Modelling menstrual cycle length using state space models


Date
Oct 4, 2019 9:00 AM — 5:00 PM
Location
Glenroyal Hotel & Leisure Club
Straffan Rd, Maynooth, Co. Kildare W23 C2C9

Abstract:

The ability to predict menstrual cycle length to a high degree of precision enables female athletes to track their period and tailortheir training and nutrition correspondingly knowing when to push harder when to prioritise recovery and how to minimise theimpact of menstrual symptoms on performance. Such individualisation is possible if cycle length can be predicted to a highdegree of accuracy. To achieve this, a hybrid predictive model was built using data on 16,990 cycles collected from a sampleof 2,178 women (mean age 33.89 years, range 14.98 - 47.10, number of menstrual cycles ranging from 4 - 53). To capture thewithin-subject temporal correlation, a mixed-effect state-space model was fitted incorporating a Bayesian approach for processforecasting to predict the duration (in days) of the next menstrual cycle. The modelling procedure was split into three steps(i)a time trend component using a random walk with an overdispersion parameter, (ii) an autocorrelation component using anautoregressive moving-average (ARMA) model, and (iii) a linear predictor to account for covariates (e.g. injury, stomach cramps,training intensity). The inclusion of an overdispersion parameter suggested that26.81% [24.14%,29.58%]of cycles in the samplewere overdispersed where the random walk standard deviation under a non-overdispersed cycle is1.0530 [1.0060,1.0526]days whileunder an overdispersed cycle it increased to4.7386 [4.5379,4.9492]days. To assess the performance and prediction accuracy ofthe model, each woman’s last observation was used as test data. The Root Mean Square Error (RMSE), Concordance CorrelationCoefficient (CCC) and Pearson correlation coefficient (r) between the observed and predicted values were calculated. The modelhad an RMSE of 1.6126 days, a precision of 0.7501 and overall accuracy of 0.9855. In the absence of hormonal measurements,knowing how aspects of physiology and psychology are changing across the menstrual cycle has the potential to help femaleathletes personalise their training, nutrition and recovery tailored to their cycle to sustain peak performance at the highest leveland gain a competitive edge. In conclusion, the hybrid model presented here is a useful approach for predicting menstrual cyclelength which in turn can be used to support female athlete wellness to optimise performance

Thiago de Paula Oliveira
Thiago de Paula Oliveira
Consultant Statistician

My research interests include statistical modelling, agriculture, genetics, and sports.