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  • Scientists reveal a hidden hormone switch for learning

    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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  • 5 signs you are becoming diabetic

    5 signs you are becoming diabetic

    Polydipsia, or excessive thirst, and polyuria, or frequent urination, are classic early signs of diabetes that are related to how the body attempts to regulate excess blood sugar. As blood sugar levels rise, kidneys filter more glucose from the…

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  • A case report of wrist arthritis caused by Gemella haemolysans | BMC Infectious Diseases

    A case report of wrist arthritis caused by Gemella haemolysans | BMC Infectious Diseases

  • Jennings JD, Zielinski E, Tosti R, Ilyas AM. Septic arthritis of the wrist: Incidence, risk Factors, and predictors of infection. Orthopedics. 2017;40(3):e526–31.

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  • Mercer HL, Rodriguez D, Rivas R,…

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  • Is Google accessing your Gmail to train Gemini? Tech giant debunks viral claims

    Is Google accessing your Gmail to train Gemini? Tech giant debunks viral claims

    Updated on: Nov 22, 2025 09:55 am IST

    Google denied the claims, calling them misleading. The tech giant added that the company is always transparent.

    Google shared a tweet dismissing claims made by viral social media posts and some…

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  • Pakistan warns against Afghan soil use for terrorism

    Pakistan warns against Afghan soil use for terrorism

    Pakistan has strongly condemned the use of Afghan territory for attacks against its soil, highlighting ongoing security concerns.

    Foreign Office spokesperson Tahir Hussain Andrabi also updated on Foreign Minister…

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