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BRCA Gene Changes: Cancer Risk and Genetic Testing Fact Sheet - NCI

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Did you know that if you have the bad BRCA gene, you have a 40-60% chance of getting ovarian cancer and there’s no way to detect it before it’s quite advanced?
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Menstrual Cycle Length Changes Following Vaccination Against Influenza Alone or With COVID-19 | Obstetrics and Gynecology | JAMA Network Open | JAMA Network

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Key Points

Question  Is the influenza vaccine alone or with a COVID-19 vaccine associated with change in menstrual cycle length?

Findings  In this cohort study of 1501 participants, in individuals with regular menstrual cycles, a temporary small but statistically significant increase in menstrual cycle length (<1 day) with receipt of an influenza vaccine, with or without a COVID-19 vaccine, based on vaccination in the follicular phase was found.

Meaning  These findings may help to confirm the utility of vaccination for individuals with concerns about adverse effects of vaccination on menstruation.

Importance  Multiple studies have identified an association between COVID-19 vaccination and menstrual disturbances. Data on whether menstrual health is impacted by other vaccines are needed to counsel individuals about what to expect and to address vaccine hesitancy.

Objective  To assess the association of changes in length of the menstrual cycle with influenza vaccination, with or without concurrent receipt of a COVID-19 vaccine.

Design, Setting, and Participants  This global retrospective cohort study prospectively collected menstrual cycle data from April 25, 2023, to February 27, 2024 (4-5 cycles per individual), among international English-speaking users of a digital birth control application. Participants included individuals aged 18 to 45 years, not using hormonal contraception, and with average cycle lengths of 24 to 38 days in 3 consecutive cycles before receipt of vaccines.

Exposure  Seasonal influenza vaccination with or without concurrent receipt of COVID-19 vaccine.

Main Outcome and Measure  The primary outcome consisted of adjusted mean within-individual changes of menstrual cycle length assessed by vaccination group. Secondary analysis evaluated the phase of menstrual cycle at time of vaccination.

Results  A total of 1501 individuals met the inclusion criteria, of whom 791 were vaccinated for influenza only and 710 were concurrently vaccinated for influenza and COVID-19. By race and ethnicity, 1 participant (0.1%) was American Indian or Alaska Native; 10 (0.7%), Asian; 3 (0.2%), Black; 15 (1.0%), Hispanic or Latina; 1 (0.1%), Middle Eastern or North African; 368 (24.5%), White; and 19 (1.3%), other; and 1084 (72.2%), missing. Most of the cohort was younger than 35 years (1230 [82.0%]), had at least a college degree (1122 [74.8%]), and was located in the US or Canada (938 [62.5%]). Individuals vaccinated for influenza alone experienced an adjusted mean increase of 0.40 (95% CI, 0.08-0.72) days, while those vaccinated concurrently for influenza and COVID-19 experienced a mean increase of 0.49 (95% CI, 0.16-0.83) days (P = .69 for difference between vaccine groups). A total of 37 individuals (4.7%) experienced a change in cycle length of at least 8 days with influenza vaccine only and 42 (5.9%) with concurrent receipt of both vaccines (P = .28). In the postvaccination cycle, both vaccination groups returned to their prevaccination cycle lengths. Menstrual cycle changes occurred with vaccination in the follicular phase but not the luteal phase.

Conclusions and Relevance  In this cohort study of individuals with regular menstrual cycles, influenza vaccine given alone or in combination with a COVID-19 vaccine was associated with a small but temporary change in menstrual cycle length. These findings may help clinicians confirm the utility of vaccination for patients with concerns about menstrual adverse effects of vaccination.

In January 2019, the World Health Organization recognized vaccine hesitancy as one of the top 10 threats to global health.1 The public’s concerns about vaccines and their adverse effects can directly impact vaccine hesitancy and impede the uptake of vaccines, which in turn increases rates of preventable disease.2-4 Reported menstrual changes following receipt of the COVID-19 vaccine received a substantial amount of attention and concern from civil society and the media, which impacted uptake.5 However, establishment of a link between vaccines and menstrual changes is not new. For example, the Japanese government was forced to suspend their human papillomavirus (HPV) vaccine program in 2013 following reports of adverse effects including menstrual cycle disturbances in adolescents and young women, which raised fears of potential impacts on future fertility.6 Initial uptake was 70%, but following these reports, vaccination uptake plummeted to less than 1% among the eligible population.7-9 The absence of data to directly address anecdotal reports has had long-lasting impacts: uptake of HPV vaccine is still low in Japan, and HPV vaccine programs in other countries were also shown to be negatively impacted.10-12 More importantly, the lack of HPV vaccine uptake is estimated to result in approximately 10 000 preventable deaths from cervical cancer in Japan in the next 50 years.13

Prior work from some of the investigators from the present study and others14-17 has found a small temporary change in menstrual cycle length and heaviness in menstrual flow for individuals receiving the COVID-19 vaccine, particularly for those who are vaccinated during the follicular phase of the menstrual cycle. While the underlying mechanisms behind this finding are not fully understood, we have known for several decades that the immune and reproductive systems interact closely with one another, but the interaction does not cause infertility.18 An individual’s response to a vaccine is impacted by a variety of factors, including prior exposure to the disease and/or vaccine, immunogenicity of the vaccine, time from either event, and biological sex, among others.19,20 Despite the potential for menstrual cycle disturbances following vaccination, menstrual health outcomes have been overlooked in prior vaccine clinical trials, creating a critical knowledge gap about these important preventative health tools.16

Influenza is a long-standing common endemic virus. Influenza vaccination is the best way to prevent or decrease complications of influenza and is recommended annually to offset waning immunity. Now that COVID-19 infection has transitioned from pandemic to endemic, we appear to be moving into an annual vaccination schedule that will include recommendations to receive both influenza and COVID-19 vaccines. However, any potential impact of influenza vaccination on menstrual cycle changes and whether those changes may differ with concurrent receipt of the COVID-19 vaccine remain unknown. Herein we analyze prospectively collected menstrual cycle data among those who received the influenza vaccine alone or on the same day as COVID-19 vaccination. We compare changes in menstrual cycle length in days and the prevalence of clinically meaningful changes (≥8 days) between vaccination groups,21 in both the vaccination and postvaccination cycles.

This retrospective cohort study used prospectively collected menstrual cycle data from a digital birth control application (Natural Cycles; Nordic AB). Individuals use the application to plan or prevent pregnancy without the use of hormonal contraceptive methods; details about the variables collected by the application have been published previously.22 To be eligible for study inclusion, individuals needed to consent to the use of their deidentified data for research purposes, be aged 18 to 45 years, and respond to an in-application message about receipt and timing of a seasonal influenza and/or COVID-19 vaccination in August 2023 or later. Retrospective self-reported data on vaccination timing were then paired with prospectively collected data on menstrual cycles. We excluded individuals who indicated that they had received at least 1 vaccination but did not provide a vaccination date, only received COVID-19 vaccine, received both vaccines but in different cycles or different days within the same cycle, had no data for the vaccination cycle or fewer than 3 prevaccination cycles, had nonconsecutive cycles, had a mean prevaccination cycle length outside the reference range of 24 to 38 days,21 were at least 38 days into the vaccination cycle prior to receiving a vaccine, self-identified as menopausal, or were less than 3 cycles after pregnancy or after hormonal contraception use for the entire study period (Figure 1). The Institutional Review Board of the Oregon Health & Science University, Portland, approved the protocol and did not require informed written consent beyond an introduction to the brief survey and a reminder regarding the revokable consent to the use of deidentified data for research purposes provided by users within the application. This report follows the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) reporting guideline for cohort studies.

Cycle data in the final analytical sample ranged between April 25, 2023, and February 27, 2024; vaccines were received from August 21, 2023, to January 29, 2024. Each individual contributed data from a minimum of 4 consecutive cycles: 3 prevaccination cycles and the cycle in which they received their vaccines (vaccination cycle). We also included data from a fifth cycle immediately following the vaccination cycle (postvaccination cycle) if available. If data from the postvaccination cycle were not available, we excluded those individuals (n = 30) from postvaccination cycle analyses.

Our primary binary independent variable was vaccination group: receipt of an influenza vaccine only or concurrent receipt of both influenza and COVID-19 vaccines on the same day. We chose to focus on these study groups since completely naive (unvaccinated) individuals are rare in the study population. Our primary outcome was the adjusted within-individual change in menstrual cycle length (in days) from the mean of the 3 prevaccination cycles to the vaccination cycle; each individual therefore served as their own control. We also assessed the change in cycle length from the prevaccination cycle mean to the postvaccination cycle, and whether the vaccination or postvaccination change in cycle length was clinically meaningful (defined as a change of ≥8 days).21

We included several sociodemographic characteristics collected within the birth control application. We categorized age into approximate 5-year groups: 18 to 24, 25 to 29, 30 to 34, 35 to 39, and 40 to 45 years. Individuals reported their race and ethnicity using options defined by the application as American Indian or Alaska Native, Asian, Black, Hispanic or Latina, Middle Eastern or North African, White, or other group. We reported racial and ethnic categories to characterize this sample population but did not include these data in our primary adjusted model. We used categorical variables for body mass index (BMI; calculated as the weight in kilograms divided by the height in meters squared): underweight (<18.5), normal weight (18.5-24.9), overweight (25.0-29.9), and obesity (≥30.0). We classified geographic location as the UK and Channel Islands, continental Europe, US and Canada, and other regions. We also used binary variables to characterize parity (nulliparous vs parous), educational level (less than a college degree vs college degree or more), and relationship status (in a relationship vs not in a relationship). Notably, the birth control application’s sociodemographic data collection patterns have changed over time, and report of many sociodemographic variables is optional within the application, which resulted in a large degree of missingness for several variables.

We compared all sociodemographic characteristics by vaccination group using a Pearson χ2 or Fisher exact test. We calculated the change in cycle length from the prevaccination mean to the vaccination and postvaccination cycles (excluding 30 individuals with no data for the postvaccination cycle) and adjusted the estimates using linear regression models with change in cycle length as the outcome, vaccination group as the primary independent variable, and age group, BMI category, and parity as adjusting covariates. We then graphed the mean marginal change in cycle length from the models with 95% CIs for individuals who only received the influenza vaccine and those who received both the influenza and COVID-19 vaccine on the same day. We used multiple imputation by chained equations23 with 50 rounds of imputation to address missingness in adjusting covariates. Data missingness was a function of changes to demographic data collection by the application and considered missing at random. We compared the percentage of individuals who experienced a clinically meaningful change in cycle length (≥8 days) during the vaccination cycle across vaccination groups using a Pearson χ2 test. We then repeated this analysis for the postvaccination cycle among those who had experienced a clinically meaningful change in cycle length during the prior vaccination cycle.

In addition to assessing unadjusted changes in cycle length, we conducted several sensitivity analyses to confirm the robustness of our results for both the vaccination and postvaccination cycles. First, we excluded any individuals who reported polycystic ovary syndrome, thyroid disorder, or endometriosis (n = 145). Second, we excluded anyone who reported use of emergency contraception in any cycle during the study period (n = 58). Third, we excluded anyone with at least 1 prevaccination cycle outside the 24- to 38-day range (n = 247). Fourth, we developed multivariable models with additional adjusting covariates: race and ethnicity (collapsed to White compared with some other group due to sample size), global region (collapsed to US and Canada compared with other regions), educational level, and relationship status. Finally, we assessed the adjusted change in cycle length based on the menstrual phase timing of vaccination for both vaccination groups: receipt of vaccines in the follicular phase (first day of the cycle through the day of ovulation as estimated by the application’s validated algorithm) or luteal phase (day after ovulation through the last day of the cycle), using methods described previously.24 All analyses were conducted using Stata, version 17.0 (StataCorp LLC), and 2-sided P ≤ .05 indicated statistical significance.

Among the 1501 individuals in this analytical cohort, 1230 (82.0%) were younger than 35 years; 1122 (74.8%) had at least a college degree; and 938 (62.5%) were located in the US or Canada (Table 1). By race and ethnicity, 1 participant (0.1%) was American Indian or Alaska Native; 10 (0.7%), Asian; 3 (0.2%), Black; 15 (1.0%), Hispanic or Latina; 1 (0.1%), Middle Eastern or North African; 368 (24.5%), White; and 19 (1.3%), other; and 1084 (72.2%), missing. Figure 1 summarizes participant flow. The study sample included 791 individuals vaccinated for influenza only and 710 vaccinated for both influenza and COVID-19 on the same day, representing a total of 7475 cycles, with 30 individuals missing data from the postvaccination cycle. Compared with those who received only the influenza vaccine, individuals who received both vaccines were more likely to be older than 30 years (391 [55.1%] vs 346 [43.7%]; P < .001) and more likely to be located in the US or Canada (511 [72.0%] vs 427 [54.0%]; P < .001). All missing data are tabulated in Table 1.

Both vaccination groups experienced a small but statistically significant adjusted increase in cycle length during the vaccination cycle (Figure 2A). Individuals vaccinated for influenza alone experienced a mean increase of 0.40 (95% CI, 0.08-0.72) days, while those vaccinated concurrently for influenza and COVID-19 experienced a mean increase of 0.49 (95% CI, 0.16-0.83) days (P = .69 for difference between vaccine groups). In the postvaccination cycle, neither group experienced cycle lengths that were significantly different from those in their prevaccination period (Figure 2B). The adjusted mean change in cycle length was −0.02 (95% CI, −0.31 to 0.27) days for the influenza only group and 0.14 (95% CI, −0.17 to 0.45) days for the influenza and COVID-19 group (P = .46 for the between-group difference). eTable 1 in Supplement 1 includes summary statistics for cycle lengths and changes from prevaccination mean.

During the vaccination cycle, the percentage of individuals who experienced a clinically meaningful change in cycle length of 8 days or more was slightly higher in the group that received both vaccines concurrently compared with influenza only (42 of 710 [5.9%] vs 37 of 791 [4.7%]) (Table 2), but the difference was not statistically significant (P = .28). Among those who experienced a clinically meaningful change in cycle length during the vaccination cycle (≥8 days), there were no statistically significant differences in the percentage who continued to experience a clinically meaningful change in the postvaccination cycle between the vaccination groups (10 of 36 [27.8%] for influenza only vs 8 of 39 [20.5%] for both vaccines; P = .46).

Our sensitivity analyses excluding individuals with polycystic ovary syndrome, thyroid disorder, or endometriosis, individuals reporting emergency contraception use, or individuals with any prevaccination cycle lengths outside the normal range or adjusting for the full set of covariates did not alter our findings in a meaningful way, with the exception that the change in vaccination cycle length for individuals vaccinated for influenza alone was not statistically significant after excluding those with self-reported gynecological or thyroid disorders (eTable 2 in Supplement 1). However, in that sensitivity analysis, the cycle length change was significant for individuals who received both vaccines with an increase of 0.53 (95% CI, 0.21 to 0.86) days.

When we examined the adjusted change in cycle length in both vaccination groups by the menstrual phase of vaccination, only individuals who were vaccinated in the follicular phase experienced a statistically significant increase in cycle length compared with their prevaccination mean length: increase of 0.82 (95% CI, 0.40-1.24) days for influenza alone and 0.99 (95% CI, 0.55-1.43) days for concurrent influenza and COVID-19 vaccines (Figure 3A). Individuals vaccinated in the luteal phase experienced no change in cycle length: −0.16 (95% CI, −0.63 to 0.32) days for influenza alone vs −0.14 (95% CI, −0.64 to 0.36) days for both vaccines. In the postvaccination cycle, no groups experienced a significant change in cycle length regardless of menstrual phase of vaccination or vaccines received (Figure 3B).

Misinformation and the dearth of data to confirm or refute the vaccine experience can decrease acceptability and uptake of a vaccine. Prior work including investigators from the present study14,15 found that the COVID-19 vaccine temporarily lengthens the menstrual cycle by about 1 day or less, while a small subset of individuals will experience a clinically meaningful cycle length change of 8 days or more. In the present cohort study, we found a similarly temporary small increase in cycle length for individuals receiving seasonal influenza vaccine only or influenza plus COVID-19 vaccine, based on vaccination during the follicular phase, and a small subset who experienced a cycle length change of 8 days or more. This provides an important first data point about how influenza vaccination might affect menstrual cyclicity, a topic that has been largely ignored throughout the almost century-long history of influenza vaccines.

A substantial amount of one’s lifetime is spent menstruating. It is a common routine bodily function occurring for approximately 1 week each month for 40 years. While the COVID-19 pandemic brought many challenges, it did highlight the lack of evidence on this important patient-oriented outcome. Public concern about new vaccines creates mistrust about all vaccines. We have seen a recent decline in overall vaccination uptake.25 We hypothesized that given the endemic nature of influenza and the widespread exposure to the influenza vaccine, we might not see any signal, but given that vaccines are meant to cause an immune response each time they are received, it is also not surprising that our findings are similar to those for the COVID-19 vaccine. Notably, our findings also suggest that concurrent administration of the COVID-19 vaccine with influenza vaccination does not appear to significantly increase the risk of menstrual cycle disturbances, which may help clinicians confirm the utility of vaccination with these temporary changes and help improve vaccine uptake rates for both endemic diseases.

The increase in cycle length we observed appears to be based on individuals vaccinated in the follicular phase of their menstrual cycle. This is in line with previous work from some of the investigators of the present study,24 which found an approximately 1-day increase in cycle length for individuals vaccinated for COVID-19 during the follicular phase, but no change for those vaccinated in the luteal phase or for an unvaccinated control group. Our results support the current hypothesis that the immune response triggered by vaccination temporarily impacts the hypothalamic-pituitary-ovarian axis, although it is unclear whether this is a series of temporary responses or 1 primary change and at what level of the axis this occurs.24,26,27 Individuals who are concerned about potential menstrual cycle disturbances following vaccination for influenza and/or COVID-19 could consider timing their vaccination to coincide with their luteal phase to minimize their risk of cycle length changes.

While small changes in menstrual health may not seem meaningful to many clinicians and scientists, any perceived impact in a routine bodily function linked to fertility can cause alarm and contribute to vaccine hesitancy. To draw a parallel, this might be comparable to whether reports of temporary erectile dysfunction occurred post vaccination, which is by no means a serious adverse event but is a cause of distress if unanticipated, potentially raising concerns for future fertility, and which could certainly fuel vaccine hesitancy. While sporadic deviations from menstrual norms are not cause for clinical concern, they can have a large adverse impact on the quality of life during menstruation for individuals who experience episodes of social embarrassment, anxiety related to uncontained bleeding or pregnancy, and worry about what bleeding changes mean for their overall health and fertility.28-30 Any change, even if small and not clinically relevant, is important to the public, and even more so in the context of vaccines and rampant misinformation.31

Strengths and Limitations

The strengths of our study include a large global sample of prospectively collected menstrual cycle data before, during, and after self-confirmed vaccine timing and type. Menstrual cycles are known to be inherently variable, but we attempted to mitigate this by using data from individuals not using hormonal contraception with proven regular cycles prior to vaccination as their own controls and excluding individuals with known irregular cycles.

This study also has some limitations. First, our dataset had high levels of missingness for several sociodemographic characteristics, potentially limiting our ability to address confounding. However, various approaches to multiple imputation did not change our findings. Second, our sample is largely White, nulliparous, and highly educated and has a low BMI, which could limit the generalizability of our results. Third, we were only able to adjust for sociodemographic characteristics collected by the application; our estimates may be affected by residual confounding. Fourth, vaccination dates were self-reported and may be subject to recall bias, but we conducted the survey during the most active time of influenza vaccination. We also excluded a large proportion of eligible individuals who did not have enough cycle data to adequately assess our outcome. This is due to the fact that the user base for the birth control application has grown over time, and newer users were not yet tracking their cycle data around the time of vaccination. Prior work14,15,17,24 compared COVID-19 vaccinated individuals with an unvaccinated control group; in this study we compare receipt of influenza vaccine alone or in combination with COVID-19 vaccine, which represents a common clinical scenario. Individuals truly naive to either vaccine are rare; both influenza and the influenza vaccine have been endemic for decades.

In this cohort study, we found that receipt of influenza vaccine alone and receipt of both influenza and COVID-19 on the same day were associated with small (<1 day) changes in menstrual cycle length, based on vaccination during the follicular phase. We further showed no differences by vaccination group in the proportion of individuals who experience a clinically meaningful (≥8 days) change in cycle length. Our findings can confirm that concurrent receipt of influenza and COVID-19 vaccines does not appear to be associated with large menstrual cycle changes in most people.

Accepted for Publication: February 28, 2025.

Published: April 29, 2025. doi:10.1001/jamanetworkopen.2025.7871

Open Access: This is an open access article distributed under the terms of the CC-BY License. © 2025 Boniface ER et al. JAMA Network Open.

Corresponding Author: Alison Edelman, MD, MPH, Department of Obstetrics and Gynecology, Oregon Health & Science University, 3181 SW Sam Jackson, Mail Code UHN 50, Portland, OR 97239 ([email protected]).

Author Contributions: Ms Boniface had full access to all of the data in the study and takes responsibility for the integrity of the data and the accuracy of the data analysis.

Concept and design: Boniface, Darney, Alvergne, Edelman.

Acquisition, analysis, or interpretation of data: Boniface, Darney, van Lamsweerde, Benhar, Edelman.

Drafting of the manuscript: Boniface, Edelman.

Critical review of the manuscript for important intellectual content: All authors.

Statistical analysis: Boniface, Darney.

Obtained funding: Edelman.

Administrative, technical, or material support: van Lamsweerde, Edelman.

Supervision: Darney, Benhar, Alvergne, Edelman.

Conflict of Interest Disclosures: Dr Darney reported receiving grants from the National Institutes of Health (NIH) during the conduct of the study, an honorarium from the American College of Obstetricians and Gynecologists, and nonfinancial support from Society of Family Planning travel expenses outside the submitted work and serving as deputy editor at Contraception. Ms van Lamsweerde reported receiving personal fees from Natural Cycles Nordic AB during the conduct of the study. Dr Benhar reported receiving personal fees from Natural Cycles Nordic AB during the conduct of the study. Dr Edelman reported receiving grant support from the NIH during the conduct of the study and receiving royalties from Contemporary Forums and UpToDate Inc, research sponsorship to institution from Organon & Co and HRA Pharma, honoraria for continuing medical education activities from Medscape, honoraria for advisory group participation from FHI 360, grant support from the Gates Foundation, and travel reimbursement for advisory group activities from the World Health Organization and Centers for Disease Control and Prevention outside the submitted work. No other disclosures were reported.

Funding/Support: This study was supported by grant NICHD089957 from the US National Institute of Child Health and Human Development (principal investigator, Dr Edelman).

Role of the Funder/Sponsor: The funder had no role in the design and conduct of the study; collection, management, analysis, and interpretation of the data; preparation, review, or approval of the manuscript; and decision to submit the manuscript for publication.

Data Sharing Statement: See Supplement 2.

6.

Larson  HJ, Wilson  R, Hanley  S, Parys  A, Paterson  P.  Tracking the global spread of vaccine sentiments: the global response to Japan’s suspension of its HPV vaccine recommendation. 

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Suppli  CH, Hansen  ND, Rasmussen  M, Valentiner-Branth  P, Krause  TG, Mølbak  K.  Decline in HPV-vaccination uptake in Denmark—the association between HPV-related media coverage and HPV-vaccination. 

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10.1186/s12889-018-6268-x



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Munro  MG, Critchley  HOD, Fraser  IS; FIGO Menstrual Disorders Committee.  The two FIGO systems for normal and abnormal uterine bleeding symptoms and classification of causes of abnormal uterine bleeding in the reproductive years: 2018 revisions. 

 Int J Gynaecol Obstet

. 2018;143(3):393-408. doi:

10.1002/ijgo.12666



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Matteson  KA, Clark  MA.  Questioning our questions: do frequently asked questions adequately cover the aspects of women’s lives most affected by abnormal uterine bleeding? opinions of women with abnormal uterine bleeding participating in focus group discussions. 

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Muric  G, Wu  Y, Ferrara  E.  COVID-19 vaccine hesitancy on social media: building a public Twitter data set of antivaccine content, vaccine misinformation, and conspiracies. 

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. 2021;7(11):e30642. doi:

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Bleeders might want to get their vaccines in their luteal phase.
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Skeletal muscle properties in long COVID and ME/CFS differ from those induced by bed rest | medRxiv

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J 💫🏴‍☠️ 🦁 (@janerationx@mas.to)

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Trump administration to stop US research on space pollution, in boon to Elon Musk | Trump administration | The Guardian

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The Trump administration is poised to kill federal research into pollution from satellites and rockets, including some caused by Elon Musk’s space companies, raising new conflict-of-interest questions about the billionaire SpaceX and Starlink owner.

The pollution appears to be accumulating in the stratosphere at alarming levels. Some fear it could destroy the ozone layer, potentially expose some people to higher levels of ultraviolet radiation or help further destabilize the Earth’s climate during the climate crisis.

The two research projects would have had the potential to eventually lead to new regulations, costs or logistical challenges for Musk’s companies and the commercial space industry, experts say.

They were part of the office of atmospheric research at the National Oceanic and Atmospheric Administration (Noaa), which the Trump administration is now proposing to kill. The administration says it is “eliminating the federal government’s support of woke ideology”, but critics say it is protecting a prolific donor and political ally.

“Obviously there’s political motivation, and Elon Musk’s business interests are tied up in Noaa’s work,” said Tim Whitehouse, executive director of the Public Employees for Environmental Responsibility non-profit, which has filed a Freedom of Information Act request for emails around the projects.

Whitehouse added: “These are programs the government wanted to build up, that had bipartisan support, and suddenly they’re being gutted with no rhyme, reason or adequate explanation.”

Starlink’s approximately 7,000 satellites provide broadband internet to largely rural customers who can’t otherwise access service. It also provides communication services and internet access to governments and militaries. SpaceX is its parent company and is developing a suite of space rockets.

Since early in the Trump administration, the Musk-led “department of government efficiency”, or Doge, has slashed the federal government as it purportedly looks for ways to save money by cutting services and staff. Musk’s role – given to him by Trump – has generated controversy because he has stood to potentially benefit from some proposed cuts.

In late 2023, a Noaa-sponsored study discovered that metals from spacecraft vaporizing as they re-enter the atmosphere were accumulating in the stratosphere. Follow-up stratospheric measurement flights planned for February would have continued that research. Separately, a multi-space-agency workshop with private industry that aimed to understand the problem’s scope and consider solutions is also on the chopping block.

Both projects were delayed after funding freezes earlier in the administration, even before the broader Noaa cuts targeted them, former Noaa officials said.

Noaa and Starlink did not immediately respond to a request for comment.

As of now, the bulk of the pollution is thought to come from Starlink’s and Amazon’s “mega constellations” that provide broadband internet made up of about 10,000 satellites. As many as 100,000 satellites are expected to be in near-Earth orbit within a decade as a satellite race among nations picks up steam.

Spacecraft can cause problems on their way up and down. Launches emit a range of emissions like black carbon, nitrogen oxides, carbon monoxide, aluminum oxide, chlorine gases and, once in orbit, mercury. When satellites are decommissioned five to 15 years later, they release metals as they vaporize. That’s injecting pollutants into previously pristine parts of the stratosphere, a highly sensitive system, and there’s very little understanding of the consequences.

With the first steps toward meaningful answers probably squashed, Musk and Amazon’s Jeff Bezos, for the time being, are in effect in charge of the stratosphere’s health.

The late 2023 Noaa-sponsored stratospheric measurement flight found metals in sulfuric acid aerosols that make up much of the stratosphere, which are thought to play an outsize role in regulating the Earth’s temperature. The aerosols may partly function as a planetary “sunscreen” by creating high-level clouds that reflect solar radiation, and they simultaneously keep greenhouse gases and pollution from entering the ozone layer from below.

But how the spacecraft metals, naturally occurring metals and sulfuric acid aerosols interact is “largely unknown because we don’t have the observations”, said Chris Maloney, a University of Colorado researcher who co-authored the 2023 paper on the stratospheric measurement flights’ findings.

“We’re just taking these small steps to understand this larger topic,” he added.

Aluminum is of special concern because it can degrade the atmosphere, and could cause warming. However, increased aluminum could potentially cause the stratosphere and Earth’s surface to cool because it reflects solar radiation. While that may sound like a positive development, there are also huge risks, said John Barentine, an astrophysicist and industry consultant focused on environmental issues.

“The climate is an incredibly complex system, and when you rapidly perturb that system, you run the risk of chaos,” he added.

Separate 2022 papers highlighted the launch emissions problem. The pollutants emitted from rockets are nearly 500 times more potent in heating the atmosphere as soot released from sources like airplanes. And if launch rates increase as expected, their emissions could cause stratospheric temperatures to increase by 2C (36F), which would degrade the ozone across much of the northern hemisphere.

A budget document detailing the stratospheric measurement flight said the goal was to “significantly advance our understanding of the present day composition, chemistry, and dynamics of the stratosphere and their impacts on the climate system”. The previous flights checked the atmosphere in the northern hemisphere, and these, initially planned for January and February, were to measure in the southern hemisphere.

The budget document also details the multiagency “Impact of Spaceflight on Earth’s Climate, Ozone, and Upper Atmosphere” workshop that would have included industry. It planned a $100,000 spring 2025 workshop called “The Impacts of Growing Commercial Space Industry on Earth’s Atmosphere: Research Challenges and Opportunities”.

Former Noaa officials said the new administration quickly froze funding for both projects, and that it benefited Musk.

“These programs are under attack because they come up against strong commercial interests, and commercial interests that want to destroy the programs for their own personal gain,” Whitehouse said.

A private space-industry employee who also worked with government researchers involved with the effort said that among the government’s primary interests was understanding the composition of spacecrafts’ emissions. A spacecraft’s composition and fuel are proprietary information, so researchers need their formula to understand the pollution.

While the workshop could lead to new regulations for the commercial space industry, no one, including space companies, knows the scale and potential problems.

“If they want to cover something up, then they need to know the size and scope of what needs to be covered up,” the employee said. “The size and scope of the problem could catch them by surprise, and they hate surprises.”

Sources say there are no immediate groups that could fill in the stratospheric measurement vacuum, though the European Space Agency is doing some work on that front.

There is also no clear answer on how to produce spacecraft that don’t pollute because any material that burns up will give off emissions. Having fewer satellites is among the best options, but it is unlikely the industry would willingly agree to that.

“Whatever has the tiniest impact on the earth’s system is what we’re interested in figuring out,” Maloney said.

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Thinking about folks who treat me like i was reflexively anti tech and innovation because i hate Musk’s space ventures as he’s poised to both render the earth uninhabitable and make it impossible to leave.
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More than a third of UK agricultural soil degraded by intensive farming – report

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Experts also found that more than 60% of the EU’s agricultural soils had been similarly degraded

More than 60% of the EU’s agricultural soils are degraded due to intensive agriculture, with similar damage to about 40% of British soils, a report has found.

Experts from the Save Soil initiative said nourishing and restoring agricultural soils could reduce the impact of the climate crisis and provide protection against the worsening extremes of weather, as well as the food shortages and price rises likely to accompany them.

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sarcozona
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Epiphyte City
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