通过测量基础体温和心率以及机器学习算法来跟踪月经周期和预测生育窗口。

Jia-Le Yu, Yun-Fei Su, Chen Zhang, Li Jin, Xian-Hua Lin, Lu-Ting Chen, He-Feng Huang, Yan-Ting Wu
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引用次数: 10

摘要

背景:生育意识和月经预测对提高生育能力和健康管理具有重要意义。以前的研究使用生理参数,如基础体温(BBT)和心率(HR),来预测生育窗口期和月经。然而,它们的准确性远不能令人满意。此外,很少有研究人员检查过月经不规律的人。因此,我们的目标是为规律和不规则月经者开发生育窗口和月经预测算法。方法:这是一项在中国上海国际和平妇幼保健院进行的前瞻性观察队列研究。参与者从2020年8月到2020年11月被招募,并随访了至少四个月经周期。参与者使用耳朵温度计来评估BBT,并佩戴华为Band 5来记录HR。卵巢超声和血清激素水平测定排卵日。月经由女性自行报告。我们使用线性混合模型来评估生理参数的变化,并开发概率函数估计模型来预测机器学习的受孕窗口和月经。结果:我们分别纳入了89例正常月经者和25例月经不规律者的305例和77例合格排卵周期的数据。对于正常月经的女性,排卵期的BBT和HR明显高于卵泡期,并在黄体期达到峰值(均P)。结论:结合华为Band 5记录的BBT和HR,我们的算法在预测正常月经女性的排卵期和月经方面取得了较为理想的效果。对于月经不规律者,该算法具有潜在的可行性,但仍需进一步研究。试验注册:ChiCTR2000036556。2020年8月24日注册
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Tracking of menstrual cycles and prediction of the fertile window via measurements of basal body temperature and heart rate as well as machine-learning algorithms.

Tracking of menstrual cycles and prediction of the fertile window via measurements of basal body temperature and heart rate as well as machine-learning algorithms.

Tracking of menstrual cycles and prediction of the fertile window via measurements of basal body temperature and heart rate as well as machine-learning algorithms.

Tracking of menstrual cycles and prediction of the fertile window via measurements of basal body temperature and heart rate as well as machine-learning algorithms.

Background: Fertility awareness and menses prediction are important for improving fecundability and health management. Previous studies have used physiological parameters, such as basal body temperature (BBT) and heart rate (HR), to predict the fertile window and menses. However, their accuracy is far from satisfactory. Additionally, few researchers have examined irregular menstruators. Thus, we aimed to develop fertile window and menstruation prediction algorithms for both regular and irregular menstruators.

Methods: This was a prospective observational cohort study conducted at the International Peace Maternity and Child Health Hospital in Shanghai, China. Participants were recruited from August 2020 to November 2020 and followed up for at least four menstrual cycles. Participants used an ear thermometer to assess BBT and wore the Huawei Band 5 to record HR. Ovarian ultrasound and serum hormone levels were used to determine the ovulation day. Menstruation was self-reported by women. We used linear mixed models to assess changes in physiological parameters and developed probability function estimation models to predict the fertile window and menses with machine learning.

Results: We included data from 305 and 77 qualified cycles with confirmed ovulations from 89 regular menstruators and 25 irregular menstruators, respectively. For regular menstruators, BBT and HR were significantly higher during fertile phase than follicular phase and peaked in the luteal phase (all P < 0.001). The physiological parameters of irregular menstruators followed a similar trend. Based on BBT and HR, we developed algorithms that predicted the fertile window with an accuracy of 87.46%, sensitivity of 69.30%, specificity of 92.00%, and AUC of 0.8993 and menses with an accuracy of 89.60%, sensitivity of 70.70%, and specificity of 94.30%, and AUC of 0.7849 among regular menstruators. For irregular menstruators, the accuracy, sensitivity, specificity and AUC were 72.51%, 21.00%, 82.90%, and 0.5808 respectively, for fertile window prediction and 75.90%, 36.30%, 84.40%, and 0.6759 for menses prediction.

Conclusions: By combining BBT and HR recorded by the Huawei Band 5, our algorithms achieved relatively ideal performance for predicting the fertile window and menses among regular menstruators. For irregular menstruators, the algorithms showed potential feasibility but still need further investigation.

Trial registration: ChiCTR2000036556. Registered 24 August 2020.

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