-2 C
March 2, 2024
Science and Medical

AI-Human “Hive Mind” Diagnoses Pneumonia

“It went really well,” says Matthew Lungren, a pediatric radiologist at Stanford University Medical School, co-author on the paper and one of the eight participants. “Before, we had to show [an X-ray] to multiple people separately and then figure out statistical ways to bring their answers to one consensus. This is a much more efficient and, frankly, more evidence-based way to do that.”

It was a small study, but the findings suggest that instead of replacing doctors, AI algorithms might work best alongside them in healthcare.

“We shouldn’t throw away human knowledge, wisdom, and experience,” says Louis Rosenberg, CEO and founder of Unanimous AI. “Instead, let’s look at how we can use AI to leverage those things.”

The company’s technology—a combination of AI algorithms and real-time human input—has also made headlines by correctly predicting Trump’s approval ratings, TIME’s Person of the Year, and the exact final score of Super Bowl 51, among others.

The current study is the company’s first foray into medicine.

Pneumonia is a particularly tricky disease to diagnose on X-rays alone because it looks like a lot of other illnesses. In the current study, eight radiologists in different locations sat in front of their computers and analyzed 50 chest X-rays from an open source data set. Each doctor was asked to predict how likely it was that the patient had pneumonia based on the X-ray.

But this was not crowdsourcing—each doctor did not simply respond with a “yes” or a “no.” Instead, using the Swarm AI system—modeled on the collective decision-making process of honeybee swarms—each doctor controlled a small magnet icon that enabled them to push the group consensus toward their opinion. Every X-ray was examined in real-time with the other doctors simultaneously contributing opinions.

As the doctors weighed in, AI algorithms monitored the behavior of each participant, inferring how strongly each felt about their choice based on the relative motions of their icon over time. Someone who holds out longer on one choice, for example, may be expressing a stronger sentiment than someone who switches opinion quickly or several times.

“To really find the optimal solution, it’s not enough to just know what their opinions are, one really needs to know their varying levels of confidence,” says Rosenberg.

The algorithms then combined those preferences into a specific choice. Each deliberation took between 15 to 60 seconds, and the doctors diagnosed all 50 X-rays in about 90 minutes, says Rosenberg.

In the end, the Swarm AI system was 33 percent more accurate at correctly classifying patients than individual practitioners, and 22 percent more accurate than a Stanford machine-learning program called CheXNet. Last year, CheXNet beat radiologists at diagnosing pneumonia from X-rays.

The Swarm AI technology is unlikely to be used by radiologists for the hundreds of chest X-rays that cross their desks daily, says Lungren, but it could be especially useful in two key situations. First, it would be “insanely invaluable” in situations where international experts are asked to weigh in on difficult cases, he says.

Second, the technology enables doctors to each have an equal chance to influence a diagnosis. When a group of doctors meets to discuss a difficult case, which is common in large hospitals, some of the smartest people in the room may be introverts and their voices might not be heard, says Lungren. Swarm AI takes politics and personalities out of the process.

“The best way to get multiple humans to agree on something, so far, for us, has been the swarm,” says Lungren.

The team now plans to conduct a larger study using actual patient cases at the Stanford University Medical Center.

AI-Human “Hive Mind” Diagnoses Pneumonia
AI-Human “Hive Mind” Diagnoses Pneumonia
Science & Medical

Related posts

Experimental Ebola treatments show promise in lab study – CNN


1st death in Maricopa County linked to statewide hepatitis A outbreak – FOX 10 News Phoenix


Both the “top” and “bottom” blood pressure numbers can increase your risk of heart attack and stroke, study says – CNN


Leave a Comment

* By using this form you agree with the storage and handling of your data by this website.

This website uses cookies to improve your experience. We'll assume you're ok with this, but you can opt-out if you wish. Accept Privacy & Policy