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Researcher urges caution on AI in mammography

‘Unabated’ adoption of technology could lead to over-treatment, excessive costs

Date:
February 25, 2022
Source:
University of California - Los Angeles Health Sciences
Summary:
Analyzing breast-cancer tumors with artificial intelligence has the potential to improve healthcare efficiency and outcomes, but doctors should proceed cautiously, according to a new editorial.
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FULL STORY

Analyzing breast-cancer tumors with artificial intelligence has the potential to improve healthcare efficiency and outcomes. But doctors should proceed cautiously, because similar technological leaps previously led to higher rates of false-positive tests and over-treatment.

That's according to a new editorial inJAMA Health Forumco-written by Joann G. Elmore, MD, MPH, a researcher at the UCLA Jonsson Comprehensive Cancer Center, the Rosalinde and Arthur Gilbert Foundation Endowed Chair in Health Care Delivery and professor of medicine at the David Geffen School of Medicine at UCLA.

"Without a more robust approach to the evaluation and implementation of AI, given the unabated adoption of emergent technology in clinical practice, we are failing to learn from our past mistakes in mammography," the JAMA Health Forum editorial states. The piece, posted online Friday, was co-written with Christoph I. Lee, MD, MS, MBA, a professor of radiology at the University of Washington School of Medicine.

One of those "past mistakes in mammography," according to the authors, was adjunct computer-aided detection (CAD) tools, which grew rapidly in popularity in the field of breast cancer screening starting more than two decades ago. CAD was approved by the FDA in 1998, and by 2016 more than 92% of U.S. imaging facilities were using the technology to interpret mammograms and hunt for tumors. But the evidence showed CAD did not improve mammography accuracy. "CAD tools are associated with increased false positive rates, leading to overdiagnosis of ductal carcinoma in situ and unnecessary diagnostic testing," the authors wrote. Medicare stopped paying for CAD in 2018, but by then the tools had racked up more than $400 million a year in unnecessary health costs.

"The premature adoption of CAD is a premonitory symptom of the wholehearted embrace of emergent technologies prior to fully understanding their impact on patient outcomes," Elmore and Lee wrote.

The doctors suggest several safeguards to put in place to avoid "repeating past mistakes," including tying Medicare reimbursement to "improved patient outcomes, not just improved technical performance in artificial settings."

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Story Source:

Materialsprovided byUniversity of California - Los Angeles Health Sciences.注意:内容可能被编辑风格d length.


Journal Reference:

  1. Joann G. Elmore, Christoph I. Lee.Artificial Intelligence in Medical Imaging—Learning From Past Mistakes in Mammography.JAMA Health Forum, 2022; 3 (2): e215207 DOI:10.1001/jamahealthforum.2021.5207

Cite This Page:

University of California - Los Angeles Health Sciences. "Researcher urges caution on AI in mammography: ‘Unabated’ adoption of technology could lead to over-treatment, excessive costs." ScienceDaily. ScienceDaily, 25 February 2022. .
University of California - Los Angeles Health Sciences. (2022, February 25). Researcher urges caution on AI in mammography: ‘Unabated’ adoption of technology could lead to over-treatment, excessive costs.ScienceDaily. Retrieved August 8, 2023 from www.koonmotors.com/releases/2022/02/220225135644.htm
University of California - Los Angeles Health Sciences. "Researcher urges caution on AI in mammography: ‘Unabated’ adoption of technology could lead to over-treatment, excessive costs." ScienceDaily. www.koonmotors.com/releases/2022/02/220225135644.htm (accessed August 8, 2023).

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