GE HealthCare Receives FDA Clearance of a New Deep Learning Solution for Enhanced Image Quality in PET/CT, Advancing its Leadership Position in AI
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A type of artificial intelligence (AI),
Deep Learning (DL) technology can advance medical imaging capabilities by providing more robust, accurate, and data-driven information as well as support more efficient workflows and exams - Precision DL for PET/CT is the latest addition to GE HealthCare’s Effortless Recon DL portfolio of deep learning-based solutions – which also includes AIR Recon DL for MRI, TrueFidelity for CT, and Helix DL for X-ray – to significantly improve image quality and help better inform clinical decision-making for improved patient outcomes
Together, the availability of Precision DL with Omni Legend’s ultra-high sensitivity, third generation digital detector technology marks a new era for PET/CT performance and outcomes, transitioning from ToF technology to the next generation of PET/CT performance and enabling clinicians to decode coincidence events at exceptionally fine resolutions for informed diagnoses and treatment planning.
“We can’t treat what we don’t see, which is why we require precise image quality to help diagnose, plan treatment for, and monitor disease,” explains Prof.
Medical imaging is a crucial tool for diagnosing disease, identifying a course of treatment, and determining whether therapy is successful for millions of patients around the world. Image quality matters – to the clinician and the patient – making the difference between finding a small lesion early or in its later stages, potentially affecting patient outcomes and disease management. For this reason, clinicians are increasingly adopting AI-based solutions for enhanced image quality compared to that of standard care.
A subset of AI and machine learning, deep learning utilizes deep neural networks, which consist of layers of mathematical equations and millions of connections and parameters that are trained and strengthened based on the desired output. In doing so, deep learning is a significant leap forward in efficacy compared to previous processes that require more human intervention, handling complex models and vast numbers of parameters with ease to help provide clinicians the time and insights they need to more confidently diagnose and care for patients.
“One of the main advantages of moving fully into the future of AI and deep learning is making state-of-the-art imaging accessible to more practices, across more care areas than ever before,” shares
More than a new imaging processing technique, Precision DL was engineered with a sophisticated deep neural network trained on thousands of images created with multiple reconstruction methods, including ToF reconstruction, to provide the image quality performance benefits typically associated with hardware-based ToF reconstruction, such as improved contrast-to-noise ratio and contrast recoveryi.
Precision DL processes patient images for enhanced image quality, including:
- 11% improvement on average in contrast recoveryi,
- 23% improvement on average in contrast-to-noise ratioi,
- 42% increase on average in small, low contrast lesion detectabilityviii, and
- 14% improvement feature quantification accuracyii.
Altogether, a study published in the
GE HealthCare’s deep-learning-enabled software is revolutionizing image acquisition and reconstruction in MR, CT, X-ray and now PET/CT, empowering clinicians and helping improve patient outcomes.
For more information about GE HealthCare’s Precision DL, Omni Legend PET/CT, or Effortless Workflow DL, please visit gehealthcare.com.
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i Precision DL with
ii Precision DL with
iii Based on orders data of GE HealthCare PET/CT systems since 2010.
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v Up to 53% reduction of PET scan time on
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vii Not a consultant for GEHC: The statements by GE’s customers described here are based on their own opinions and on results that were achieved in the customer’s unique setting. Since there is no “typical” hospital and many variables exist, i.e. hospital size, case mix, etc. there can be no guarantee that other customers will achieve the same results.
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ix Mehranian, A., Wollenweber, S.D., Walker, M.D. et al. Deep learning–based time-of-flight (ToF) image enhancement of non-ToF PET scans. Eur J of Nucl Med Mol Imaging 49, 3740–3749 (2022). https://doi.org/10.1007/s00259-022-05824-7
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