医学
血压
疾病
糖尿病
性别特征
性激素结合球蛋白
肥胖
内科学
心肌保护
生理学
激素
长寿
内分泌学
肾素-血管紧张素系统
雄激素
心肌梗塞
老年学
作者
Katrina M. Mirabito Colafella,Kate M. Denton
标识
DOI:10.1038/nrneph.2017.189
摘要
The authors present sexual dimorphism at the molecular, cellular and tissue level and suggest that it contributes to differences in disease onset, susceptibility, prevalence and treatment responses in hypertension and cardiovascular disease. Several factors that confer relative cardioprotection in women are discussed, including biological age, sex hormones, sex chromosome complement and lifestyle. Although intrinsic mechanisms that regulate arterial blood pressure (BP) are similar in men and women, marked variations exist at the molecular, cellular and tissue levels. These physiological disparities between the sexes likely contribute to differences in disease onset, susceptibility, prevalence and treatment responses. Key systems that are important in the development of hypertension and cardiovascular disease (CVD), including the sympathetic nervous system, the renin–angiotensin–aldosterone system and the immune system, are differentially activated in males and females. Biological age also contributes to sexual dimorphism, as premenopausal women experience a higher degree of cardioprotection than men of similar age. Furthermore, sex hormones such as oestrogen and testosterone as well as sex chromosome complement likely contribute to sex differences in BP and CVD. At the cellular level, differences in cell senescence pathways may contribute to increased longevity in women and may also limit organ damage caused by hypertension. In addition, many lifestyle and environmental factors — such as smoking, alcohol consumption and diet — may influence BP and CVD in a sex-specific manner. Evidence suggests that cardioprotection in women is lost under conditions of obesity and type 2 diabetes mellitus. Treatment strategies for hypertension and CVD that are tailored according to sex could lead to improved outcomes for affected patients.
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