GPT-4 performed close to the level of expert doctors in eye assessments

Joystiq

Joystiq News
As learning language models (LLMs) continue to advance, so do questions about how they can benefit society in areas such as the medical field. A
Please, Log in or Register to view URLs content!
from the University of Cambridge's School of Clinical Medicine found that OpenAI's GPT-4 performed nearly as well in an ophthalmology assessment as experts in the field,
Please, Log in or Register to view URLs content!


In the study, published in PLOS Digital Health, researchers tested the LLM, its predecessor
Please, Log in or Register to view URLs content!
, Google's PaLM 2 and
Please, Log in or Register to view URLs content!
with 87 multiple choice questions. Five expert ophthalmologists, three trainee ophthalmologists and two unspecialized junior doctors received the same mock exam. The questions came from a textbook for trialing trainees on everything from light sensitivity to lesions. The contents aren't publicly available, so the researchers believe LLMs couldn't have been trained on them previously. ChatGPT, equipped with GPT-4 or GPT-3.5, was given three chances to answer definitively or its response was marked as null.


Please, Log in or Register to view URLs content!
scored higher than the trainees and junior doctors, getting 60 of the 87 questions right. While this was significantly higher than the junior doctors' average of 37 correct answers, it just beat out the three trainees' average of 59.7. While one expert ophthalmologist only answered 56 questions accurately, the five had an average score of 66.4 right answers, beating the machine.
Please, Log in or Register to view URLs content!
scored a 49, and GPT-3.5 scored a 42. LLaMa scored the lowest at 28, falling below the junior doctors. Notably, these trials occurred in mid-2023.

While these results have potential benefits, there are also quite a few risks and concerns. Researchers noted that the study offered a limited number of questions, especially in certain categories, meaning the actual results might be varied. LLMs also have a tendency to "
Please, Log in or Register to view URLs content!
" or make things up. That's one thing if its an irrelevant fact but claiming there's a cataract or cancer is another story. As is the case in many instances of LLM use, the systems also lack nuance, creating further opportunities for inaccuracy.

This article originally appeared on Engadget at
Please, Log in or Register to view URLs content!


Please, Log in or Register to view URLs content!


Console Bang News!
 

Users who are viewing this thread

Top