scholarly journals Practice Note: ‘If Only All Women Menstruated Exactly Two Weeks Ago’: Interdisciplinary Challenges and Experiences of Capturing Hormonal Variation Across the Menstrual Cycle

Author(s):  
Lauren C. Houghton ◽  
Noémie Elhadad

Abstract Houghton and Elhadad offer a new and needed perspective on approaches for measuring the menstrual cycle and identifying underlying hormonal profiles that can help determine risk factors for chronic diseases such as breast cancer and endometriosis. The authors discuss methods that have been applied historically and how those have shown vast variation in menstrual cycle characteristics around the globe. They then review and explore how innovation in technologies can be used to detect and disseminate new menstrual cycle knowledge. Additionally, the authors show how interdisciplinary efforts across anthropology, public health, and data science can leverage the advances in mobile menstrual tracking and hormone measurement to better characterize the menstrual cycle at the population level. This analysis concludes with a breakdown of how personalized menstrual norms and predictions can help individuals to be better stewards of their own menstrual health.

2021 ◽  
pp. injuryprev-2021-044322
Author(s):  
Avital Rachelle Wulz ◽  
Royal Law ◽  
Jing Wang ◽  
Amy Funk Wolkin

ObjectiveThe purpose of this research is to identify how data science is applied in suicide prevention literature, describe the current landscape of this literature and highlight areas where data science may be useful for future injury prevention research.DesignWe conducted a literature review of injury prevention and data science in April 2020 and January 2021 in three databases.MethodsFor the included 99 articles, we extracted the following: (1) author(s) and year; (2) title; (3) study approach (4) reason for applying data science method; (5) data science method type; (6) study description; (7) data source and (8) focus on a disproportionately affected population.ResultsResults showed the literature on data science and suicide more than doubled from 2019 to 2020, with articles with individual-level approaches more prevalent than population-level approaches. Most population-level articles applied data science methods to describe (n=10) outcomes, while most individual-level articles identified risk factors (n=27). Machine learning was the most common data science method applied in the studies (n=48). A wide array of data sources was used for suicide research, with most articles (n=45) using social media and web-based behaviour data. Eleven studies demonstrated the value of applying data science to suicide prevention literature for disproportionately affected groups.ConclusionData science techniques proved to be effective tools in describing suicidal thoughts or behaviour, identifying individual risk factors and predicting outcomes. Future research should focus on identifying how data science can be applied in other injury-related topics.


2019 ◽  
Vol 26 (1) ◽  
pp. 107327481988327
Author(s):  
Emma McKim Mitchell ◽  
Fabian Camacho

Geographic location continues to be an important indicator in incidence of, access to treatment for, and mortality from breast cancer. Disparities in access to screening and early detection persist in Appalachian Virginia. We developed an index to identify sites which would most benefit from increased frequency of mobile mammography visits, based on geographically relevant population-level risk factors (late stage of tumor diagnosis) and accessibility risk factors (access to FDA [US Food and Drug Administration] mammography sites, access of women aged 50+ years to primary care physicians at existing mobile sites). These 4 components for the Priority Index were subsequently standardized and multiplied to importance weights. The percentage of mammograms performed in the target geographic region has increased each year, respectively. This article presents methodological considerations for developing a priority algorithm to increase access to breast cancer early screening and detection for vulnerable women.


2021 ◽  
Vol 20 (5) ◽  
pp. 2987
Author(s):  
A. V. Kontsevaya ◽  
S. A. Shalnova ◽  
O. M. Drapkina

The largest population-based study in Russian modern history the Epidemiology of Cardiovascular Diseases and their Risk Factors in Regions of Russian Federation (ESSE-RF) for 8 years has become a platform for public health research and projects, relevant for the whole country. Results of the ESSE-RF study were used to identify Demography National Project parameters, to model mortality and morbidity risk at the population level, to estimate the economic burden of risk factors, to predict the economic effect of population prevention measures, to assess the feasibility of using novel biomarkers for risk stratification, as well as for external evaluation of health care system. Further, results can be used to develop a novel cardiovascular risk score, to analyze COVID-19-related risk factors, and to study health protection environment. Epidemiological studies ESSE-RF1 and ESSE-RF2 have already become a significant component of public health system in Russia, and taking into account the scope of the ESSE-RF3 study (30 regions), the role of epidemiology will increase.


Nutrients ◽  
2020 ◽  
Vol 12 (4) ◽  
pp. 1101
Author(s):  
John Paul Ekwaru ◽  
Arto Ohinmaa ◽  
Paul J. Veugelers

Chronic diseases constitute a tremendous public health burden globally. Poor nutrition, inactive lifestyles, and obesity are established independent risk factors for chronic diseases. Public health decision-makers are in desperate need of effective and cost-effective programs that prevent chronic diseases. To date, most economic evaluations consider the effect of these programs on body weight, without considering their effects on other risk factors (nutrition and physical activity). We propose an economic evaluation approach that considers program effects on multiple risk factors rather than on a single risk factor. For demonstration, we developed an enhanced model that incorporates health promotion program effects on four risk factors (weight status, physical activity, and fruit and vegetable consumption). Relative to this enhanced model, a model that considered only the effect on weight status produced incremental cost-effectiveness ratio (ICER) estimates for quality-adjusted life years that were 1% to 43% higher, and ICER estimates for years with chronic disease prevented that were 1% to 26% higher. The corresponding estimates for return on investment were 1% to 20% lower. To avoid an underestimation of the economic benefits of chronic disease prevention programs, we recommend economic evaluations consider program effects on multiple risk factors.


2006 ◽  
Vol 21 (2) ◽  
pp. 55-58 ◽  
Author(s):  
Joshua R. Vest ◽  
Adolfo M. Valadez

AbstractIntroduction:During disasters, public health departments assume the role of maintaining the health of displaced persons. Displaced persons arrive with acute and chronic conditions as well as other risk factors. Descriptions of these conditions may aid future shelter planning efforts.Methods:Approximately 4,000 individuals from New Orleans, displaced by Hurricane Katrina, were sheltered in Austin, Texas. A stratified random sample of the population was selected using individual beds as the primary sampling unit. Adults were interviewed about their acute symptoms, chronic diseases, and other risk factors.Results:The results indicate a substantial proportion of adults arrived with some symptoms of acute illness (49.8%). A majority of the adults reported living with a chronic condition (59.0%), and the prevalence of some chronic conditions was higher than that of the general population. Also, several factors that could complicate service delivery were prevalent.Discussion:Acute illnesses present transmission risks within the shelter. Furthermore, chronic diseases must be managed and may complicate care of acute illnesses. Risks like activity limitation or substance abuse may complicate shelter operations. Defining the potential scope of the illness burden may be used to help public health departments better plan the services they must deliver to displaced populations.


2018 ◽  
Vol 4 (Supplement 2) ◽  
pp. 133s-133s
Author(s):  
O. Nimbabazi

Background and context: Breast cancer is a leading cause of cancer-related death for women. In Africa women are diagnosed much younger, with a substantial number of cases affecting women under the age of 20. In Rwanda, breast cancer patients constitute 15.8% of overall cancer patients and new cases increase as people start being aware and go screening, however breast cancer with early detection can be well treated to live longer and palliative care can be given. It's with that reason in Rwanda different initiatives have put in place to reduce the breast cancer. Aim: The aim of these initiatives is to raise awareness of breast cancer to the population and promoting early detection as breast cancer is treatable when it's diagnosed at early stage. Also these initiatives gives information about risk factors and how changing lifestyle with early detection can help on reducing new cases. Strategy/Tactics: These initiatives are done through public health campaigns, gatherings and walks throughout the country educating breast cancer risk factors, prevention and importance of early diagnosis. The programs reached young ladies to start prevention early by making outreaches at school and youth centers. And all the initiatives are accessible by every citizen as they are all free. Program/Policy process: In promotion of early diagnosis many nurses for health center have been trained how to diagnose breast cancer and how to educate patients that attend those health facilities, then for awareness public health campaigns are done and also with different media are used like talk shows and informative posters are in different public places like hospitals. Outcomes: With the past 2 years of mass campaigns, walks and outreaches, there have been improvement in understanding of population about breast cancer, and both men and women are interested to be educated more with that the number of people going for diagnosis have been increased and participation in outreaches is high. What was learned: The population is always eager to be educated about cancer and how they can prevent it and with these initiatives have been proved by numbers that attend campaigns and it's important to take initiative to reduce its incidence by making the community aware of it and take early preventive measures. And this to be more successful there should be public and private partnership to put effort and reach a large population for breast cancer can be diagnosed treated at early stage hence reduction its prevalence.


Author(s):  
E. D. Savilov ◽  
S. I. Kolesnikov ◽  
N. I. Briko

Comorbidity epidemiological aspects discussed in the article. At the present time most common on the population level are research of the impact of infectious diseases on the macroorganism at the population level, or investigations of dynamics of noninfectious diseases under influence of several risk factors. The problem of coexistence (comorbidity) of infectious diseases with other nosologic forms usually are not considered. Some examples of simultaneous effect (comorbidity) of infectious and somatic diseases on the macroorganism under the influence of anthropogenic pollution are shown in the article. Environmental pollution is usually not taking into consideration third force which affects the development of comorbidity. Proposed new approach allowed differently interpret previously obtained materials and introduce additional variable risk factors in the chain of causal relationships between infectious disease and environmental pollution


Author(s):  
Irfan Sharif Shakoori ◽  
Fauzia Aslam ◽  
Gohar Ashraf ◽  
Hammad Akram

Chronic diseases and multimorbidity are becoming an alarming public health problem of this century. Multimorbidity is defined as “having two or more chronic diseases at one time in a person” and a result of complex biological, psychological and social phenomenon. The risks of multimorbidity can be divided into modifiable (behavioral factors) and non-modifiable (age, genetics) factors. Socioeconomic disadvantage and environmental factors can also influence on causation of it. Strategies aligned with primary, secondary and tertiary stages of prevention can help in the prevention of multimorbidity and reduction in complications among diseased. Multimorbidity requires multidimensional programs implemented through multiple stakeholder and policymaker’s collaboration.


Author(s):  
Kevin J. Konty ◽  
Benjamin Bradshaw ◽  
Ernesto Ramirez ◽  
Wei-Nchih Lee ◽  
Alessio Signorini ◽  
...  

ObjectiveTo describe population-level response to influenza-like illness (ILI) as measured by wearable mobile health (mHealth) devices across multiple dimensions including steps, heart rate, and sleep duration and to assess the potential for using large networks of mHealth devices for influenza surveillance.IntroductionInfluenza surveillance has been a major focus of Data Science efforts to use novel data sources in population and public health [1]. This interest reflects the public health utility of timely identification of flu outbreaks and characterization of their severity and dynamics. Such information can inform mitigation efforts including the targeting of interventions and public health messaging. The key requirement for influenza surveillance systems based on novel data streams is establishing their relationship with underlying influenza patterns [2]. We assess the potential utility of wearable mHealth devices by establishing the aggregate responses to ILI along three dimensions: steps, sleep, and heart rate. Surveillance based on mHealth devices may have several desirable characteristics including 1) high resolution individual-level responses that can be prospectively analyzed in near real-time, 2) indications of physiological responses to flu that should be resistant to feedback loops, changes in health seeking behavior, and changes in technology use, 3) a growing user-base often organized into networks by providers or payers with increasing data quality and completeness, 4) the ability to query individual users underlying aggregate signals, and 5) demographic and geographic information enabling detailed characterization. These features suggest the potential of mHealth data to deliver “faster, more locally relevant” surveillance systems [3].MethodsDuring the 2017/2018 influenza season, surveys were conducted within the Achievement platform, a health app that integrates with a variety of wearable trackers and consumer health applications [4]. The Achievement population has given consent agreeing to participation in studies like the one presented here and permitting access to their data. Surveys queried users as to whether they had experienced flu-like (ILI) symptoms in the preceding 14 days. Respondents who had experienced symptoms were then asked to identify symptom days. Those who had not experienced symptoms were queried again two weeks later. Positive responses were re-indexed to align by date of symptom onset. Individual respondent’s measures were standardized on a per-individual level in the 6 week period centered on the index date. Population-level mean signals were directly computed across several dimensions including steps, sleep, and heart rate. Uncertainty was quantified using resampling.ResultsBeginning February 17th, 2018, surveys were distributed to Achievement users. Within the first week 31,934 users had responded to the survey. Over a 12-week period, 124,892 individuals completed the survey with 25,512 reporting flu-like symptoms in a two week period prior to the survey. Of these, 9,495 had wearable device data in the 90-day window surrounding their symptom dates and 3,362 respondents had “dense” data defined as no more than 4 consecutive missing days in the 6-week period surrounding the index date.Population-level signals to ILI were clearly evident for five measures across the three dimensions. Step count [fig. 1] and time spent active [fig. 2] decreased 1 day prior to reported symptom onset date (index date), with a minimum at day 2 of -.24 std. dev. for step count and -.25 std. dev for time spent active, and a return to baseline at day 8. Sleeplessness [fig.3] and time spent in bed [fig. 4] increased one day prior to index, peaking 4 days after index at a mean increase of .16 std. dev. for sleeplessness and .13 std. dev. for time spent in bed, and returning to baseline at 7 days. Heart rate was elevated from 1 day before index to day 6 with a peak increase of .18 std. dev. on days 2 and 3 after index.ConclusionsThe potential of mHealth devices to register illness has been recognized [5]. This study is the first to present population-level influenza signals in a large network of mHealth users. Mobile health device data linked to ILI-specific survey responses taken during the 2017/18 flu season demonstrate clear aggregate patterns across several dimensions including sleep, steps, and heart rate. These signals suggest the potential for systems to rapidly process individual-level responses to classify ILI and to use such classifiers for ILI surveillance. The data described here, high resolution individual-level behavioral and physiological data linked to timely survey responses, suggests the potential to further enhance outbreak detection and improve characterization of ILI patterns. The setting of our study, a very large network of mobile health device users who have consented to the prospective use of their data and to being queried about their health status, could provide a framework for automated prospective influenza surveillance using “real world evidence” [6]. Employed over a population-representative sample, this approach could provide adjunct to standard clinically-based sentinel systems.References[1] Althouse, Benjamin M., et al. "Enhancing disease surveillance with novel data streams: challenges and opportunities." EPJ Data Science 4.1 (2015): 17.[2] Henning KJ. What is syndromic surveillance?. Morbidity and Mortality Weekly Report. 2004 Sep 24:7-11[3] Simonsen L, Gog JR, Olson D, Viboud C. Infectious disease surveillance in the big data era: towards faster and locally relevant systems. The Journal of infectious diseases. 2016 Nov 14;214(suppl_4):S380-5.[4] https://www.myachievement.com/[5] Li, Xiao, et al. "Digital health: tracking physiomes and activity using wearable biosensors reveals useful health-related information." PLoS biology 15.1 (2017): e2001402.[6]https://www.fda.gov/scienceresearch/specialtopics/realworldevidence/default.htm


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