In the case of tuberculosis (TB), the capabilities of epidemic models to produce quantitatively robust forecasts are limited by multiple hindrances. Among these, understanding the complex relationship between disease epidemiology and populations' age structure has been highlighted as one of the most relevant. TB dynamics depends on age in multiple ways, some of which are traditionally simplified in the literature. That is the case of the heterogeneities in contact intensity among different age strata that are common to all airborne diseases, but still typically neglected in the TB case. Furthermore, while demographic structures of many countries are rapidly aging, demographic dynamics are pervasively ignored when modeling TB spreading. In this work, we present a TB transmission model that incorporates country-specific demographic prospects and empirical contact data around a data-driven description of TB dynamics. Using our model, we find that the inclusion of demographic dynamics is followed by an increase in the burden levels predicted for the next decades in the areas of the world that are most hit by the disease today. Similarly, we show that considering realistic patterns of contacts among individuals in different age strata reshapes the transmission patterns reproduced by the models, a result with potential implications for the design of age-focused epidemiological interventions.
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http://dx.doi.org/10.1073/pnas.1720606115 | DOI Listing |
Health Info Libr J
January 2025
Department of Information Studies, College of Arts and Social Sciences, Sultan Qaboos University (SQU), Muscat, Oman.
Background: The COVID-19 demanded efficient and effective supply of information to the public to help reduce the rate of transmission.
Objectives: This study aims to analyse Omanis' information behaviour during the COVID-19 pandemic, to help national authorities to prepare for future health crises or pandemics.
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J Eat Disord
January 2025
Institute of Allied Health Sciences, College of Medicine, National Cheng Kung University, Tainan, 701401, Taiwan.
Background: Weight stigma is pervasive, and it has a significant impact on the social, physical, and psychological health of an individual. Weight stigma is observed from several different sources. Therefore, the present study developed and validated a new instrument, the Weight Stigma Exposure Inventory (WeSEI), to assess different sources of observed weight stigma across interpersonal and non-interpersonal sources.
View Article and Find Full Text PDFOrphanet J Rare Dis
January 2025
EB House Austria, Department of Dermatology and Allergology, University Hospital of the Paracelsus Medical University, Salzburg, Austria.
Background: Epidermolysis bullosa (EB) is a serious, painful, hereditary and still incurable genetic condition. Due to blistering or wounds on the skin caused by the slightest touch, a person suffering from epidermolysis bullosa is prevented from achieving the same quality of life as a healthy person. Until now, psychosocial research has focused on the description of the problems of people living with the disease.
View Article and Find Full Text PDFBMC Nurs
January 2025
Yichang Hubo Medical Research Institute, Yichang City, Hubei Province, 443003, China.
Aim: This study aimed to assess the relationship between compulsory citizenship behavior and nurses' silence.
Methods: A descriptive cross-sectional online study was conducted in October 2023, targeting 402 nurses working in Yichang Central People's Hospital, Hubei Province, China. Data were collected through a structured questionnaire comprising demographic details, the Compulsory Citizenship Behavior Scale, and the Nurses' Silence Scale.
Sci Rep
January 2025
Department of Emergency, The First Hospital of China Medical University, No. 155, Nanjing North Street, Heping District, Shenyang, 11001, China.
The study aimed to develop and validate a sepsis prediction model using structured electronic medical records (sEMR) and machine learning (ML) methods in emergency triage. The goal was to enhance early sepsis screening by integrating comprehensive triage information beyond vital signs. This retrospective cohort study utilized data from the MIMIC-IV database.
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