Health and Healthcare Systems

4 ways AI is improving healthcare, according to one of the world's largest medical groups

John Halamka, Dwight and Dian Diercks President, Mayo Clinic Platform, identifies four AI applications that are already helping to improve healthcare provision.

John Halamka, Dwight and Dian Diercks President, Mayo Clinic Platform, identifies four AI applications that are already helping to improve healthcare provision. Image: World Economic Forum

Andrea Willige
Senior Writer, Forum Stories
This article is part of: Centre for Health and Healthcare
  • Artificial Intelligence (AI) holds great potential for the world’s overburdened healthcare systems.
  • The World Economic Forum’s Digital Healthcare Transformation Initiative has identified the potential for it to address some of the most pressing healthcare challenges.
  • John Halamka, Dwight and Dian Diercks President, Mayo Clinic Platform, discusses how AI can improve early disease detection, equitable healthcare, patient outcomes, and resource distribution.

We want AI that does no harm. We want AI that is likely to give you benefits with minimal risks.

John Halamka, Dwight and Dian Diercks President, Mayo Clinic Platform

Artificial Intelligence (AI) holds great potential for improving the world's overburdened healthcare systems. An insight report from the World Economic Forum’s Digital Healthcare Transformation Initiative has identified the potential for digital, data and AI to tackle three of the most pressing healthcare challenges: the increasing burden of chronic illnesses, inequitable patient outcomes and healthcare access worldwide, and resource constraints.

The Mayo Clinic has been an early adopter of AI, and at the Forum's Sustainable Development Impact Meetings this year, John Halamka highlighted the clinic’s experiences with the technology. He identified four AI applications that are already helping to improve healthcare provision and make it more equitable.

The healthcare challenge.
The world’s healthcare systems face 3 main challenges. Image: World Economic Forum, Boston Consulting Group

1. The Houses Index

The Mayo Clinic’s Housing-Based Socioeconomic Status (Houses) index uses housing data from public records to indicate socioeconomic status at an individual level. The goal is to go beyond traditional socioeconomic parameters and create tailored healthcare plans to eliminate health disparities.

He highlighted that using traditional social determinants of health and commercial algorithms can lead to skewed results, which could put patients at risk.

“We infer based on where you live - what is your exposure to toxins in the environment and crime? What opportunities do you have for primary care, colonoscopy screening and the like?” explained Halamka.

This approach also enables payers and healthcare providers to distribute resources more equitably, and clinicians can more easily identify where interventions would have the greatest impact.

2. The AI-enabled ECG

Identifying heart disease as early as possible can substantially impact a patient’s quality of life and life expectancy. However, it is complex to diagnose.

The AI-enabled ECG can predict the likelihood of a patient having heart conditions such as atrial fibrillation, amyloidosis or hypertrophic cardiomyopathy. This could, in turn, enable clinicians to diagnose heart disease earlier and monitor its progression – something Halamka himself has benefitted from.

“I happen to have a super ventricular tachycardia, which means my heart rate sometimes goes from 50 to 170.”

“Whenever I get an ECG, it is run through 14 algorithms. The results are shown to a clinician and describe my risk of atrial fibrillation. These kinds of things will help the clinician give me the right treatment.”

An infographic showing the digital applications in health systems.
AI and associated technologies could unburden and improve healthcare services. Image: World Economic Forum, Boston Consulting Group

3. Detecting tuberculosis with AI and a smartphone

Improving global health outcomes and achieving universal health coverage are central to the United Nations (UN) Sustainable Development Goals.

This is one area where AI can make a vital impact. In some parts of the world, tuberculosis is still rife, but because of a lack of affordable healthcare, it is rarely diagnosed. Google, for example, is collaborating with Salcit Technologies in India to improve lung health assessments by analyzing cough sounds. With the help of AI and machine learning, the partners hope to create a faster, safer and more affordable way to diagnose tuberculosis (TB) and other lung diseases.

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What is the World Economic Forum doing to improve healthcare systems?

To reach vulnerable communities, you have to look no further than the modern smartphone, Halamka told the Forum: “I have done a fair amount of work in northern India, in the diagnosis of diseases like tuberculosis.”

“Often, we use a cartridge to do a rapid diagnostic test in the field. But interpreting the result is actually done on your smartphone, using a computer vision app that can read a cartridge and say ‘TB’ or ‘No TB’. In effect, you're bringing a clinical laboratory.”

Graphs showcasing the variation in health outcomes across OECD.
Health outcomes vary substantially across the world. Image: World Economic Forum, Boston Consulting Group

4. Heading pancreatic cancer off early

“AI and image analysis is quite advanced today,” adds Halamka, pointing to an algorithm developed by Mayo Clinic that analyzes CT scans to predict pancreatic cancer – on average, around 16 months before a clinical diagnosis.

Pancreatic cancer is notoriously hard to detect, with most patients only finding out at an advanced stage when treatment options are typically limited. Three in four don’t survive the first year following their diagnosis. Earlier detection could improve patients’ chances of survival.

“You could ‘bake’ this algorithm into the scanner so that the scanner itself could flag when it detects a high risk for cancer,” he explains.

Graphs showing the five-year survival for the 20 most common cancers in England.
AI analyses of scanner images could help detect pancreatic cancer earlier and cut mortality rates. Image: Pancreatic Cancer UK

AI in healthcare must be deployed carefully

While the potential benefits of AI for patient outcomes and more equitable access to healthcare are evident, Halamka also stressed the need for caution.

One concerns bias. It is important to analyze a representative number of health records that also represent the underlying population: “One has to be careful that you also have spread or heterogeneity. Do you have low income, high income, educated, not educated, male, female, young, old?”

Another major concern is data security, specifically whether health records can be truly anonymised or “de-identified.”

“De-identification of data is hard. Sure, I could remove the name, the phone number or the address. But what if – and I'm, of course, making this up – the first line of a medical record said this was a former president of the United States?”

A job role like this, geographic data or a familial relationship could all inadvertently give away somebody’s identity, he added.

“So, one has to be very careful that the data is hard to re-identify to preserve privacy, and then it can be used for societal good.”

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The views expressed in this article are those of the author alone and not the World Economic Forum.

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