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Omni Legend

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At A Glance

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See small lesions¹

Better than the top-of-the-line digital platform1

High sensitivity and resolution

Powered by an all-new digital detector

Ultra-fast scanning

With enhanced workflow and multi-dimensional clinical flexibility

This is the start of a whole new era of PET/CT

Omni Legend is the first system we’re introducing on our all-new, all-digital Omni platform. The remarkable digital detector design at its core delivers high resolution, as well as an unparalleled increase in true NEMA sensitivity, delivering the highest sensitivity per centimeter in the market.2 Greater sensitivity may not only lead to fast scan times and lower dose, but also lesion detectability that is comparable or better than the top-of-the-line digital platform.1

Beyond its exceptional detector design, Omni Legend also delivers vast improvements to the entire PET/CT scanning process

Omni Legend includes our new Precision DL* technology while excelling in PET/CT operational efficiency and patient comfort with a collection of intuitive workflow solutions enhanced by artificial intelligence. And with the ability to image the diagnostics portion of theranostics as well as short life tracers and dynamic protocols,3 it empowers you with greater clinical information across more procedure types than ever before. Only Omni Legend is designed with all of these critical components in one PET/CT system to deliver answers at the speed of sight.

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New Platform
The one and future PET/CT platform

As a worldwide leader in PET/CT, we are constantly innovating new ways to empower you to make this life-saving technology more helpful for more patients. Given the rapidly changing healthcare landscape, the time has come for an all-new PET/CT platform designed to surpass both your clinical challenges today, and well into the future. We call it Omni because its potential is limitless and we believe it is the future of PET/CT. Every component of Omni is entirely new. It was built on a foundation formed by decades of longstanding technological leadership and clinical collaborations with a wide array of innovative enhancements incorporated at every aspect of the scan experience.

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Over the next 10 to 20 years, we see two great needs in PET/CT. The flexibility to scan beyond FDG with new, emerging tracers that can enable different procedures such as the diagnostics portion of theranostics imaging and the capability to accommodate increasing patient volumes. These needs require unprecedented levels of flexibility and capability, allowing you to determine which direction to grow your practice. In order to grant that greater freedom for your team both now and in the long run, we have designed a PET/CT platform with the future in mind.

PETCT-Feature 1

Not only does Omni feature today’s innovative technology engineered by the team that built the most trusted systems in the industry, its scalable design uniquely positions the platform for future developments in the field of PET/CT imaging. Future-ready capabilities include a multi-directional, upgradable platform design that can possibly expand in each of the core dimensions of PET/CT imaging, including axial field-of-view, digital detector technology, software, CT capabilities and imaging of new tracers.

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High sensitivity and resolution

Diagnostic & treatment confidence

All-digital

Innovative detector design
Deep learning image processing*

Enhanced workflow

Improved patient experience

Single platform

Multi-dimensional clinical flexibility

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Technology

See it all. In an all-new digital light.

As PET/CT continues to grow into clinical areas outside of oncology, the need for a PET/CT solution that makes the power and possibility of digital detection more ubiquitous and accessible becomes increasingly more important.

We built Omni Legend from the ground up to harness the power of digital dBGO, an innovative detector material with a small crystal size capable of producing high resolution images and exceptional image quality. This creates a brand-new category of detector technology that delivers more than two times the sensitivity than prior digital scanners,4 enabling fast scans5 at a lower dose.6 The end result is a remarkable design that’s more accessible to more people today and with a detector assembly engineered for future upgrades that allows for axial field-of-view scalability up to 128 cm.

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This changes everything

The detector material at the core of the Omni Digital Detector takes PET/CT to the next level. Its high density and stopping power along with a 30 mm crystal depth make it possible to achieve an astronomical increase in NEMA sensitivity with up to 46 cps/kBq across a 32 cm axial field-of-view.4 This extreme rise in sensitivity goes beyond just providing for a higher quality image. Along with an exceptionally high NECR curve, it’s what may enable you to image high count rate tracers beyond FDG with the potential to increase the number of procedures your staff can execute, including procedures beyond oncology such as cardiac and neuro imaging.

Feature Cards

Up to 46 cps/kBq NEMA sensitivity⁴

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30 mm crystal depth with high stopping power

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Software
Enhance your imaging with deep learning

The technological advancements achieved by Omni Legend don’t stop with the hardware. Omni Legend is all-digital and uniquely designed with innovative Precision DL* technology.

More than a new processing technique, Precision DL* is engineered with a sophisticated deep neural network trained on thousands of images made with multiple reconstruction methods. The intent is to provide the image quality performance benefits most associated with hardware-based Time-of-Flight, better contrast-to-noise ratio and contrast recovery7. This combination of Precision DL* and the digital dBGO-based Omni Digital Detector’s ultra-high sensitivity inside Omni Legend enables our vision for the future of PET/CT image quality.

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Omni Legend takes the possibilities of Precision DL* even further because it also includes Q.Clear image reconstruction technology (BSREM) and MotionFree, our proven, deviceless respiratory motion correction technology. Q.Clear helps to ensure reliable quantification, while MotionFree operates seamlessly in the background to correct respiratory motion artifacts for all patient types.

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All in all, Omni Legend utilizes breakthroughs in deep learning designed to help deliver clearer images and greater diagnostic confidence. And this is all designed to be accomplished with deep learning software. There is no longer a need to invest in hardware to deliver the image quality performance characteristics of Time-of-Flight. With Precision DL*, you get software engineered to provide increased small, low-contrast lesion detectability compared to our conventional Time-of-Flight PET/CT scanner.8

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PATIENT EXPERIENCE

Surroundings they can take comfort in

We recognize that patient comfort is important to you. It’s a top priority for us too, which is why we are always looking for new ways to improve the overall PET/CT patient experience.

We’ve learned that often it’s the little things that make the biggest difference. Like a simple visual distraction or a subtle lighting effect.

With Omni Legend, we’ve added an array of new features to make the scan as relaxing as possible for patients. The system features LED ambient lighting to help create a calming mood as well as a graphic pattern on the upper area of the bore to help in both alleviating stress and reducing movement for nervous patients. These seemingly small details can have a huge impact on improving the patient experience.

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One patient who was previously scanned on Omni Legend came back two months later for her next follow-up PET scan and asked if she can have it done on the new system because she knew it would be faster and more comforting with the ambient lighting.⁹

Workflow
Full speed ahead

Operational efficiency continues to be a top barrier to growing PET/CT procedure volumes.10 Omni Legend overcomes this barrier with a collection of intuitive workflow solutions enhanced by AI.

Our innovative Auto Positioning feature creates a hands-free positioning experience by generating a 3D model of the patient’s body, pinpointing the center of the scan range using a deep learning algorithm and automatically aligning it with the isocenter of the bore. With one click, Auto Positioning streamlines patient setup, and most importantly, frees up technologists to focus on making your patients feel more comfortable.

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Additional time-saving features include a fast data quality assurance process that saves time with streamlined calibration as well as simplified protocol selection on the gantry touchscreen and a new user interface to enable an easy PET/CT process from start to finish.

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Capability

Precision and flexibility without compromise

PET/CT imaging is constantly evolving

We have built a system that can evolve along with it. Omni Legend is built on a platform designed with the future in mind, so it can provide the flexibility your hospital needs to help protect your investment into the future.

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Your Omni Legend system can be updated and reliable for years to come

The highest sensitivity per cm in the market2 and scalability enable your PET/CT system to be optimized for both current and emerging tracers as well as for procedures beyond oncology such as cardiac and neuro imaging.

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THERANOSTICS

Built with theranostics in mind

Ability to image diagnostics portion of theranostics

Seen here is a theranostics 18F-PSMA case, after prostate removal. There was suspected recurrence due to elevated markers. No pathological findings at the surgery area.

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Able to image Gallium 68 for diagnosis, staging or restaging

This image is a theranostics 68Ga-PSMA case for prostate cancer assessment response to treatment. There were pathological findings in the lymph nodes in the pelvic area.

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Summary

Grow your practice in any direction with Omni Legend

Omni Legend is built with innovative capabilities to make it an industry-leading PET/CT platform, enabling exemplary diagnostic confidence for your team now and in the future. We designed Omni Legend with theranostics in mind by utilizing ultra-high sensitivity, high resolution, Q.Clear and MotionFree to help personalize dose as well as imaging 68Ga for diagnosis, staging or restaging. The first-of-its-kind Omni Digital Detector and Precision DL* are designed to reach new levels of sensitivity and detectability for incredibly clear images. And the brand-new Omni platform gives you exceptional control over the future of your PET/CT capability going forward.

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DISCLAIMERS

*Omni Legend and Precision DL are CE marked. Omni Legend is 510(k)-cleared by the U.S. FDA. Precision DL is 510(k)-pending with the U.S. FDA. Not available for sale in the United States. Any clinical image shown that was processed with Precision DL was obtained from an investigational device, limited by U.S. law to investigational use.

  1. 1. Omni Legend 32 cm increases small lesion detectability 16% on average and up to 20%, as compared to Discovery™ MI 25 cm with matched scan time/injected dose, as demonstrated in phantom testing using a model observer with 4 mm lesions; average of different reconstruction methods.
  2. 2. Omni Legend 32 cm has highest sensitivity per cm for conventional (non-total body) PET/CT systems. Data On File.
  3. 3. Short life tracers such as Rubidium-82 used in PET cardiology scans. For dynamic protocols such as Whole Body Dynamic Acquisition, the Dynamic IQ processing application is required.
  4. 4. Omni Legend 32 cm has up to 2.2 increase in system sensitivity as compared to Discovery™ MI 25 cm. Measurement follows NEMA NU 2-2018.
  5. 5. Up to 53% reduction of PET scan time on Omni Legend 32 cm compared to Discovery™ MI 25 cm, as demonstrated in phantom testing.
  6. 6. Up to 60% reduction in PET dose with Omni Legend 32 cm compared to Discovery™ MI 25 cm, as demonstrated in phantom testing.
  7. 7. As compared to QCHD. Contrast Recovery (CR) and Contrast to Noise Ratio (CNR) demonstrated using clinical data with inserted lesions of known size, location, and contrast. Using data from Omni Legend 32 cm, CR and CNR were measured using H-PDL and QCHD.
  8. 8. At matched scan time and injected dose. Detectability using clinical data with an inserted 8 mm diameter liver lesion of known location and 2:1 contrast using a CHO model observer, comparing SNR from Omni Legend 32 cm with QCHD and Precision DL to SNR from Discovery MI 25 cm with QCFX.
  9. 9. The statement by the GE Healthcare customer described here is based on her own opinions and experiences and on results that were achieved in the customer’s unique setting. Since there is no typical hospital and many variables exist, such as hospital size, case mix, etc., there can be no guarantee that other customers will achieve the same results.
  10. 10. Data on file.

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JB01007AU March 2023