We've updated our Privacy Policy to make it clearer how we use your personal data. We use cookies to provide you with a better experience. You can read our Cookie Policy here.

Advertisement

AI-Powered Wearable Camera System Detects Medication Errors

A doctor holding a tablet screen with an AI holographic.
Credit: iStock.
Listen with
Speechify
0:00
Register for free to listen to this article
Thank you. Listen to this article using the player above.

Want to listen to this article for FREE?

Complete the form below to unlock access to ALL audio articles.

Read time: 3 minutes

Summary 

Researchers at the University of Washington have created the first wearable camera system that uses AI to detect medication delivery errors. Achieving 99.6% sensitivity and 98.8% specificity, this system could revolutionize safety in high-stress medical environments, helping prevent potentially harmful drug administration mistakes.

Key Takeaways

  • The AI camera system achieved 99.6% sensitivity and 98.8% specificity in detecting vial-swap errors.
  • Drug administration errors are common, with an estimated 5% to 10% of all drugs given being associated with errors.
  • The system enhances safety in critical medical environments, such as operating rooms and intensive-care units.

  • A team of researchers says it has developed the first wearable camera system that, with the help of artificial intelligence, detects potential errors in medication delivery.


    In a test whose results were published today, the video system recognized and identified, with high proficiency, which medications were being drawn in busy clinical settings. The AI achieved 99.6% sensitivity and 98.8% specificity at detecting vial-swap errors.


    The findings were reported Oct. 22 in npj Digital Medicine.


    The AI-powered camera system was developed and tested at the University of Washington. It could become a critical safeguard, especially in operating rooms, intensive-care units and emergency-medicine settings, said co-lead author Dr. Kelly Michaelsen, an assistant professor of anesthesiology and pain medicine at the University of Washington School of Medicine.

    Want more breaking news?

    Subscribe to Technology Networks’ daily newsletter, delivering breaking science news straight to your inbox every day.

    Subscribe for FREE

    “The thought of being able to help patients in real time or to prevent a medication error before it happens is very powerful,” she said. “One can hope for a 100% performance but even humans cannot achieve that. In a survey of more than 100 anesthesia providers, the majority desired the system to be more than 95% accurate, which is a goal we achieved.”

    Drug administration errors are the most frequently reported critical incidents in anesthesia, and the most common cause of serious medical errors in intensive care. In the bigger picture, an estimated 5% to 10% of all drugs given are associated with errors. Adverse events associated with injectable medications are estimated to affect 1.2 million patients annually at a cost of $5.1 billion.


    Syringe and vial-swap errors most often occur during intravenous injections in which a clinician must transfer the medication from vial to syringe to the patient. About 20% of mistakes are substitution errors in which the wrong vial is selected or a syringe is mislabeled. Another 20% of errors occur when the drug is labeled correctly but administered in error.


    Safety measures, such as a barcode system that quickly reads and confirms a vial’s contents, are in place to guard against such accidents. But practitioners might sometimes forget this check during high-stress situations because it is an extra step in their workflow.


    The researchers’ aim was to build a deep-learning model that, paired with a GoPro camera, is sophisticated enough to recognize the contents of cylindrical vials and syringes, and to appropriately render a warning before the medication enters the patient.


    Training the model took months. The investigators collected 4K video of 418 drug draws by 13 anesthesiology providers in operating rooms where setups and lighting varied. The video captured clinicians managing vials and syringes of select medications. These video snippets were later logged and the contents of the syringes and vials denoted to train the model to recognize the contents and containers.


    The video system does not directly read the wording on each vial, but scans for other visual cues: vial and syringe size and shape, vial cap color, label print size.


    “It was particularly challenging, because the person in the OR is holding a syringe and a vial, and you don’t see either of those objects completely. Some letters (on the syringe and vial) are covered by the hands. And the hands are moving fast. They are doing the job. They aren’t posing for the camera,” said Shyam Gollakota, a coauthor of the paper and professor at the UW's Paul G. Allen School of Computer Science & Engineering.


    Further, the computational model had to be trained to focus on medications in the foreground of the frame and to ignore vials and syringes in the background.


    “AI is doing all that: detecting the specific syringe that the healthcare provider is picking up, and not detecting a syringe that is lying on the table,” Gollakota said.


    This work shows that AI and deep learning have potential to improve safety and efficiency across a number of healthcare practices. Researchers are just beginning to probe the potential, Michaelsen said.


    Reference: Chan J, Nsumba S, Wortsman M, et al. Detecting clinical medication errors with AI enabled wearable cameras. npj Digit Med. 2024;7(1):287. doi: 10.1038/s41746-024-01295-2


    This article has been republished from the following materials. Note: material may have been edited for length and content. For further information, please contact the cited source. Our press release publishing policy can be accessed here.


    This content includes text that has been generated with the assistance of AI. Technology Networks' AI policy can be found here.