王鹏运用"清金益水"法治疗慢性持续期支气管哮喘经验
Clinical Journal of Traditional Chinese Medicine(2023)
湖北中医药大学
Abstract
支气管哮喘慢性持续期是哮喘慢病管理的关键时期.如何减少发作频次,让患者安稳地过渡到缓解期是哮喘治疗的重点、难点.基于支气管哮喘慢性持续期的临床特点,王鹏教授指出标实本虚、虚实益加为该期哮喘的关键病机,标实主要责之风伏、痰阻、气滞和瘀结,本虚以肾虚为要.通过象思维将肺肾两脏的生理功能与自然界现象进行"取象比类",并结合其多年临证实践,王鹏教授总结出运用"清金益水"法治疗支气管哮喘慢性持续期的经验,其中"清金"强调治实以治风痰气瘀为主,"益水"意在治虚以补肾为要.文章详述了"清金益水"法的理论基础、治法根源及具体用药,为临床诊疗支气管哮喘拓宽了思路.附验案佐证.
MoreKey words
Qingjin Yishui,Xiangsi thinking,Bronchial asthma,Chronic duration,Experience
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