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  • U.S. CDC’s advisory committee votes to drop universal Hepatitis B birth-dose recommendation-Xinhua

    LOS ANGELES, Dec. 5 (Xinhua) — The U.S. Centers for Disease Control and Prevention (CDC)’s Advisory Committee on Immunization Practices (ACIP) voted on Friday to end the long-standing recommendation that all newborns receive a Hepatitis B…

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    Placenta Previa is Associated with Maternal Depression, Anxiety, and P

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    Placenta previa (PP) is a major obstetric complication associated with increased risks of maternal morbidity, hemorrhage, and perinatal mortality. PP is a condition where the placenta is positioned such that it fully or partially…

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  • Which Artificial Intelligence (AI) Stocks Are Billionaires Buying the Most?

    Which Artificial Intelligence (AI) Stocks Are Billionaires Buying the Most?

    • Several billionaires loaded up on Broadcom, Meta Platforms, and Microsoft stocks in Q3.

    • However, Alphabet and Nvidia were the most popular AI stocks with billionaire investors during the quarter.

    • Both stocks should have tremendous growth prospects over the next several years.

    • These 10 stocks could mint the next wave of millionaires ›

    The phrase “follow the money” gained widespread attention thanks to the 1976 movie, All the President’s Men. While the quote and the movie were about the Watergate scandal, following the money has become a popular approach for many investors who track the stocks bought by billionaires.

    As you might expect, quite a few billionaires have invested heavily in artificial intelligence (AI) stocks. But which AI stocks are they buying the most?

    Image source: Getty Images.

    To answer that question, I examined the 13F filings for the third quarter of 2025 of companies, family offices, and hedge funds run by 10 prominent billionaire investors:

    • Bill Ackman

    • Warren Buffett

    • Chase Coleman

    • Stanley Druckenmiller

    • Israel “Izzy” Englander

    • Ken Griffin

    • Carl Icahn

    • Paul Tudor Jones

    • George Soros

    • David Tepper

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    Jones’ Tudor Investment hedge fund initiated new positions in Broadcom and Meta in Q3. Druckenmiller’s Duquesne Family Office also initiated a new position in Meta during the quarter.

    Coleman’s Tiger Global Management increased its position in Broadcom in Q3. Englander’s Millennium Management and Griffin’s Citadel Advisors each bought additional shares of Broadcom, Meta, and Microsoft. Soros Fund Management more than tripled its position in Microsoft in Q3.

    However, two other AI stocks stood out as most popular with billionaire investors. Half of the billionaires on the list bought either Alphabet (NASDAQ: GOOG) (NASDAQ: GOOGL) or Nvidia (NASDAQ: NVDA) in Q3.

    Buffett surprised some observers by initiating a significant new position in Alphabet for Berkshire Hathaway (NYSE: BRK.A) (NYSE: BRK.B) during the quarter. This purchase was a long time in the making. The legendary investor revealed in an interview with CNBC in 2017 that he regretted not buying shares of Google’s parent company earlier.

    Druckenmiller also opened a new position in Alphabet in Q3. Meanwhile, Englander, Griffin, and Soros added to their hedge fund’s stakes in the tech giant. Griffin’s Citadel even bought more of both of Alphabet’s share classes.

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    Justin Greaves scored a Test career-high 202 not out as West Indies made the second-highest fourth-innings total in history to earn a draw with New Zealand in the series opener in Christchurch.

    West Indies had been skittled for just 167 in their…

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  • The prevalence of liver enzyme abnormalities among adult patients with

    The prevalence of liver enzyme abnormalities among adult patients with

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    Liver diseases remain a significant global health challenge, contributing to approximately 2 million deaths every year and accounting for nearly 4% of all global deaths.1 Chronic liver conditions such as cirrhosis, hepatitis B and C…

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    1. Punjab govt decides to take strict action against one-dish violations  RADIO PAKISTAN
    2. Strict enforcement of Marriage Function Act ordered  Associated Press of Pakistan
    3. Punjab launches crackdown on one-dish violations and loudspeaker use  Dunya News

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  • From despair to recovery: Overcoming a 16-year liver condition naturally

    From despair to recovery: Overcoming a 16-year liver condition naturally

    Liver health is critical to overall wellness, yet liver disorders are increasingly common, often leaving patients feeling anxious and unsure about the future. One such inspiring journey comes from a 41-year-old patient who had been struggling…

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  • A pediatric case of serogroup Y meningococcal meningitis combined with

    A pediatric case of serogroup Y meningococcal meningitis combined with

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    Invasive meningococcal disease (IMD) is caused by Neisseria meningitidis (Nm), which is ranked as the first pathogen in the World Health Organization (WHO) roadmap for defeating meningitis by 2030.1 According to the capsular…

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