排卵检测中的数字健康创新方法:当前方法和新兴技术综述》。

IF 1.9 3区 医学 Q3 OBSTETRICS & GYNECOLOGY Seminars in reproductive medicine Pub Date : 2024-06-01 Epub Date: 2024-11-21 DOI:10.1055/s-0044-1793829
Katerina Shkodzik
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引用次数: 0

摘要

排卵与体温、心率、呼吸频率和血压一样,是评估总体健康状况和发现潜在健康问题的重要体征。排卵是月经周期中的一个关键事件,能让人了解荷尔蒙和生殖健康方面的情况。受甲状腺素、催乳素和雄激素等荷尔蒙乐队的影响,排卵紊乱可能预示着内分泌疾病,并导致妇科问题,如月经大量出血、月经不调、闭经、痛经和怀孕困难等。监测排卵和检测排卵紊乱有助于及早发现健康问题,而不仅仅是生殖健康问题。它可以帮助找出过度疲劳和毛发异常生长等症状的潜在原因。数字健康技术的整合,如使用机器学习算法的移动应用程序、跟踪体温、心率、呼吸频率和睡眠模式的可穿戴设备,以及测量尿液或唾液样本中生殖激素的设备,为计划生育、早期健康问题诊断、治疗调整和辅助生殖技术期间的月经周期跟踪提供了大量机会。这些先进技术提供了一种全面的健康监测方法,既能解决生殖健康问题,又能解决整体健康问题。
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Innovative Approaches to Digital Health in Ovulation Detection: A Review of Current Methods and Emerging Technologies.

Ovulation is a vital sign, as significant as body temperature, heart rate, respiratory rate, and blood pressure, in assessing overall health and identifying potential health issues. Ovulation is a key event of the menstrual cycle that provides insights into the hormonal and reproductive health aspects. Affected by the orchestra of hormones, namely thyroid, prolactin, and androgens, disruptions in ovulation can indicate endocrinological conditions and lead to gynecological problems, such as heavy menstrual bleeding, irregular periods, amenorrhea, dysmenorrhea, and difficulties in getting pregnant. Monitoring ovulation and detecting disruptions can aid in the early detection of health issues, extending beyond reproductive health concerns. It can help identify underlying causes of symptoms like excessive fatigue and abnormal hair growth. The integration of digital health technologies, such as mobile apps using machine learning algorithms, wearables tracking temperature, heart rate, breath rate, and sleep patterns, and devices measuring reproductive hormones in urine or saliva samples, offers a wealth of opportunities in family planning, early health issue diagnosis, treatment adjustment, and tracking menstrual cycles during assisted reproductive techniques. These advancements provide a comprehensive approach to health monitoring, addressing both reproductive and overall health concerns.

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来源期刊
Seminars in reproductive medicine
Seminars in reproductive medicine 医学-妇产科学
CiteScore
5.80
自引率
0.00%
发文量
24
审稿时长
6-12 weeks
期刊介绍: Seminars in Reproductive Medicine is a bi-monthly topic driven review journal that provides in-depth coverage of important advances in the understanding of normal and disordered human reproductive function, as well as new diagnostic and interventional techniques. Seminars in Reproductive Medicine offers an informed perspective on issues like male and female infertility, reproductive physiology, pharmacological hormonal manipulation, and state-of-the-art assisted reproductive technologies.
期刊最新文献
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