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People, process, technology—and AI | Healthcare AI newsmakers

Friday, December 1, 2023
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Continuous Quality Improvement

How to tap QMS methodologies for speeding AI adoptions

If people, process and technology (PPT) are the building blocks of any effective quality management system (QMS), it may hold that applying established PPT principles can help hospitals move AI from experimental research settings to regulated clinical practice.

And in fact, that’s probably the case, according to researchers at Mayo Clinic and Duke University.

Refining PPT terms to people/culture, process/data and validated technology, Mayo AI manager Shauna Overgaard, PhD, and colleagues describe the workings of the hypothesis in a paper published Nov. 25 in NPJ Digital Medicine.

“By establishing a QMS explicitly tailored to health AI technologies,” the authors write, “healthcare organizations can comply with evolving regulations and minimize redundancy and rework while aligning their internal governance practices with their steadfast commitment to scientific rigor and medical excellence.”

The team breaks down the equation into three action items. Here are excerpts from each.

1. Establish a proactive culture of quality. As an AI model evolves, algorithm developers and clinical end-users should get out ahead of further development, risk management and industry-standard design controls, the authors suggest. Then, as the model becomes a product, the team can incorporate “all the software and functionality needed for the model to work as intended in its clinical setting.” More:

“QMS procedures outline practices, and the records generated during this stage create the level of evidence expected by industry and regulators. Healthcare organizations may either maintain dedicated quality teams responsible for conducting testing or employ alternative structures designed to carry out independent reviews and audits.”

2. Set up systems for directing and managing risk-based design, development and monitoring. Risk-based practices formalized and implemented within a QMS will “systematically identify risks associated with an AI solution, document mitigation strategies, and offer a framework for objective testing and auditing of individual technology components,” the authors write. What’s more, such tech components can be refined by applying best practices around software life-cycle management—and tailoring the practices for AI software specifically.  

“This allows for capturing performance metrics across various levels of rigor and data transparency in requirements, version, and design controls. These insights from initial testing can then support the calibration and maintenance of AI solutions during deployment, guided by a multidisciplinary governance system to proactively mitigate future risks.”

3. Establish a compliance-facilitating infrastructure. It’s consequential that running a QMS necessarily involves establishing policies and standard operating procedures that outline processes for multiple intertwined aims, the authors point out. Not least among these are governance and prioritization, development, independent evaluation, maintenance and monitoring, issue reporting and safety surveillance.

“With proper governance, algorithm inventory and transparency, healthcare organizations can begin to implement tools, testing and monitoring capabilities into their QMS to reduce the burden and achieve safe, effective, ethical machine learning/AI at scale. Implementing QMS involves formal documentation encompassing quality, ethical principles and processes, ensuring transparency and traceability to regulatory requirements.”

In these ways, healthcare organizations can repurpose a QMS framework to accelerate the translation of AI from research to clinical practice, Overgaard and co-authors reiterate.

“Drawing on regulatory precedents and incorporating insights from expert stakeholders,” they add, “the QMS framework enables healthcare organizations to prioritize patient needs and foster trust in adopting innovative AI technologies.”

The paper is posted in full for free.

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congressional hearing on artificial intelligence

Industry Watcher’s Digest

Buzzworthy developments of the past few days.

  • Several provider execs testified about healthcare AI on Capitol Hill Nov. 29. Among them was Christopher Longhurst, MD, chief medical and digital officer for UC-San Diego Health. “With thoughtful implementation and careful oversight to ensure equity, transparency and effectiveness,” Longhurst told the House Energy and Commerce Subcommittee, “AI can be transformative for healthcare delivery, improving quality and patient safety, and reducing administrative burdens.” The hearing was recorded and is available for viewing on demand (full runtime: 3 hours, 18 minutes).
     
  • AI jobs pay 78% more than other occupations. The pay gap between tech jobs and other occupations has widened by 36% due to AI. And the state with the highest average pay for AI work is Connecticut, at $176,000 per year. The findings are from Bizreport. For additional key findings plus the survey methodology, click here.
     
  • EHR giant Epic is training AI to write like the very physicians who use it for drafting answers to patients’ questions. Sumit Rana, the company’s EVP of R&D, explains how it works. “You might have a doctor who says, ‘Dear Bill.’ Another one might say, ‘Hi, Bill. A third one might say just ‘Bill,’ and a fourth one might not say your name at all,” Rana tells HIMSS Media’s Healthcare IT News. “If the writing style does not mirror what the patient is used to from that provider, it can feel very unnatural.” Full interview here.
     
  • The UK Biobank is offering whole-genome data drawn from 500,000 volunteers. “This abundance of genomic data is unparalleled,” the organization says, “but what cements it as a defining moment for the future of healthcare is its use in combination with the existing wealth of data UK Biobank has collected over the past 15 years on lifestyle, whole body imaging scans, health information and proteins found in the blood.” The biobank hopes the move will help researchers around the world discover drugs, innovate diagnostic techniques and find cures to any number of diseases. Announcement.
     
  • AI programs consume a lot of energy. And 3 of 4 organizations that took the dive into AI admit they were unprepared for the drain. So finds the data storage supplier Pure Storage. Get the rest of the company’s survey findings here.
     
  • AI-equipped stethoscopes can help parents monitor kids with asthma right at home. In a proof-of-concept study, the technology as developed by StethoMe (Poznań, Poland) worked well enough that it could help Mom and Dad know when a minor wheeze is stable and fading—or when it’s building to bigger breathing trouble requiring a doctor’s attention. Annals of Family Medicine has published the study in full for free.
     
  • Last week a devoted family man had to bolt Thanksgiving dinner to go treat an emergency stroke patient. The incident prompted the dessert deserter—New Jersey neurosurgeon Paul Saphier, MD—to reflect on the strengths and weaknesses of diagnostic AI. “Not only have I been involved in cases where AI has indicated surgery should be performed when objectively there was nothing to operate upon, but the opposite scenario also arises,” he writes. “It is a precarious situation to call a team for emergency surgery when the AI platform instructs no intervention is required.” The author is the husband of breast radiologist and TV personality Nicole Saphier, MD. Read the piece.
     
  • From AIin.Healthcare’s news partners:
     
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