首页> 美国卫生研究院文献>Journal of the Endocrine Society >A Simple Algorithm is Created for Identifying Intermenstrual Intervals Containing an Oscillatory LH Pattern That Associates With Vasomotor Symptoms Using Daily Urinary LH Excretion in the Study of Women’s Health Across the Nation (SWAN)
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A Simple Algorithm is Created for Identifying Intermenstrual Intervals Containing an Oscillatory LH Pattern That Associates With Vasomotor Symptoms Using Daily Urinary LH Excretion in the Study of Women’s Health Across the Nation (SWAN)

机译:创建一种简单的算法用于识别包含在全国妇女健康的日常尿路排泄中与血管运动症状相关的振荡LH模式的混合间隔以便在全国范围内的妇女健康(SWAN)

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摘要

Background: A specific and unique pattern of luteinizing hormone (LH) excretion has been associated with vasomotor symptoms (VMS) in early menopausal women. Described as “oscillations” of LH excretion, this pattern is consistent with secretory “surges” of LH followed by pituitary “fatigue”. This pattern has not been observed in non-VMS intermenstrual intervals and supports the concept that a breakdown in the hypothalamic-pituitary ovarian axis feed-back loops leads to extreme and cyclic variations in gonadotropin hormone releasing hormone (GnRH) secretion that stimulates collateral nerves to alter core body temperature. Regardless of the precise mechanism, the pattern of LH secretion, as transduced in daily urine as oscillations, provides the basis for the development and validation of a VMS algorithm. Objective: The purpose of this study was to create a simple algorithm to identify intermenstrual intervals exhibiting oscillatory LH, to facilitate investigations into its associations with VMS and other symptoms during the menopausal transition (MT). Methods: As part of the Study of Women’s Health Across the Nation (SWAN), participants in the Daily Hormone Substudy (DHS) were asked to provide daily urine samples - from which LH, E1c, and PdG were measured - and complete a daily symptoms diary for one menstrual cycle (up to 50 days). Analyses included 144 participants whose first DHS collection did not meet the Kassam criterion for evidence of luteal activity; of these, 61 were assessed by an expert as having oscillatory LH and 83 as non-oscillatory LH. Proposed algorithm-based classifications regarding oscillatory LH included number of days with LH at least 50% of the collection maximum LH (number of large-LH days) and number of days with LH no more than twice the collection minimum LH (number of small-LH days). Agreement of these 2 criteria with rater-assigned oscillatory LH was assessed using nonparametric t-tests and binomial logistic regression. Associations of these with VMS frequency were assessed using Spearman correlations. Results: The number of large-LH days was strongly associated with oscillatory LH: median (interquartile range) = 13 (7,22) for oscillatory collections versus 4 (2, 11) for non-oscillatory collections (p<.0001) but number of small-LH days was unrelated (p=.98). Percentage of collection days with VMS was significantly correlated with number of large-LH days (Spearman r=.37, p<.0001) but not with number of small-LH days (Spearman r=.03, p>.05); adjustment for total collection length had negligible impact. Conclusion: A simple algorithm using urinary LH profiles can be used to identify intermenstrual collections that likely contain intervals of VMS.
机译:背景:特异性和独特的叶黄素激素(LH)排泄模式与早期绝经妇女的血管传道症状(VMS)有关。描述为LH排泄的“振荡”,这种模式与LH的分泌物“浪涌”一致,然后是垂体“疲劳”。这种模式尚未以非VMS间隔观察到,并支持下丘脑 - 垂体卵巢轴反馈环中击穿的概念导致促进激素(GNRH)分泌的促性腺激素激素的极端和循环变化,以促进侧面神经改变核心体温。无论精确机制如何,在日常尿液中转导的LH分泌模式为VM算法的开发和验证提供了基础。目的:本研究的目的是创造一种简单的算法,以识别表现出振荡LH的混合间隔,以便于在更年期转换期间与VMS和其他症状进行调查,以便调查其与VMS和其他症状的关联(MT)。方法:作为妇女健康在全国范围内的研究(天鹅)的一部分,要求每日激素塑料(DHS)的参与者提供日常尿液样本 - 从中​​测量LH,E1C和PDG - 并完成日常症状日记为一次月经周期(最多50天)。分析包括144名参与者,其第一个DHS集合没有达到KASSAM标准,以便患力活动证据;其中,通过专家评估61,具有振荡LH和83作为非振荡LH。基于算法的基于算法的分类,关于振荡器LH包括LH的数量至少50%的收集最大LH(大LH天数)和LH的天数不超过收集最小值的两倍(小 - LH天)。使用非参数T检验和二项式逻辑回归评估这2种具有评定振荡器LH的标准的协议。使用Spearman相关评估这些与VMS频率的关联。结果:大LH天数与振荡LH有关:用于非振荡收集的振荡收集的中位数(四分位数)= 13(7,22),但非振荡收集(P <.0001)小LH天数不相关(p = .98)。 VM的收集日百分比与大LH天数(Spearman R = .37,P <.0001)明显相关,但不是小LH天数(Spearman R = .03,P> .05);整个收集长度的调整可忽略不计。结论:使用尿LH配置文件的简单算法可用于识别可能包含VM间隔的混合集合。

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