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The forecasting of menstruation based on a state‐space modeling of basal body temperature time series

机译:基于基础体温时间序列的状态空间模型的月经预测

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摘要

Women's basal body temperature (BBT) shows a periodic pattern that associates with menstrual cycle. Although this fact suggests a possibility that daily BBT time series can be useful for estimating the underlying phase state as well as for predicting the length of current menstrual cycle, little attention has been paid to model BBT time series. In this study, we propose a state‐space model that involves the menstrual phase as a latent state variable to explain the daily fluctuation of BBT and the menstruation cycle length. Conditional distributions of the phase are obtained by using sequential Bayesian filtering techniques. A predictive distribution of the next menstruation day can be derived based on this conditional distribution and the model, leading to a novel statistical framework that provides a sequentially updated prediction for upcoming menstruation day. We applied this framework to a real data set of women's BBT and menstruation days and compared prediction accuracy of the proposed method with that of previous methods, showing that the proposed method generally provides a better prediction. Because BBT can be obtained with relatively small cost and effort, the proposed method can be useful for women's health management. Potential extensions of this framework as the basis of modeling and predicting events that are associated with the menstrual cycles are discussed. © 2017 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd.
机译:妇女的基础体温(BBT)显示与月经周期相关的周期性模式。尽管这一事实表明,每日BBT时间序列可用于估计潜在的相态以及预测当前月经周期的长度,但很少有人关注BBT时间序列的模型。在这项研究中,我们提出了一个状态空间模型,该模型将月经期作为潜在的状态变量来解释BBT的每日波动和月经周期长度。通过使用顺序贝叶斯滤波技术可以获得相位的条件分布。可以基于该条件分布和模型来得出下一个月经日的预测分布,从而导致提供了一种新的统计框架,该统计框架为即将到来的月经日提供了顺序更新的预测。我们将该框架应用于女性BBT和月经天数的真实数据集,并将该方法的预测准确性与以前的方法进行了比较,表明该方法通常可以提供更好的预测。因为可以用相对较小的成本和精力来获得BBT,所以所提出的方法对妇女的健康管理很有用。作为与月经周期相关的建模和预测事件的基础,讨论了该框架的潜在扩展。 ©2017作者。 John Wiley&Sons Ltd.发布的医学统计资料。

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