Varian brings machine learning to proton treatment planning with Eclipse v16

Varian brings machine learning to proton treatment planning with Eclipse v16

Press releases may be edited for formatting or style | April 01, 2020 Artificial Intelligence Health IT Rad Oncology Proton Therapy
PALO ALTO, Calif., March 31, 2020 /PRNewswire/ -- RapidPlan PT is the first clinical application of machine learning in proton treatment planning

RT Peer Review is designed to streamline and accelerate the radiation therapy peer review process

Eclipse v16 has received CE mark and is 510(k) pending

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Driven by its Intelligent Cancer Care approach in developing new solutions that use advanced technologies like machine learning, Varian (NYSE: VAR), today announced the newest release of its treatment planning system, Eclipse™ v16. This new release includes intelligent features such as RapidPlan® PT, the first clinical application of machine learning in proton treatment planning, and RT Peer Review, which is a collaborative workspace designed to streamline and accelerate the peer review process for radiotherapy treatment plans.

Previously only available for photon-based radiotherapy treatment planning, RapidPlan is knowledge-based treatment planning software that enables clinicians to leverage knowledge and data from similar prior treatment plans to quickly develop high-quality personalized plans for patients. This knowledge-based planning software is now available for proton treatment planning with RapidPlan PT. The software also allows dose prediction with machine learning models that can be used as a decision support tool to determine which patients would be appropriate for proton or photon therapy. Varian is the first vendor in the industry to offer machine learning capability in both proton and photon treatment planning.

"With the number of operational proton treatment rooms continuing to increase, there is a need for experienced proton therapy clinicians," said Kolleen Kennedy, chief growth officer, president, Proton Solutions, Varian. "RapidPlan PT helps bridge the learning curve, allowing established centers to share their models and clinical experience. The machine learning in RapidPlan PT has the potential to reduce proton treatment plan optimization from a one to eight hour process, as reported by clinical proton centers, to less than 10 minutes, while also potentially improving plan quality."

In many radiotherapy departments, radiation therapy peer review meetings have been routinely integrated into the clinical QA process for safer healthcare delivery for the patient. Although the relevant patient information is manually retrievable from the clinical database, there is currently no efficient and effective platform to support these peer reviews. The RT Peer Review feature in Eclipse v16 is designed for the oncology community to seamlessly integrate this review process into their normal clinical workflow by automatically presenting the necessary information that is required for peer review.


About Varian
At Varian, we envision a world without fear of cancer. For more than 70 years, we have developed, built and delivered innovative cancer care technologies and solutions for our clinical partners around the globe to help them treat millions of patients each year. With an Intelligent Cancer Care approach, we are harnessing advanced technologies like artificial intelligence, machine learning and data analytics to enhance cancer treatment and expand access to care. Our 10,000 employees across 70 locations keep the patient and our clinical partners at the center of our thinking as we power new victories in cancer care. Because, for cancer patients everywhere, their fight is our fight.


SOURCE Varian

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