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AAHS 2015: CTS patient satisfaction with doctor-patient visit vs. internet information

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Ace Report Cover
February 2015

AAHS 2015: CTS patient satisfaction with doctor-patient visit vs. internet information

Vol: 4| Issue: 2| Number:43| ISSN#: 2564-2537
Study Type:Randomized Trial
OE Level Evidence:N/A
Journal Level of Evidence:N/A

Doctor-patient visit versus internet directive for carpal tunnel syndrome patients

Contributing Authors:
K Aung WK Wu A Tokumi P Kuo C Day

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CONFERENCE ACE REPORTS

This ACE Report is a summary of a conference presentation or abstract. The information provided has limited the ability to provide an accurate assessment of the risk of bias or the overall quality. Please interpret the results with caution as trials may be in progress and select results may have been presented.

Synopsis

60 patients diagnosed with carpal tunnel syndrome were randomized to either receive health information only from their doctor, or receive health information as well as an internet information source from their doctor. This was done to determine whether providing additional resources would improve patient knowledge on carpal tunnel syndrome, as well as patient satisfaction. Outcomes were assessed u...

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