Multi-omics approaches for biomarker discovery in predicting the response of esophageal cancer to neoadjuvant therapy: A multidimensional perspective

IF 12 1区 医学 Q1 PHARMACOLOGY & PHARMACY
Zhi Yang , Fada Guan , Lawrence Bronk , Lina Zhao
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Abstract

Neoadjuvant chemoradiotherapy (NCRT) followed by surgery has been established as the standard treatment strategy for operable locally advanced esophageal cancer (EC). However, achieving pathologic complete response (pCR) or near pCR to NCRT is significantly associated with a considerable improvement in survival outcomes, while pCR patients may help organ preservation for patients by active surveillance to avoid planned surgery. Thus, there is an urgent need for improved biomarkers to predict EC chemoradiation response in research and clinical settings. Advances in multiple high-throughput technologies such as next-generation sequencing have facilitated the discovery of novel predictive biomarkers, specifically based on multi-omics data, including genomic/transcriptomic sequencings and proteomic/metabolomic mass spectra. The application of multi-omics data has shown the benefits in improving the understanding of underlying mechanisms of NCRT sensitivity/resistance in EC. Particularly, the prominent development of artificial intelligence (AI) has introduced a new direction in cancer research. The integration of multi-omics data has significantly advanced our knowledge of the disease and enabled the identification of valuable biomarkers for predicting treatment response from diverse dimension levels, especially with rapid advances in biotechnological and AI methodologies. Herein, we summarize the current status of research on the use of multi-omics technologies in predicting NCRT response for EC patients. Current limitations, challenges, and future perspectives of these multi-omics platforms will be addressed to assist in experimental designs and clinical use for further integrated analysis.

Abstract Image

Abstract Image

预测食管癌对新辅助治疗反应的多组学生物标志物发现方法:多维视角
新辅助化放疗(NCRT)后再手术已被确立为可手术局部晚期食管癌(EC)的标准治疗策略。然而,新辅助化疗获得病理完全反应(pCR)或接近pCR与生存率的显著改善密切相关,而pCR患者可通过主动监测来避免计划中的手术,从而有助于患者的器官保存。因此,在研究和临床环境中迫切需要改进的生物标志物来预测EC化疗反应。新一代测序等多种高通量技术的进步促进了新型预测性生物标志物的发现,特别是基于多组学数据(包括基因组/转录组测序和蛋白质组/代谢组质谱)的预测性生物标志物的发现。多组学数据的应用已显示出其在提高对欧共体 NCRT 敏感性/耐药性潜在机制的认识方面的优势。尤其是人工智能(AI)的显著发展为癌症研究引入了新的方向。特别是随着生物技术和人工智能方法学的快速发展,多组学数据的整合极大地推动了我们对疾病的认识,并使我们能够从不同维度识别出有价值的生物标志物来预测治疗反应。在此,我们总结了利用多组学技术预测心血管疾病患者 NCRT 反应的研究现状。我们将探讨这些多组学平台目前存在的局限性、面临的挑战和未来的展望,以协助实验设计和临床使用,进一步开展综合分析。
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来源期刊
CiteScore
23.00
自引率
0.70%
发文量
222
审稿时长
90 days
期刊介绍: Pharmacology & Therapeutics, in its 20th year, delivers lucid, critical, and authoritative reviews on current pharmacological topics.Articles, commissioned by the editor, follow specific author instructions.This journal maintains its scientific excellence and ranks among the top 10 most cited journals in pharmacology.
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