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A new AI tool could dramatically speed up the discovery of life-saving medicines

Researchers in China have unveiled a new AI framework that could accelerate the discovery of new medicines. DrugCLIP can scan millions of potential drug compounds against thousands of protein targets in just a few hours—ten million times faster than current virtual screening methods.

Typically, when scientists develop new medicines, they use complex computer simulations to fit a 3D drug molecule into a protein pocket. This indicates that it is likely to interact with the protein’s binding site and function. However, the process is incredibly time-consuming and expensive.

Applying Clinical Licensure Principles to Artificial Intelligence

Editorial: Proposals to apply clinician-style licensure to AI tools may allow adaptive oversight as AI models grow more complex. Implementation challenges include defining responsible parties and ensuring adequate regulatory expertise.


In this issue of JAMA Internal Medicine, Bressman et al1 propose a clever thought experiment: what if medical tools incorporating artificial intelligence (AI) were licensed as advanced practitioners, rather than solely regulated by the US Food and Drug Administration (FDA)? This strategy seeks to provide an alternative or complement to FDA clearance in regulation of medical software incorporating AI. The authors suggest this may allow the necessary flexibility to keep up with the pace of change in AI, the breadth of applications for a given model, and the need to ensure that such tools demonstrate clinical utility.2

Many instances of more specific, single-purpose AI applications can be adequately regulated within existing frameworks. However, generative AI may be deployed in a wide range of contexts, and models may continue to develop over time. Because these models are probabilistic rather than deterministic, they may make errors that are analogous to human errors, for example, mistakes due to inadequate knowledge or lapses in judgment. Bressman et al1 argue that an appropriately flexible framework for certification already exists in the form of licensing oversight of advanced practitioners. With this approach, the extent of supervision depends on the particular activity, with some tasks requiring more oversight than others.

The proposal leaves a number of critical details to be resolved. Any AI licensing system will need to be able to evaluate and address a model’s specific potentials for harm before deployment; thus, some central regulation likely will continue to be required. In addition, determining who will take on the responsibility and oversight for decisions and treatment pathways generated by AI, as well as assume the liability for errors or adverse events, remains a thorny question. These considerations are again analogous to those of clinician licensing, but although medical boards are well positioned for licensing, the extent to which a similar approach could be developed with the necessary expertise for AI in medicine remains to be seen.

Multiple Sclerosis May Have Two Distinct Subtypes, Scientists Discover

This will help clinicians understand where a person sits on the disease pathway and who may need closer monitoring or earlier, targeted treatment.


There may be two distinct subtypes of multiple sclerosis, according to a new study led by scientists at University College London (UCL). The finding, if validated, could help doctors provide more specialized care for patients.

The study used machine learning to analyze data drawn from blood tests and brain scans of 634 patients participating in two different clinical trials. Machine learning models are trained to pick up subtle patterns that humans might miss.

The blood tests were for detecting a protein called serum neurofilament light chain (sNfL), a known biomarker of diseases of the nervous system, including multiple sclerosis (MS).

After Mars promise, Elon Musk says: Death is a ‘solvable problem’; you can …

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Why Aliens Will Probably Be AI Robots

#aliens #uap #ufos.

Is there other life out there in the universe? Do aliens really exist? If so, then where are they all?! In this most epic of episodes, Dom has his favourite film (Aliens) interrupted by an extraterrestrial visitor — how very inconsiderate! As he prepares his arsenal to avoid alien abduction, he investigates the odds of life being out there in the galaxy, why we haven’t found it yet and what it might look like if we ever do.

A huge thanks to Vlogbrothers for their sponsorship of this video.

Credits
DOP/Cam Op — Phil Beastall.
Assistant Camera/ Focus Puller — Richard Bertenshaw.
Script Minder — Nicki Burgess.
Boom Mic/ Runner — Joe Simkins.
Runner — Carrick Stimson-Machers.
Everything else — Dom Burgess.

*Thank you to my Patrons!*
Alfie Renn.
Andrew Rice.
Chad Trotter.
Chris Harrison.
Curiository.
Dominique Toepfer.
Kevin O’Connor.
Luke Roulstone.
Neuro Transmissions.
Richard Peter Hunter.
Shaun Steenkamp.
Steven Clarke.
Louis Klein.
Nefreyu.

*What is Every Think?*

Global AI Adoption in 2025 — AI Economy Institute

Global adoption of artificial intelligence continued to rise in the second half of 2025, increasing by 1.2 percentage points compared to the first half of the year, with roughly one in six people worldwide now using generative AI tools, remarkable progress for a technology that only recently entered mainstream use.

To track this trend, we measure AI diffusion as the share of people worldwide who have used a generative AI product during the reported period. This measure is derived from aggregated and anonymized Microsoft telemetry and then adjusted to reflect differences in OS and device-market share, internet penetration, and country population. Additional details on the methodology are available in our AI Diffusion technical paper. 1

No single metric is perfect, and this one is no exception. Through the Microsoft AI Economy Institute, we continue to refine how we measure AI diffusion globally, including how adoption varies across countries in ways that best advance priorities such as scientific discovery and productivity gains. For this report, we rely on the strongest cross-country measure available today, and we expect to complement it over time with additional indicators as they emerge and mature.

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