下一代癌症表型组学:揭示肺癌复杂性和推进精准医疗的变革性方法》(Next-Generation Cancer Phenomics: A Transformative Approach to Unraveling Lung Cancer Complexity and Advancing Precision Medicine)。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Sanjukta Dasgupta
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引用次数: 0

摘要

肺癌仍然是全球癌症相关死亡的主要原因之一,其复杂性是由错综复杂、相互交织的遗传、表观遗传和环境因素造成的。尽管在基因组学、转录组学和蛋白质组学方面取得了进展,但对肺癌表型多样性的了解仍然滞后。下一代表型组学将高通量表型数据与多组学方法和人工智能(AI)等数字技术相结合,为揭示肺癌的复杂性提供了一种变革性策略。这种方法利用先进的成像、单细胞技术和人工智能,捕捉细胞、组织和整个机体层面的动态表型变化,并在时间和空间上加以解决。通过将高通量、时空分辨的表型特征映射到分子改变上,下一代表型组学能更深入地揭示肿瘤微环境、癌症异质性以及药物疗效、安全性和耐药机制。此外,将表型数据与基因组和蛋白质组网络相结合,可以根据生物结构和功能确定新的生物标记物和治疗靶点,从而促进肺癌治疗中的精准医疗。这篇专家综述探讨了下一代表型组学目前的进展及其重新定义肺癌诊断、预后和治疗的潜力,并将其纳入背景之中。它强调了人工智能和机器学习在分析复杂表型数据集、实现个性化治疗干预方面的新兴作用。最终,下一代表型组学有望弥合分子改变与临床和人群健康结果之间的差距,提供对肺癌生物学的整体理解,从而彻底改变肺癌的治疗并提高患者的生存率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Next-Generation Cancer Phenomics: A Transformative Approach to Unraveling Lung Cancer Complexity and Advancing Precision Medicine.

Lung cancer remains one of the leading causes of cancer-related deaths globally, with its complexity driven by intricate and intertwined genetic, epigenetic, and environmental factors. Despite advances in genomics, transcriptomics, and proteomics, understanding the phenotypic diversity of lung cancer has lagged behind. Next-generation phenomics, which integrates high-throughput phenotypic data with multiomics approaches and digital technologies such as artificial intelligence (AI), offers a transformative strategy for unraveling the complexity of lung cancer. This approach leverages advanced imaging, single-cell technologies, and AI to capture dynamic phenotypic variations at cellular, tissue, and whole organism levels and in ways resolved in temporal and spatial contexts. By mapping the high-throughput and spatially and temporally resolved phenotypic profiles onto molecular alterations, next-generation phenomics provides deeper insights into the tumor microenvironment, cancer heterogeneity, and drug efficacy, safety, and resistance mechanisms. Furthermore, integrating phenotypic data with genomic and proteomic networks allows for the identification of novel biomarkers and therapeutic targets in ways informed by biological structure and function, fostering precision medicine in lung cancer treatment. This expert review examines and places into context the current advances in next-generation phenomics and its potential to redefine lung cancer diagnosis, prognosis, and therapy. It highlights the emerging role of AI and machine learning in analyzing complex phenotypic datasets, enabling personalized therapeutic interventions. Ultimately, next-generation phenomics holds the promise of bridging the gap between molecular alterations and clinical and population health outcomes, providing a holistic understanding of lung cancer biology that could revolutionize its management and improve patient survival rates.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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