A self-excited threshold autoregressive state-space model for menstrual cycles: forecasting menstruation and identifying ovarian phases based on basal body temperature
Ai Kawamori, Keiichi Fukaya, Masumi Kitazawa, Makio Ishiguro

TL;DR
This paper introduces a novel state-space model that captures the biphasic nature of menstrual cycles using basal body temperature data, enabling accurate prediction of menstruation and ovarian phases across diverse age groups.
Contribution
The study presents a self-excited threshold autoregressive state-space model that explicitly models menstrual cycle phases and predicts menstruation using BBT data, improving cycle understanding and forecasting.
Findings
Model accurately predicts menstruation onset across age groups.
Captures biphasic characteristics of menstrual cycles.
Applied to large dataset, revealing age-related cycle differences.
Abstract
The menstrual cycle is composed of the follicular phase and subsequent luteal phase based on events occurring in the ovary. Basal body temperature (BBT) reflects this biphasic aspect of menstrual cycle and tends to be relatively low during the follicular phase. 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 BBT switch depend 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 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 follicular and luteal…
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