Department of Genetics, Cell Biology and Anatomy, University of Nebraska Medical Center, Omaha, NE, United States.
Department of Neurological Sciences, University of Nebraska Medical Center, Omaha, NE, United States.
Adv Cancer Res. 2024;163:303-356. doi: 10.1016/bs.acr.2024.06.005. Epub 2024 Jul 9.
With significant advancements of next generation sequencing technologies, large amounts of multi-omics data, including genomics, epigenomics, transcriptomics, proteomics, and metabolomics, have been accumulated, offering an unprecedented opportunity to explore the heterogeneity and complexity of cancer across various molecular levels and scales. One of the promising aspects of multi-omics lies in its capacity to offer a holistic view of the biological networks and pathways underpinning cancer, facilitating a deeper understanding of its development, progression, and response to treatment. However, the exponential growth of data generated by multi-omics studies present significant analytical challenges. Processing, analyzing, integrating, and interpreting these multi-omics datasets to extract meaningful insights is an ambitious task that stands at the forefront of current cancer research. The application of artificial intelligence (AI) has emerged as a powerful solution to these challenges, demonstrating exceptional capabilities in deciphering complex patterns and extracting valuable information from large-scale, intricate omics datasets. This review delves into the synergy of AI and multi-omics, highlighting its revolutionary impact on oncology. We dissect how this confluence is reshaping the landscape of cancer research and clinical practice, particularly in the realms of early detection, diagnosis, prognosis, treatment and pathology. Additionally, we elaborate the latest AI methods for multi-omics integration to provide a comprehensive insight of the complex biological mechanisms and inherent heterogeneity of cancer. Finally, we discuss the current challenges of data harmonization, algorithm interpretability, and ethical considerations. Addressing these challenges necessitates a multidisciplinary collaboration, paving the promising way for more precise, personalized, and effective treatments for cancer patients.
随着下一代测序技术的显著进步,大量的多组学数据,包括基因组学、表观基因组学、转录组学、蛋白质组学和代谢组学,已经积累起来,为探索癌症在各种分子水平和尺度上的异质性和复杂性提供了前所未有的机会。多组学的一个有前途的方面在于它能够提供癌症潜在生物网络和途径的整体视图,有助于更深入地了解其发展、进展和对治疗的反应。然而,多组学研究产生的数据呈指数级增长,这带来了重大的分析挑战。处理、分析、整合和解释这些多组学数据集以提取有意义的见解是一项艰巨的任务,这是当前癌症研究的前沿。人工智能 (AI) 的应用已经成为应对这些挑战的强大解决方案,它在从大规模、复杂的组学数据集中破译复杂模式和提取有价值信息方面表现出了非凡的能力。这篇综述深入探讨了人工智能和多组学的协同作用,强调了它对肿瘤学的革命性影响。我们剖析了这种融合如何重塑癌症研究和临床实践的格局,特别是在早期检测、诊断、预后、治疗和病理学领域。此外,我们详细介绍了最新的用于多组学整合的人工智能方法,以提供对癌症复杂生物学机制和固有异质性的全面了解。最后,我们讨论了当前数据协调、算法可解释性和伦理考虑方面的挑战。解决这些挑战需要多学科合作,为癌症患者提供更精确、个性化和有效的治疗铺平了有希望的道路。