中国防痨杂志 ›› 2026, Vol. 48 ›› Issue (5): 700-706.doi: 10.19982/j.issn.1000-6621.20260002
单立艳, 李龙芬, 李文明, 罗云, 张华杰, 王戈, 黄媛卿, 李姗, 吴华超, 施春晶(
), 沈凌筠(
)
收稿日期:2026-01-02
出版日期:2026-05-10
发布日期:2026-04-27
通信作者:
施春晶,沈凌筠
E-mail:673676553@qq.com;m18608770202@163.com
基金资助:
Shan Liyan, Li Longfen, Li Wenming, Luo Yun, Zhang Huajie, Wang Ge, Huang Yuanqing, Li Shan, Wu Huachao, Shi Chunjing(
), Shen Lingjun(
)
Received:2026-01-02
Online:2026-05-10
Published:2026-04-27
Contact:
Shi Chunjing,Shen Lingjun
E-mail:673676553@qq.com;m18608770202@163.com
Supported by:摘要:
数字孪生技术作为一项连接物理世界与数字世界的新型数字化技术,通过创建实时映射、动态交互的虚拟模型,为结核病防治提供了全新思路和方法。本文系统综述了数字孪生技术在结核病预测、诊断、治疗和全程管理中的研究进展,重点分析了其在疫情模拟与传播预测、个性化诊疗方案优化、患者依从性管理等方面的应用价值,并探讨了当前面临的数据集成、模型构建、隐私保护等技术挑战,对未来发展方向进行了展望,指出多模态数据融合、人工智能算法优化、多组学技术整合将是数字孪生技术在结核病防治领域的重要发展趋势。数字孪生技术的深入应用将有助于提升结核病防治的精准性和效率,为实现“终结结核病流行”战略目标提供技术支撑。
中图分类号:
单立艳, 李龙芬, 李文明, 罗云, 张华杰, 王戈, 黄媛卿, 李姗, 吴华超, 施春晶, 沈凌筠. 数字孪生技术在结核病防治中的研究进展[J]. 中国防痨杂志, 2026, 48(5): 700-706. doi: 10.19982/j.issn.1000-6621.20260002
Shan Liyan, Li Longfen, Li Wenming, Luo Yun, Zhang Huajie, Wang Ge, Huang Yuanqing, Li Shan, Wu Huachao, Shi Chunjing, Shen Lingjun. Research progress of digital twin technology in tuberculosis prevention and control[J]. Chinese Journal of Antituberculosis, 2026, 48(5): 700-706. doi: 10.19982/j.issn.1000-6621.20260002
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