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AI Software Integrated into X-Ray Imaging Systems Helps Identify Bone Trauma at POC

By MedImaging International staff writers
Posted on 26 Jul 2022
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Image: BoneView AI software will be integrated with Fujifilm X-ray systems (Photo courtesy of Fujifilm)
Image: BoneView AI software will be integrated with Fujifilm X-ray systems (Photo courtesy of Fujifilm)

A revolutionary AI software designed to assist radiologists and emergency clinicians in the diagnosis of skeletal fractures uses advanced algorithms to detect and localize lesions on X-rays – graphically highlighting areas of interest – before submitting the images to radiologists for validation.

Fujifilm (Tokyo, Japan) has equipped its X-ray systems with a new image processing box called EX-Mobile enabling them to connect with GLEAMER’s (Paris, France) BoneView software. Results are available within 30 seconds at the point of care, providing healthcare professionals with additional support to help improve patient management. The user-friendly software can be seamlessly integrated into Fujifilm’s comprehensive X-ray modality line-up, making it perfectly suited to small or remote clinics, pop-up medical centers, nursing homes, up to large multi-function institutions. This will aid medical staff in the rapid identification of patients with suspected fractures, triaging them for further investigation to ease workflows and enhance patient care pathways.

A clinical trial involving appendicular skeletal fractures found that BoneView reduced the number of false positives by 41.9 %, and improved fracture detection sensitivity and specificity. These results are supported by another study involving additional anatomical locations, where AI assistance reduced radiograph reading times by 6.3 seconds per patient.

“It is very exciting to be part of this partnership. BoneView is an extraordinary tool that will assist busy radiographers, radiologists and clinicians to better manage patients at the point of care, adding value for both staff and the patients,” said Richard Cahalane, Product Manager Digital Modalities, FUJIFILM Europe GmbH.

“Having Fujifilm on board has been crucial in the development of this product, and to get it in front of the clinicians that need it. AI technologies are becoming increasingly established in the medical sector, and really proving their value. Any medical innovation is about improving the care of the patient, and BoneView promises to do just that,” added Christian Allouche, CEO at GLEAMER.

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