Insights About Generative AI In Healthcare From 400 Healthcare Leaders
Bertalan Meskó, MD, PhD
Director of The Medical Futurist Institute (Keynote Speaker, Researcher, Author & Futurist)
Recently, we were struck with an idea: Why not gauge our followers' perceptions regarding generative AI, Large Language Models, and their imminent role in healthcare? Based on how active and responsive The Medical Futurist audience is on our weekly LinkedIn polls, we were optimistic to see tangible results. If successful, our intention was to compile and present these findings in a comprehensive, free report.?
And here we are, today we are honored to share the results, informed by almost 400 profound responses from our fantastic community.
Understanding the Landscape
Our primary objective was clear: decipher how medical professionals and affiliated individuals perceive the impending AI and LLM revolution. With these innovations steadily altering the healthcare paradigm, understanding shared anticipations is crucial.
The diversity of our respondents enriches the data:
In terms of experience, most of our participants are seasoned professionals:
Three surprising findings from the survey
You have full access to the survey report with all the questions, so here we only want to highlight a few intriguing findings that emerged from the data.?
1. Diverse use cases
Analysing the data we found that a significant majority (over two-thirds) of our followers have already used ChatGPT or some other Large Language Model, occasional users being in slightly higher numbers than black-belted regulars. When browsing the answers we received to the question asking about typical use cases, we found a very diverse range of applications. Here are several interesting examples from our audience:?
2. Looking at prompt engineering from quite some distance
A salient point emerged around prompt engineering. A majority (57%) are acquainted with its concept. However, a closer look reveals only 45% have actively sought to refine these skills. Given the importance of prompt engineering in harnessing AI's full potential – an aspect we've discussed in great detail in this article – this skill gap warrants attention and educational interventions.
3. The future vision of LLMs in healthcare:?
The prevailing sentiment leans toward optimism about LLMs' contribution to healthcare. This underscores that our respondents possess a more informed understanding of the domain. Thus, even in the face of dire predictions by the mainstream media and current model limitations (e.g., occasional "hallucinations"), the majority remain upbeat, recognizing the transformative potential of this technology.
If you're as excited as we are about these findings, grab your copy of the full report now! As always, we value your feedback and encourage an active exchange of ideas. Your perspective enriches this ongoing dialogue.
Technical Product & Projects Director (B.Sc. MBA, PMP, C3PO) | AI/ML, Healthcare, Fintech, Insurtech,
1 年There is a way to do prompt optimization by LLM itself. https://arxiv.org/abs/2309.03409
AI Marketing Funnels & AI Systems Consultant For Startups, Small Biz & Agencies
1 年Interesting about the skill gap for prompting and about the lack of citations. Going to need leaders like you to help bridge the void.
AI Marketing Funnels & AI Systems Consultant For Startups, Small Biz & Agencies
1 年SAVING this for sure. Thanks for sharing man.