aistoriz.com
  • AI Trends & Innovations
    • The Travel Revolution of Our Era
  • Contact Us
  • Home News
  • Join Us
    • Registration
  • Member Login
    • Password Reset
    • Profile
  • Privacy Policy
  • Terms Of Service
  • Thank You
Connect with us
aistoriz.com aistoriz.com

aistoriz.com

International partnership for governing generative artificial intelligence models in medicine

  • AI Research
    • Study shakes Silicon Valley: Researchers break AI

    • And Sci Fi Thought AI Was Going To… Take Over? – mindmatters.ai

    • Measuring Machine Intelligence Using Turing Test 2.0

    • UTM Celebrates Malaysia’s Youngest AI Researcher Recognised at IEEE AI-SI 2025 – UTM NewsHub

    • Trump loves AI, and the MAGA world is getting worried

  • Funding & Business
    • Switzerland’s Central Bank Learns to Live With a Strong Franc

    • Cross-Border Bank Consolidation Benefits Cyprus, Patsalides Says

    • Polish Stock Rally Seen Rolling On Despite Drones, Bank Tax Hike

    • Politics Drive Investment Divide in Southeast Asia’s Top Markets

    • Global 36-Hour Interest-Rate Spree Heralds First US Cut of 2025

  • Events & Conferences
    • Read Meta’s 2025 Sustainability Report

    • Scientific frontiers of agentic AI

    • A New Ranking Framework for Better Notification Quality on Instagram

    • Simplifying book discovery with ML-powered visual autocomplete suggestions

    • Revolutionizing warehouse automation with scientific simulation

  • AI Insights
    • The battle for artificial intelligence (AI) talents triggered in Silicon Valley is spreading to Chin..

    • Goldman Sachs Warns An AI Slowdown Can Tank The Stock Market By 20%

    • A Sample Grant Proposal on “Artificial Intelligence for Rural Healthcare” – fundsforNGOs

    • PM: Dynamic innovation ecosystem in Greece

    • Robinhood CEO says just like every company became a tech company, every company will become an AI company

  • Jobs & Careers
    • Databricks Invests in Naveen Rao’s New AI Hardware Startup

    • OpenAI Announces Grove, a Cohort for ‘Pre-Idea Individuals’ to Build in AI 

    • Uncommon Uses of Common Python Standard Library Functions

    • Tendulkar-Backed RRP Electronics Gets 100 Acres in Maharashtra for Semiconductor Fab

    • 5 Tips for Building Optimized Hugging Face Transformer Pipelines

  • Ethics & Policy
    • Vatican Hosts Historic “Grace for the World” Concert and AI Ethics Summit | Ukraine news

    • Pet Dog Joins Google’s Gemini AI Retro Photo Trend! Internet Can’t Get Enough | Viral Video | Viral

    • Morocco Signs Deal to Build National Responsible AI Platform

    • Santa Fe Ethics Board Discusses Revisions to City Ethics Code

    • Santa Fe Campaign Committee Discusses Ethics and Social Media Impact on Elections

  • Mergers & Acquisitions
    • FTAV’s further reading

    • Trump Intel deal designed to block sale of chipmaking unit, CFO says

    • Nuclear fusion developer raises almost $900mn in new funding

    • AI is opening up nature’s treasure chest

    • AI start-up Lovable receives funding offers at $4bn valuation

  • Podcasts & Talks
    • Intel Just Changed Computer Graphics Forever!

    • Not to go off on a tangent, but these math easter eggs in #GoogleSearch are pretty (a)cute.

    • What is the role of AI in enhancing digital defense? | Gen. David H. Petraeus & Google’s Kent Walker

    • Simplify classwork with AI Mode in Search. Just upload your syllabus PDF to get going.

    • Build Hour: Codex

AI Research

International partnership for governing generative artificial intelligence models in medicine

Published

3 months ago

on

June 30, 2025

By

Yilin Ning


  • Division of Pharmacy, Singapore General Hospital, Singapore, Singapore

    Jasmine Chiat Ling Ong

  • Duke-NUS AI + Medical Sciences Initiative, Duke-NUS Medical School, Singapore, Singapore

    Jasmine Chiat Ling Ong, Yilin Ning, Mingxuan Liu, Yian Ma & Nan Liu

  • Centre for Quantitative Medicine, Duke-NUS Medical School, Singapore, Singapore

    Yilin Ning, Mingxuan Liu, Yian Ma & Nan Liu

  • UK EQUATOR Centre, Centre for Statistics in Medicine, University of Oxford, Oxford, UK

    Gary S. Collins

  • Artificial Intelligence in Medicine (AIM) Program, Mass General Brigham, Harvard Medical School, Boston, MA, USA

    Danielle S. Bitterman

  • Department of Radiation Oncology, Brigham and Women’s Hospital/Dana-Farber Cancer Institute, Boston, MA, USA

    Danielle S. Bitterman

  • Department of Medicine, Division of Cardiology, Weill Cornell Medicine, New York, NY, USA

    Ashley N. Beecy

  • Information Technology Data Science, New York-Presbyterian Hospital, New York, NY, USA

    Ashley N. Beecy

  • Stanford University School of Medicine, Palo Alto, CA, USA

    Robert T. Chang, Kuldev Singh & Nigam H. Shah

  • Byers Eye Institute, Stanford University, Palo Alto, CA, USA

    Robert T. Chang, Kuldev Singh & Daniel Shu Wei Ting

  • College of Medicine and Health, University of Birmingham, Birmingham, UK

    Alastair K. Denniston & Xiaoxuan Liu

  • University Hospitals Birmingham NHS Foundation Trust, Birmingham, UK

    Alastair K. Denniston

  • Else Kröner Fresenius Center for Digital Health, TUD Dresden University of Technology, Dresden, Germany

    Oscar Freyer & Stephen Gilbert

  • Julius Centre for Health Sciences and Primary Care, University Medical Centre Utrecht, Utrecht University, Utrecht, Netherlands

    Anne de Hond, Artuur M. Leeuwenberg & Karel G. M. Moons

  • Department of Pharmacy, University of California San Francisco, San Francisco, CA, USA

    Liang Zhao

  • Centre of Regulatory Excellence, Duke-NUS Medical School, Singapore, Singapore

    John C. W. Lim & Silke Vogel

  • SingHealth Duke-NUS Global Health Institute, Duke-NUS Medical School, Singapore, Singapore

    John C. W. Lim

  • Department of Medicine, University of California, San Diego, La Jolla, CA, USA

    Christopher A. Longhurst

  • Department of Pediatrics, University of California, San Diego, La Jolla, CA, USA

    Christopher A. Longhurst

  • Tsinghua Medicine, Tsinghua University, Beijing, China

    Yue Qiu & Tien Yin Wong

  • The Lancet Group, London, UK

    Rupa Sarkar

  • Department of Computer Science and Engineering, School of Electronic, Information, and Electrical Engineering, Shanghai Jiao Tong University, Shanghai, China

    Bin Sheng

  • MOE Key Laboratory of AI, School of Electronic, Information, and Electrical Engineering, Shanghai Jiao Tong University, Shanghai, China

    Bin Sheng

  • Artificial Intelligence Office, Singapore Health Services, Singapore, Singapore

    Iris Siu Kwan Tan & Daniel Shu Wei Ting

  • Singapore Eye Research Institute, Singapore National Eye Centre, Singapore, Singapore

    Yih Chung Tham, Daniel Shu Wei Ting & Tien Yin Wong

  • Department of Ophthalmology, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore

    Yih Chung Tham

  • Centre for Innovation and Precision Eye Health, Yong Loo Lin School of Medicine, National University of Singapore and National University Health System, Singapore, Singapore

    Yih Chung Tham

  • Ophthalmology and Visual Science Academic Clinical Program (Eye ACP), Duke-NUS Medical School, Singapore, Singapore

    Yih Chung Tham

  • Nuffield Department of Clinical Neurosciences, Medical Sciences Division, University of Oxford, Oxford, UK

    Arun J. Thirunavukarasu

  • Graduate Studies Department, Office of Education, Duke-NUS medical School, Singapore, Singapore

    Silke Vogel

  • Division of Computational Health Sciences, Department of Surgery, University of Minnesota, Minneapolis, MN, USA

    Rui Zhang

  • Center for Learning Health System Sciences, University of Minnesota, Minneapolis, MN, USA

    Rui Zhang

  • NEJM AI, Boston, MA, USA

    Jianfei Zhao

  • Jiahui Medical Research and Education, Shanghai, China

    Jianfei Zhao

  • Centre for Digital Transformation of Health, University of Melbourne, Melbourne, Victoria, Australia

    Wendy W. Chapman

  • Department of Medicine, Stanford University, Palo Alto, CA, USA

    Nigam H. Shah

  • Clinical Excellence Research Center, Stanford University, Palo Alto, CA, USA

    Nigam H. Shah

  • Beijing Visual Science and Translational Eye Research Institute (BERI), School of Clinical Medicine, Beijing Tsinghua Changgung Hospital, Beijing, China

    Tien Yin Wong

  • Pre-hospital & Emergency Research Centre, Health Services and Systems Research, Duke-NUS Medical School, Singapore, Singapore

    Nan Liu

  • NUS Artificial Intelligence Institute, National University of Singapore, Singapore, Singapore

    Nan Liu

  • Department of Biostatistics and Bioinformatics, Duke University, Durham, NC, USA

    Nan Liu



  • Source link

    Related Topics:BiomedicineCancer ResearchgeneralHealth careInfectious DiseasesMedical researchMetabolic DiseasesMolecular MedicineNeurosciences
    Up Next

    Using AI to identify cybercrime masterminds – Sophos News

    Don't Miss

    How AI Could Help Humans Talk to Animals

    Yilin Ning

    Continue Reading

    You may like

    • Reinventing the eye exam with artificial intelligence

    • Transparency of medical artificial intelligence systems

    • Sampling-enabled scalable manifold learning unveils the discriminative cluster structure of high-dimensional data

    • New AI tool predicts therapies to restore health in diseased cells Harvard Gazette

    • Ravens Grades & Snap Counts vs. Bills

    • Millersville University among PASSHE schools in new Google initiative

    • AI voice agents helped improve accuracy of blood pressure measurements in older adults

    • Artificial intelligence-enabled wearable microgrids for self-sustained energy management

    • Real-world validation of a structure-aware pipeline for molecular design

    • Accelerating protein engineering with fitness landscape modelling and reinforcement learning

    Click to comment

    Leave a Reply

    Cancel reply

    Your email address will not be published. Required fields are marked *

    AI Research

    Study shakes Silicon Valley: Researchers break AI

    Published

    1 hour ago

    on

    September 14, 2025

    By

    The Editors


    Study shakes Silicon Valley: Researchers break AI | The Jerusalem Post

    Jerusalem Post/Consumerism

    Study shows researchers can manipulate chatbots with simple psychology, raising serious concerns about AI’s vulnerability and potential dangers.

    ChatGPT encouraged a teenager toward suicide
    ChatGPT encouraged a teenager toward suicide
    (photo credit: OpenAI)
    ByDR. ITAY GAL
    SEPTEMBER 14, 2025 09:13






    Source link

    Continue Reading

    AI Research

    And Sci Fi Thought AI Was Going To… Take Over? – mindmatters.ai

    Published

    9 hours ago

    on

    September 13, 2025

    By

    News



    And Sci Fi Thought AI Was Going To… Take Over?  mindmatters.ai



    Source link

    Continue Reading

    AI Research

    Measuring Machine Intelligence Using Turing Test 2.0

    Published

    9 hours ago

    on

    September 13, 2025

    By

    News


    In 1950, British mathematician Alan Turing (1912–1954) proposed a simple way to test artificial intelligence. His idea, known as the Turing Test, was to see if a computer could carry on a text-based conversation so well that a human judge could not reliably tell it apart from another human. If the computer could “fool” the judge, Turing argued, it should be considered intelligent.

    For decades, Turing’s test shaped public understanding of AI. Yet as technology has advanced, many researchers have asked whether imitating human conversation really proves intelligence — or whether it only shows that machines can mimic certain human behaviors. Large language models like ChatGPT can already hold convincing conversations. But does that mean they understand what they are saying?

    In a Mind Matters podcast interview, Dr. Georgios Mappouras tells host Robert J. Marks that the answer is no. In a recent paper, The General Intelligence Threshold, Mappouras introduces what he calls Turing Test 2.0. This updated approach sets a higher bar for intelligence than simply chatting like a human. It asks whether machines can go beyond imitation to produce new knowledge.

    From information to knowledge

    At the heart of Mappouras’s proposal is a distinction between two kinds of information, non-functional vs. functional:

    • Non-functional information is raw data or observations that don’t lead to new insights by themselves. One example would be noticing that an apple falls from a tree.
    • Functional information is knowledge that can be applied to achieve something new. When Isaac Newton connected the falling apple to the force of gravity, he transformed ordinary observation into scientific law.

    True intelligence, Mappouras argues, is the ability to transform non-functional information into functional knowledge. This creative leap is what allows humans to build skyscrapers, develop medicine, and travel to the moon. A machine that merely rearranges words or retrieves facts cannot be said to have reached the same level.

    The General Intelligence Threshold

    Mappouras calls this standard the General Intelligence Threshold. His threshold sets a simple challenge: given existing knowledge and raw information, can the system generate new insights that were not directly programmed into it?

    This threshold does not require constant displays of brilliance. Even one undeniable breakthrough — a “flash of genius” — would be enough to demonstrate that a machine possesses general intelligence. Just as a person may excel in math but not physics, a machine would only need to show creativity once to prove its potential.

    Creativity and open problems

    One way to apply the new test is through unsolved problems in mathematics. Throughout history, breakthroughs such as Andrew Wiles’s proof of Fermat’s Last Theorem or Grigori Perelman’s solution to the Poincaré Conjecture marked milestones of human creativity. If AI could solve open problems like the Riemann Hypothesis or the Collatz Conjecture — problems that no one has ever solved before — it would be strong evidence that the system had crossed the threshold into true intelligence.

    Large language models already solve equations and perform advanced calculations, but solving a centuries-old unsolved problem would show something far deeper: the ability to create knowledge that has never existed before.

    Beyond symbol manipulation

    Mappouras also draws on philosopher John Searle’s famous “Chinese Room” thought experiment. In the scenario, a person who does not understand Chinese sits in a room with a rulebook for manipulating Chinese characters. By following instructions, the person produces outputs that convince outsiders he understands the language, even though he does not.

    This scenario, Searle argued, shows that a computer might appear intelligent without real understanding. Mappouras agrees but goes further. For him, real intelligence is proven not just by producing outputs, but by acting on new knowledge. If the instructions in the Chinese Room included a way to escape, the person could only succeed if he truly understood what the words meant. In the same way, AI must demonstrate it can act meaningfully on information, not just shuffle symbols.

    Image Credit: top images – Adobe Stock

    Can AI pass the new test?

    So far, Mappouras does not think modern AI has passed the General Intelligence Threshold. Systems like ChatGPT may look impressive, but their apparent creativity usually comes from patterns in the massive data sets on which they were trained. They have not shown the ability to produce new, independent knowledge disconnected from prior inputs.

    That said, Mappouras emphasizes that success would not require constant novelty. One true act of creativity — an undeniable demonstration of new knowledge — would be enough. Until that happens, he remains cautious about claims that today’s AI is truly intelligent.

    A shift in the debate

    The debate over artificial intelligence is shifting. The original Turing Test asked whether machines could fool us into thinking they were human. Turing Test 2.0 asks a harder question: can they discover something new?

    Mappouras believes this is the real measure of intelligence. Intelligence is not imitation — it is innovation. Whether machines will ever cross that line remains uncertain. But if they do, the world will not just be talking with computers. We will be learning from them.

    Final thoughts: Today’s systems, tomorrow’s threshold

    Models like ChatGPT and Grok are remarkable at conversation, summarization, and problem-solving within known domains, but their strengths still reflect pattern learning from vast training data. By Mappouras’s standard, they will cross the General Intelligence Threshold only when they produce a verifiable breakthrough — an insight not traceable to prior text or human scaffolding, such as an original solution to a major open problem. Until then, they remain powerful imitators and accelerators of human work — impressive, useful, and transformative, but not yet creators of genuinely new knowledge.

    Additional Resources

    Podcast Transcript Download



    Source link

    Continue Reading

    Trending

    • Business2 weeks ago

      The Guardian view on Trump and the Fed: independence is no substitute for accountability | Editorial

    • Tools & Platforms1 month ago

      Building Trust in Military AI Starts with Opening the Black Box – War on the Rocks

    • Ethics & Policy2 months ago

      SDAIA Supports Saudi Arabia’s Leadership in Shaping Global AI Ethics, Policy, and Research – وكالة الأنباء السعودية

    • Events & Conferences4 months ago

      Journey to 1000 models: Scaling Instagram’s recommendation system

    • Jobs & Careers3 months ago

      Mumbai-based Perplexity Alternative Has 60k+ Users Without Funding

    • Podcasts & Talks2 months ago

      Happy 4th of July! 🎆 Made with Veo 3 in Gemini

    • Education2 months ago

      VEX Robotics launches AI-powered classroom robotics system

    • Education2 months ago

      Macron says UK and France have duty to tackle illegal migration ‘with humanity, solidarity and firmness’ – UK politics live | Politics

    • Podcasts & Talks2 months ago

      OpenAI 🤝 @teamganassi

    • Funding & Business3 months ago

      Kayak and Expedia race to build AI travel agents that turn social posts into itineraries

    aistoriz.com
    • Privacy Policy
    • Terms Of Service
    • Contact Us
    • The Travel Revolution of Our Era

    Copyright © 2025 AISTORIZ. For enquiries email at prompt@aistoriz.com