Pang Guanting, Li Yaohan, Shi Qiwen, Tian Jingkui, Lou Hanmei, Feng Yue
College of Pharmaceutical Science, Zhejiang University of Technology, Hangzhou, 310014, China.
Hangzhou Institute of Medicine (HIM), Chinese Academy of Sciences, Hangzhou, 310022, China.
Oncol Res. 2025 Mar 19;33(4):821-836. doi: 10.32604/or.2024.053772. eCollection 2025.
Immunotherapies have demonstrated notable clinical benefits in the treatment of cervical cancer (CC). However, the development of therapeutic resistance and diverse adverse effects in immunotherapy stem from complex interactions among biological processes and factors within the tumor immune microenvironment (TIME). Advanced omic technologies offer novel insights into a more expansive and thorough layer of the TIME. Furthermore, integrating multidimensional omics within the frameworks of systems biology and computational methodologies facilitates the generation of interpretable data outputs to characterize the clinical and biological trajectories of tumor behavior. In this review, we present advanced omics technologies that utilize various clinical samples to address scientific inquiries related to immunotherapies for CC, highlighting their utility in identifying metastasis dissemination, recurrence risk, and therapeutic resistance in patients treated with immunotherapeutic approaches. This review elaborates on the strategy for integrating multi-omics data through artificial intelligence algorithms. Additionally, an analysis of the obstacles encountered in the multi-omics analysis process and potential avenues for future research in this domain are presented.
免疫疗法在宫颈癌(CC)治疗中已显示出显著的临床益处。然而,免疫治疗中治疗抗性的产生和多种不良反应源于肿瘤免疫微环境(TIME)内生物过程和因素之间的复杂相互作用。先进的组学技术为更广泛、更深入地了解TIME提供了新的见解。此外,在系统生物学和计算方法的框架内整合多维组学有助于生成可解释的数据输出,以表征肿瘤行为的临床和生物学轨迹。在本综述中,我们介绍了利用各种临床样本解决与CC免疫治疗相关科学问题的先进组学技术,强调了它们在识别接受免疫治疗的患者中的转移扩散、复发风险和治疗抗性方面的效用。本综述阐述了通过人工智能算法整合多组学数据的策略。此外,还分析了多组学分析过程中遇到的障碍以及该领域未来研究的潜在途径。