An estimated 20 million people die each
year due to cardiovascular disease. Luckily, a team of researchers from the
University of Nottingham in the UK have developed a machine-learning
algorithm that
can predict your likelihood of having a heart attack or stroke as well as any
doctor.
The American College of
Cardiology/American Heart Association (ACC/AHA) has developed a series of
guidelines for estimating a patient's cardiovascular risk which is based on
eight factors including age, cholesterol level and blood pressure. On average,
this system correctly guesses a person's risk at a rate of 72.8 percent.
That's pretty accurate but Stephen Weng
and his team set about to make it better. They built four computer learning
algorithms, then fed them data from 378,256 patients in the United Kingdom. The
systems first used around 295,000 records to generate their internal predictive
models. Then they used the remaining records to test and refine them. The
algorithms results significantly outperformed the AAA/AHA guidelines, ranging
from 74.5 to 76.4 percent accuracy. The neural network algorithm tested
highest, beating the existing guidelines by 7.6 percent while raising 1.6
percent fewer false alarms.
Out of the 83,000 patient set of test
records, this system could have saved 355 extra lives. Interestingly, the AI
systems identified a number of risk factors and predictors not covered in the
existing guidelines, like severe mental illness and the consumption of oral
corticosteroids. "There's a lot of interaction in biological
systems," Weng told Science.
"That's the reality of the human body. What computer science allows us to
do is to explore those associations."
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