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AI-Based Image Reconstruction Solution Receives FDA Clearance

By MedImaging International staff writers
Posted on 06 Jul 2019
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Image: A comparison between CT images reconstructed using standard iterative reconstruction software and Canon\'s AiCE solution (Photo courtesy of Canon Medical).
Image: A comparison between CT images reconstructed using standard iterative reconstruction software and Canon\'s AiCE solution (Photo courtesy of Canon Medical).
Canon Medical Systems USA, Inc. (Tustin, CA, USA) has received 510(k) clearance from the FDA for its new deep convolutional neural network (DCNN) image reconstruction technology. Canon Medical’s Advanced Intelligent Clear-IQ Engine (AiCE) uses a deep learning algorithm to differentiate signal from noise so that it can suppress noise while enhancing signal.

The algorithm has the ability to learn from the high image quality of Model Based Iterative Reconstruction (MBIR) to reconstruct CT images with improved spatial resolution, 3-5x times faster than traditional MBIR. With AiCE’s deep learning approach, thousands of features learned during training help to differentiate signal from noise for improved resolution. AiCE applies a pre-trained DCNN to enhance spatial resolution while simultaneously reducing noise with reconstruction speeds fast enough for busy clinical environments.

“Our AiCE technology utilizes a next generation approach to CT image reconstruction, further proving Canon Medical’s leadership and commitment to innovation in diagnostic imaging,” said Dominic Smith, senior director, CT, PET/CT, and MR Business Units, Canon Medical Systems USA. “This technology doesn’t just meet our customers’ evolving needs, it exceeds them, opening doors to clearer, more precise images to help optimize patient care.”

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