MeditechAI🌐
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MeditechAI🌐
@MeditechAI
Medical Technologies and AI in Healthcare- Stay updated with the 'Best and Latest' 🏥🩺🔬🩻 🤖

Southwest General Health Center is using Oracle Health Clinical AI Agent to help alleviate the burden of clinical documentation across 18 ambulatory specialties. Read how this AI-powered, voice-enabled solution can help doctors spend more time with patients. social.ora.cl/6011B6vbpt

@LinusPeters LEV is near




This week, the "AI replacing doctors" debate is back. The CEO of America's largest public hospital system says he's ready to replace radiologists with AI. The Stanford-Harvard NOHARM study shows top models outperforming generalists. The discourse is moving fast. I run AI at @UHN, the largest hospital in Canada. Here's what I actually see. We've developed AI models across imaging, pathology, and clinical decision support. In controlled conditions, the accuracy numbers are real. In some narrow tasks, models genuinely outperform. That's not hype. But the operational reality of running these systems inside a large hospital teaches you things benchmarks never will. The errors that hurt patients aren't the confident wrong answers. They're the quiet omissions, i.e., the thing the model didn't flag because it wasn't in the training distribution. NOHARM found 76.6% of AI errors were omissions. We see this too. And in a hospital, a missed finding doesn't just affect one case. It propagates: the downstream physician trusts the AI read, the patient waits, the window closes. The accountability structure also doesn't exist yet. When an AI-assisted diagnosis leads to harm, who is responsible: the physician, the hospital, the vendor? In Canada, we don't have a clear answer. No hospital system deploying AI at scale does. That's not a regulatory delay. That's a fundamental gap in the infrastructure for AI-in-medicine. What I'm genuinely optimistic about: AI is already changing how our radiologists work. Not replacing them, but changing the shape of the job. Routine reads get faster. Their time shifts toward complex cases, clinical correlation, cases where the AI flags uncertainty. That's the right direction. But "ready to replace radiologists" skips 10 hard years of work on deployment infrastructure, liability frameworks, clinician training, and failure mode monitoring that nobody wants to talk about because it's less exciting than accuracy benchmarks. The capability question is nearly answered. The deployment question has barely been asked. CEO story: beckershospitalreview.com/radiology/nyc-… NOHARM paper: arxiv.org/abs/2512.01241


Wow. This is huge Quantum computing has just been used to create a new molecule with a half-Möbius topology. Scientists designed and analyzed a completely new molecule called C13Cl2, which has this unique structure. What makes it even more interesting is that the molecule can be switched between different topological states, opening the door to advanced materials and new technologies. The team used IBM’s Heron processor along with the SqDRIFT algorithm to simulate its behavior. This shows how quantum computing is starting to push the boundaries of chemistry and material science in ways that weren’t possible before 👀 Acceleration is everywhere..












