Close Menu
Breaking News in Technology & Business – Tech Geekwire

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    What's Hot

    Crawford County, Pa. to Use AI to Review 911 Response Quality

    July 5, 2025

    The Rise of Small Language Models: Enhancing AI Efficiency and ROI

    July 5, 2025

    CMS Announces 6-Year Prior Authorization Program Pilot

    July 5, 2025
    Facebook X (Twitter) Instagram
    Breaking News in Technology & Business – Tech GeekwireBreaking News in Technology & Business – Tech Geekwire
    • New
      • Amazon
      • Digital Health Technology
      • Microsoft
      • Startup
    • AI
    • Corporation
    • Crypto
    • Event
    Facebook X (Twitter) Instagram
    Breaking News in Technology & Business – Tech Geekwire
    Home ยป AI-Driven UV Technique Enables Rapid Contamination Detection in Cell Cultures
    AI

    AI-Driven UV Technique Enables Rapid Contamination Detection in Cell Cultures

    techgeekwireBy techgeekwireApril 21, 2025No Comments2 Mins Read
    Facebook Twitter Pinterest Telegram LinkedIn Tumblr WhatsApp Email
    Share
    Facebook Twitter LinkedIn Pinterest Telegram Email

    Rapid Contamination Detection in Cell Therapy Products

    Researchers from the Singapore-MIT Alliance for Research and Technology (SMART) have developed a groundbreaking method to quickly detect microbial contamination in cell therapy products (CTPs) during manufacturing. This innovative technique combines ultraviolet (UV) light absorbance spectroscopy with machine learning to identify contamination patterns, significantly reducing the testing time from up to 14 days to under 30 minutes.

    SMART CAMP Senior Research Engineer Shruthi Pandi Chelvam using the UV absorbance spectrometer
    SMART CAMP Senior Research Engineer Shruthi Pandi Chelvam using the UV absorbance spectrometer

    Cell therapy represents a promising frontier in medicine, particularly in treating cancers, inflammatory diseases, and chronic degenerative disorders. However, ensuring the sterility of CTPs remains a significant challenge in their manufacturing process. Traditional sterility testing methods are labor-intensive and time-consuming, taking up to 14 days to detect contamination. While rapid microbiological methods (RMMs) can reduce this time to 7 days, they still require complex processes and skilled personnel.

    The new method addresses these challenges by providing a label-free, non-invasive, and real-time contamination detection system. By measuring the UV absorbance of cell culture fluids and utilizing machine learning to recognize patterns associated with microbial contamination, this technique offers a simple, cost-effective, and automated solution for preliminary sterility testing.

    “This rapid, label-free method is designed to be a preliminary step in the CTP manufacturing process,” said Shruthi Pandi Chelvam, Senior Research Engineer at SMART CAMP and first author of the study. “It allows users to detect contamination early and implement timely corrective actions, ultimately accelerating the overall manufacturing timeline.”

    The technique eliminates the need for cell staining, extraction, and growth enrichment media, making it less labor-intensive and more efficient. According to Prof Rajeev Ram, Principal Investigator at SMART CAMP, this method supports automated cell culture sampling at designated intervals, reducing manual tasks and enabling continuous monitoring of cell cultures.

    Future research will focus on broadening the method’s application to detect a wider range of microbial contaminants and testing its robustness across various cell types. The technique also holds potential applications in the food and beverage industry for microbial quality control testing.

    The study, titled “Machine learning aided UV absorbance spectroscopy for microbial contamination in cell therapy products,” was published in the journal Scientific Reports. The research was conducted in collaboration with Massachusetts Institute of Technology (MIT), A*STAR Skin Research Labs (A*SRL), and National University of Singapore (NUS).

    cell therapy Machine Learning microbial contamination UV absorbance spectroscopy
    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    techgeekwire
    • Website

    Related Posts

    Crawford County, Pa. to Use AI to Review 911 Response Quality

    July 5, 2025

    The Rise of Small Language Models: Enhancing AI Efficiency and ROI

    July 5, 2025

    CMS Announces 6-Year Prior Authorization Program Pilot

    July 5, 2025

    Best Buy Sells Health Tech Startup Current Health

    July 5, 2025

    Modernizing Government through Technology and Institutional Design

    July 5, 2025

    Proposed ‘Frontier Valley’ Tech Zone Planned Near San Francisco

    July 5, 2025
    Leave A Reply Cancel Reply

    Top Reviews
    Editors Picks

    Crawford County, Pa. to Use AI to Review 911 Response Quality

    July 5, 2025

    The Rise of Small Language Models: Enhancing AI Efficiency and ROI

    July 5, 2025

    CMS Announces 6-Year Prior Authorization Program Pilot

    July 5, 2025

    Best Buy Sells Health Tech Startup Current Health

    July 5, 2025
    Advertisement
    Demo
    About Us
    About Us

    A rich source of news about the latest technologies in the world. Compiled in the most detailed and accurate manner in the fastest way globally. Please follow us to receive the earliest notification

    We're accepting new partnerships right now.

    Email Us: info@example.com
    Contact: +1-320-0123-451

    Our Picks

    Crawford County, Pa. to Use AI to Review 911 Response Quality

    July 5, 2025

    The Rise of Small Language Models: Enhancing AI Efficiency and ROI

    July 5, 2025

    CMS Announces 6-Year Prior Authorization Program Pilot

    July 5, 2025
    Categories
    • AI (2,700)
    • Amazon (1,056)
    • Corporation (991)
    • Crypto (1,132)
    • Digital Health Technology (1,082)
    • Event (526)
    • Microsoft (1,230)
    • New (9,584)
    • Startup (1,167)
    © 2025 TechGeekWire. Designed by TechGeekWire.
    • Home

    Type above and press Enter to search. Press Esc to cancel.