前列腺癌
前列腺
前列腺切除术
色丛
突变
癌症的体细胞进化
LNCaP公司
腺癌
医学
肿瘤异质性
遗传异质性
癌症研究
生物
计算生物学
癌症
遗传学
基因
PCA3系列
表型
作者
Fei Su,Yaoguang Zhang,Dalei Zhang,Yaqun Zhang,Cheng Pang,Yingying Huang,Miao Wang,Luwei Cui,Lei He,Jinsong Zhang,Lihui Zou,Junhua Zhang,Wenqinq Li,Lin Li,Jian‐Yong Shao,Jie Ma,Fei Xiao,Ming Liu
标识
DOI:10.1016/j.eururo.2018.06.005
摘要
Prostate adenocarcinoma (PCa) is a complex genetic disease, and the implementation of personalized treatment in PCa faces challenges due to significant inter- and intrapatient tumor heterogeneities. To systematically explore the genomic complexity of tumor cells with different Gleason scores (GSs) in PCa. We performed single-cell whole genome sequencing of 17 tumor cells from localized lesions with distinct GS and matched four normal samples from two prostatectomy patients. All classes of genomic alterations were identified, including substitutions, insertions/deletions, copy number alterations, and rearrangements. Significant spatial, intra- and intertumoral heterogeneities were observed at the cellular level. In the patient 1, all cells shared the same TP53 driver mutation, implying a monoclonal origin of PCa. In the patient 2, only a subpopulation of cells contained the TP53 driver mutation, whereas other cells carried different driver mutations, indicating a typical polyclonal model with separate clonal cell expansions. The tumor cells from different sides of prostate owned various mutation patterns. Considerable neoantigens were predicted among different cells, implying unknown immune editing components helping prostate tumor cells escaping from immune surveillance. There is a significant spatial genomic heterogeneity even in the same PCa patient. Our study also provides the first genome-wide evidence at single-cell level, supporting that the origin of PCa could be either polyclonal or monoclonal, which has implications for treatment decisions for prostate cancer. We reported the first single-cell whole genomic data of prostate adenocarcinoma (PCa) from different Gleason scores. Identification of these genetic alterations may help understand PCa tumor progression and clonal evolution.
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