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Scan You Believe It? Why RadAgent Makes Medical AI Show Its Work

Scan You Believe It? Why RadAgent Makes Medical AI Show Its Work Hospitals do not merely need an AI that can write a radiology report. They need an AI whose work can be checked before the report becomes somebody else’s problem. That sounds obvious, which is exactly why it is often ignored. A chest CT is a dense three-dimensional diagnostic object. A radiologist does not just glance at it, produce prose, and walk away. They inspect anatomy, compare regions, test impressions, look for omissions, and decide whether a finding is actually supported by the scan. Many vision-language models, by contrast, still behave like a polished black box: scan in, report out, confidence implied by typography. ...

April 20, 2026 · 13 min · Zelina
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The Cardiologist’s Copilot: Why Agentic AI Finally Understands the Human Body

Hospital data does not politely arrive as a paragraph. It arrives as an ECG trace, an ultrasound video, a CMR sequence, a physician report, a half-remembered prior diagnosis, and a clinician trying to decide what matters before the next patient enters the room. The popular fantasy of medical AI is that a general model will simply “look at everything” and reason like a specialist. Nice fantasy. Very convenient for demo videos. Less convenient for actual cardiology. ...

March 24, 2026 · 17 min · Zelina
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When X-Rays Talk Back: Grounding AI Diagnosis in Evidence, Not Eloquence

Chest X-rays are not mysterious objects. They are images that radiologists interrogate through a disciplined sequence: find the anatomy, measure what matters, compare against criteria, and then make a diagnostic judgment. The modern vision-language model often skips the middle of that sequence. It looks at the image, produces a polished explanation, and hopes the reader will not ask too aggressively where the evidence came from. This is how medical AI becomes impressive in a demo and uncomfortable in a clinic. Fluency is cheap. Verifiability is expensive. ...

February 27, 2026 · 14 min · Zelina
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Scalpels, Agents, and Orchestrators: When Surgery Meets Autonomous Workflows

The surgeon does not need another chatbot Operating rooms already have enough things demanding attention. Monitors, tools, imaging, staff coordination, alarms, procedural checklists, and the small matter of the patient. In robotic surgery, the problem becomes sharper: the surgeon’s hands are occupied and their visual attention is locked into the console. The data may be nearby, but nearby is not the same as usable. ...

November 16, 2025 · 14 min · Zelina
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Therapy, Explained: How Multi‑Agent LLMs Turn DSM‑5 Screens into Auditable Logic

TL;DR for operators DSM5AgentFlow is not a paper about an AI therapist replacing a clinician. That would be the loud interpretation, and therefore the least useful one. The paper introduces a three-agent workflow that turns DSM-5 Level-1 screening into a structured conversation, then converts the transcript into a provisional diagnosis with evidence-linked reasoning.1 ...

August 18, 2025 · 17 min · Zelina