乳腺癌的多组学分析:推进诊断和临床护理的实用工具。

IF 3.9 3区 医学 Q1 PATHOLOGY
Emna El Gazzah, Scott Parker, Mariaelena Pierobon
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引用次数: 0

摘要

导言:乳腺癌仍然是一个重大的全球健康挑战。虽然精确肿瘤学的进步有助于改善患者的预后,并提供了对驱动疾病的生物学机制的更深入了解,但从历史上看,研究和患者的治疗分配严重依赖于单组学方法,分析个体分子维度,如基因组学、转录组学或蛋白质组学。虽然这些研究为乳腺癌生物学提供了深刻的见解,但它们往往无法全面了解这种疾病复杂的分子结构。涵盖的领域:在这篇综述中,作者探讨了乳腺癌领域多组学研究的最新进展,并使用临床数据显示多组学整合如何能够更全面地了解乳腺癌的分子改变及其功能后果。专家意见:多组学研究和人工智能的整体发展有望通过潜在的改进预后模型和治疗选择来补充精确诊断。克服成本、数据复杂性和缺乏标准化等挑战,对于释放多组学和人工智能在乳腺癌患者护理中的全部潜力,从而推进个性化治疗并改善患者预后至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-omic profiling in breast cancer: utility for advancing diagnostics and clinical care.

Introduction: Breast cancer remains a major global health challenge. While advances in precision oncology have contributed to improvements in patient outcomes and provided a deeper understanding of the biological mechanisms that drive the disease, historically, research and patients' allocation to treatment have heavily relied on single-omic approaches, analyzing individual molecular dimensions such as genomics, transcriptomics, or proteomics. While these have provided deep insights into breast cancer biology, they often fail to offer a complete understanding of the disease's complex molecular landscape.

Areas covered: In this review, the authors explore the recent advancements in multi-omic research in the realm of breast cancer and use clinical data to show how multi-omic integration can offer a more holistic understanding of the molecular alterations and their functional consequences underlying breast cancer.

Expert opinion: The overall developments in multi-omic research and AI are expected to complement precision diagnostics through potentially refining prognostic models, and treatment selection. Overcoming challenges such as cost, data complexity, and lack of standardization is crucial for unlocking the full potential of multi-omics and AI in breast cancer patient care to enable the advancement of personalized treatments and improve patient outcomes.

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来源期刊
CiteScore
6.60
自引率
0.00%
发文量
71
审稿时长
1 months
期刊介绍: Expert Review of Molecular Diagnostics (ISSN 1473-7159) publishes expert reviews of the latest advancements in the field of molecular diagnostics including the detection and monitoring of the molecular causes of disease that are being translated into groundbreaking diagnostic and prognostic technologies to be used in the clinical diagnostic setting. Each issue of Expert Review of Molecular Diagnostics contains leading reviews on current and emerging topics relating to molecular diagnostics, subject to a rigorous peer review process; editorials discussing contentious issues in the field; diagnostic profiles featuring independent, expert evaluations of diagnostic tests; meeting reports of recent molecular diagnostics conferences and key paper evaluations featuring assessments of significant, recently published articles from specialists in molecular diagnostic therapy. Expert Review of Molecular Diagnostics provides the forum for reporting the critical advances being made in this ever-expanding field, as well as the major challenges ahead in their clinical implementation. The journal delivers this information in concise, at-a-glance article formats: invaluable to a time-constrained community.
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