Wang Jinyu, Zeng Ziyi, Li Zehua, Liu Guangyue, Zhang Shunhong, Luo Chenchen, Hu Saidi, Wan Siran, Zhao Linyong
Department of Medical Genetics, West China Second University Hospital, Sichuan University, Chengdu, China.
Key Laboratory of Birth Defects and Related Diseases of Women and Children, Sichuan University, Ministry of Education, Chengdu, China.
J Transl Med. 2025 Jan 27;23(1):120. doi: 10.1186/s12967-025-06139-5.
Artificial intelligence has made significant contributions to oncology through the availability of high-dimensional datasets and advances in computing and deep learning. Cancer precision medicine aims to optimize therapeutic outcomes and reduce side effects for individual cancer patients. However, a comprehensive review describing the impact of artificial intelligence on cancer precision medicine is lacking.
By collecting and integrating large volumes of data and applying it to clinical tasks across various algorithms and models, artificial intelligence plays a significant role in cancer precision medicine. Here, we describe the general principles of artificial intelligence, including machine learning and deep learning. We further summarize the latest developments in artificial intelligence applications in cancer precision medicine. In tumor precision treatment, artificial intelligence plays a crucial role in individualizing both conventional and emerging therapies. In specific fields, including target prediction, targeted drug generation, immunotherapy response prediction, neoantigen prediction, and identification of long non-coding RNA, artificial intelligence offers promising perspectives. Finally, we outline the current challenges and ethical issues in the field.
Recent clinical studies demonstrate that artificial intelligence is involved in cancer precision medicine and has the potential to benefit cancer healthcare, particularly by optimizing conventional therapies, emerging targeted therapies, and individual immunotherapies. This review aims to provide valuable resources to clinicians and researchers and encourage further investigation in this field.
通过高维数据集的可用性以及计算和深度学习的进展,人工智能已在肿瘤学领域做出了重大贡献。癌症精准医学旨在优化个体癌症患者的治疗效果并减少副作用。然而,目前缺乏对人工智能对癌症精准医学影响的全面综述。
通过收集和整合大量数据并将其应用于各种算法和模型的临床任务中,人工智能在癌症精准医学中发挥着重要作用。在此,我们描述了人工智能的一般原理,包括机器学习和深度学习。我们进一步总结了人工智能在癌症精准医学应用中的最新进展。在肿瘤精准治疗中,人工智能在使传统疗法和新兴疗法个性化方面发挥着关键作用。在特定领域,包括靶点预测、靶向药物生成、免疫治疗反应预测、新抗原预测以及长链非编码RNA的鉴定,人工智能提供了有前景的观点。最后,我们概述了该领域当前的挑战和伦理问题。
近期的临床研究表明,人工智能参与癌症精准医学,并且有潜力使癌症医疗受益,特别是通过优化传统疗法、新兴靶向疗法和个体免疫疗法。本综述旨在为临床医生和研究人员提供有价值的资源,并鼓励在该领域进行进一步研究。