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GenAI and the quadruple aim | Industry watcher’s digest | Partner news

Friday, July 5, 2024
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artificial intelligence AI in healthcare

Elusive quadruple aim revisited for the generative AI era

Is U.S. healthcare capable of achieving its own quadruple aim? Or is that ideal destined to remain a perpetual pursuit, always chased but never really caught? However you answer, injecting AI into the healthcare system changes the math producing your conclusion.  

Researchers at Microsoft’s AI for Good Lab and Microsoft Research explore the unfolding wrinkle in a paper published by Frontiers in Artificial Intelligence.

William Weeks, MD, PhD, MBA, and colleagues remind readers that the pillars of healthcare’s quadruple aim are improving population health, reducing healthcare costs, optimizing the patient experience and maximizing job satisfaction for healthcare workers.

They point out that a confounding factor in assessing progress toward those ends is the “substantial waste” in our healthcare system. Some of the throwaway owes to administrative wranglings with payers, they note, but much else traces to clinical overutilization.

Against this challenge, the authors comment, artificial intelligence “has tremendous promise in helping to achieve the quadruple aim”—but the “haphazard application of AI may amplify inefficiencies and biases in the U.S. healthcare system.”

Weeks and co-authors recommend four measures for avoiding such AI-exacerbated negatives:

1. Avoid chasing the wrong metrics.

The goal of a model is not to achieve the best area under the curve, Weeks and colleagues maintain, but “to have measurable positive clinical impact and to achieve the quadruple aim using metrics defined prior to model implementation.”

‘If the model or the technology does not measurably and efficiently promote achievement of the quadruple aim, it should not be implemented.’

2. Always include a human subject matter expert in the loop.

Models increasingly use a human-in-the-loop process to ensure that the model is operating as intended; in healthcare, “it is critical to include a healthcare subject matter expert in the loop.”

‘Models must make sense to providers, so interpretable models and tools can allow subject matter experts to evaluate a model’s utility in clinical practice (again, using metrics defined prior to model implementation).’

3. Test, validate and monitor models.

AI models are invariably developed, tested and refined retrospectively, Weeks and co-authors write. While AI models have an advantage of testing results on a randomly selected held-out dataset, all AI models should be prospectively tested and validated on the target population before widespread implementation, using pre-defined validation thresholds.

Further, “models should be monitored over time: If models are effective, they may lead to behavior change; that behavior change may change key relationships, and those changes will require new model development.”

‘Those determining whether to develop and implement AI models should consider the cumulative long-term costs of monitoring and re-developing models.’

4. Use responsible AI practices.

Model effectiveness is intrinsically tied to the quality of data used in their training; ensuring that those data are free from bias is crucial, the authors state. “When the data itself is not biased, subsequent decisions derived from its analysis—for instance, misapplication of models to populations that are not represented in the unbiased data—might be unfair.”

‘Particularly with health-related AI models, where stakes are significantly higher and impacts more profound, adherence to responsible AI practices is imperative.’

Along with the four pointers for avoiding pitfalls, Weeks and colleagues flesh out four ways AI can help advance U.S. healthcare toward the promised land of the quadruple aim—even in the absence of health insurance reform. These are:

  • Helping patients decide whether to obtain services
  • Helping patients decide where to obtain desired care
  • Helping policymakers understand the relationship between social determinants of health and healthcare access, quality and outcomes
  • Supporting providers' decision making

“Current uses of AI applications can improve the efficiency of healthcare operations, such as scheduling, letter-writing, provider in-box email responses, patient triage and coding optimization,” the authors write. “These uses can improve patient and provider experiences, reduce per-capita healthcare costs and promote achievement of the quadruple aim.”

At the same time, however—given healthcare’s many inefficiencies—the unconsidered application of AI may increase healthcare costs without advancing the quadruple aim, Weeks et al. warn.

AI models can be “expensive to develop, test, implement and monitor,” they add. “A modest increase in accuracy may not warrant the expense if the impact on patients and clinical care is not significant.” More:

‘An unwavering focus on and objective evaluation of how technological implementation helps achieve the quadruple aim is essential for improving healthcare efficiency and effectiveness.’

The paper is available in full for free.

 

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Industry Watcher’s Digest

Buzzworthy developments of the past few days.

  • Good medicine is slow medicine. It’s a sensible point and one that kind of flies in the face of AI proponents stressing speed and efficiency gains. Safwan Halabi, MD, makes the statement in an article posted by Yahoo Finance July 2. Sane and sober people wouldn’t trust self-driving cars before they’d been put through the testing wringer in off-road settings, he suggests. So why in the world would anyone trust the safety of clinical AI before it’s been tested, tested and tested some more? Once a model clears that caveat, however, it’s ready for primetime. Healthcare AI is “here to stay, and we’re going to see more and more of it,” says Halabi, a radiologist who works at Lurie Children’s Hospital in Chicago as vice chair of medical imaging informatics. “We won't really notice it because it’s going to be happening in the background, or it’s going to be happening in the whole care process and not overtly announced or disclosed.”
     
  • One aspect of healthcare AI seems to get scant attention: its potential for reducing hospital lengths of stay. Comments offered by Josh Fessel, MD, PhD, to Observer.com suggest a possible reason. Fessel, director of the NIH’s office of translational medicine, believes it’s wise to watch for AI solving one problem while worsening another. “What if it turns out that hospital length of stay is reduced, but readmission rates increase by some unacceptable factor?” he asks rhetorically, noting the complexity of healthcare compared with other sectors of the economy. “AI doesn’t necessarily know to look for that unless you train it to look for that.”
     
  • AI will ‘take over’ in 10 realms of human activity next year. Healthcare is just one of them. That’s according to Jan Macarol, editor-in-chief of Ljubljana, Slovenia-based City Magazine. “AI systems will enable faster and more accurate diagnoses, which will reduce waiting times for treatment and improve treatment outcomes,” Macarol writes. “All of this will increase access to quality healthcare and enable better health outcomes for people around the world.” If this prediction sounds like hopeful hype from afar even before you’ve considered the other nine, well, so be it. This has been a slow news week in the U.S. Our nation’s birthday will do that. That doesn’t mean the piece is not worth a read.
     
  • AI can help address healthcare disparities faced by many women. One woman is bullish on the proposition and well-situated to help nudge things toward fruition. She’s Priya Oberoi, general partner of Goddess Gaia Ventures, Europe’s first women-centric healthcare fund. Writing in Forbes, Oberoi says the technology can help boost women’s participation in clinical trials, increase the accuracy of their diagnoses, improve the effectiveness of fertility treatments and more. “AI is potentially able to address pertinent problems within the healthcare sector,” she writes, “whilst simultaneously allowing for the faster development of products and services catered specifically for women.”
     
  • Healthcare loves GenAI. So observes David Talby, PhD, MBA, chief technology officer of John Snow Labs. Referencing a Snow survey released in April, Talby underscores four key findings at CIO.com: GenAI budgets are growing exponentially, task-specific language models reign supreme, use cases vary by technical experience and organization size, and human intervention remains necessary. “It’s clear technical leaders are spearheading GenAI in healthcare, as reflected by significant budget increases and a deep understanding of the technical advantages,” Talby writes. “However, challenges remain, particularly around accuracy, industry-specific requirements and ethical considerations for all groups and company sizes who have already deployed or are considering deploying GenAI.”
     
  • We’re halfway through 2024. How’s your AI alignment? If you’re not sure, you know you could be doing better or you have the sense “AI alignment” is just another buzzword propagated by marketers, you should read a quick primer over at Pymnts.com. “At its core, AI alignment seeks to create AI systems that reliably pursue the objectives we want them to pursue rather than misinterpreting instructions or optimizing for unintended goals,” the piece helpfully clarifies. “The stakes are high—a misaligned AI system could cause significant harm if deployed in critical domains like healthcare, finance or national security.”
     
  • Google is as high-profile a climate champion as corporate America has. For that reason, its recent admission that it’s falling far short of its green goals is garnering a lot of attention. And so is its naming of AI as a major electricity hog. Reaching its trumpeted goal of net zero by 2030 is now going to be really hard, chief sustainability officer Kate Brandt tells the Associated Press. “[O]ur approach will need to continue to evolve, and it will require us to navigate a lot of uncertainty, including this uncertainty around the future of AI’s environmental impacts.” There’s plenty more coverage online.
     
  • Nvidia is making other AI players look like also-rans. But how? Whatever the secret of its success, the lopsided situation seems to be bugging multibillionaire Peter Thiel. Noting that as much as 85% of the money in AI is being made by that one company, Thiel—best known as the co-founder of PayPal and Palantir—spoke about Nvidia at last week’s Aspen Ideas Festival. According to Yahoo Finance, he described the market dominance of Jensen Huang’s high-flying brainchild as “very strange.” He wondered aloud about how eye-popping profits are being made “at the hardware layer—an area Silicon Valley doesn’t even know much about anymore.”
     
  • Recent research roundup:
     
  • Funding news of note:
     
  • From AIin.Healthcare’s news partners:
     

 

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