AI Model Makes Hospital Notes Patient-Friendly
The research focuses on discharge notes written by doctors to capture patient's health status in the medical record as they are discharged from the hospital. Effective summaries are essential for patient safety during these transitions in care, but most are filled with technical language and abbreviations that are hard to understand and increase patient anxiety, say the study authors.
To address the problem, NYU Langone Health has been testing the capabilities of a form of artificial intelligence (AI) called generative AI, which develops likely options for the next word in any sentence based on how billions of people use words in context on the internet. A result of this next-word prediction is that the such generative AI "chatbots" have become good at replying to questions in realistic, simple language, and at producing clear summaries of complex texts. However, AI programs, which work based on probabilities instead of "thinking," may produce inaccurate summaries and so are meant to assist, not replace, human providers.
To explore generative AI, NYU Langone Health in
One of the first studies by researchers using GPT4, publishing online
The team also ranked the AI discharge report translations using the Patient Education Materials Assessment Tool (PEMAT), which generates a percentage score based on 19 factors on the ability of patients to understand any piece of reading material. GPT-4 translation raised PEMAT understandability scores to 81 percent, up from 13 percent seen with the original doctor-written discharge reports from the medical record.
The research team designed the study to look at AI performance by itself as a scientific question: How far could it go independently when translating discharge reports?
"GPT-4 worked well alone with some gaps in accuracy and completeness, but did more than well enough to be highly effective when combined with physician oversight, the way it would be used in the real world," says senior study author
To measure the accuracy of the AI tool translations, the authors also asked two physicians to review the AI discharge summary for accuracy based on a 6-point scale. The reviewing physicians awarded just 54% of the AI-generated discharge notes the best possible accuracy rating. They also found that just 56% of notes created by AI were entirely complete. These results, however, must be considered in context, say the authors. For instance, they say, the results signify that, even at the current performance level, providers would not have to make a single change in more than half of the AI summaries reviewed.
Feldman notes that generative AI tools are sensitive, and asking a question of the tool in two subtly different ways may yield divergent answers. The skill required to frame the questions asked of chatbots in a way that elicits the desired response, called prompt engineering, combines intuition and experimentation. Physicians and nurses, with their deep understanding of individual cases and nuanced medical contexts, are best positioned to engineer prompts, say the authors, and without learning to write computer code.
Within weeks, the research team will be launching a program interviewing patients waiting to be discharged whether AI-generated reports are clear and helpful after physician review. By the summer, the team expects to launch a pilot program to integrate GPT4-generated, physician-reviewed lay language discharge summaries to patients on a larger scale.
"Having more than half of the AI reports generated being accurate and complete is an amazing start," says first study author
Along with Feldman and Zaretsky, NYU Langone study authors were
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SOURCE NYU Langone Health System
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