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一项全面的多组学研究揭示了结直肠癌潜在的预后和诊断生物标志物。

A comprehensive multi-omics study reveals potential prognostic and diagnostic biomarkers for colorectal cancer.

作者信息

Mahajan Mohita, Dhabalia Subodh, Dash Tirtharaj, Sarkar Angshuman, Mondal Sukanta

机构信息

Department of Biological Sciences, Birla Institute of Technology and Science Pilani, K.K. Birla Goa campus, Zuarinagar, Goa 403726, India.

Department of Mathematics, Amrita Vishwa Vidyapeetham, Amritanagar, Coimbatore 64112, India.

出版信息

Int J Biol Macromol. 2025 Apr;303:140443. doi: 10.1016/j.ijbiomac.2025.140443. Epub 2025 Feb 3.

Abstract

BACKGROUND AND OBJECTIVE

Colorectal cancer (CRC) is a complex disease with diverse genetic alterations and causes 10 % of cancer-related deaths worldwide. Understanding its molecular mechanisms is essential for identifying potential biomarkers and therapeutic targets for its effective management.

METHODS

We integrated copy number alterations (CNA) and mutation data via their differentially expressed genes termed as candidate genes (CGs) computed using bioinformatics approaches. Then, using the CGs, we perform Weighted correlation network analysis (WGCNA) and utilise several hazard models such as Univariate Cox, Least Absolute Shrinkage and Selection Operator (LASSO) Cox and multivariate Cox to identify the key genes involved in CRC progression. We used different machine-learning models to demonstrate the discriminative power of selected hub genes among normal and CRC (early and late-stage) samples.

RESULTS

The integration of CNA with mRNA expression identified over 3000 CGs, including CRC-specific driver genes like MYC and APC. In addition, pathway analysis revealed that the CGs are mainly enriched in endocytosis, cell cycle, wnt signalling and mTOR signalling pathways. Hazard models identified four key genes, CASP2, HCN4, LRRC69 and SRD5A1, that were significantly associated with CRC progression and predicted the 1-year, 3-years, and 5-years survival times. WGCNA identified seven hub genes: DSCC1, ETV4, KIAA1549, NOP56, RRS1, TEAD4 and ANKRD13B, which exhibited strong predictive performance in distinguishing normal from CRC (early and late-stage) samples.

CONCLUSIONS

Integrating regulatory information with gene expression improved early versus late-stage prediction. The identified potential prognostic and diagnostic biomarkers in this study may guide us in developing effective therapeutic strategies for CRC management.

摘要

背景与目的

结直肠癌(CRC)是一种具有多种基因改变的复杂疾病,在全球癌症相关死亡中占10%。了解其分子机制对于识别潜在的生物标志物和治疗靶点以实现有效管理至关重要。

方法

我们通过使用生物信息学方法计算的差异表达基因(称为候选基因,CGs)整合了拷贝数改变(CNA)和突变数据。然后,使用这些候选基因,我们进行加权相关网络分析(WGCNA),并利用几种风险模型,如单变量Cox、最小绝对收缩和选择算子(LASSO)Cox以及多变量Cox,来识别参与结直肠癌进展的关键基因。我们使用不同的机器学习模型来证明所选枢纽基因在正常和结直肠癌(早期和晚期)样本中的判别能力。

结果

CNA与mRNA表达的整合鉴定出3000多个候选基因,包括MYC和APC等结直肠癌特异性驱动基因。此外,通路分析表明候选基因主要富集于内吞作用、细胞周期、Wnt信号通路和mTOR信号通路。风险模型鉴定出四个关键基因,CASP2、HCN4、LRRC69和SRD5A1,它们与结直肠癌进展显著相关,并预测了1年、3年和5年的生存时间。WGCNA鉴定出七个枢纽基因:DSCC1、ETV4、KIAA1549、NOP56、RRS1、TEAD4和ANKRD13B,它们在区分正常与结直肠癌(早期和晚期)样本方面表现出强大的预测性能。

结论

将调控信息与基因表达相结合可改善早期与晚期的预测。本研究中鉴定出的潜在预后和诊断生物标志物可能会指导我们制定有效的结直肠癌治疗策略。

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