Question 3
What killer apps will compel further adoption of AI?
"I'll take a controversial stance. One of the most compelling things you could build is a tool that would to some degree cut the radiologist out of the picture: such as a very high sensitivity algorithm for detecting abnormality. If the algorithm didn’t see anything, the exam would be essentially negative and the radiologist wouldn’t need to look at the images. Without a tangible benefit that obvious, the adoption of AI may continue to be incremental as in previous years," said Peter Chang. "Yeah, one of the most important lessons for residents, fellows and physicians in general, is Know what you don't know. So your killer app would be able to identify a subset and then essentially do those autonomously. How would you know when it's really ready to do that?" asked Eliot L. Siegel. "For this application to be successful, it would have to be orders of magnitude better than a human. If you look at the types of instinctive emotional reactions we get when machines make mistakes, an algorithm that performs only as good as a human will face tremendous resistance," said Peter Chang. "I would like to see a killer app that predicts the chances of developing a disease at a really early stage, before it can be seen. And by the way, I have to respectfully disagree that imaging will increase. I think it will decrease when AI provides more definitive diagnoses," added Cindy Siegel. "So for you the killer app is really population health, where we can screen a subset of patients, identify them and have a real impact on mortality and morbidity associated with that interest," commented Eliot L, Siegel. "Exactly, because that's something chronic and you may not mention that or identify it from a chest X-ray when looking at the vertebral bodies because you're focused on the lungs or ribs," added Cindy Siegel. "I couldn't agree more with Peter on what type of app will succeed best in AI. Sorting out the disease from no disease is indisputably the best application we could ever get. As much as I love X-rays, maybe it's time to get rid of abdominal X-rays and chest X-rays. If an AI application could rid our institution of the burden of 300 X-rays per day, radiologists could concentrate on tasks they actually want to do, such as MRI, CT, cross-sectional imaging and radiomics," added Patrik Rogalla. "So you want your killer app to kill X-rays, conventional radiographs. I like that. There's an irony there also," commented Eliot L, Siegel. "I think that if you really want to serve the radiologist community with a killer app, then create a killer app that curates all the quality reporting metrics that Medicare requires. It takes a lot of person-hours to do and if you can develop an app that eliminates the human interaction of curating that data and uploads and sends it digitally to CMS in the Quality Payment Program, I think that would curry a lot of favor from administrators and radiologists," added Tom Szostak. "I've got to step out of my moderator role for just a moment and give you my opinion of killer apps. I think what exists today with regard to incorporation of Deep Learning into reconstruction algorithms to reduce noise and improve image quality in CT – even for conventional radiographs, MR and PET scanning – is really incredibly exciting. And I think there will be many related killer apps in the future. We're already seeing an incredible amount of incorporation of those technologies that will completely change the way we end up forming images moving on in the future. So for me I think that's another one to consider," concluded Eliot L, Siegel.