UNCASVILLE, Conn. — The No. 6-ranked University of Michigan women’s basketball team erased a 20-point deficit and cut the margin to one with 13 seconds left, but No. 1-ranked UConn held on for a 72-69 win Friday evening (Nov. 21) in the…
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BP crew excavates Olympic Pipeline, yet to find cause of leak – Reuters
- BP crew excavates Olympic Pipeline, yet to find cause of leak Reuters
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Trends and disparities in mortality associated with peripheral artery disease and hyperlipidemia, 1999–2024
National Heart, Lung, and Blood Institute. What Is Peripheral Artery Disease? [Internet]. Bethesda (MD): National Institutes of Health; [cited 2025 Oct 24]. Available from: https://www.nhlbi.nih.gov/health/peripheral-artery-disease (2022).
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Scientists reveal a hidden hormone switch for learning
Scientists have known for many years that hormones can shape how the brain works, affecting emotions, mental energy, and everyday choices. What remains unclear is exactly how these chemical signals bring about such changes.
A recent investigation…
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Prognostic value of CD28⁻CD57⁺CD8⁺ T cells for early immunotherapy response in hepatocellular carcinoma: a prospective observational study
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Dynamic graph-based quantum feature selection for accurate fetal plane classification in ultrasound imaging
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