42 research outputs found

    B16: Chikungunya Virus Time Course Infection of Human Macrophages

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    Chikungunya virus (CHIKV) is an Alphavirus spread by Aedes spp. mosquitoes and is responsible for infecting 1.1 million people per year worldwide, including a large epidemic in the western hemisphere in 2014-2015. During the body’s immune response to CHIKV, human macrophages become infected after phagocytosis of CHIKV and undergo induced apoptosis, catalyzing the virus spread in the body. It is presently unclear what macrophage genes, functions, and intracellular signaling pathways are impacted during the early, intermediate, and late stages of CHIKV infection. Therefore we quantified the transcriptional response of human macrophage cells infected with CHIKV at two different timepoints

    Assessment of Paraspinal Muscle Atrophy Percentage after Minimally Invasive Transforaminal Lumbar Interbody Fusion and Unilateral Instrumentation Using a Novel Contralateral Intact Muscle-Controlled Model

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    Study DesignRetrospective comparative clinical study.PurposeThis study aimed to assess paraspinal muscle atrophy in patients who underwent minimally invasive transforaminal lumbar interbody fusion (MI-TLIF) and unilateral pedicle screw fixation using a novel contralateral intact muscle-controlled model.Overview of LiteratureThe increased incidence of paravertebral lumbar muscle injuries after open techniques has raised the importance of implementing minimally invasive spine surgical techniques using tubular retractors and minimally invasive screw placement. The functional cross-sectional area (FCSA) represents the lean muscle mass; furthermore, FCSA is a useful marker of the contractile ability of a muscle following a spine surgery. However, the benefits of unilateral fixation and MI-TLIF on paraspinal muscles have not been defined.MethodsWe performed a retrospective imagenological review on eleven patients who underwent unilateral MI-TLIF and unilateral transpedicular screw lumbar placement. FCSAs of the multifidus and erector spinae were measured 1 year after surgery at adjacent levels and were compared to the contralateral intact muscles. Measurement differences between the surgical and nonsurgical sites were compared. The interobserver reliability was calculated using an intraclass correlation coefficient.ResultsThe mean FCSA at the surgical site was 20.97±5.07 cm2 at the superior level and 8.89±2.87 cm2 at the inferior level. The mean FCSA at the contralateral nonsurgical site was 20.15±5.95 cm2 at the superior level and 9.20±2.66 cm2 at the inferior level was. The superior and inferior FCSA measurements showed no significant difference between the surgical and nonsurgical sites (p=0.5, p=0.922, respectively).ConclusionsUsing a mini-open tubular approach through the sulcus between the longissimus and iliocostalis, MI-TLIF and unilateral pedicle screw instrumentation produced minimal paraspinal muscle damage at the superior and inferior adjacent levels

    Global burden of 369 diseases and injuries in 204 countries and territories, 1990–2019: a systematic analysis for the Global Burden of Disease Study 2019

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    Background: In an era of shifting global agendas and expanded emphasis on non-communicable diseases and injuries along with communicable diseases, sound evidence on trends by cause at the national level is essential. The Global Burden of Diseases, Injuries, and Risk Factors Study (GBD) provides a systematic scientific assessment of published, publicly available, and contributed data on incidence, prevalence, and mortality for a mutually exclusive and collectively exhaustive list of diseases and injuries. Methods: GBD estimates incidence, prevalence, mortality, years of life lost (YLLs), years lived with disability (YLDs), and disability-adjusted life-years (DALYs) due to 369 diseases and injuries, for two sexes, and for 204 countries and territories. Input data were extracted from censuses, household surveys, civil registration and vital statistics, disease registries, health service use, air pollution monitors, satellite imaging, disease notifications, and other sources. Cause-specific death rates and cause fractions were calculated using the Cause of Death Ensemble model and spatiotemporal Gaussian process regression. Cause-specific deaths were adjusted to match the total all-cause deaths calculated as part of the GBD population, fertility, and mortality estimates. Deaths were multiplied by standard life expectancy at each age to calculate YLLs. A Bayesian meta-regression modelling tool, DisMod-MR 2.1, was used to ensure consistency between incidence, prevalence, remission, excess mortality, and cause-specific mortality for most causes. Prevalence estimates were multiplied by disability weights for mutually exclusive sequelae of diseases and injuries to calculate YLDs. We considered results in the context of the Socio-demographic Index (SDI), a composite indicator of income per capita, years of schooling, and fertility rate in females younger than 25 years. Uncertainty intervals (UIs) were generated for every metric using the 25th and 975th ordered 1000 draw values of the posterior distribution. Findings: Global health has steadily improved over the past 30 years as measured by age-standardised DALY rates. After taking into account population growth and ageing, the absolute number of DALYs has remained stable. Since 2010, the pace of decline in global age-standardised DALY rates has accelerated in age groups younger than 50 years compared with the 1990–2010 time period, with the greatest annualised rate of decline occurring in the 0–9-year age group. Six infectious diseases were among the top ten causes of DALYs in children younger than 10 years in 2019: lower respiratory infections (ranked second), diarrhoeal diseases (third), malaria (fifth), meningitis (sixth), whooping cough (ninth), and sexually transmitted infections (which, in this age group, is fully accounted for by congenital syphilis; ranked tenth). In adolescents aged 10–24 years, three injury causes were among the top causes of DALYs: road injuries (ranked first), self-harm (third), and interpersonal violence (fifth). Five of the causes that were in the top ten for ages 10–24 years were also in the top ten in the 25–49-year age group: road injuries (ranked first), HIV/AIDS (second), low back pain (fourth), headache disorders (fifth), and depressive disorders (sixth). In 2019, ischaemic heart disease and stroke were the top-ranked causes of DALYs in both the 50–74-year and 75-years-and-older age groups. Since 1990, there has been a marked shift towards a greater proportion of burden due to YLDs from non-communicable diseases and injuries. In 2019, there were 11 countries where non-communicable disease and injury YLDs constituted more than half of all disease burden. Decreases in age-standardised DALY rates have accelerated over the past decade in countries at the lower end of the SDI range, while improvements have started to stagnate or even reverse in countries with higher SDI. Interpretation: As disability becomes an increasingly large component of disease burden and a larger component of health expenditure, greater research and developm nt investment is needed to identify new, more effective intervention strategies. With a rapidly ageing global population, the demands on health services to deal with disabling outcomes, which increase with age, will require policy makers to anticipate these changes. The mix of universal and more geographically specific influences on health reinforces the need for regular reporting on population health in detail and by underlying cause to help decision makers to identify success stories of disease control to emulate, as well as opportunities to improve. Funding: Bill & Melinda Gates Foundation. © 2020 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 licens

    Global age-sex-specific fertility, mortality, healthy life expectancy (HALE), and population estimates in 204 countries and territories, 1950-2019 : a comprehensive demographic analysis for the Global Burden of Disease Study 2019

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    Background: Accurate and up-to-date assessment of demographic metrics is crucial for understanding a wide range of social, economic, and public health issues that affect populations worldwide. The Global Burden of Diseases, Injuries, and Risk Factors Study (GBD) 2019 produced updated and comprehensive demographic assessments of the key indicators of fertility, mortality, migration, and population for 204 countries and territories and selected subnational locations from 1950 to 2019. Methods: 8078 country-years of vital registration and sample registration data, 938 surveys, 349 censuses, and 238 other sources were identified and used to estimate age-specific fertility. Spatiotemporal Gaussian process regression (ST-GPR) was used to generate age-specific fertility rates for 5-year age groups between ages 15 and 49 years. With extensions to age groups 10–14 and 50–54 years, the total fertility rate (TFR) was then aggregated using the estimated age-specific fertility between ages 10 and 54 years. 7417 sources were used for under-5 mortality estimation and 7355 for adult mortality. ST-GPR was used to synthesise data sources after correction for known biases. Adult mortality was measured as the probability of death between ages 15 and 60 years based on vital registration, sample registration, and sibling histories, and was also estimated using ST-GPR. HIV-free life tables were then estimated using estimates of under-5 and adult mortality rates using a relational model life table system created for GBD, which closely tracks observed age-specific mortality rates from complete vital registration when available. Independent estimates of HIV-specific mortality generated by an epidemiological analysis of HIV prevalence surveys and antenatal clinic serosurveillance and other sources were incorporated into the estimates in countries with large epidemics. Annual and single-year age estimates of net migration and population for each country and territory were generated using a Bayesian hierarchical cohort component model that analysed estimated age-specific fertility and mortality rates along with 1250 censuses and 747 population registry years. We classified location-years into seven categories on the basis of the natural rate of increase in population (calculated by subtracting the crude death rate from the crude birth rate) and the net migration rate. We computed healthy life expectancy (HALE) using years lived with disability (YLDs) per capita, life tables, and standard demographic methods. Uncertainty was propagated throughout the demographic estimation process, including fertility, mortality, and population, with 1000 draw-level estimates produced for each metric. Findings: The global TFR decreased from 2·72 (95% uncertainty interval [UI] 2·66–2·79) in 2000 to 2·31 (2·17–2·46) in 2019. Global annual livebirths increased from 134·5 million (131·5–137·8) in 2000 to a peak of 139·6 million (133·0–146·9) in 2016. Global livebirths then declined to 135·3 million (127·2–144·1) in 2019. Of the 204 countries and territories included in this study, in 2019, 102 had a TFR lower than 2·1, which is considered a good approximation of replacement-level fertility. All countries in sub-Saharan Africa had TFRs above replacement level in 2019 and accounted for 27·1% (95% UI 26·4–27·8) of global livebirths. Global life expectancy at birth increased from 67·2 years (95% UI 66·8–67·6) in 2000 to 73·5 years (72·8–74·3) in 2019. The total number of deaths increased from 50·7 million (49·5–51·9) in 2000 to 56·5 million (53·7–59·2) in 2019. Under-5 deaths declined from 9·6 million (9·1–10·3) in 2000 to 5·0 million (4·3–6·0) in 2019. Global population increased by 25·7%, from 6·2 billion (6·0–6·3) in 2000 to 7·7 billion (7·5–8·0) in 2019. In 2019, 34 countries had negative natural rates of increase; in 17 of these, the population declined because immigration was not sufficient to counteract the negative rate of decline. Globally, HALE increased from 58·6 years (56·1–60·8) in 2000 to 63·5 years (60·8–66·1) in 2019. HALE increased in 202 of 204 countries and territories between 2000 and 2019

    Global burden of 369 diseases and injuries in 204 countries and territories, 1990-2019: a systematic analysis for the Global Burden of Disease Study 2019

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    Geoeconomic variations in epidemiology, ventilation management, and outcomes in invasively ventilated intensive care unit patients without acute respiratory distress syndrome: a pooled analysis of four observational studies

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    Background: Geoeconomic variations in epidemiology, the practice of ventilation, and outcome in invasively ventilated intensive care unit (ICU) patients without acute respiratory distress syndrome (ARDS) remain unexplored. In this analysis we aim to address these gaps using individual patient data of four large observational studies. Methods: In this pooled analysis we harmonised individual patient data from the ERICC, LUNG SAFE, PRoVENT, and PRoVENT-iMiC prospective observational studies, which were conducted from June, 2011, to December, 2018, in 534 ICUs in 54 countries. We used the 2016 World Bank classification to define two geoeconomic regions: middle-income countries (MICs) and high-income countries (HICs). ARDS was defined according to the Berlin criteria. Descriptive statistics were used to compare patients in MICs versus HICs. The primary outcome was the use of low tidal volume ventilation (LTVV) for the first 3 days of mechanical ventilation. Secondary outcomes were key ventilation parameters (tidal volume size, positive end-expiratory pressure, fraction of inspired oxygen, peak pressure, plateau pressure, driving pressure, and respiratory rate), patient characteristics, the risk for and actual development of acute respiratory distress syndrome after the first day of ventilation, duration of ventilation, ICU length of stay, and ICU mortality. Findings: Of the 7608 patients included in the original studies, this analysis included 3852 patients without ARDS, of whom 2345 were from MICs and 1507 were from HICs. Patients in MICs were younger, shorter and with a slightly lower body-mass index, more often had diabetes and active cancer, but less often chronic obstructive pulmonary disease and heart failure than patients from HICs. Sequential organ failure assessment scores were similar in MICs and HICs. Use of LTVV in MICs and HICs was comparable (42\ub74% vs 44\ub72%; absolute difference \u20131\ub769 [\u20139\ub758 to 6\ub711] p=0\ub767; data available in 3174 [82%] of 3852 patients). The median applied positive end expiratory pressure was lower in MICs than in HICs (5 [IQR 5\u20138] vs 6 [5\u20138] cm H2O; p=0\ub70011). ICU mortality was higher in MICs than in HICs (30\ub75% vs 19\ub79%; p=0\ub70004; adjusted effect 16\ub741% [95% CI 9\ub752\u201323\ub752]; p<0\ub70001) and was inversely associated with gross domestic product (adjusted odds ratio for a US$10 000 increase per capita 0\ub780 [95% CI 0\ub775\u20130\ub786]; p<0\ub70001). Interpretation: Despite similar disease severity and ventilation management, ICU mortality in patients without ARDS is higher in MICs than in HICs, with a strong association with country-level economic status. Funding: No funding

    Five insights from the Global Burden of Disease Study 2019

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    The Global Burden of Diseases, Injuries, and Risk Factors Study (GBD) 2019 provides a rules-based synthesis of the available evidence on levels and trends in health outcomes, a diverse set of risk factors, and health system responses. GBD 2019 covered 204 countries and territories, as well as first administrative level disaggregations for 22 countries, from 1990 to 2019. Because GBD is highly standardised and comprehensive, spanning both fatal and non-fatal outcomes, and uses a mutually exclusive and collectively exhaustive list of hierarchical disease and injury causes, the study provides a powerful basis for detailed and broad insights on global health trends and emerging challenges. GBD 2019 incorporates data from 281 586 sources and provides more than 3.5 billion estimates of health outcome and health system measures of interest for global, national, and subnational policy dialogue. All GBD estimates are publicly available and adhere to the Guidelines on Accurate and Transparent Health Estimate Reporting. From this vast amount of information, five key insights that are important for health, social, and economic development strategies have been distilled. These insights are subject to the many limitations outlined in each of the component GBD capstone papers.Peer reviewe

    XLVIII Coloquio Argentino de EstadĂ­stica. VI Jornada de EducaciĂłn EstadĂ­stica Martha Aliaga Modalidad virtual

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    Esta publicaciĂłn es una compilaciĂłn de las actividades realizadas en el marco del XLVIII Coloquio Argentino de EstadĂ­stica y la VI Jornada de EducaciĂłn EstadĂ­stica Martha Aliaga organizada por la Sociedad Argentina de EstadĂ­stica y la Facultad de Ciencias EconĂłmicas. Se presenta un resumen para cada uno de los talleres, cursos realizados, ponencias y poster presentados. Para los dos Ășltimos se dispone de un hipervĂ­nculo que direcciona a la presentaciĂłn del trabajo. Ellos obedecen a distintas temĂĄticas de la estadĂ­stica con una sesiĂłn especial destinada a la aplicaciĂłn de modelos y anĂĄlisis de datos sobre COVID-19.Fil: Saino, MartĂ­n. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Stimolo, MarĂ­a InĂ©s. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Ortiz, Pablo. Universidad Nacional de cĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Guardiola, Mariana. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Aguirre, Alberto Frank LĂĄzaro. Universidade Federal de Alfenas. Departamento de EstatĂ­stica. Instituto de CiĂȘncias Exatas; Brasil.Fil: Alves Nogueira, Denismar. Universidade Federal de Alfenas. Departamento de EstatĂ­stica. Instituto de CiĂȘncias Exatas; Brasil.Fil: Beijo, Luiz Alberto. Universidade Federal de Alfenas. Departamento de EstatĂ­stica. Instituto de CiĂȘncias Exatas; Brasil.Fil: Solis, Juan Manuel. Universidad Nacional de Jujuy. Centro de Estudios en BioestadĂ­stica, BioinformĂĄtica y AgromĂĄtica; Argentina.Fil: Alabar, Fabio. Universidad Nacional de Jujuy. Centro de Estudios en BioestadĂ­stica, BioinformĂĄtica y AgromĂĄtica; Argentina.Fil: Ruiz, SebastiĂĄn LeĂłn. Universidad Nacional de Jujuy. Centro de Estudios en BioestadĂ­stica, BioinformĂĄtica y AgromĂĄtica; Argentina.Fil: Hurtado, Rafael. Universidad Nacional de Jujuy; Argentina.Fil: AlegrĂ­a JimĂ©nez, Alfredo. Universidad TĂ©cnica Federico Santa MarĂ­a. Departamento de MatemĂĄtica; Chile.Fil: Emery, Xavier. Universidad de Chile. Departamento de IngenierĂ­a en Minas; Chile.Fil: Emery, Xavier. Universidad de Chile. Advanced Mining Technology Center; Chile.Fil: Álvarez-Vaz, RamĂłn. Universidad de la RepĂșblica. Instituto de EstadĂ­stica. Departamento de MĂ©todos Cuantitativos; Uruguay.Fil: Massa, Fernando. Universidad de la RepĂșblica. Instituto de EstadĂ­stica. Departamento de MĂ©todos Cuantitativos; Uruguay.Fil: Vernazza, Elena. Universidad de la RepĂșblica. Facultad de Ciencias EconĂłmicas y de AdministraciĂłn. Instituto de EstadĂ­stica; Uruguay.Fil: Lezcano, Mikaela. Universidad de la RepĂșblica. Facultad de Ciencias EconĂłmicas y de AdministraciĂłn. Instituto de EstadĂ­stica; Uruguay.Fil: Urruticoechea, Alar. Universidad CatĂłlica del Uruguay. Facultad de Ciencias de la Salud. Departamento de NeurocogniciĂłn; Uruguay.Fil: del Callejo Canal, Diana. Universidad Veracruzana. Instituto de InvestigaciĂłn de Estudios Superiores, EconĂłmicos y Sociales; MĂ©xico.Fil: Canal MartĂ­nez, Margarita. Universidad Veracruzana. Instituto de InvestigaciĂłn de Estudios Superiores, EconĂłmicos y Sociales; MĂ©xico.Fil: Ruggia, Ornela. CONICET; Argentina. Universidad Nacional de CĂłrdoba. Facultad de Ciencias Agropecuarias. Departamento de desarrollo rural; Argentina.Fil: Tolosa, Leticia Eva. Universidad Nacional de CĂłrdoba; Argentina. Universidad CatĂłlica de CĂłrdoba; Argentina.Fil: Rojo, MarĂ­a Paula. Universidad Nacional de CĂłrdoba; Argentina.Fil: Nicolas, MarĂ­a Claudia. Universidad Nacional de CĂłrdoba; Argentina. Universidad CatĂłlica de CĂłrdoba; Argentina.Fil: Barbaroy, TomĂĄs. Universidad Nacional de CĂłrdoba; Argentina.Fil: Villarreal, Fernanda. CONICET, Universidad Nacional del Sur. Instituto de MatemĂĄtica de BahĂ­a Blanca (INMABB); Argentina.Fil: Pisani, MarĂ­a Virginia. Universidad Nacional del Sur. Departamento de MatemĂĄtica; Argentina.Fil: Quintana, Alicia. Universidad Nacional del Sur. Departamento de MatemĂĄtica; Argentina.Fil: Elorza, MarĂ­a Eugenia. CONICET. Universidad Nacional del Sur. Instituto de Investigaciones EconĂłmicas y Sociales del Sur; Argentina.Fil: Peretti, Gianluca. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Buzzi, Sergio MartĂ­n. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Departamento de EstadĂ­stica y MatemĂĄtica; Argentina.Fil: Settecase, Eugenia. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­sticas. Instituto de Investigaciones TeĂłricas y Aplicadas en EstadĂ­stica; Argentina.Fil: Settecase, Eugenia. Department of Agriculture and Fisheries. Leslie Research Facility; Australia.Fil: Paccapelo, MarĂ­a Valeria. Department of Agriculture and Fisheries. Leslie Research Facility; Australia.Fil: Cuesta, Cristina. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­sticas. Instituto de Investigaciones TeĂłricas y Aplicadas en EstadĂ­stica; Argentina.Fil: Saenz, JosĂ© Luis. Universidad Nacional de la Patagonia Austral; Argentina.Fil: Luna, Silvia. Universidad Nacional de la Patagonia Austral; Argentina.Fil: Paredes, Paula. Universidad Nacional de la Patagonia Austral; Argentina. Instituto Nacional de TecnologĂ­a Agropecuaria. EstaciĂłn Experimental Agropecuaria Santa Cruz; Argentina.Fil: Maglione, Dora. Universidad Nacional de la Patagonia Austral; Argentina.Fil: Rosas, Juan E. Instituto Nacional de InvestigaciĂłn Agropecuaria (INIA); Uruguay.Fil: PĂ©rez de Vida, Fernando. Instituto Nacional de InvestigaciĂłn Agropecuaria (INIA); Uruguay.Fil: Marella, Muzio. Sociedad AnĂłnima Molinos Arroceros Nacionales (SAMAN); Uruguay.Fil: Berberian, Natalia. Universidad de la RepĂșblica. Facultad de AgronomĂ­a; Uruguay.Fil: Ponce, Daniela. Universidad Estadual Paulista. Facultad de Medicina; Brasil.Fil: Silveira, Liciana Vaz de A. Universidad Estadual Paulista; Brasil.Fil: Freitas Galletti, Agda Jessica de. Universidad Estadual Paulista; Brasil.Fil: Bellassai, Juan Carlos. Universidad Nacional de CĂłrdoba. Facultad de Ciencias Exactas FĂ­sicas y Naturales. Centro de InvestigaciĂłn y Estudios de MatemĂĄticas (CIEM-Conicet); Argentina.Fil: Pappaterra, MarĂ­a LucĂ­a. Universidad Nacional de CĂłrdoba. Facultad de Ciencias Exactas FĂ­sicas y Naturales. Centro de InvestigaciĂłn y Estudios de MatemĂĄticas (CIEM-Conicet); Argentina.Fil: Ojeda, Silvia MarĂ­a. Universidad Nacional de CĂłrdoba. Facultad de MatemĂĄtica, AstronomĂ­a, FĂ­sica y ComputaciĂłn; Argentina.Fil: Ascua, Melina BelĂ©n. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: RoldĂĄn, Dana Agustina. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Rodi, Ayrton Luis. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Ventre, Giuliana. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: GonzĂĄlez, Agustina. Universidad Nacional de Rio Cuarto. Facultad de Ciencias Exactas, FĂ­sico-QuĂ­micas y Naturales. Departamento de MatemĂĄtica; Argentina.Fil: Palacio, Gabriela. Universidad Nacional de Rio Cuarto. Facultad de Ciencias Exactas, FĂ­sico-QuĂ­micas y Naturales. Departamento de MatemĂĄtica; Argentina.Fil: Bigolin, Sabina. Universidad Nacional de Rio Cuarto. Facultad de Ciencias Exactas, FĂ­sico-QuĂ­micas y Naturales. Departamento de MatemĂĄtica; Argentina.Fil: Ferrero, Susana. Universidad Nacional de Rio Cuarto. Facultad de Ciencias Exactas, FĂ­sico-QuĂ­micas y Naturales. Departamento de MatemĂĄtica; Argentina.Fil: Del Medico, Ana Paula. Universidad Nacional de Rosario. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas. Instituto de Investigaciones en Ciencias Agrarias de Rosario (IICAR); Argentina.Fil: Pratta, Guillermo. Universidad Nacional de Rosario. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas. Instituto de Investigaciones en Ciencias Agrarias de Rosario (IICAR); Argentina.Fil: Tenaglia, Gerardo. Instituto Nacional de TecnologĂ­a Agropecuaria. Instituto de InvestigaciĂłn y Desarrollo TecnolĂłgico para la Agricultura Familiar; Argentina.Fil: Lavalle, Andrea. Universidad Nacional del Comahue. Departamento de EstadĂ­stica; Argentina.Fil: Demaio, Alejo. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: HernĂĄndez, Paz. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Di Palma, Fabricio. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Calizaya, Pablo. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Avalis, Francisca. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Caro, Norma Patricia. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Caro, Norma Patricia. Universidad Nacional de CĂłrdoba. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas; Argentina.Fil: FernĂ­cola, Marcela. Universidad de Buenos Aires. Facultad de Farmacia y BioquĂ­mica; Argentina.Fil: Nuñez, Myriam. Universidad de Buenos Aires. Facultad de Farmacia y BioquĂ­mica; Argentina.Fil: Dundray, , FabiĂĄn. Universidad de Buenos Aires. Facultad de Farmacia y BioquĂ­mica; Argentina.Fil: Calviño, Amalia. Universidad de Buenos Aires. Instituto de QuĂ­mica y Metabolismo del FĂĄrmaco. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas; Argentina.Fil: FarfĂĄn Machaca, Yheni. Universidad Nacional de San Antonio Abad del Cusco. Departamento AcadĂ©mico de MatemĂĄticas y EstadĂ­stica; Argentina.Fil: Paucar, Guillermo. Universidad Nacional de San Antonio Abad del Cusco. Departamento AcadĂ©mico de MatemĂĄticas y EstadĂ­stica; Argentina.Fil: Coaquira, Frida. Universidad Nacional de San Antonio Abad del Cusco. Escuela de posgrado UNSAAC; Argentina.Fil: Ferreri, NoemĂ­ M. Universidad Nacional de Rosario. Facultad de Ciencias Exactas, IngenierĂ­a y Agrimensura; Argentina.Fil: Pascaner, Melina. Universidad Nacional de Rosario. Facultad de Ciencias Exactas, IngenierĂ­a y Agrimensura; Argentina.Fil: Martinez, Facundo. Universidad Nacional de Rosario. Facultad de Ciencias Exactas, IngenierĂ­a y Agrimensura; Argentina.Fil: Bossolasco, MarĂ­a Luisa. Universidad Nacional de TucumĂĄn. Facultad de Ciencias Naturales e Instituto Miguel Lillo; Argentina.Fil: Bortolotto, Eugenia B. Universidad Nacional de Rosario. Centro de Estudios FotosintĂ©ticos y BioquĂ­micos (CEFOBI); Argentina.Fil: Bortolotto, Eugenia B. Universidad Nacional de Rosario. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas; Argentina.Fil: Faviere, Gabriela S. Universidad Nacional de Rosario. Centro de Estudios FotosintĂ©ticos y BioquĂ­micos (CEFOBI); Argentina.Fil: Faviere, Gabriela S. Universidad Nacional de Rosario. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas; Argentina.Fil: Angelini, Julia. Universidad Nacional de Rosario. Centro de Estudios FotosintĂ©ticos y BioquĂ­micos (CEFOBI); Argentina.Fil: Angelini, Julia. Universidad Nacional de Rosario. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas; Argentina.Fil: Cervigni, Gerardo. Universidad Nacional de Rosario. Centro de Estudios FotosintĂ©ticos y BioquĂ­micos (CEFOBI); Argentina.Fil: Cervigni, Gerardo. Universidad Nacional de Rosario. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas; Argentina.Fil: Valentini, Gabriel. Instituto Nacional de TecnologĂ­a Agropecuaria. EstaciĂłn Experimental Agropecuaria INTA San Pedro; Argentina.Fil: Chiapella, Luciana C.. Universidad Nacional de Rosario. Facultad de Ciencias BioquĂ­micas y FarmacĂ©uticas; Argentina.Fil: Chiapella, Luciana C. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas (CONICET); Argentina.Fil: Grendas, Leandro. Universidad Buenos Aires. Facultad de Medicina. Instituto de FarmacologĂ­a; Argentina.Fil: Daray, Federico. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas (CONICET); Argentina.Fil: Daray, Federico. Universidad Buenos Aires. Facultad de Medicina. Instituto de FarmacologĂ­a; Argentina.Fil: Leal, Danilo. Universidad AndrĂ©s Bello. Facultad de IngenierĂ­a; Chile.Fil: Nicolis, Orietta. Universidad AndrĂ©s Bello. Facultad de IngenierĂ­a; Chile.Fil: Bonadies, MarĂ­a Eugenia. Universidad de Buenos Aires. Facultad de Farmacia y BioquĂ­mica; Argentina.Fil: Ponteville, Christiane. Universidad de Buenos Aires. Facultad de Farmacia y BioquĂ­mica; Argentina.Fil: Catalano, Mara. Universidad Nacional de Rosario. Facultad de Ciencias Exactas, IngenierĂ­a y Agrimensura; Argentina.Fil: Catalano, Mara. Universidad Nacional de Rosario. Facultad de Ciencias Exactas, IngenierĂ­a y Agrimensura; Argentina.Fil: Dillon, Justina. Universidad Nacional de Rosario. Facultad de Ciencias Exactas, IngenierĂ­a y Agrimensura; Argentina.Fil: Carnevali, Graciela H. Universidad Nacional de Rosario. Facultad de Ciencias Exactas, IngenierĂ­a y Agrimensura; Argentina.Fil: Justo, Claudio Eduardo. Universidad Nacional de la Plata. Facultad de IngenierĂ­a. Departamento de Agrimensura. Grupo de Aplicaciones MatemĂĄticas y EstadĂ­sticas (UIDET); Argentina.Fil: Iglesias, Maximiliano. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Instituto de EstadĂ­stica y DemografĂ­a; Argentina.Fil: GĂłmez, Pablo SebastiĂĄn. Universidad Nacional de CĂłrdoba. Facultad de Ciencias Sociales. Consejo Nacional de Investigaciones CientĂ­ficas y TĂ©cnicas; Argentina.Fil: Real, Ariel HernĂĄn. Universidad Nacional de LujĂĄn. Departamento de Ciencias BĂĄsicas; Argentina.Fil: Vargas, Silvia Lorena. Universidad Nacional de LujĂĄn. Departamento de Ciencias BĂĄsicas; Argentina.Fil: LĂłpez Calcagno, Yanil. Universidad Nacional de LujĂĄn. Departamento de Ciencias BĂĄsicas; Argentina.Fil: Batto, Mabel. Universidad Nacional de LujĂĄn. Departamento de Ciencias BĂĄsicas; Argentina.Fil: Sampaolesi, Edgardo. Universidad Nacional de LujĂĄn. Departamento de Ciencias BĂĄsicas; Argentina.Fil: Tealdi, Juan Manuel. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Buzzi, Sergio MartĂ­n. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Departamento de EstadĂ­stica y MatemĂĄtica; Argentina.Fil: GarcĂ­a BazĂĄn, Gaspar. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Monroy Caicedo, Xiomara Alejandra. Universidad Nacional de Rosario; Argentina.Fil: BermĂșdez Rubio, Dagoberto. Universidad Santo TomĂĄs. Facultad de EstadĂ­stica; Colombia.Fil: Ricci, Lila. Universidad Nacional de Mar del Plata. Facultad de Ciencias Exactas y Naturales. Centro Marplatense de Investigaciones MatemĂĄticas; Argentina.Fil: Kelmansky, Diana Mabel. Universidad de Buenos Aires. Facultad de Ciencias Exactas y Naturales. Instituto de CĂĄlculo; Argentina.Fil: Rapelli, Cecilia. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica. Escuela de EstadĂ­stica. Instituto de Investigaciones TeĂłricas y Aplicadas de la Escuela de EstadĂ­stica; Argentina.Fil: GarcĂ­a, MarĂ­a del Carmen. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica. Escuela de EstadĂ­stica. Instituto de Investigaciones TeĂłricas y Aplicadas de la Escuela de EstadĂ­stica; Argentina.Fil: Bussi, Javier. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica. Instituto de Investigaciones TeĂłricas y Aplicadas de la Escuela de EstadĂ­stica; Argentina.Fil: MĂ©ndez, Fernanda. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica. Instituto de Investigaciones TeĂłricas y Aplicadas de la Escuela de EstadĂ­stica (IITAE); Argentina.Fil: GarcĂ­a Mata, Luis Ángel. Universidad Nacional AutĂłnoma de MĂ©xico. Facultad de Estudios Superiores AcatlĂĄn; MĂ©xico.Fil: RamĂ­rez GonzĂĄlez, Marco Antonio. Universidad Nacional AutĂłnoma de MĂ©xico. Facultad de Estudios Superiores AcatlĂĄn; MĂ©xico.Fil: Rossi, Laura. Universidad Nacional de Cuyo. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Vicente, Gonzalo. Universidad Nacional de Cuyo. Facultad de Ciencias EconĂłmicas; Argentina. Universidad PĂșblica de Navarra. Departamento de EstadĂ­stica, InformĂĄtica y MatemĂĄticas; España.Fil: Scavino, Marco. Universidad de la RepĂșblica. Facultad de Ciencias EconĂłmicas y de AdministraciĂłn. Instituto de EstadĂ­stica; Uruguay.Fil: EstragĂł, Virginia. Presidencia de la RepĂșblica. ComisiĂłn Honoraria para la Salud Cardiovascular; Uruguay.Fil: Muñoz, MatĂ­as. Presidencia de la RepĂșblica. ComisiĂłn Honoraria para la Salud Cardiovascular; Uruguay.Fil: Castrillejo, AndrĂ©s. Universidad de la RepĂșblica. Facultad de Ciencias EconĂłmicas y de AdministraciĂłn. Instituto de EstadĂ­stica; Uruguay.Fil: Da Rocha, Naila Camila. Universidade Estadual Paulista JĂșlio de Mesquita Filho- UNESP. Departamento de BioestadĂ­stica; BrasilFil: Macola Pacheco Barbosa, Abner. Universidade Estadual Paulista JĂșlio de Mesquita Filho- UNESP; Brasil.Fil: Corrente, JosĂ© Eduardo. Universidade Estadual Paulista JĂșlio de Mesquita Filho – UNESP. Instituto de Biociencias. Departamento de BioestadĂ­stica; Brasil.Fil: Spataro, Javier. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Departamento de EconomĂ­a; Argentina.Fil: Salvatierra, Luca Mauricio. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Nahas, EstefanĂ­a. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: MĂĄrquez, Viviana. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Boggio, Gabriela. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica. Instituto de Investigaciones TeĂłricas y Aplicadas de la Escuela de EstadĂ­stica; Argentina.Fil: Arnesi, Nora. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica. Instituto de Investigaciones TeĂłricas y Aplicadas de la Escuela de EstadĂ­stica; Argentina.Fil: Harvey, Guillermina. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica. Instituto de Investigaciones TeĂłricas y Aplicadas de la Escuela de EstadĂ­stica; Argentina.Fil: Settecase, Eugenia. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica. Instituto de Investigaciones TeĂłricas y Aplicadas de la Escuela de EstadĂ­stica; Argentina.Fil: Wojdyla, Daniel. Duke University. Duke Clinical Research Institute; Estados Unidos.Fil: Blasco, Manuel. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Instituto de EconomĂ­a y Finanzas; Argentina.Fil: Stanecka, Nancy. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Instituto de EstadĂ­stica y DemografĂ­a; Argentina.Fil: Caro, Valentina. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Instituto de EstadĂ­stica y DemografĂ­a; Argentina.Fil: Sigal, Facundo. Universidad Austral. Facultad de Ciencias Empresariales. Departamento de EconomĂ­a; Argentina.Fil: Blacona, MarĂ­a Teresa. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica. Escuela de EstadĂ­stica; Argentina.Fil: Rodriguez, Norberto Vicente. Universidad Nacional de Tres de Febrero; Argentina.Fil: Loiacono, Karina Valeria. Universidad Nacional de Tres de Febrero; Argentina.Fil: GarcĂ­a, Gregorio. Instituto Nacional de EstadĂ­stica y Censos. DirecciĂłn Nacional de MetodologĂ­a EstadĂ­stica; Argentina.Fil: Ciardullo, Emanuel. Instituto Nacional de EstadĂ­stica y Censos. DirecciĂłn Nacional de MetodologĂ­a EstadĂ­stica; Argentina.Fil: Ciardullo, Emanuel. Instituto Nacional de EstadĂ­stica y Censos. DirecciĂłn Nacional de MetodologĂ­a EstadĂ­stica; Argentina.Fil: Funkner, SofĂ­a. Universidad Nacional de La Pampa. Facultad de Ciencias Exactas y Naturales; Argentina.Fil: Dieser, MarĂ­a Paula. Universidad Nacional de La Pampa. Facultad de Ciencias Exactas y Naturales; Argentina.Fil: MartĂ­n, MarĂ­a Cristina. Universidad Nacional de La Pampa. Facultad de Ciencias Exactas y Naturales; Argentina.Fil: MartĂ­n, MarĂ­a Cristina. Universidad Nacional del Sur. Departamento de MatemĂĄtica; Argentina.Fil: Peitton, Lucas. Universidad Nacional de Rosario. Facultad de Ciencias EconĂłmicas y EstadĂ­stica; Argentina. Queensland Department of Agriculture and Fisheries; Australia.Fil: Borgognone, MarĂ­a Gabriela. Queensland Department of Agriculture and Fisheries; Australia.Fil: Terreno, Dante D. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Departamento de Contabilidad; Argentina.Fil: Castro GonzĂĄlez, Enrique L. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Departamento de Contabilidad; Argentina.Fil: RoldĂĄn, Janina Micaela. Universidad Nacional de La Pampa. Facultad de Ciencias Exactas y Naturales; Argentina.Fil: GonzĂĄlez, Gisela Paula. CONICET. Instituto de Investigaciones EconĂłmicas y Sociales del Sur; Argentina. Universidad Nacional del Sur; Argentina.Fil: De Santis, Mariana. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas; Argentina.Fil: Geri, Milva. CONICET. Instituto de Investigaciones EconĂłmicas y Sociales del Sur; Argentina.Fil: Geri, Milva. Universidad Nacional del Sur. Departamento de EconomĂ­a; Argentina. Universidad Nacional del Sur. Departamento de MatemĂĄtica; Argentina.Fil: Marfia, MartĂ­n. Universidad Nacional de la Plata. Facultad de IngenierĂ­a. Departamento de Ciencias BĂĄsicas; Argentina.Fil: Kudraszow, Nadia L. Universidad Nacional de la Plata. Facultad de Ciencias Exactas. Centro de MatemĂĄtica de La Plata; Argentina.Fil: Closas, Humberto. Universidad TecnolĂłgica Nacional; Argentina.Fil: Amarilla, Mariela. Universidad TecnolĂłgica Nacional; Argentina.Fil: Jovanovich, Carina. Universidad TecnolĂłgica Nacional; Argentina.Fil: de Castro, Idalia. Universidad Nacional del Nordeste; Argentina.Fil: Franchini, Noelia. Universidad Nacional del Nordeste; Argentina.Fil: Cruz, Rosa. Universidad Nacional del Nordeste; Argentina.Fil: Dusicka, Alicia. Universidad Nacional del Nordeste; Argentina.Fil: Quaglino, Marta. Universidad Nacional de Rosario; Argentina.Fil: Kalauz, Roberto JosĂ© AndrĂ©s. Investigador Independiente; Argentina.Fil: GonzĂĄlez, Mariana VerĂłnica. Universidad Nacional de CĂłrdoba. Facultad de Ciencias EconĂłmicas. Departamento de EstadĂ­stica y MatemĂĄticas; Argentina.Fil: Lescano, Maira Celeste.

    COVID-19 symptoms at hospital admission vary with age and sex: results from the ISARIC prospective multinational observational study

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    Background: The ISARIC prospective multinational observational study is the largest cohort of hospitalized patients with COVID-19. We present relationships of age, sex, and nationality to presenting symptoms. Methods: International, prospective observational study of 60 109 hospitalized symptomatic patients with laboratory-confirmed COVID-19 recruited from 43 countries between 30 January and 3 August 2020. Logistic regression was performed to evaluate relationships of age and sex to published COVID-19 case definitions and the most commonly reported symptoms. Results: ‘Typical’ symptoms of fever (69%), cough (68%) and shortness of breath (66%) were the most commonly reported. 92% of patients experienced at least one of these. Prevalence of typical symptoms was greatest in 30- to 60-year-olds (respectively 80, 79, 69%; at least one 95%). They were reported less frequently in children (≀ 18 years: 69, 48, 23; 85%), older adults (≄ 70 years: 61, 62, 65; 90%), and women (66, 66, 64; 90%; vs. men 71, 70, 67; 93%, each P < 0.001). The most common atypical presentations under 60 years of age were nausea and vomiting and abdominal pain, and over 60 years was confusion. Regression models showed significant differences in symptoms with sex, age and country. Interpretation: This international collaboration has allowed us to report reliable symptom data from the largest cohort of patients admitted to hospital with COVID-19. Adults over 60 and children admitted to hospital with COVID-19 are less likely to present with typical symptoms. Nausea and vomiting are common atypical presentations under 30 years. Confusion is a frequent atypical presentation of COVID-19 in adults over 60 years. Women are less likely to experience typical symptoms than men

    Multiancestry analysis of the HLA locus in Alzheimer’s and Parkinson’s diseases uncovers a shared adaptive immune response mediated by HLA-DRB1*04 subtypes

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    Across multiancestry groups, we analyzed Human Leukocyte Antigen (HLA) associations in over 176,000 individuals with Parkinson’s disease (PD) and Alzheimer’s disease (AD) versus controls. We demonstrate that the two diseases share the same protective association at the HLA locus. HLA-specific fine-mapping showed that hierarchical protective effects of HLA-DRB1*04 subtypes best accounted for the association, strongest with HLA-DRB1*04:04 and HLA-DRB1*04:07, and intermediary with HLA-DRB1*04:01 and HLA-DRB1*04:03. The same signal was associated with decreased neurofibrillary tangles in postmortem brains and was associated with reduced tau levels in cerebrospinal fluid and to a lower extent with increased AÎČ42. Protective HLA-DRB1*04 subtypes strongly bound the aggregation-prone tau PHF6 sequence, however only when acetylated at a lysine (K311), a common posttranslational modification central to tau aggregation. An HLA-DRB1*04-mediated adaptive immune response decreases PD and AD risks, potentially by acting against tau, offering the possibility of therapeutic avenues
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