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  • Lenovo debuts a concept “no-charging” keyboard and mouse at CES 2026

    Lenovo debuts a concept “no-charging” keyboard and mouse at CES 2026

    One of the coolest parts of CES is getting to preview the future of technology. LG’s iRobot-like helper robot and Sony’s XYN headset are two such examples from last year’s event….

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  • CR Tested These Protein Powders. All Had Low Levels of Lead.

    CR Tested These Protein Powders. All Had Low Levels of Lead.

    Before publication, CR contacted the manufacturers of all the products we tested and shared our results and methodology with them. We wanted to know whether they were using any unique sourcing or manufacturing processes that could explain their comparatively cleaner results, and what that might reveal about other manufacturers’ practices.

    Premier Protein declined to comment. Representatives from Equate’s parent company, Walmart, and Clean Simple Eats didn’t respond to multiple requests for comment.

    Truvani’s co-founder and co-CEO, Derek Halpern, said in an interview that what sets his company apart is the frequency with which it tests for heavy metals. “I’ve been told routinely by my manufacturers that the volume of tests that we ask for far outstrips anyone else they’ve ever worked with,” he said. “I just want a test result for every lot—that doesn’t seem that ridiculous to me.”

    Truvani has tested its chocolate-flavored protein powder 162 times over the last 12 months, Halpern said. Every lot of Truvani products is tested for heavy metals and other contaminants, and ingredients that don’t meet internal standards are rejected. (Halpern declined to share the specific thresholds Truvani uses, but said that its lead standard is similar to the California Prop 65 limit that CR uses in its level of concern calculations.) 

    Halpern said he suspects less rigorous approaches are more common across the industry because they’re less costly and still technically meet FDA requirements. Some companies rely on spot-checks or certificates of analysis from ingredient suppliers instead of testing every finished lot, he said.

    “It can be more expensive to ensure that every vat of your product is very low in lead,” says Cohen of Harvard Medical School. “And without a requirement that it be that way, it’s unlikely that the industry as a whole is going to move in that direction.”

    Lindsay Dahl, chief impact officer at the supplement brand Ritual, says she thinks that “heavy metal testing transparency is feasible for the entire industry.” Ritual tests its ingredients and all finished goods for contamination, and uses California’s Prop 65 limit as a goalpost for most products, she says.

    Ritual is unique in that it publishes detailed sourcing information for its products. “We openly share the final place of manufacturing and the names of our suppliers for the public to see,” says Dahl, who added that the company thinks that “ingredient traceability is the best way to help reduce contaminants.” She noted that the powder tested by CR was made with Puris-brand pea protein from North America and cocoa powder from several countries through Cocoa Horizons, a program that promotes sustainable and traceable farming.

    “It took us three years of searching and testing different cocoa suppliers to finally launch a chocolate flavor version of Essential Protein,” says Dahl, who attributed the delay to Ritual’s heavy metal and human rights standards. “While we spend a tremendous amount of time working to find the highest quality suppliers, we also know it’s hard to have formulas that are entirely contaminant-free, which is where our product testing comes in.”

    In a letter to Congress last year, Ritual’s CEO, Katerina Schneider, said that because plant-based protein powder is a “high-risk product,” the company publishes heavy metal test results for one recently released lot of each flavor of its Essential Protein powder on its website. In the letter, Schneider also took the rare step of advocating for greater industry regulation, calling on Congress to “empower the FDA to establish health-protective limits for heavy metals in supplements and protein powder.”

    It’s a position also held by CR’s consumer advocates—and many others. A CR petition calling on the FDA to set strict standards for heavy metals in protein supplements has garnered over 43,000 signatures since October.

    “The FDA is still lacking enforceable lead limits for protein powders and dietary supplements,” says Brian Ronholm, CR’s director of food policy. “Having these standards in place would push the industry to consistently make products with lower levels of lead, which our test results certainly demonstrate is possible for companies to do.”

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  • Nominate Local Sporting Heroes for the NMD Sports Awards

    Nominate Local Sporting Heroes for the NMD Sports Awards

    Newry, Mourne and Down District Council, in partnership with the Sports Association Newry, Down and South Armagh (SANDSA) is pleased to announce that nominations are now open for this year’s NMD Sports Awards.

    These…

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  • PTI rejects terror facilitation charge, calls for unified national policy

    PTI rejects terror facilitation charge, calls for unified national policy

    Party says terrorism is national issue, not political, urges dialogue and policy continuity

    Press conference in Islamabad by PTI chairman Barrister Gohar Ali Khan, senior leader Salman Akram Raja and former National Assembly speaker Asad Qaiser,…

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  • This Simple Metric Could Predict Future Stock Market Returns

    This Simple Metric Could Predict Future Stock Market Returns

    A groundbreaking study, published in the September 2025 issue of the International Review of Economics & Finance, reveals that a surprisingly simple metric—the difference between current S&P 500 earnings yield and long-term real Treasury…

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  • ‘It felt like a secret’: Remembering Chicago’s Berlin nightclub

    ‘It felt like a secret’: Remembering Chicago’s Berlin nightclub

    Berlin nightclub in Chicago’s Lakeview neighborhood closed permanently in November 2023, after four decades in business. The closure happened amid stalled negotiations between the bar’s owners and its…

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  • A year of action: More than 43,000 counterfeit products removed from Manchester’s streets in 2025

    A year of action: More than 43,000 counterfeit products removed from Manchester’s streets in 2025

    In 2025 Manchester City Council’s Trading Standards Team seized and destroyed nearly £4.5m of counterfeit goods.

    Ranging from fake handbags, trainers, jewellery, electronic items, sportswear, to children’s toys and sunglasses there are few areas that the counterfeit goods industry does not reach. 


    However, through exemplary partnership work alongside Greater Manchester Police, and brand representatives this criminal industry has taken a substantial hit over the past 12 months. 


    Of the more than 43,500 counterfeit items which were seized it is estimated that the value lost to the industry was between £34m – £43m.* 


    In addition to counterfeit goods a substantial push was made throughout the year to crack down on the sale and distribution of illicit tobacco. Sold in packaging not compliant with UK law and often shipped in from oversees, it presents a substantial impediment to supporting Mancunians to quit smoking and move away from tobacco products. 


    As Manchester has some of the worst health outcomes in the country when it comes to smoking-related illnesses it is hugely important that steps are taken to curtail the sale of illicit tobacco. 


    In total, 316,625 cigarettes – equivalent to nearly 16,000 individual packs were seized. In addition, 258kg of hand rolling tobacco was seized, as well as more than 18,000 illegal vapes which do not comply with UK laws or regulations. 


     


    Councillor Lee-Ann Igbon, Executive Member for Vibrant Neighbourhoods, said: “I am incredibly proud of the results that our officers achieved throughout 2025. The counterfeit industry was substantially embedded in our communities, but through their diligence and the support of our valued partners we have driven away some of the worst offenders and are beginning the process of regenerating the areas of Manchester that were long blighted by this sort of crime. 


    “Through Operations Elswick and Machinize run in collaboration with GMP we have made a significant impact against criminal enterprises and we hope this sends a message that we will not tolerate this harmful trade.” 


     


    Detective Chief Inspector Melanie Johnson, lead coordinator over Operation Machinize for GMP, said: “Last year we collaborated with Manchester City Council’s Trading Standards to tackle businesses on our high streets that were being used as a front for criminality and putting our communities at risk. 


    “As a result of our operations, we managed to seize over £1 million worth of illegal items. 


    “The joint partnership operation has enabled GMP to gather further information and intelligence enhancing our understanding of criminality within these types of businesses. 


    “We take any information we receive very seriously and will continue to investigate all aspects of this criminality to protect our communities from the harms of illegal products.” 


     


    *Note on Lost Value 


    This is the estimated loss of money when comparing the price of a sold counterfeit item, vs the authentic product. Ie., if a pair of counterfeit Nike shoes were sold for £20, when the RRP was £90, the lost value would be £70. 

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  • ‘It can be unnecessary – and even too much’: Are violent video games like Grand Theft Auto 6 becoming too realistic?

    ‘It can be unnecessary – and even too much’: Are violent video games like Grand Theft Auto 6 becoming too realistic?

    “Gameplay is a holistic experience involving graphics, player agency, animation, sound, ludic and spatial design – it’s the meshing together of these in compelling and well-integrated ways that I think invites interest for a player. Not just…

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  • Tang, D., Zhang, C., Peng, D. & Xue, Y. Transcriptome of Saccharomyces cerevisiae during glucose starvation. Datasets. SRA https://www.ncbi.nlm.nih.gov/sra/?term=PRJNA912308 (2025).

  • Tang, D., Zhang, C., Peng, D. & Xue, Y. The proteome and phosphoproteome of Saccharomyces cerevisiae during glucose starvation. Datasets. iProX https://www.iprox.cn//page/project.html?id=IPX0005607000 (2025).

  • Tang, D., Zhang, C., Peng, D. & Xue, Y. LyMOI: large hybrid models for omics interpretation. Source code. GitHub https://github.com/BioCUCKOO/LyMOI (2025).

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  • DMA Review contributions

    DMA Review contributions

    Today, the European Commission published a summary and the individual contributions received in response to the consultation on the ongoing review of the Digital Markets Act (DMA). 

    The Commission welcomes the high level of participation, with over 450 contributions submitted by a broad range of interested parties, including small and medium-sized enterprises (SMEs), gatekeepers, civil society organisations, academics, and individual citizens. The contributions generally show respondents’ broad support for the DMA’s objectives and indicate that the regulation has already brought benefits. Some contributions ask to strengthen interoperability, data access and data portability, as well as support for SMEs. Some also ask to expand the DMA’s scope, particularly in relation to AI and cloud services. Gatekeepers on the other hand expressed criticisms such as regarding impact on user experience, as well as concerns about proportionality.

    The assessment of these contributions will feed into the Commission’s review report to be presented by 3 May 2026 to the European Parliament, the Council, and the European Economic and Social Committee. The regular review of the DMA every three years is a legal requirement, mandated by the regulation itself, to ensure that the DMA meets its objectives and maintains its effectiveness in the evolving landscape of digital markets.  

    The public consultation, which was launched on 3 July 2025 as part of the ongoing review, was accompanied by a call for evidence and a dedicated questionnaire on Artificial Intelligence (AI), which were published on 26 August 2025. The contributions to the call for evidence are already public.

    See the announcement also on Commission’s press corner.

     

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