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    Improving the core functions of primary care in a Ugandan rural district by Innocent K. Besigye, Robert J. Mash

    Published 2025-05-01
    “…Community dialogues as form of community engagement were selected as an intervention to improve the core primary care functions. Conclusion: The PCAT can generate findings to guide the development of interventions at the facility and district level to potentially improve the core functions of primary care. …”
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    Development of core outcome set for healthy aging treatment in primary care settings by Soobin Jang, Hyein Jeong, Jungi Park, Mi Mi Ko, Jeeyoun Jung

    Published 2025-12-01
    “…This study aimed to develop a Core Outcome Set (COS) for healthy aging treatment in primary care. …”
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    CREATIVE CORE WITHIN THE SCIENTIFIC RESEARCH OF EDUCATIONAL PROBLEMS by Vladimir I. Zagvyazinsky, Alfia F. Zakirova

    Published 2015-03-01
    “…The content of such notions as «concept», «creative core», «idea», «plot», and «research hypothesis» is revealed. …”
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    Gotta Go Fast: A Generalization of the Escape Speed to Fluid-dynamical Explosions and Implications for Astrophysical Transients by Daniel A. Paradiso, Eric R. Coughlin

    Published 2025-01-01
    “…A star’s ability to explode in a core-collapse supernova is correlated with its density profile, ρ ( r ), such that compact stars with shallow density profiles preferentially “fail” and produce black holes. …”
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    Are we there yet? Evaluation of AI-generated metadata for online information resources by Vyacheslav Zavalin, Oksana L. Zavalina

    Published 2025-03-01
    “…This experimental study assessed the quality of AI-generated descriptive metadata in 4 most widely used standards: Dublin core, MODS, MARC, and BIBFRAME. …”
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    Danish primary care: a focus on general practice in the Danish healthcare system by Peter Haastrup, Anne Møller, Jette Kolding Kristensen, Linda Huibers

    Published 2025-05-01
    “…This analysis of the Danish primary healthcare system with focus on general practice describes the system’s overall structure, function, and financing. …”
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    Core-Sheath Structured Yarn for Biomechanical Sensing in Health Monitoring by Wenjing Fan, Cheng Li, Bingping Yu, Te Liang, Junrui Li, Dapeng Wei, Keyu Meng

    Published 2025-05-01
    “…The rapidly evolving field of functional yarns has garnered substantial research attention due to their exceptional potential in enabling next-generation electronic textiles for wearable health monitoring, human–machine interfaces, and soft robotics. …”
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    Care for patients with cerebrovascular disease in a general hospital. 2 years experience by Joan Omar Rojas Fuentes, Yainelí Cutiño Maas, Ricardo Verdecia Fraga, Ada Sánchez Lozano, Didiesdle Herrera Alonso, Julio López Arguelles

    Published 2010-08-01
    “…<strong><br />Results</strong>: 972 patients suffered from cerebrovascular disease, hospital stay was reduced by two days, the attention of specialized equipment increased from 51.75% to 79.2% patients were discharged with a mild degree of functional dependence. <br /><strong>Conclusions</strong>: The differentiated services to cerebrovascular disease in general hospitals shows benefits for patients.…”
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    Group Forward–Backward Orthogonal Matching Pursuit for General Convex Smooth Functions by Zhongxing Peng, Gengzhong Zheng, Wei Huang

    Published 2024-11-01
    “…This paper introduces the Group Forward–Backward Orthogonal Matching Pursuit (Group-FoBa-OMP) algorithm, a novel approach for sparse feature selection. The core innovations of this algorithm include (1) an integrated backward elimination process to correct earlier misidentified groups; (2) a versatile convex smooth model that generalizes previous research; (3) the strategic use of gradient information to expedite the group selection phase; and (4) a theoretical validation of its performance in terms of support set recovery, variable estimation accuracy, and objective function optimization. …”
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