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      "text": "LLMs, powered by gen AI, are at the forefront of these changes. These technologies automate language-based tasks that currently consume 10% to 30% of clinical workforce time, according to our Accenture analysis. Primary care teams, for example, can use AI-powered, voice-enabled solutions to automatically document clinician-patient conversations for at least 60% of patient visits. These tools go beyond simple transcription, converting doctor-patient encounters into structured notes, codes and bills — tasks that typically require significant manual effort. This can enable doctors to see up to nine additional patients per month.",
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