首页> 外文期刊>European Journal of Obstetrics, Gynecology and Reproductive Biology: An International Journal >Detecting evidence of luteal activity by least-squares quantitative basal temperature analysis against urinary progesterone metabolites and the effect of wake-time variability.
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Detecting evidence of luteal activity by least-squares quantitative basal temperature analysis against urinary progesterone metabolites and the effect of wake-time variability.

机译:通过最小二乘定量基础温度分析对尿中黄体酮代谢产物检测黄体活性的证据以及唤醒时间变异性的影响。

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OBJECTIVE: To assess computerised least-squares analysis of quantitative basal temperature (LS-BT) against urinary pregnanediol glucuronide (PdG) as an indirect measure of ovulation, and to evaluate the stability of LS-QBT to wake-time variation. STUDY DESIGN: Cross-sectional study of 40 healthy, normal-weight, regularly menstruating women aged 19-34. Participants recorded basal temperature and collected first void urine daily for one complete menstrual cycle. Evidence of luteal activity (ELA), an indirect ovulation indicator, was assessed using Kassam's PdG algorithm, which identifies a sustained 3-day PdG rise, and the LS-QBT algorithm, by determining whether the temperature curve is significantly biphasic. Cycles were classified as ELA(+) or ELA(-). We explored the need to pre-screen for wake-time variations by repeating the analysis using: (A) all recorded temperatures, (B) wake-time adjusted temperatures, (C) temperatures within 2h of average wake-time, and (D) expert reviewed temperatures. RESULTS: Relative to PdG, classification of cycles as ELA(+) was 35 of 36 for LS-QBT methods A and B, 33 of 34 (method C) and 30 of 31 (method D). Classification of cycles as ELA(-) was 1 of 4 (methods A and B) and 0 of 3 (methods C and D). Positive predictive value was 92% for methods A-C and 91% for method D. Negative predictive value was 50% for methods A and B and 0% for methods C and D. Overall accuracy was 90% for methods A and B, 89% for method C and 88% for method D. The day of a significant temperature increase by LS-QBT and the first day of a sustained PdG rise were correlated (r=0.803, 0.741, 0.651, 0.747 for methods A-D, respectively, all p<0.001). CONCLUSION: LS-QBT showed excellent detection of ELA(+) cycles (sensitivity, positive predictive value) but poor detection of ELA(-) cycles (specificity, negative predictive value) relative to urinary PdG. Correlations between the methods and overall accuracy were good and similar for all analyses. Findings suggest that LS-QBT is robust to wake-time variability and that expert interpretation is unnecessary. This method shows promise for use as an epidemiological tool to document cyclic progesterone increase. Further validation relative to daily transvaginal ultrasound is required.
机译:目的:评估计算机对尿液中的孕烯二醇葡萄糖醛酸苷(PdG)的基础温度(LS-BT)进行最小二乘分析,以间接测量排卵,并评估LS-QBT对唤醒时间变化的稳定性。研究设计:横断面研究了40名19-34岁的正常体重,正常体重的健康女性。参与者记录基础温度并每天收集一个完整的月经周期的第一尿液。黄体活动(ELA)(一种间接排卵指标)的证据是使用Kassam的PdG算法和LS-QBT算法评估的,该算法可确定温度曲线是否明显是两相的,该算法可确定PdG持续3天持续升高。循环分类为ELA(+)或ELA(-)。我们探索了通过使用以下方法重复分析来预先筛选唤醒时间变化的需求:(A)所有记录的温度,(B)唤醒时间调整后的温度,(C)平均唤醒时间2小时以内的温度,以及(D )专家审查了温度。结果:相对于PdG,对于LS-QBT方法A和B,周期分类为ELA(+)为35中的35,方法34中的33(方法C)和30中的30(方法D)。周期分类为ELA(-)是4中的1(方法A和B)和3中的0(方法C和D)。方法AC的阳性预测值为92%,方法D的阳性预测值为91%。方法A和B的阴性预测值为50%,方法C和D的阴性预测值为0%。方法A和B的总体准确性为90%,方法B的总体准确性为89%。方法C为方法D的88%。方法LS-QBT显着升高的温度与PdG持续升高的第一天相关(方法AD分别为r = 0.803、0.741、0.651、0.747,所有p < 0.001)。结论:相对于尿液PdG,LS-QBT对ELA(+)周期的检测效果极佳(敏感性,阳性预测值),但对ELA(-)周期的检测效果较差(特异性,阴性预测值)。所有分析方法之间的相关性很好,并且相似。研究结果表明,LS-QBT对唤醒时间可变性具有鲁棒性,不需要专家解释。这种方法显示出有望作为一种流行病学手段来证明环孕酮水平升高。需要相对于每日经阴道超声的进一步验证。

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