCa cells are also enriched for a stem-like tumor initiating population, and can lead to recurrence after dormancy. Unfortunately, quiescent PCa cells are difficult to identify and / or target with treatment in part because the relevant markers are intracellular and regulated by protein stability. We addressed this problem by utilizing PCa cells expressing fluorescent markers for CDKN1B (p27) and CDT1, which can separate viable PCa cells into G0, G1, or combined S/G2/M populations. We used FACS to collect G1 and G0 PC3 PCa cells, isolated membrane proteins, and analyzed protein abundance in G0 vs G1 cells by gas chromatography mass spectrometry. Enrichment analysis identified nucleocytoplasmic transport as the most significantly different pathway. To identify cell surface proteins potentially identifying quiescent PCa cells for future patient samples or for antibody based therapeutic research, we focused on differentially abundant plasma membrane proteins, and identified ERBB2 (HER2) as a cell surface protein enriched on G0 PCa cells. High HER2 on the cell membrane is associated with quiescence in PCa cells and likely induced by the bone microenvironment. Using a drug conjugated anti-HER2 antibody (trastuzumab emtansine) in a mouse PCa xenograft model delayed metastatic tumor growth, suggesting approaches that target HER2-high cells may be beneficial in treating PCa. We propose that HER2 is deserving of further study in PCa as a target on quiescent cells to prevent recurrence, decrease chemotherapy resistance, or eradicate minimal residual disease.
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