肾透明细胞癌转录组的轨迹图确定了与分期无关的有利预后预测因素

IF 1.4 4区 医学 Q4 ONCOLOGY
Jie Sheng, Zihan Zheng, Xuejuan Li, Meijing Li, Feng Zheng
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引用次数: 0

摘要

透明细胞肾细胞癌(ccRCC)的预后通常以临床分期为基础,但有些患者的预后会有所不同。转录组分析对了解ccRCC的进展至关重要,但它与临床分期在预测预后方面的相关性尚不确定。我们的目标是采用轨迹推断法研究 ccRCC 的分子进展,并找出判断疾病进展和预后的潜在新标记物。 利用轨迹推断方法,我们基于转录组图谱描述了ccRCC的分子进展特征。此外,我们还整合了通路活性、免疫反应和 miRNA 图谱评分,以确定轨迹进展的可能驱动因素。 基于轨迹的评分显著改善了患者的预后预测,在低分级肿瘤患者中识别出了10个风险因素,在高级别肿瘤患者中识别出了9个保护因素。从机理上讲,我们证明了溶质轻载体转运体与 ccRCC 进展之间的关联,通过免疫组化验证,SLC7A5 的表达在转移性患者中有所增加。 ccRCC转录组的轨迹分析可用于模拟疾病的分子进展,并有助于ccRCC的预后。SLC7A5在ccRCC中异常表达,可能是预后不良的风险因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trajectory mapping of renal clear cell carcinoma transcriptomes identifies stage-independent predictors of favorable prognosis
The prognosis of clear cell renal cell carcinoma (ccRCC) is typically based on clinical stage, but it can vary for some patients. Transcriptomic analysis is vital for understanding ccRCC progression, though its correlation with the clinical stage in predicting prognosis is uncertain. We aim to employ trajectory inference to study ccRCC’s molecular progression and identify potential new markers for judging disease progression and prognosis. Using a trajectory inference approach, we characterize the molecular progression profile of ccRCC based on transcriptome profiling. Additional pathway activity, immune response, and miRNA profiling scoring were integrated to identify possible drivers of trajectory progression. Scoring based on the trajectory demonstrates a significant improvement in patient prognosis prediction and identifies 10 risk factors in patients with low-grade tumors, and nine protective factors in patients with high-grade tumors. Mechanistically, we demonstrate an association between solute light carrier transporters are associated with ccRCC progression, with SLC7A5 expression being validated through immunohistochemistry to increase in metastatic patients. Trajectory analysis of ccRCC transcriptomes can be used to model the molecular progression of disease and may assist in ccRCC prognosis. SLC7A5 is aberrantly expressed in ccRCC and may be a risk factor for poor prognosis.
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来源期刊
Oncologie
Oncologie 医学-肿瘤学
CiteScore
1.30
自引率
11.10%
发文量
32
审稿时长
6-12 weeks
期刊介绍: Oncologie is aimed to the publication of high quality original research articles, review papers, case report, etc. with an active interest in vivo or vitro study of cancer biology. Study relating to the pathology, diagnosis, and advanced treatment of all types of cancers, as well as research from any of the disciplines related to this field of interest. The journal has English and French bilingual publication.
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