Department of General Surgery, Chinese PLA General Hospital, No. 28, Fuxing Road, Haidian District, Beijing, 100853, People's Republic of China.
BMC Gastroenterol. 2022 Mar 17;22(1):127. doi: 10.1186/s12876-022-02200-5.
Colon cancer remains one of the most common malignancies across the world. Thus far, a biomarker, which can comprehensively predict the survival outcomes, clinical characteristics, and therapeutic sensitivity, is still lacking.
We leveraged transcriptomic data of colon cancer from the existing datasets and constructed immune-related lncRNA (irlncRNA) pairs. After integrating with clinical survival data, we performed differential analysis and identified 11 irlncRNAs signature using Lasso regression analysis. We next plotted the 1-, 5-, and 10-year curve lines of receiver operating characteristics, calculated the areas under the curve, and recognized the optimal cutoff point. Then, we validated the pair-risk model in terms of the survival outcomes of the patients involved. Moreover, we tested the reliability of the model for predicting tumor aggressiveness and therapeutic susceptibility of colon cancer. Additionally, we reemployed the 11 of irlncRNAs involved in the pair-risk model to construct an expression-risk model to predict the prognostic outcomes of the patients involved.
We recognized a total of 377 differentially expressed irlncRNAs (DEirlcRNAs), including 28 low-expressed and 349 high-expressed irlncRNAs in colon cancer patients. After performing a univariant Cox analysis, we identified 115 risk irlncRNAs that were significantly correlated with survival outcomes of patients involved. By taking the overlap of the DEirlcRNAs and the risk irlncRNAs, we ultimately recognized 55 irlncRNAs as core irlncRNAs. Then, we established a Cox HR model (pair-risk model) as well as an expression HR model (exp-risk model) based on 11 of the 55 core irlncRNAs. We found that both of the two models significantly outperformed the commonly used clinical characteristics, including age, T, N, and M stages when predicting survival outcomes. Moreover, we validated the pair-risk model as a potential tool for studying the tumor microenvironment of colon cancer and drug susceptibility. Additionally, we noticed that combinational use of the pair-risk model and the exp-risk model yielded a more robust approach for predicting the survival outcomes of patients with colon cancer.
We recognized 11 irlncRNAs and created a pair-risk model and an exp-risk model, which have the potential to predict clinical characteristics of colon cancer, either solely or conjointly.
结肠癌仍然是全球最常见的恶性肿瘤之一。到目前为止,仍然缺乏一种能够全面预测生存结果、临床特征和治疗敏感性的生物标志物。
我们利用现有数据集的结肠癌转录组数据构建了免疫相关 lncRNA(irlncRNA)对。在与临床生存数据整合后,我们进行了差异分析,并使用 Lasso 回归分析确定了 11 个 irlncRNA 特征。接下来,我们绘制了 1 年、5 年和 10 年的接收者操作特征曲线,计算了曲线下面积,并确定了最佳截断点。然后,我们验证了该配对风险模型在患者生存结果方面的适用性。此外,我们还测试了该模型预测结肠癌侵袭性和治疗敏感性的可靠性。此外,我们还重新使用配对风险模型中涉及的 11 个 irlncRNA 构建了一个表达风险模型,以预测患者的预后结果。
我们总共识别出 377 个差异表达的 irlncRNA(DEirlcRNA),其中包括结肠癌患者中 28 个低表达和 349 个高表达的 irlncRNA。通过进行单变量 Cox 分析,我们确定了 115 个与患者生存结果显著相关的风险 irlncRNA。通过取 DEirlcRNA 和风险 irlncRNA 的重叠,我们最终确定了 55 个 irlncRNA 作为核心 irlncRNA。然后,我们基于 55 个核心 irlncRNA 中的 11 个建立了 Cox HR 模型(配对风险模型)和表达 HR 模型(表达风险模型)。我们发现,这两个模型在预测生存结果时都明显优于常用的临床特征,包括年龄、T、N 和 M 分期。此外,我们验证了配对风险模型是研究结肠癌肿瘤微环境和药物敏感性的潜在工具。此外,我们注意到,配对风险模型和表达风险模型的联合使用为预测结肠癌患者的生存结果提供了一种更稳健的方法。
我们识别出 11 个 irlncRNA,并建立了配对风险模型和表达风险模型,它们具有单独或联合预测结肠癌临床特征的潜力。