PwC Report: AI Making Medical Bills Higher
Summary
A PwC report reveals that AI note-taking tools in healthcare are being used to document more detailed billing codes, leading to higher medical costs rather than the anticipated cost reductions.
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Cached at: 06/13/26, 08:30 PM
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