Detecting variations in ovulation and menstruation during the COVID-19 pandemic, using real-world mobile app data

As war and famine are population level stressors that have been historically linked to menstrual cycle abnormalities, we hypothesized that the COVID-19 pandemic could similarly affect ovulation and menstruation among women. We conducted a retrospective cohort study examining changes in ovulation and...

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Veröffentlicht in:PloS one 2021-10, Vol.16 (10), p.e0258314
Hauptverfasser: Nguyen, Brian T, Pang, Raina D, Nelson, Anita L, Pearson, Jack T, Benhar Noccioli, Eleonora, Reissner, Hana R, Kraker von Schwarzenfeld, Anita, Acuna, Juan
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container_issue 10
container_start_page e0258314
container_title PloS one
container_volume 16
creator Nguyen, Brian T
Pang, Raina D
Nelson, Anita L
Pearson, Jack T
Benhar Noccioli, Eleonora
Reissner, Hana R
Kraker von Schwarzenfeld, Anita
Acuna, Juan
description As war and famine are population level stressors that have been historically linked to menstrual cycle abnormalities, we hypothesized that the COVID-19 pandemic could similarly affect ovulation and menstruation among women. We conducted a retrospective cohort study examining changes in ovulation and menstruation among women using the Natural Cycles mobile tracking app. We compared de-identified cycle data from March-September 2019 (pre-pandemic) versus March-September 2020 (during pandemic) to determine differences in the proportion of users experiencing anovulation, abnormal cycle length, and prolonged menses, as well as population level changes in these parameters, while controlling for user-reported stress during the pandemic. We analyzed data from 214,426 cycles from 18,076 app users, primarily from Great Britain (29.3%) and the United States (22.6%). The average user was 33 years of age; most held at least a university degree (79.9%). Nearly half (45.4%) reported more pandemic-related stress. Changes in average cycle and menstruation lengths were not clinically significant, remaining at 29 and 4 days, respectively. Approximately 7.7% and 19.5% of users recorded more anovulatory cycles and abnormal cycle lengths during the pandemic, respectively. Contrary to expectation, 9.6% and 19.6% recorded fewer anovulatory cycles and abnormal cycle lengths, respectively. Women self-reporting more (32.0%) and markedly more (13.6%) stress during the pandemic were not more likely to experience cycle abnormalities. The COVD-19 pandemic did not induce population-level changes to ovulation and menstruation among women using a mobile app to track menstrual cycles and predict ovulation. While some women experienced abnormalities during the pandemic, this proportion was smaller than that observed prior to the pandemic. As most app users in this study were well-educated women over the age of 30 years, and from high-income countries, their experience of the COVID-19 pandemic might differ in ways that limit the generalizability of these findings.
doi_str_mv 10.1371/journal.pone.0258314
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subjects Abnormalities
Adult
Algorithms
Amenorrhea
Analysis
Applications programs
Biology and Life Sciences
Birth control
Body temperature
Coronaviruses
COVID-19
COVID-19 - epidemiology
Data collection
Epidemics
Family planning
Famine
Female
Gynecology
Health care
Humans
Medicine and Health Sciences
Menstrual cycle
Menstruation
Menstruation disorders
Middle Aged
Mobile Applications
Mobile computing
Obstetrics
Ovulation
Pandemics
Physiological aspects
Population
Pregnancy
Preventive medicine
Psychological aspects
Risk factors
SARS-CoV-2
Social Sciences
Stress
Supervision
United Kingdom
Womens health
title Detecting variations in ovulation and menstruation during the COVID-19 pandemic, using real-world mobile app data
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