We have models that are specifically made to be good at these kinds of tasks. Why would you choose the ones that aren't and then make generalizing claims about how AI sucks in this domain?
Yeah this is probably just straight up misinformation. By no means is a diagnosis going to be made by a generalist multimodal LLM. Diagnosis is a literally a binary classification (although that is an oversimplification) and on medical CV you are optimizing on that directly.
In a recent experiment, they set out to determine how reliable LMMs are in medical diagnosis — asking both general and more specific diagnostic questions — as well as whether models were even being evaluated correctly for medical purposes.
Curating a new dataset and asking state-of-the-art models questions about X-rays, MRIs and CT scans of human abdomens, brain, spine and chests, they discovered “alarming” drops in performance.
Not defending this article, but companies & big tech are generalizing the crap out of AI right now, and forcing it into everything.
They could have (and definitely should've) promoted the strengths and weaknesses of their models, specifically regarding what it can and can't do. But they don't. They get more money when their shareholders & customers think it's the next best thing for everything.
As others have said, you don't need (and shouldn't use) a LLM for a classification task like this. There are machine learning models that can handle this and identify underlying patterns that humans can not easily detect. And yes, they can get accuracy and precision scores much higher than 50%
This is pretty dumb, machine learning algorithms (fuck off with calling it AI) are especially good at seeing signs of disease in data such as xrays, CT and MRI scans. It's the one place they really help save time and prevent mistakes. And even if it's just to flag shit for a second opinion by a doctor and not to replace the doctor, that's still super useful. Pattern recognition is hard and these kinds of algorithms are very good at them if provided the right source data to work off.
If only the media and big corps would stop claiming LLMs are general AI, then maybe people would stop using them for stuff it's clearly not good at and not meant for.
This isn't dumb. This is a very good study as it is helping to remind people that these fancy new tools aren't good at everything. The media reporting on this is doing a service.
By casting doubt on a related but fundamentally different bit of medical tech? Yeah that's what we need: more folks questioning medicine based on pop science understandings of the technology.
Can't stop people calling it AI. People have called video game bots AI since the 90s, even in industry. Any algorithm is a form of artificial intelligence, really. LLMs and machine vision are multipurpose, though I agree that general-purpose is still a stretch.
Why wouldn't agents in video games be AI, though? Things like are pathfinding, search, and behaviour trees are commonly used for agents in games, and in computer science these are widely considered to be artificial intelligence techniques. It's unlikely that you would find a CS textbook calling the Fast Fourier Transform AI though, or things like Bresenham's Line Drawing algorithm.
Seriously, the field of artificial intelligence has been around since the beginning of computer science, since Alan Turing founded it after coming up with the modern computer. Frankly, if you ask me, anyone complaining about LLMs being referred to as AI has been watching too many movies. AI != Human-but-metal and it never has. Going by the Wikipedia article, to be considered AI, a machine just has to perceive it's environment and learn - degree notwithstanding.
Of course this definition is pretty vague, so in practice AI tends to refer to the cutting edge of flexible computer algorithms. Many now-mundane algorithms much simpler than today's LLMs (like A* and genetic algorithms) were once considered AI for their flexible logic. At some point the Internet decided that it doesn't count unless it's literally Jarvis, but that's a very stingy definition of a very broad field.