推进多组学和癌症预后预测方法的扩展见解。

IF 3.1 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Jindong Xie, Junjie Xu, Zhi Tian, Jian Liang, Hailin Tang
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引用次数: 0

摘要

Zhang等人最近的文章利用全面的单细胞数据来鉴定肿瘤细胞群的差异,强调CKS1B+恶性细胞亚群是免疫治疗的潜在靶点。该研究建立了基于该亚群的预后和免疫治疗特征(PIS),在预测肺腺癌(LUAD)预后方面表现良好。该研究还验证了PSMB7在LUAD进展中的作用。然而,也有需要改进的地方。CKS1B+恶性细胞亚群与PIS之间的关系尚不清楚,特别是在为什么选择PSMB7进行功能研究方面。测序数据是从公共数据库中回顾性获得的,缺乏前瞻性临床验证。建议收集LUAD患者组织进行RT-qPCR和RNA-seq分析,寻求外部多中心验证。此外,建议整合新兴的多组学方法来进一步验证研究结果。尽管存在这些局限性,但该研究代表了在理解LUAD和治疗策略方面的进展,并且有望在未来的研究和临床实践中不断评估和完善多组学和机器学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extended Insights Into Advancing Multi-Omics and Prognostic Methods for Cancer Prognosis Forecasting.

Zhang et al.'s recent article utilizes comprehensive single-cell data to identify differences in tumor cell populations, highlighting the CKS1B+ malignant cell subcluster as a potential target for immunotherapy. It develops a prognostic and immunotherapeutic signature (PIS) based on this subcluster, demonstrating good performance in predicting lung adenocarcinoma (LUAD) prognosis. The study also validates the role of PSMB7 in LUAD progression. However, there are areas for improvement. There is a lack of clarity regarding the relationship between the CKS1B+ malignant cell subcluster and the PIS, particularly in terms of why PSMB7 was selected for functional studies. The sequencing data are retrospectively obtained from public databases and lack prospective clinical validation. It is suggested to collect LUAD patient tissues for RT-qPCR and RNA-seq analysis and seek external multi-center validations. Additionally, integrating emerging multi-omics methods is recommended to further validate the findings. Despite these limitations, the study represents progress in understanding LUAD and treatment strategies, and continuous evaluation and refinement of multi-omics and machine learning methods are expected for future research and clinical practice.

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CiteScore
3.50
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