
Doctors’ soaring use of AI scribes prompts Australian government warning over privacy
THE SO WHAT
Clinical AI scribes are moving faster than policy—once GP surgeries normalize piping raw consults into third-party models, unwinding that data exposure is almost impossible. If you touch health data, assume regulators will tighten consent, residency, and vendor controls over the next 6–18 months and get ahead by mapping exactly where patient audio/text flows today.
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