Using Artificial Intelligence to Catch Irregular Heartbeats: American journal of Cardiology and Cardiovascular diseases (AJCCVD), ISSN 2641-2438
ONOMY Science
American journal of Cardiology and Cardiovascular diseases (AJCCVD), Open
Access ISSN 2641-2438
Using Artificial Intelligence to
Catch Irregular Heartbeats
Thanks to advances in wearable health technologies,
it’s now possible for people to monitor their heart rhythms at home for days,
weeks, or even months via wireless electrocardiogram (EKG) patches. In
fact, my Apple Watch makes it possible to record a real-time EKG whenever I
want. (I’m glad to say I am in normal sinus rhythm.)
For true
medical benefit, however, the challenge lies in analyzing the vast amounts of
data—often hundreds of hours worth per person—to distinguish reliably between
harmless rhythm irregularities and potentially life-threatening problems. Now,
NIH-funded researchers have found that artificial intelligence (AI) can help.
A powerful
computer “studied” more than 90,000 EKG recordings, from which it “learned” to
recognize patterns, form rules, and apply them accurately to future EKG
readings. The computer became so “smart” that it could classify 10 different
types of irregular heart rhythms, including atrial fibrillation (AFib). In
fact, after just seven months of training, the computer-devised algorithm was
as good—and in some cases even better than—cardiology experts at making the
correct diagnostic call.
EKG tests
measure electrical impulses in the heart, which signal the heart muscle to
contract and pump blood to the rest of the body. The precise, wave-like
features of the electrical impulses allow doctors to determine whether A person’s heart is beating normally.
For example,
in people with AFib, the heart’s upper chambers (the atria) contract rapidly
and unpredictably, causing the ventricles (the main heart muscle) to contract
irregularly rather than in a steady rhythm. This is an important arrhythmia to
detect, even if it may only be present occasionally over many days of
monitoring. That’s not always easy to do with current methods.
Here’s where
the team, led by computer scientists Awni Hannun and Andrew Ng, Stanford
University, Palo Alto, CA, saw an AI opportunity. As published in Nature
Medicine, the Stanford team started by assembling a large EKG dataset from
more than 53,000 people [1]. The data included various forms of arrhythmia and
normal heart rhythms from people who had worn the FDA-approved Zio patch for
about two weeks.
The Zio patch
is a 2-by-5-inch adhesive patch, worn much like a bandage, on the upper left
side of the chest. It’s water resistant and can be kept on around the clock
while a person sleeps, exercises, or takes a shower. The wireless patch
continuously monitors heart rhythms, storing EKG data for later analysis.
The Stanford
researchers looked to machine learning to process all the EKG data. In machine
learning, computers rely on large datasets of examples in order to learn how to
perform a given task. The accuracy improves as the machine “sees” more data.
But the team’s real interest was in utilizing a special class of machine learning called deep
neural networks, or deep learning. Deep learning is inspired by how our own
brain’s neural networks process information, learning to focus on some details
but not others.
In deep
learning, computers look for patterns in data. As they begin to “see” complex
relationships, some connections in the network are strengthened while others
are weakened. The network is typically composed of multiple
information-processing layers, which operate on the data and compute
increasingly complex and abstract representations.
Those data
reach the final output layer, which acts as a classifier, assigning each bit of
data to a particular category or, in the case of the EKG readings, a diagnosis.
In this way, computers can learn to analyze and sort highly complex data using
both more obvious and hidden features.
Ultimately,
the computer in the new study could differentiate between EKG readings
representing 10 different arrhythmias as well as normal heart rhythm. It
could also tell the difference between irregular heart rhythms and background
“noise” caused by interference of one kind or another, such as a jostled or disconnected
Zio Patch.
For
validation, the computer attempted to assign a diagnosis to the EKG readings of
328 additional patients. Independently, several expert cardiologists also read
those EKGs and reached a consensus diagnosis for each patient. In almost all
cases, the computer’s diagnosis agreed with the consensus of the cardiologists.
The computer also made its calls much faster.
Next, the
researchers compared the computer’s diagnoses to those of six individual
cardiologists who weren’t part of the original consensus committee. And, the
results show that the computer actually outperformed these experienced
cardiologists!
The findings
suggest that artificial intelligence can be used to improve the accuracy and efficiency of EKG readings. In fact, Hannun reports that iRhythm Technologies,
maker of the Zio patch has already incorporated the algorithm into the
interpretation now being used to analyze data from real patients.
As impressive
as this is, we are surely just at the beginning of AI applications to health
and health care. In recognition of the opportunities ahead, NIH has recently
launched a working group on AI to explore ways to make the best use of existing
data, and harness the potential of artificial intelligence and machine learning
to advance biomedical research and the practice of medicine.
Meanwhile,
more and more impressive NIH-supported research featuring AI is being
published. In my next blog, I’ll highlight a recent paper that uses AI to make
a real difference for cervical cancer, particularly in low resource settings.
Comments
Post a Comment