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Accuracy and Reliability of Chatbot Responses to Physician Questions
420
Zitationen
35
Autoren
2023
Jahr
Abstract
In this cross-sectional study, chatbot generated largely accurate information to diverse medical queries as judged by academic physician specialists with improvement over time, although it had important limitations. Further research and model development are needed to correct inaccuracies and for validation.
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Autoren
- Rachel Goodman
- James R. Patrinely
- Cosby A. Stone
- Eli E. Zimmerman
- Rebecca R. Donald
- Sam S. Chang
- Sean T. Berkowitz
- Avni P. Finn
- Eiman Jahangir
- Elizabeth Scoville
- Tyler Reese
- Debra L. Friedman
- Julie A. Bastarache
- Yuri F. van der Heijden
- J. J. Wright
- Feifei Ye
- Nick Carter
- Matthew R. Alexander
- Jennifer H. Choe
- Cody A. Chastain
- John A. Zic
- Sara Horst
- Isik Turker
- Rajiv Agarwal
- Evan C. Osmundson
- Kamran Idrees
- Colleen M. Kiernan
- Chandrasekhar Padmanabhan
- Christina E. Bailey
- Cameron Schlegel
- Lola B. Chambless
- Michael K. Gibson
- Travis Osterman
- Lee Wheless
- Douglas B. Johnson