Showing 37,001 - 37,020 results of 40,322 for search '"Health"', query time: 0.18s Refine Results
  1. 37001
  2. 37002
  3. 37003
  4. 37004
  5. 37005
  6. 37006
  7. 37007
  8. 37008
  9. 37009

    Ophiostomatoid fungi associated with pine bark beetles and infested pines in south-eastern Australia, including Graphilbum ipis-grandicollis sp. nov. by Conrad Trollip, Angus J. Carnegie, Quang Dinh, Jatinder Kaur, David Smith, Ross Mann, Brendan Rodoni, Jacqueline Edwards

    Published 2021-09-01
    “…To achieve this, we reviewed Australian plant pathogen reference collections, and analysed samples collected during forest health surveillance programs from the major pine growing regions in south-eastern Australia. …”
    Get full text
    Article
  10. 37010
  11. 37011
  12. 37012

    Effects of Compressive and Tensile Strain on Macrophages during Simulated Orthodontic Tooth Movement by Agnes Schröder, Paul Käppler, Ute Nazet, Jonathan Jantsch, Peter Proff, Fabian Cieplik, James Deschner, Christian Kirschneck

    Published 2020-01-01
    “…During orthodontic tooth movement (OTM) to therapeutically correct the position of misaligned teeth, thus improving oral health and quality of life, fibroblasts, macrophages, and other immune cells within the periodontal ligament (PDL), which connects a tooth to its surrounding bone, are exposed to compressive and tensile strain. …”
    Get full text
    Article
  13. 37013

    Use of ascorbic acid (vitamin C) and alpha tocopherol (vitamin E) as adjuvants in the treatment of neuropathic pain by Fernando Antonio Silva de Azevedo-Filho, Yasmim Machado Chaves de Castro, Marcos Pinho Cerqueira, Thiago Arruda Rodrigues, Yussef Ali-Abdouni, Patrícia Maria de Moraes Barros Fucs

    Published 2025-01-01
    “…At the initial assessment, the patients answered the Quick Disabilities of the Arm, Shoulder and Hand (Quick-DASH) to assess upper limb functionality; quality of life was described using the World Health Organization Quality of Life-Bref (WHOQOL-bref) and pain assessment was measured using the visual analogue scale (VAS). …”
    Get full text
    Article
  14. 37014
  15. 37015
  16. 37016

    Comparing the Coagulation Performance of Rice Husk, Cypress Leaves, and Eucalyptus Leaves Powders with That of Alum in Improving the Turbidity and pH of Some Local Water Sources in... by Cornelius Tsamo, Eric Fru Zama, Ngu Elton Yerima, Ajingne Nelson Mandela Fuh

    Published 2021-01-01
    “…Water with turbidity and pH values within the World Health Organization’s guideline value of < 5 NTU and 6.5–8.5, respectively, were obtained using studied low cost and locally available biocoagulants.…”
    Get full text
    Article
  17. 37017
  18. 37018
  19. 37019

    The occurrence and safety evaluation of phthalic acid esters in Oasis agricultural soils of Xinjiang, China by Hejiang Liu, Xiuting Liu, Kai Wang, Xingwang Ma, Haihe Gao, Xuejun Liu, Changrong Yan

    Published 2025-01-01
    “…Furthermore, the concentrations of all PAEs were below China's soil quality risk control standards, and the non-carcinogenic risks to both adults and children were below the current threshold, indicating relatively low risks to both the human health and the environment. These findings are crucial for understanding the presence and safety evaluation of PAEs in Xinjiang Oasis farmland, and they provide important reference data for managing and controlling PAE contamination in agricultural soils.…”
    Get full text
    Article
  20. 37020

    SHASI-ML: a machine learning-based approach for immunogenicity prediction in Salmonella vaccine development by Ottavia Spiga, Ottavia Spiga, Ottavia Spiga, Anna Visibelli, Francesco Pettini, Bianca Roncaglia, Annalisa Santucci, Annalisa Santucci, Annalisa Santucci

    Published 2025-02-01
    “…IntroductionAccurate prediction of immunogenic proteins is crucial for vaccine development and understanding host-pathogen interactions in bacterial diseases, particularly for Salmonella infections which remain a significant global health challenge.MethodsWe developed SHASI-ML, a machine learning-based framework for predicting immunogenic proteins in Salmonella species. …”
    Get full text
    Article