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从“年四十,而阴气自半”探讨心血管疾病的防治
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作者 陈鹏飞 苗丽娜 +2 位作者 潘登 郭明 杜健鹏 《山东中医杂志》 2023年第11期1156-1159,1166,共5页
“年四十,而阴气自半”出自《素问·阴阳应象大论》,其强调阴气的重要性,认为人体的衰老是由阴气衰痿所致。阴气虚损是常见心血管疾病的重要病机,同时也是与心血管疾病密切相关的其他疾病的重要病机。因此,防治心血管疾病可以“年四... “年四十,而阴气自半”出自《素问·阴阳应象大论》,其强调阴气的重要性,认为人体的衰老是由阴气衰痿所致。阴气虚损是常见心血管疾病的重要病机,同时也是与心血管疾病密切相关的其他疾病的重要病机。因此,防治心血管疾病可以“年四十,阴气自半”为指导,从情志、饮食、起居等方面固护阴气,防止阴液的滥耗,减缓阴衰进程。 展开更多
关键词 年四十 而阴气自半 心血管疾病 阴虚 固护阴气 高血压 心房颤动 冠状动脉粥样硬化性心脏病
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基于额叶氧合血红蛋白变化探讨针刺对不同年龄失眠患者的影响
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作者 王子敬 徐一可 +3 位作者 陈顶立 付星 杜渐 刘颖 《中医药导报》 2022年第8期86-90,共5页
目的:基于额叶氧合血红蛋白(oxy-Hb)变化探讨针刺对不同年龄失眠患者的影响。方法:纳入失眠症患者30例,予2周针刺治疗,并于治疗前后在识别情绪面孔的任务态试验下进行近红外脑功能成像检测,应用SPSS 22.0统计软件,分别统计青年组(18<... 目的:基于额叶氧合血红蛋白(oxy-Hb)变化探讨针刺对不同年龄失眠患者的影响。方法:纳入失眠症患者30例,予2周针刺治疗,并于治疗前后在识别情绪面孔的任务态试验下进行近红外脑功能成像检测,应用SPSS 22.0统计软件,分别统计青年组(18<年龄≤35岁)、中年组(35<年龄≤50岁)、老年组(50<年龄≤65岁)失眠患者针刺治疗前、针刺治疗2周时额叶oxy-Hb浓度变化。结果:青年组在属于“阳”的正性、负性情绪面孔条件下出现额叶的oxy-Hb浓度下降(P<0.05),属于“阴”的中性面孔条件下则oxy-Hb浓度变化无差异(P>0.05);中年组在属于“阳”的负性情绪面孔条件下额叶的oxy-Hb浓度下降(P<0.05),属于“阴”的中性面孔条件下oxy-Hb浓度升高(P<0.05);老年组只在属于“阴”的中性面孔条件下出现oxy-Hb浓度升高(P<0.05)。结论:针刺后额叶oxy-Hb的变化佐证了中医之“年四十而阴气自半”和关于失眠“阳气盛则瞋目,阴气盛则瞑目”的理论。 展开更多
关键词 失眠症 阴气自半 针刺 年龄 氧合血红蛋白 情绪面孔 近红外脑功能成像
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名中医的养生之道
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作者 柴悦颖 《健康博览》 2018年第2期12-13,共2页
养生,养什么?李亚平认为,养的是精、气、神。特别是人到中年以后,所谓“年四十,阴气自半矣”,尤当顾惜、调摄、充养人体的这“三宝”,达到精充、气足、神旺之目的。养生的原理是道法自然。他说,国医大师朱良春今年已98岁高龄,朱老认... 养生,养什么?李亚平认为,养的是精、气、神。特别是人到中年以后,所谓“年四十,阴气自半矣”,尤当顾惜、调摄、充养人体的这“三宝”,达到精充、气足、神旺之目的。养生的原理是道法自然。他说,国医大师朱良春今年已98岁高龄,朱老认为真正的养生法则“一定是平实的,要靠坚持的,绝不会颠覆常识,也没有捷径可走。” 展开更多
关键词 养生之道 陆拯 朱良春 全国名老中医 主任中医师 李亚平 道法自然 养生方法 养生法 自半
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Tomato detection method using domain adaptive learning for dense planting environments
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作者 LI Yang HOU Wenhui +4 位作者 YANG Huihuang RAO Yuan WANG Tan JIN Xiu ZHU Jun 《农业工程学报》 EI CAS 2024年第13期134-145,共12页
This study aimed to address the challenge of accurately and reliably detecting tomatoes in dense planting environments,a critical prerequisite for the automation implementation of robotic harvesting.However,the heavy ... This study aimed to address the challenge of accurately and reliably detecting tomatoes in dense planting environments,a critical prerequisite for the automation implementation of robotic harvesting.However,the heavy reliance on extensive manually annotated datasets for training deep learning models still poses significant limitations to their application in real-world agricultural production environments.To overcome these limitations,we employed domain adaptive learning approach combined with the YOLOv5 model to develop a novel tomato detection model called as TDA-YOLO(tomato detection domain adaptation).We designated the normal illumination scenes in dense planting environments as the source domain and utilized various other illumination scenes as the target domain.To construct bridge mechanism between source and target domains,neural preset for color style transfer is introduced to generate a pseudo-dataset,which served to deal with domain discrepancy.Furthermore,this study combines the semi-supervised learning method to enable the model to extract domain-invariant features more fully,and uses knowledge distillation to improve the model's ability to adapt to the target domain.Additionally,for purpose of promoting inference speed and low computational demand,the lightweight FasterNet network was integrated into the YOLOv5's C3 module,creating a modified C3_Faster module.The experimental results demonstrated that the proposed TDA-YOLO model significantly outperformed original YOLOv5s model,achieving a mAP(mean average precision)of 96.80%for tomato detection across diverse scenarios in dense planting environments,increasing by 7.19 percentage points;Compared with the latest YOLOv8 and YOLOv9,it is also 2.17 and 1.19 percentage points higher,respectively.The model's average detection time per image was an impressive 15 milliseconds,with a FLOPs(floating point operations per second)count of 13.8 G.After acceleration processing,the detection accuracy of the TDA-YOLO model on the Jetson Xavier NX development board is 90.95%,the mAP value is 91.35%,and the detection time of each image is 21 ms,which can still meet the requirements of real-time detection of tomatoes in dense planting environment.The experimental results show that the proposed TDA-YOLO model can accurately and quickly detect tomatoes in dense planting environment,and at the same time avoid the use of a large number of annotated data,which provides technical support for the development of automatic harvesting systems for tomatoes and other fruits. 展开更多
关键词 plants models domain adaptive tomato detection illumination variation semi-supervised learning dense planting environments
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