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基于知识的临床-分子综合分析改善结肠癌预后。

Improving the Prognosis of Colon Cancer through Knowledge-Based Clinical-Molecular Integrated Analysis.

机构信息

Engineering Research Center of EMR and Intelligent Expert System, Ministry of Education, College of Biomedical Engineering and Instrument Science, Zhejiang University, No. 38 Zheda Road, Hangzhou, 310027 Zhejiang Province, China.

Department of Surgical Oncology, Second Affiliated Hospital, Zhejiang University School of Medicine, No. 88 Jiefang Road, Hangzhou, 31009 Zhejiang Province, China.

出版信息

Biomed Res Int. 2021 Apr 7;2021:9987819. doi: 10.1155/2021/9987819. eCollection 2021.

Abstract

BACKGROUND

Colon cancer has high morbidity and mortality rates among cancers. Existing clinical staging systems cannot accurately assess the prognostic risk of colon cancer patients. This study was aimed at improving the prognostic performance of the colon cancer clinical staging system through knowledge-based clinical-molecular integrated analysis.

METHODS

374 samples from The Cancer Genome Atlas Colon Adenocarcinoma (TCGA-COAD) dataset were used as the discovery set. 98 samples from the Clinical Proteomic Tumor Analysis Consortium (CPTAC) dataset were used as the validation set. After converting gene expression data into pathway dysregulation scores (PDSs), the random survival forest and Cox model were used to identify the best prognostic supplementary factors. The corresponding clinical-molecular integrated prognostic model was built, and the improvement of prognostic performance was assessed by comparing with the clinical prognostic model.

RESULTS

The PDS of 14 pathways played important roles in prognostic prediction together with clinical prognostic factors through the random survival forest. Further screening with the Cox model revealed that the PDS of the pathway hsa00532 was the best clinical prognostic supplementary factor. The integrated prognostic model constructed with clinical factors and the identified molecular factor was superior to the clinical prognostic model in discriminative performance. Kaplan-Meier (KM) curves of patients grouped by PDS suggested that patients with a higher PDS had a poorer prognosis, and stage II patients could be distinctly distinguished.

CONCLUSIONS

Based on the knowledge-based clinical-molecular integrated analysis, a clinical-molecular integrated prognostic model and corresponding nomogram for colon cancer overall survival prognosis was built, which showed better prognostic performance than the clinical prognostic model. The PDS of the pathway hsa00532 is a considerable clinical prognostic supplementary factor for colon cancer and may represent a potential prognostic marker for stage II colon cancer. The PDS calculation involves only 16 genes, which supports its potential for clinical application.

摘要

背景

结肠癌在癌症中具有较高的发病率和死亡率。现有的临床分期系统无法准确评估结肠癌患者的预后风险。本研究旨在通过基于知识的临床-分子综合分析来提高结肠癌临床分期系统的预后性能。

方法

使用来自癌症基因组图谱结肠腺癌(TCGA-COAD)数据集的 374 个样本作为发现集。使用来自临床蛋白质组肿瘤分析联盟(CPTAC)数据集的 98 个样本作为验证集。将基因表达数据转换为途径失调评分(PDS)后,使用随机生存森林和 Cox 模型来识别最佳预后补充因素。构建相应的临床-分子综合预后模型,并通过与临床预后模型进行比较来评估预后性能的改善。

结果

随机生存森林表明,14 条途径的 PDS 与临床预后因素一起在预后预测中发挥重要作用。Cox 模型的进一步筛选揭示了途径 hsa00532 的 PDS 是最佳的临床预后补充因素。与临床预后模型相比,构建的包含临床因素和鉴定的分子因素的综合预后模型在判别性能上更优。根据 PDS 分组的患者 Kaplan-Meier(KM)曲线表明,PDS 较高的患者预后较差,且可明显区分 II 期患者。

结论

基于基于知识的临床-分子综合分析,构建了结肠癌总体生存预后的临床-分子综合预后模型和相应的列线图,其预后性能优于临床预后模型。途径 hsa00532 的 PDS 是结肠癌有意义的临床预后补充因素,可能代表 II 期结肠癌的潜在预后标志物。PDS 的计算仅涉及 16 个基因,这支持了其在临床应用中的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9707/8051523/a7cd87dfe81d/BMRI2021-9987819.001.jpg

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