Huang Ying, Yang Fan, Zhang Wenyi, Zhou Yupeng, Duan Dengyi, Liu Shuang, Li Jianmin, Zhao Yang
Department of Radiology, The Second Hospital of Tianjin Medical University, Tianjin, China.
Tianjin Institute of Urology, The Second Hospital of Tianjin Medical University, Tianjin, China.
Front Genet. 2023 Mar 30;14:1135365. doi: 10.3389/fgene.2023.1135365. eCollection 2023.
Prostate cancer (PCa) is highly heterogeneous, which makes it difficult to precisely distinguish the clinical stages and histological grades of tumor lesions, thereby leading to large amounts of under- and over-treatment. Thus, we expect the development of novel prediction approaches for the prevention of inadequate therapies. The emerging evidence demonstrates the pivotal role of lysosome-related mechanisms in the prognosis of PCa. In this study, we aimed to identify a lysosome-related prognostic predictor in PCa for future therapies. The PCa samples involved in this study were gathered from The Cancer Genome Atlas database (TCGA) ( = 552) and cBioPortal database ( = 82). During screening, we categorized PCa patients into two immune groups based on median ssGSEA scores. Then, the Gleason score and lysosome-related genes were included and screened out by using a univariate Cox regression analysis and the least absolute shrinkage and selection operation (LASSO) analysis. Following further analysis, the probability of progression free interval (PFI) was modeled by using unadjusted Kaplan-Meier estimation curves and a multivariable Cox regression analysis. A receiver operating characteristic (ROC) curve, nomogram and calibration curve were used to examine the predictive value of this model in discriminating progression events from non-events. The model was trained and repeatedly validated by creating a training set ( = 400), an internal validation set ( = 100) and an external validation ( = 82) from the cohort. Following grouping by ssGSEA score, the Gleason score and two LRGs-neutrophil cytosolic factor 1 (NCF1) and gamma-interferon-inducible lysosomal thiol reductase (IFI30)-were screened out to differentiate patients with or without progression (1-year AUC = 0.787; 3-year AUC = 0.798; 5-year AUC = 0.772; 10-year AUC = 0.832). Patients with a higher risk showed poorer outcomes ( < 0.0001) and a higher cumulative hazard ( < 0.0001). Besides this, our risk model combined LRGs with the Gleason score and presented a more accurate prediction of PCa prognosis than the Gleason score alone. In three validation sets, our model still achieved high prediction rates. In conclusion, this novel lysosome-related gene signature, coupled with the Gleason score, works well in PCa for prognosis prediction.
前列腺癌(PCa)具有高度异质性,这使得精确区分肿瘤病变的临床分期和组织学分级变得困难,从而导致大量治疗不足和过度治疗的情况。因此,我们期望开发新的预测方法以避免治疗不当。新出现的证据表明溶酶体相关机制在PCa预后中起关键作用。在本研究中,我们旨在确定PCa中一种与溶酶体相关的预后预测指标,用于未来的治疗。本研究中涉及的PCa样本来自癌症基因组图谱数据库(TCGA)(n = 552)和cBioPortal数据库(n = 82)。在筛选过程中,我们根据中位单样本基因集富集分析(ssGSEA)分数将PCa患者分为两个免疫组。然后,纳入Gleason评分和与溶酶体相关的基因,并通过单变量Cox回归分析和最小绝对收缩和选择算子(LASSO)分析将其筛选出来。经过进一步分析,使用未调整的Kaplan-Meier估计曲线和多变量Cox回归分析对无进展生存期(PFI)的概率进行建模。采用受试者工作特征(ROC)曲线、列线图和校准曲线来检验该模型在区分进展事件与非进展事件方面的预测价值。通过从队列中创建一个训练集(n = 400)、一个内部验证集(n = 100)和一个外部验证集(n = 82)对模型进行训练和反复验证。根据ssGSEA分数分组后,筛选出Gleason评分和两个与溶酶体相关的基因——中性粒细胞胞质因子1(NCF1)和γ-干扰素诱导的溶酶体巯基还原酶(IFI30)——以区分有无进展的患者(1年AUC = 0.787;3年AUC = 0.798;5年AUC = 0.772;10年AUC = 0.832)。风险较高的患者预后较差(P < 0.0001)且累积风险较高(P < 0.0001)。除此之外,我们的风险模型将与溶酶体相关的基因与Gleason评分相结合,比单独的Gleason评分能更准确地预测PCa预后。在三个验证集中,我们的模型仍具有较高的预测率。总之,这种新的与溶酶体相关的基因特征,结合Gleason评分,在PCa预后预测中表现良好。