Rong Guo, Xiting Wang, Yinju Yang, Jiaying Zou, Ming Li, Zeying Li, Yuan Yan, Nan Lan, JianYun Nie, Yiyin Tang, Guojun Zhang
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Our study hypothesized that multivariate long non-coding RNA (lncRNA) expression profiles, when systematically integrated into a composite model, may synergistically refine postoperative risk categorization and enhance prognostic forecasting precision in this patient cohort.</p><p><strong>Methods: </strong>For the discovery set, lncRNA expression profiling associated with breast cancer progression was discovered by analyzing the differential expression profiles in three paired primary breast cancer tumor tissues and liver metastases. We found 12 distinctially expressed lncRNAs. A total of 400 patients were consecutively recruited and randomized to either training group or validation group. We first confirmed the expression of these lncRNAs using qRT-PCR. Subsequently, employing the LASSO Cox regression model with five lncRNA features as covariates, we constructed a five-lncRNA signature. We then validated this signature in an independent cohort to assess its prognostic and predictive capabilities in disease-free survival (DFS) duration.</p><p><strong>Results: </strong>We constructed a classifier using the LASSO model, incorporating five specific lncRNAs: CBR3-AS1, HNF4A-AS1, LINC00622, LINC00993 and LINC00342. Utilizing this tool, we successfully stratified patients into two distinct categories: high- and low-risk groups. Significant differences were observed in both DFS and overall survival (OS) between the two groups. Within the initial patient cohort, significant differences of 5-year DFS was observed across high- and low-risk group (61.1% vs. 92.2%, HR 6.3, 95% CI 3.5-11.6; P < 0.001). The 5-year DFS rate was 72.9% and 85.4% for high- and low-risk group respectively in validation cohort (HR 2.6, 95% CI: 1.5-4.5; P = 0.001). The 5-lncRNA signature emerged as an independent prognostic indicator, demonstrating superior prognostic value compared to conventional clinicopathological risk factors.</p><p><strong>Conclusions: </strong>The integrated model combining 5-lncRNA molecular signature with clinical parameters demonstrates significant prognostic stratification capacity and therapeutic decision-making value in EBC management. 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引用次数: 0
摘要
背景:现有的分期方法在精确预测早期乳腺癌(EBC)手术患者的复发可能性和生存结果方面存在不足。我们的研究假设,将多变量长链非编码RNA (lncRNA)表达谱系统地整合到一个复合模型中,可以协同改进该患者队列的术后风险分类并提高预后预测精度。方法:发现组通过分析3对原发性乳腺癌肿瘤组织和肝转移灶的差异表达谱,发现lncRNA表达谱与乳腺癌进展相关。我们发现了12个不同表达的lncrna。总共招募了400名患者,并随机分为训练组和验证组。我们首先使用qRT-PCR证实了这些lncrna的表达。随后,我们采用LASSO Cox回归模型,以5个lncRNA特征作为协变量,构建了5个lncRNA特征。然后,我们在一个独立的队列中验证了这一特征,以评估其对无病生存(DFS)持续时间的预后和预测能力。结果:我们使用LASSO模型构建了一个分类器,包含了5个特异性lncrna: CBR3-AS1、HNF4A-AS1、LINC00622、LINC00993和LINC00342。利用这个工具,我们成功地将患者分为两个不同的类别:高风险组和低风险组。两组患者的DFS和总生存期(OS)均有显著差异。在初始患者队列中,高危组和低危组的5年DFS存在显著差异(61.1% vs. 92.2%, HR 6.3, 95% CI 3.5-11.6;结论:5-lncRNA分子特征与临床参数相结合的综合模型在EBC治疗中具有显著的预后分层能力和治疗决策价值。它可以帮助患者咨询和个性化疾病管理。
Prognostic value of a lncRNA signature in early-stage invasive breast cancer patients.
Background: Existing staging approaches fall short in precisely forecasting the likelihood of recurrence and survival outcomes among patients undergoing surgery for early-stage breast cancer (EBC). Our study hypothesized that multivariate long non-coding RNA (lncRNA) expression profiles, when systematically integrated into a composite model, may synergistically refine postoperative risk categorization and enhance prognostic forecasting precision in this patient cohort.
Methods: For the discovery set, lncRNA expression profiling associated with breast cancer progression was discovered by analyzing the differential expression profiles in three paired primary breast cancer tumor tissues and liver metastases. We found 12 distinctially expressed lncRNAs. A total of 400 patients were consecutively recruited and randomized to either training group or validation group. We first confirmed the expression of these lncRNAs using qRT-PCR. Subsequently, employing the LASSO Cox regression model with five lncRNA features as covariates, we constructed a five-lncRNA signature. We then validated this signature in an independent cohort to assess its prognostic and predictive capabilities in disease-free survival (DFS) duration.
Results: We constructed a classifier using the LASSO model, incorporating five specific lncRNAs: CBR3-AS1, HNF4A-AS1, LINC00622, LINC00993 and LINC00342. Utilizing this tool, we successfully stratified patients into two distinct categories: high- and low-risk groups. Significant differences were observed in both DFS and overall survival (OS) between the two groups. Within the initial patient cohort, significant differences of 5-year DFS was observed across high- and low-risk group (61.1% vs. 92.2%, HR 6.3, 95% CI 3.5-11.6; P < 0.001). The 5-year DFS rate was 72.9% and 85.4% for high- and low-risk group respectively in validation cohort (HR 2.6, 95% CI: 1.5-4.5; P = 0.001). The 5-lncRNA signature emerged as an independent prognostic indicator, demonstrating superior prognostic value compared to conventional clinicopathological risk factors.
Conclusions: The integrated model combining 5-lncRNA molecular signature with clinical parameters demonstrates significant prognostic stratification capacity and therapeutic decision-making value in EBC management. It may help patients consult and personalize disease management.
期刊介绍:
Cancer Cell International publishes articles on all aspects of cancer cell biology, originating largely from, but not limited to, work using cell culture techniques.
The journal focuses on novel cancer studies reporting data from biological experiments performed on cells grown in vitro, in two- or three-dimensional systems, and/or in vivo (animal experiments). These types of experiments have provided crucial data in many fields, from cell proliferation and transformation, to epithelial-mesenchymal interaction, to apoptosis, and host immune response to tumors.
Cancer Cell International also considers articles that focus on novel technologies or novel pathways in molecular analysis and on epidemiological studies that may affect patient care, as well as articles reporting translational cancer research studies where in vitro discoveries are bridged to the clinic. As such, the journal is interested in laboratory and animal studies reporting on novel biomarkers of tumor progression and response to therapy and on their applicability to human cancers.