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从"阴虚-痰瘀-热毒"轴探讨射血分数保留的心力衰竭的中医病机及治疗要点

Chinese Journal of Integrative Medicine on Cardio/Cerebrovascular Disease(2023)

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Abstract
总结射血分数保留的心力衰竭(HFpEF)的研究近况,结合现代病理生理学机制与中医证候分布,总结出 HFpEF"阴虚-痰瘀-热毒"(虚-痰瘀-毒)的病机演变规律,并进一步提出需重视养阴、清热、解毒等治法的运用.从传统中医理论出发,结合现代分子生物学机制,对传统心衰病的认识进行补充和创新,以期为 HFpEF的深入研究提供理论支持.
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