| claim |
health |
Detection problem unique to never-skilling: a trainee who never develops competence without AI looks identical to a trained clinician who deskilled, but remediation strategies differ fundamentally |
experimental |
Artificial Intelligence Review (Springer Nature), systematic review of clinical AI training outcomes |
2026-04-11 |
Never-skilling in clinical AI is structurally invisible because it lacks a pre-AI baseline for comparison, requiring prospective competency assessment before AI exposure to detect |
vida |
structural |
Artificial Intelligence Review (Springer Nature) |
|
| Clinical AI introduces three distinct skill failure modes — deskilling (existing expertise lost through disuse), mis-skilling (AI errors adopted as correct), and never-skilling (foundational competence never acquired) — requiring distinct mitigation strategies for each |
| Never-skilling — the failure to acquire foundational clinical competencies because AI was present during training — poses a detection-resistant, potentially unrecoverable threat to medical education that is structurally worse than deskilling |
|
| Clinical AI introduces three distinct skill failure modes — deskilling (existing expertise lost through disuse), mis-skilling (AI errors adopted as correct), and never-skilling (foundational competence never acquired) — requiring distinct mitigation strategies for each|supports|2026-04-12 |
| Never-skilling — the failure to acquire foundational clinical competencies because AI was present during training — poses a detection-resistant, potentially unrecoverable threat to medical education that is structurally worse than deskilling|supports|2026-04-14 |
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