From virtual to reality: innovative practices of digital twins in tumor therapy.

IF 6.1 2区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Shiying Shen, Wenhao Qi, Xin Liu, Jianwen Zeng, Sixie Li, Xiaohong Zhu, Chaoqun Dong, Bin Wang, Yankai Shi, Jiani Yao, Bingsheng Wang, Louxia Jing, Shihua Cao, Guanmian Liang
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引用次数: 0

Abstract

Background: As global cancer incidence and mortality rise, digital twin technology in precision medicine offers new opportunities for cancer treatment.

Objective: This study aims to systematically analyze the current applications, research trends, and challenges of digital twin technology in tumor therapy, while exploring future directions.

Methods: Relevant literature up to 2024 was retrieved from PubMed, Web of Science, and other databases. Data visualization was performed using R and VOSviewer software. The analysis includes the research initiation and trends, funding models, global research distribution, sample size analysis, and data processing and artificial intelligence applications. Furthermore, the study investigates the specific applications and effectiveness of digital twin technology in tumor diagnosis, treatment decision-making, prognosis prediction, and personalized management.

Results: Since 2020, research on digital twin technology in oncology has surged, with significant contributions from the United States, Germany, Switzerland, and China. Funding primarily comes from government agencies, particularly the National Institutes of Health in the U.S. Sample size analysis reveals that large-sample studies have greater clinical reliability, while small-sample studies emphasize technology validation. In data processing and artificial intelligence applications, the integration of medical imaging, multi-omics data, and AI algorithms is key. By combining multimodal data integration with dynamic modeling, the accuracy of digital twin models has been significantly improved. However, the integration of different data types still faces challenges related to tool interoperability and limited standardization. Specific applications of digital twin technology have shown significant advantages in diagnosis, treatment decision-making, prognosis prediction, and surgical planning.

Conclusion: Digital twin technology holds substantial promise in tumor therapy by optimizing personalized treatment plans through integrated multimodal data and dynamic modeling. However, the study is limited by factors such as language restrictions, potential selection bias, and the relatively small number of published studies in this emerging field, which may affect the comprehensiveness and generalizability of our findings. Moreover, issues related to data heterogeneity, technical integration, and data privacy and ethics continue to impede its broader clinical application. Future research should promote international collaboration, establish unified interdisciplinary standards, and strengthen ethical regulations to accelerate the clinical translation of digital twin technology in cancer treatment.

从虚拟到现实:数字双胞胎在肿瘤治疗中的创新实践。
背景:随着全球癌症发病率和死亡率的上升,精准医疗中的数字孪生技术为癌症治疗提供了新的机会。目的:系统分析数字孪生技术在肿瘤治疗中的应用现状、研究趋势及面临的挑战,探讨未来发展方向。方法:检索PubMed、Web of Science等数据库截至2024年的相关文献。使用R和VOSviewer软件进行数据可视化。分析包括研究启动和趋势、资助模式、全球研究分布、样本大小分析、数据处理和人工智能应用。进一步探讨数字孪生技术在肿瘤诊断、治疗决策、预后预测、个性化管理等方面的具体应用及效果。结果:自2020年以来,数字孪生技术在肿瘤学领域的研究激增,其中美国、德国、瑞士和中国的贡献显著。资金主要来自政府机构,特别是美国国立卫生研究院。样本大小分析表明,大样本研究具有更高的临床可靠性,而小样本研究强调技术验证。在数据处理和人工智能应用中,医学影像、多组学数据和人工智能算法的集成是关键。通过将多模态数据集成与动态建模相结合,显著提高了数字孪生模型的精度。然而,不同数据类型的集成仍然面临着与工具互操作性和有限的标准化相关的挑战。数字孪生技术的具体应用在诊断、治疗决策、预后预测和手术计划等方面显示出显著优势。结论:数字孪生技术通过集成多模态数据和动态建模优化个性化治疗方案,在肿瘤治疗中具有巨大的前景。然而,由于语言限制、潜在的选择偏差以及在这一新兴领域发表的研究相对较少等因素,本研究受到限制,这可能会影响我们研究结果的全面性和普遍性。此外,数据异构、技术集成、数据隐私和伦理等问题继续阻碍其更广泛的临床应用。未来的研究应促进国际合作,建立统一的跨学科标准,加强伦理规范,加快数字孪生技术在癌症治疗中的临床转化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Translational Medicine
Journal of Translational Medicine 医学-医学:研究与实验
CiteScore
10.00
自引率
1.40%
发文量
537
审稿时长
1 months
期刊介绍: The Journal of Translational Medicine is an open-access journal that publishes articles focusing on information derived from human experimentation to enhance communication between basic and clinical science. It covers all areas of translational medicine.
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