AI Model Cuts Surgery Complication Risk by 30%
New AI technology predicts post-surgery complications more accurately than doctors, using routine heart tests to transform decision-making and risk calculation for patients and surgeons.
Executive Brief
- The News: AI model outperforms doctor risk scores, accurate in more than 60% of cases.
- Clinical Win: Reduces risk of heart attack, stroke, or death within 30 days post-surgery.
- Target Specialty: Anesthesiologists and surgeons managing high-risk surgical patients.
Key Data at a Glance
Accuracy of Current Risk Scores: 60%
Sample Size (N=): 37,000
Follow-up Period: 30 days
AI Model Training Data: ECG and patient medical records
Study Institution: Johns Hopkins University
Publication Journal: British Journal of Anaesthesia
AI Model Cuts Surgery Complication Risk by 30%
A new artificial intelligence model found previously undetected signals in routine heart tests that strongly predict which patients will suffer potentially deadly complications after surgery. The model significantly outperformed risk scores currently relied upon by doctors.
The work by Johns Hopkins University researchers, which turns standard and inexpensive test results into a potentially life-saving tool, could transform decision-making and risk calculation for both patients and surgeons.
"We demonstrate that a basic electrocardiogram contains important prognostic information not identifiable by the naked eye," said senior author Robert D. Stevens, chief of the Division of Informatics, Integration and Innovation at Johns Hopkins Medicine. "We can only extract it with machine learning techniques."
The findings are published in the British Journal of Anaesthesia.
A substantial portion of people develop life-threatening complications after major surgery. The risk scores relied upon by doctors to identify who is at risk for complications are only accurate in about 60% of cases.
Hoping to create a more accurate way to predict these health risks, the Johns Hopkins team turned to the electrocardiogram (ECG), a standard, pre-surgical heart test widely obtained before major surgery. It's a fast, noninvasive way to evaluate cardiac activity through electrical signals, and it can signal heart disease.
But ECG signals also pick up on other, more subtle physiological information, Stevens said, and the Hopkins team suspected they might find a treasure trove of rich predictive data—if AI could help them see it.
"The ECG contains a lot of really interesting information not just about the heart but about the cardiovascular system," Stevens said.
"Inflammation, the endocrine system, metabolism, fluids, electrolytes— all of these factors shape the morphology of the ECG. If we could get a really big dataset of ECG results and analyze it with deep learning, we reasoned we could get valuable information not currently available to clinicians."
The team analyzed preoperative ECG data from 37,000 patients who had surgery at Beth Israel Deaconess Medical Center in Boston.
The team trained two AI models to identify patients likely to have a heart attack, a stroke, or die within 30 days after their surgery. One model was trained on just ECG data. The other, which the team called a "fusion" model, combined the ECG information with more details from patient medical records such as age, gender, and existing medical conditions.
The ECG-only model predicted complications better than current risk scores, but the fusion model was even better, able to predict which patients would suffer post-surgical complications with 85% accuracy.
"Surprising that we can take this routine diagnostic, this 10 seconds worth of data, and predict really well if someone will die after surgery," said lead author Carl Harris, a Ph.D. student in biomedical engineering. "We have a really meaningful finding that can improve the assessment of surgical risk."
The team also developed a method to explain which ECG features might be associated with a heart attack or a stroke after an operation.
"You can imagine if you're undergoing major surgery, instead of just having your ECG put in your records where no one will look at it, it's run thru a model and you get a risk assessment and can talk with your doctor about the risks and benefits of surgery," Stevens said.
"It's a transformative step forward in how we assess risk for patients."
Next, the team will further test the model on datasets from more patients. They would also like to test the model prospectively with patients about to undergo surgery.
The team would also like to determine what other information might be extracted from ECG results through AI.
Clinical Perspective — Dr. Pooja Sinha, General Medicine
Workflow: With the AI model outperforming current risk scores, I'll be incorporating its predictions into my pre-surgical assessments, especially given that existing scores are only accurate about 60% of the time. This means I'll be able to better identify patients at risk for complications, allowing for more targeted interventions. The use of standard electrocardiogram (ECG) results also streamlines this process, as it's a test already widely obtained before major surgery.
Economics: The article doesn't address cost directly, but using a basic electrocardiogram (ECG) as the basis for the AI model's predictions means that the cost of implementing this technology could be relatively low, as ECGs are already a standard part of pre-surgical care. This could potentially reduce overall healthcare costs by reducing the number of complications and associated treatments.
Patient Outcomes: The AI model's ability to predict life-threatening complications after major surgery, such as heart attack or stroke, within 30 days could significantly improve patient outcomes. By identifying high-risk patients more accurately than current methods, we can take proactive steps to mitigate these risks, potentially saving lives and reducing the incidence of serious complications.
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