Friday, November 22, 2024

Lunit’s AI-Powered Mammography Analysis Solution Proves Comparable to Radiologists in Breast Cancer Detection – published in European Radiology

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Lunit, a leading provider of AI-powered solutions for cancer diagnostics and therapeutics, announced that in a study recently published in European Radiology, Lunit’s AI-powered mammography analysis solution, Lunit INSIGHT MMG, has been validated for its effectiveness in standalone breast cancer detection. The study, led by Dr. Johanne Kühl and Dr. Mohammad Talal Elhakim at the University of Southern Denmark, compared the AI system’s performance to that of first-reading breast radiologists across an entire screening population.

The research encompassed mammography screenings performed between August 4, 2014, and August 15, 2018, in the Region of Southern Denmark. It involved 249,402 screenings (149,495 women), and a total of 2,033 breast cancers. Screenings were assessed as normal or abnormal by breast radiologists through double-reading with arbitration.

The study’s key findings revealed that when Lunit INSIGHT MMG’s cut-off score was matched at the first reader mean specificity (capacity of correctly identifying cancer-free exams), it exhibited no statistically significant difference in overall accuracy compared to that of radiologists. However, when the AI threshold was matched at the first reader mean sensitivity (capacity of correctly diagnosing cancer), it showed lower specificity (97.5% vs. 97.7%) and positive predictive value (17.5% vs. 18.7%) and a higher recall rate (3.0% vs. 2.8%) than first readers.

Also Read: Fujifilm Showcases Enhanced Cloud-based Synapse® Enterprise Imaging Portfolio at the 2023 Radiological Society of North America Conference

The study findings suggest that with an appropriate cut-off score, Lunit INSIGHT MMG could feasibly replace first readers in a mammography double-reading setting. The cancers detected by AI but missed by radiologists suggest that integrating AI to support double-reading within screening could lead to an increase in the overall number of detected cancers. Importantly, the clinicopathological characteristics of the detected cancers would not change significantly with the implementation of AI.

“Following our first prospective study in Sweden, where Lunit INSIGHT MMG demonstrated its capability to replace one human reader in Europe’s double-reading setting—a role it currently fulfills at the Capio S:t Göran Hospital—we are excited to observe the outcomes of this recently published study, further confirming the effectiveness of Lunit INSIGHT MMG in standalone breast cancer detection,” said Brandon Suh, CEO of Lunit. “This research highlights the potential for our AI solution to significantly enhance mammography screenings. It not only offers a promising avenue to improve cancer detection rates but also provides valuable support to radiologists by alleviating their workloads. Ultimately, Lunit INSIGHT MMG has the potential to become an essential tool for both hospitals and patients.”

SOURCE: PRNewswire

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