Researchers who created the computer program are optimistic that it would lessen needless admissions to crowded A&E departments and end the clinical bias that prevents some women from receiving life-saving care today.
A preliminary on 10,286 individuals with chest torment tracked down that the symptomatic device, called CoDE-ACS, had the option to preclude a respiratory failure in two times however many patients as current testing techniques, with an exactness of 99.6%.
Clinical preliminaries are presently under way in Scotland, with help from Wellcome Jump, to survey whether the device lessens tension on packed crisis divisions.
Teacher Nicholas Plants, teacher of cardiology at the Middle for Cardiovascular Science, College of Edinburgh, who drove the exploration, said: "For patients with intense chest torment because of a coronary failure, early determination and therapy saves lives.
"Unfortunately, many conditions cause these common symptoms, and the diagnosis is not always straightforward.
"Harnessing data and artificial intelligence to support clinical decisions has enormous potential to improve care for patients and efficiency in our busy emergency departments."
The ongoing best quality level for diagnosing a coronary failure is estimating levels of the protein troponin in the blood.
In any case, a similar edge is utilized for each quiet - despite the fact that levels are impacted by age, orientation and other medical issue.
In any case, that could be forestalled by the new calculation, as per The English Heart Establishment, which financed the work.
CoDE-ACS functioned admirably no matter what the patient's attributes, as per the examination distributed in the diary Nature Medication.
It was created with man-made consciousness in light of information from in excess of 10,000 patients in Scotland.
It utilizes data including age, orientation, ECG test results, clinical history and troponin levels to foresee the likelihood that somebody has had a respiratory failure.
Teacher Sir Nilesh Samani, clinical overseer of the English Heart Establishment, said: "CoDE-ACS can possibly manage in or preclude a coronary failure more precisely than current methodologies.
"It could be transformational for emergency departments, shortening the time needed to make a diagnosis, and much better for patients."
Professor Steve Goodacre, professor of emergency medicine at the University of Sheffield, called the study "intriguing", adding that it showed "how AI can use complex analysis, rather than a simple rule, to improve diagnosis".
"This doesn't [yet] show that we can replace doctors with computers," he added. "Experienced clinicians know that diagnosis is a complex business.
"Indeed, the 'ground truth' used to judge whether the AI algorithm was accurate was a judgement made by clinicians."