肝论治眼科疾病综述研究——中医“肝风内动症”与老年性黄斑变性关联解析
A Bibliographic Study of “Liver-Eye” Related Research—A Correlation Function Analytic Research between Age-Related Macular Degeneration (AMD) and Traditional Chinese Medicine (TCM) Liver Wind Internal Movement Syndrome
DOI: 10.12677/ACM.2023.134592, PDF,  被引量   
作者: 王涵:香港中文大学眼科及视觉科学学系,香港;澳门城市大学数据科学学院,澳门;珠海中科先进技术研究院人工智能与大数据分析与应用中心,广东珠海;珠海市人民医院(暨南大学附属珠海医院/澳门科技大学医学院第一附属医院)放射影像科,广东珠海;于向荣*:珠海市人民医院(暨南大学附属珠海医院/澳门科技大学医学院第一附属医院)放射影像科,广东珠海
关键词: 中医肝风内动证老年黄斑变性中医眼科文献计量“All Winds and Dizziness Belong to the Liver” Age-Related Macular Degeneration (AMD) Traditional Chinese Medicine (TCM) Ophthalmology Bibliographic Analysis
摘要: 基于“肝开窍于目”和“诸风掉眩,皆属于肝”理论,和肝论治老年黄斑变性(Age-related Macular Degeneration, AMD)的基本共识,本文基于文献计量的方法,对“肝–眼生物轴”相关研究进行了综述 性探讨,对近年发展趋势、研究单位、学科和研究主题进行了分析。以“肝风内动症”与老年性黄斑变 性为例,对该研究的痛点和未来发展进行了预测和讨论。具有一定的理论贡献和参考价值。
Abstract: Based on Traditional Chinese Medicine (TCM) theories of “the liver opens at eyes” and “all winds and dizziness, belong to the liver”, and the basic consensus on liver-related treatments of Agerelated Macular Degeneration (AMD), this paper delivers a bibliographic study on “eye-liver” related research. The developing trend, institutions, journals, and research topics are analyzed. Taking the AMD and TCM internal movement syndrome of liver wind as an example, the correlation mechanism and advanced research methods is explored. Issues and challenges are discussed. Future research directions are predicted. Reference value and theory contributions are delivered by this study.
文章引用:王涵, 于向荣. 肝论治眼科疾病综述研究——中医“肝风内动症”与老年性黄斑变性关联解析[J]. 临床医学进展, 2023, 13(4): 6342-6350. https://doi.org/10.12677/ACM.2023.134592

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