Abnormal uterine bleeding patterns determined t... - Thyroid UK

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Abnormal uterine bleeding patterns determined through menstrual tracking among participants in the Apple Women's Health Study

helvella profile image
helvellaAdministratorThyroid UK
6 Replies

Posting this partly because of the identified association with thyroid disorder, but also because the data source if Apple.

Which means we are, for better or for worse, starting to see the impact of personal smart devices on medical research.

Am J Obstet Gynecol. 2022 Oct 29;S0002-9378(22)00839-0.

doi: 10.1016/j.ajog.2022.10.029. Online ahead of print.

Abnormal uterine bleeding patterns determined through menstrual tracking among participants in the Apple Women's Health Study

Carey Y Zhang 1 , Huichu Li 2 , Shunan Zhang 1 , Sanaa Suharwardy 3 , Uvika Chaturvedi 1 , Tyler Fischer-Colbrie 1 , Lindsey A Maratta 1 , Jukka-Pekka Onnela 2 , Brent A Coull 2 , Russ Hauser 2 , Michelle A Williams 2 , Donna D Baird 4 , Anne Marie Z Jukic 4 , Shruthi Mahalingaiah 2 , Christine L Curry 5

Affiliations

• PMID: 36414993

• DOI: 10.1016/j.ajog.2022.10.029

Abstract

Background: Use of menstrual tracking data to understand abnormal bleeding patterns has been limited because of lack of incorporation of key demographic and health characteristics and confirmation of menstrual tracking accuracy.

Objective: This study aimed to identify abnormal uterine bleeding patterns and their prevalence and confirm existing and expected associations between abnormal uterine bleeding patterns, demographics, and medical conditions.

Study design: Apple Women's Health Study participants from November 2019 through July 2021 who contributed menstrual tracking data and did not report pregnancy, lactation, use of hormones, or menopause were included in the analysis. Four abnormal uterine bleeding patterns were evaluated: irregular menses, infrequent menses, prolonged menses, and irregular intermenstrual bleeding (spotting). Monthly tracking confirmation using survey responses was used to exclude inaccurate or incomplete digital records. We investigated the prevalence of abnormal uterine bleeding stratified by demographic characteristics and used logistic regression to evaluate the relationship of abnormal uterine bleeding to a number of self-reported medical conditions.

Results: There were 18,875 participants who met inclusion criteria, with a mean age of 33 (standard deviation, 8.2) years, mean body mass index of 29.3 (standard deviation, 8.0), and with 68.9% (95% confidence interval, 68.2-69.5) identifying as White, non-Hispanic. Abnormal uterine bleeding was found in 16.4% of participants (n=3103; 95% confidence interval, 15.9-17.0) after accurate tracking was confirmed; 2.9% had irregular menses (95% confidence interval, 2.7-3.1), 8.4% had infrequent menses (95% confidence interval, 8.0-8.8), 2.3% had prolonged menses (95% confidence interval, 2.1-2.5), and 6.1% had spotting (95% confidence interval, 5.7-6.4). Black participants had 33% higher prevalence (prevalence ratio, 1.33; 95% confidence interval, 1.09-1.61) of infrequent menses compared with White, non-Hispanic participants after controlling for age and body mass index. The prevalence of infrequent menses was increased in class 1, 2, and 3 obesity (class 1: body mass index, 30-34.9; prevalence ratio, 1.31; 95% confidence interval, 1.13-1.52; class 2: body mass index, 35-39.9; prevalence ratio, 1.25; 95% confidence interval, 1.05-1.49; class 3: body mass index, >40; prevalence ratio, 1.51; 95% confidence interval, 1.21-1.88) after controlling for age and race/ethnicity. Those with class 3 obesity had 18% higher prevalence of abnormal uterine bleeding compared with healthy-weight participants (prevalence ratio, 1.18; 95% confidence interval, 1.02-1.38). Participants with polycystic ovary syndrome had 19% higher prevalence of abnormal uterine bleeding compared with participants without this condition (prevalence ratio, 1.19; 95% confidence interval, 1.08-1.31). Participants with hyperthyroidism (prevalence ratio, 1.34; 95% confidence interval, 1.13-1.59) and hypothyroidism (prevalence ratio, 1.17; 95% confidence interval, 1.05-1.31) had a higher prevalence of abnormal uterine bleeding, as did those reporting endometriosis (prevalence ratio, 1.28; 95% confidence interval, 1.12-1.45), cervical dysplasia (prevalence ratio, 1.20; 95% confidence interval, 1.03-1.39), and fibroids (prevalence ratio, 1.14; 95% confidence interval, 1.00-1.30).

Conclusion: In this cohort, abnormal uterine bleeding was present in 16.4% of those with confirmed menstrual tracking. Black or obese participants had increased prevalence of abnormal uterine bleeding. Participants reporting conditions such as polycystic ovary syndrome, thyroid disease, endometriosis, and cervical dysplasia had a higher prevalence of abnormal uterine bleeding.

Keywords: chronic nongestational abnormal uterine bleeding; digital health; menstrual cycles.

pubmed.ncbi.nlm.nih.gov/364...

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helvella
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arTistapple profile image
arTistapple

Wow. No idea how accurate this actually is on the ground but no particular reason to think it would not be. I have found this is a difficult thing to do by hand written notes for hypothyroidism. The breadth of info covered in (my) notes make it awkward to monitor; even for the purpose of my own self monitoring. I am constantly tweaking it. Something like this, designed for thyroid patients could be potentially useful. Is this why you picked up on it helvella? Monitoring hypothyroidism for medics off course might be useless, as they don’t listen or believe us anyway. Maybe it already exists. I am not exactly au fait with technology.

helvella profile image
helvellaAdministratorThyroid UK in reply to arTistapple

A number of reasons for posting:

The simple observation that there are these links;

Pointing out that lots of people simply typing in a few bits of information (never used it so not sure exactly what the people do) can result in identification, or confirmation, of links;

Highlighting that the traditional data collection methods used in medicine could well be supplanted for some purposes by approaches like these;

Suggesting that it might be worth considering using these features.

At the same time, emphasising the issues which can arise. Especially privacy of the individual. There has been a widespread disengagement from period tracking (etc.) in the USA, especially in states which appear to have banned abortion and might be on the way to banning at least some contraception.

arTistapple profile image
arTistapple in reply to helvella

Aha. Well spotted - the downside. I am always slow on that uptake. I think it might be a bit more difficult to design something for hypothyroidism (but not impossible) that would be quite so specific. One glance at the posts on the forum give some indication of the range of issues, symptoms, circumstances, response to meds etc.

helvella profile image
helvellaAdministratorThyroid UK in reply to arTistapple

I very much think there is opportunity to help those with thyroid issues.

Privacy issues can be addressed - possibly as well as traditional medical record systems. (E.g. ensuring all data is on one device, encrypted, not accessible even to manufacturer.) But sharing will always open up privacy issues.

Lots of individually small features could be interesting. For example, voice analysis can identify changes associated with hypothyroidism. I wouldn't be at all surprised if typing speed, accuracy, etc., were also associated.

arTistapple profile image
arTistapple

It could be particularly useful in times of brain fog. I can’t tell you how often I have had to refine my own personal monitoring schema. So much that the historical stuff is of interest but not much use as it can’t be compared with all the apparent ‘new stuff’ that comes up. Off course you are way ahead - typing speed etc.

helvella profile image
helvellaAdministratorThyroid UK in reply to arTistapple

I have actually been holding back on posting about the Medications options in the most recent Apple iPhone IOS.

It has lots of potential but some issues are holding me back from posting. Like the alerts only make the phone vibrate for a second or two. And several features only work in the USA (reading medicine labels with the camera).

My point, though, is that these things are coming, are improving, and could make quite a difference to many.