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Identifying AI opportunities in healthcare

Artificial intelligence (AI) has enormous potential to improve healthcare delivery across the globe. Research Analyst Tim McCarty and Portfolio Manager Andy Acker point to some practical applications that could benefit patients – and investors – in the near term.

Andy Acker, CFA

Andy Acker, CFA

Portfolio Manager


Tim McCarty, CFA

Tim McCarty, CFA

Research Analyst


22 May 2024
5 minute read

Key takeaways:

  • Within a decade, the healthcare sector could be among the biggest users – and beneficiaries – of artificial intelligence (AI).
  • Already, some applications are having a meaningful impact on healthcare delivery and lifting the growth outlook of select companies.
  • We see three areas where AI applications are delivering tangible results and could potentially benefit investors.

As artificial intelligence plays a bigger role in the global economy, one area where the technology is expected to have a substantial impact is healthcare.

Nvidia, the leading provider of AI computing power, says healthcare currently makes up only about 1% of its $100 billion data center business. But that figure is projected to grow exponentially, with healthcare likely becoming the biggest vertical in its data center segment within a decade.

In the meantime, some AI applications are already making a difference to both patient outcomes and company revenues. We see three key areas where AI’s potential is turning into real benefits in healthcare.

Data building for drug discovery

Typically, it takes at least 10 years and billions of dollars of investment for a company to bring a new therapy to market. But AI algorithms could help speed at least one part of the research and development process – target identification and drug discovery.

Today, new AI algorithms are being developed to identify drug targets and create molecules based on modeling of biological and chemical datasets. Advances continue to be made, with new tools now able to decode the shape of proteins – large complex molecules in human cells that drive the structure, function, and regulation of the body’s tissues and organs – and how they interact with other molecular systems in the body, DNA,1 RNA,2 and ligands (molecules that bind to a receiving protein molecule, or receptor). Such level of complexity could lead researchers to an even deeper understanding of the biology of disease and speed up the process/lower the cost of bringing new drugs to market.

The Huntingtin protein, coded by the HTT gene. Mutated HTT leads to Huntington’s disease.

Source: Getty Images.

These advances are undoubtedly exciting. But turning AI’s potential into viable treatments for patients remains challenging. Therapies still have to go through the yearslong process of human clinical trials and regulatory review. And what might look good in a computer model may not prove as efficacious or as safe in human cells: no AI-focused biotech company has yet brought a drug to market.

For now, we think the prudent way to think about AI and drug discovery is to recognize the technology as one of many structural trends that could propel a high rate of growth in biopharma in years to come. Investors might also want to focus on companies providing the picks and shovels that enable AI-driven drug research. These include DNA sequencing and related services, which are needed to help build the enormous datasets that fuel AI algorithms.

Medical device use and imaging

AI is also being deployed in imaging and diagnostics to better detect and treat disease, including cancer where early detection is critical. With mammograms, for example, AI-based 3D imaging is improving the chances of spotting invasive breast cancer earlier and reducing the number of images radiologists must review. A new blood-based screen uses AI and machine learning to identify DNA shed by cancer cells in the bloodstream. The test can look across multiple types of cancers, including those without early screening options, such as pancreatic, esophageal, ovarian, and liver cancer, and predict with 88% accuracy the organ associated with the DNA – a hit rate that is expected to improve over time.

Other disease categories are also benefiting, including aortic stenosis. This heart condition occurs when the aortic valve narrows and blood is unable to flow normally, straining the heart. Today, the disease is broadly underdiagnosed and undertreated: More than one million patients in the U.S. suffer from a severe form of aortic stenosis, but only around 100,000 people receive a transcatheter aortic valve replacement (TAVR) annually.

To close the gap, one TAVR manufacturer is partnering with health systems to use AI to comb through electronic medical records and flag patients who meet the criteria for treatment but, for one reason or another, have been overlooked. We think the effort will pay off over time, driving greater referral and treatment rates and better care for patients.

Pre- and post-procedural assistance

AI is also improving surgery outcomes. One leading maker of robotic-assisted surgery systems, for example, now records and collects data from procedures that incorporate its tools. Surgeries are segmented into stages and doctors can study their performance relative to a best-in-class outcome, which AI helps determine by correlating surgical techniques with patient outcomes. The data should allow surgeons to study a specific surgical activity and improve performance based on objective measures. And over time, AI may be able to warn a surgeon that he or she may have forgotten a step during a procedure or is about to do something that statistically has shown to increase the odds of error.

Likewise, when it comes to healthcare delivery, companies are beginning to use AI to record and code procedures in real time with the aim of eliminating one of the biggest sources of inefficiencies in the U.S. health system – payor/provider connectivity. In 2021, 17% of all healthcare claims were rejected, according to one study of insurers that participate in the federal marketplace in the U.S., in part because of improper coding.3 New AI-enabled systems could help reduce errors and open a market opportunity worth billions of dollars in annual revenue.

 

1 Deoxyribonucleic acid (DNA) is the molecule that carries genetic information for the development and functioning of an organism.

2 Ribonucleic Acid (RNA) supports cell replication, growth, and protein synthesis.

3 Karen Pollitz, Justin Lo, Rayna Wallace, and Salem Mengistu, “Claims Denials and Appeals in ACA Marketplace Plans in 2021.” (Kaiser Family Foundation, 9 February 2023).

IMPORTANT INFORMATION

Health care industries are subject to government regulation and reimbursement rates, as well as government approval of products and services, which could have a significant effect on price and availability, and can be significantly affected by rapid obsolescence and patent expirations.

Concentrated investments in a single sector, industry or region will be more susceptible to factors affecting that group and may be more volatile than less concentrated investments or the market as a whole.

Any reference to individual companies is purely for the purpose of illustration and should not be construed as a recommendation to buy or sell or advice in relation to investment, legal or tax matters.