How to Get Past the Stalemate Between AI and the Medical Industry – Machine Design

Posted: June 11, 2021 at 11:53 am

If there are ways AI can expedite diagnoses while protecting sensitive data, would medical networks use it? The short answer is yes, but there are still challenges facing the healthcare industry when it comes to encrypting data and sharing it. While the benefits are apparent, medical networks cant shake the burden of protecting their patientsnor do they want to.

There are various use cases in which implementing AI in medical imaging would benefit patient care and assist clinicians in diagnosing:

AI-assisted imaging can decrease time to diagnose patients with chronic diseases by flagging areas of concern and even clarifying images, making it a little easier for clinicians to examine.

During A3s Vision Week, Stacey Shulman, VP of the Internet of Things group and general manager of Health, Life Sciences and Emerging Technologies at Intel, discussed the potential of AI-powered medical imaging, as well as the challenges the industry faces.

We, as consumers, have digital access to nearly every part of our life, she began. I can get my DNA information digitally, but I still cant get a copy of my X-rays.

With the exception of entities like the Mayo Clinic and the VA Health Care System, who are already using some pretty advanced technologies, many healthcare systems are behind the transformation curve.

Shulman explained results from an Intel and Concentrix survey on how the medical industry is viewing AI. Before the pandemic (in 2018), 54% of respondents expected widespread AI adoption. During the pandemic (2020), that percentage jumped to 84%.

This means the medical community is starting to have the digital transformation conversation. Thats not the medical industrys fault, though. Its limited by the data it can share and the needs of the developer community. To train AI models, data is a requirement.

Shulman pointed out that an obvious solution would be to decrease data protections, but also noted that likelihood was not high.

Data isolation would be another solution. Keeping data secure and close to the point of origination would enable organizations to leverage its insights. Another issue is the size of the data. The amount of data generated is enormous and transmission issues would occur.

This is where federated learning can lend a hand. The idea is to train models on distributed and private datasets without moving them and then create a network of models based on region.

The concept of dont move the data, move the algorithm to the data, Shulman explained. That area of disaggregation is something were seeing quite a bit.

Most hospital networks dont have in-house AI capabilities, so getting the developer community involved is another issue at hand. Developers need data to train models, which hospitals cant give up easily.

The way I like to look at artificial intelligence in the medical industry is it really needs to become the new operating system, she said. We need to take artificial intelligence and move it into the device itselfand then we need to take that patient information and that connected information, build robust models so that we understand regional healthso we can detect faster.

She explained that the robust regional models should be combined in national and even global models so we can understand disease spread and trends.

I feel pretty hopeful about where the industry is going, Shulman said. For the healthcare industry, we have to start making baby steps in the industry to get artificial intelligence providing real results.

Excerpt from:

How to Get Past the Stalemate Between AI and the Medical Industry - Machine Design

Related Posts