| claim |
health |
ARISE 2026 identifies upskilling potential from administrative burden reduction but emphasizes it requires structural training paradigm shifts to realize |
experimental |
ARISE Network (Stanford-Harvard), State of Clinical AI Report 2026 |
2026-04-25 |
Clinical AI upskilling requires deliberate educational mechanisms and workflow design rather than occurring automatically from AI exposure |
vida |
health/2026-04-25-arise-state-of-clinical-ai-2026-report.md |
structural |
ARISE Network (Stanford-Harvard) |
| ai-micro-learning-loop-creates-durable-upskilling-through-review-confirm-override-cycle |
|
| human-in-the-loop clinical AI degrades to worse-than-AI-alone because physicians both de-skill from reliance and introduce errors when overriding correct outputs |
| ai-micro-learning-loop-creates-durable-upskilling-through-review-confirm-override-cycle |
| optional-use-ai-deployment-preserves-independent-clinical-judgment-preventing-automation-bias-pathway |
|
| Clinical AI human-first reasoning prevents never-skilling through pedagogical sequencing where trainees generate differential diagnoses before AI consultation |
|
| Clinical AI human-first reasoning prevents never-skilling through pedagogical sequencing where trainees generate differential diagnoses before AI consultation|supports|2026-04-27 |
|