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A self-excited threshold autoregressive state-space model for menstrual cycles: Forecasting menstruation and identifying within-cycle stages based on basal body temperature

机译:一种用于月经周期的自我激动的阈值自动评等状态空间模型:预测月经和基于基础体温的循环阶段识别

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摘要

The menstrual cycle is divided into hypothermic and hyperthermic phases based on the periodic shift in the basal body temperature (BBT), reflecting events occurring in the ovary. In the present study, we proposed a state-space model that explicitly incorporates the biphasic nature of the menstrual cycle, in which the probability density distributions for the advancement of the menstrual phase and that for the BBT switch depending on a latent state variable. Our model derives the predictive distribution of the day of the next menstruation onset that is adaptively adjusted by accommodating new observations of the BBT sequentially. It also enables us to obtain conditional probabilities of the woman being in the early or late stages of the cycle, which can be used to identify the duration of hypothermic and hyperthermic phases, possibly as well as the day of ovulation. By applying the model to real BBT and menstruation data, we show that the proposed model can properly capture the biphasic characteristics of menstrual cycles, providing a good prediction of the menstruation onset in a wide range of age groups. The application of the proposed model to a large data set containing 25 622 cycles provided by 3533 women further highlighted the between-age differences in the population characteristics of menstrual cycles, suggesting its wide applicability.
机译:将月经周期分为低温和高温相,基于基体温度(BBT)的周期性偏移,反映在卵巢中发生的事件。在本研究中,我们提出了一种状态空间模型,该模型明确地结合了月经周期的双相性质,其中用于提高月经阶段的概率密度分布以及根据潜在状态变量的BBT开关。我们的模型源于下一次月经发作的预测分布,这是通过依次容纳BBT的新观察来自适应地调整。它还使我们能够获得循环早期或晚期阶段的女性的条件概率,其可用于识别低温和高温阶段的持续时间,可能以及排卵日的日常。通过将模型应用于真实的BBT和月经数据,我们表明所提出的模型可以正确捕获月经周期的双相特征,在各种年龄组中提供了对月经发作的良好预测。将提出的模型应用于包含2533名女性提供的25 622个循环的大数据集进一步突出了月经周期的人口特征之间的年龄差异,表明其广泛适用性。

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