DeepHealth, a wholly-owned subsidiary of RadNet, Inc. (NASDAQ:
RDNT) and a global leader in AI-powered radiology and health
informatics, today announces a data and AI development partnership
with HOPPR (www.hoppr.ai). This collaboration will commercialize a
pioneering Medical-Grade Generalized Foundational Model and foster
the development of Fine-Tuned models for breast, prostate, and lung
cancer detection, leveraging generative medical imaging-focused AI
and robust, diverse data sets.
HOPPR’s Medical-Grade Generalized Foundation Model enhances
medical research and hypotheses while simplifying and lowering
costs for data collection and training. AI Foundational Models are
versatile, pre-trained architectures that serve as a starting point
for customizing specific tasks through Fine-Tuned models, for which
expertise in a particular domain is critical. The partnership seeks
to create new Fine-Tuned models, powered by HOPPR’s Medical-Grade
Generalized Foundation Model, to bolster DeepHealth’s AI-powered
health informatics portfolio by enabling it to create future
solutions more quickly and efficiently and to support the evolution
of radiology in the coming years. DeepHealth’s cloud-native
operating system (OS) is designed to integrate clinical and
operational tools, to provide radiology workflow efficiencies and
improve patient outcomes.
Sham Sokka, PhD, Chief Operating and Technology Officer,
DeepHealth, said, “DeepHealth’s partnership with HOPPR is a
significant leap forward in DeepHealth’s mission to empower
breakthroughs in care through enabling new diagnostic imaging
technologies.”
“The integration of Foundational Models like those being
developed by HOPPR in medical imaging is intended to boost
diagnostic accuracy, speed up image analysis, and pave the way for
generative AI in non-clinical applications, including workflow
automation, ultimately enhancing patient care and outcomes in
radiology. At DeepHealth, we are not just a provider of AI
technology but are creating a comprehensive portfolio of solutions
for medical imaging, seamlessly blending AI-based automation and
efficiencies into an operating system for radiology and diagnostic
workflows,” added Mr. Sokka.
HOPPR’s robust medical-grade infrastructure and tools for
accelerating AI and machine learning development, combined with
DeepHealth’s deep clinical expertise and successful track record in
deploying AI tools at scale and in real-world settings, aim to
unlock significant diagnostic, clinical, and operational value from
medical imaging data and advance imaging across modalities.
“We are pleased to partner with DeepHealth to transform
healthcare informatics,” said Khan Siddiqui, MD – Chief Executive
Officer of HOPPR. “Our collaboration on Medical-Grade Foundation
Models and infrastructure supporting them could significantly
enhance medical imaging, leveraging AI’s transformative potential
to improve clinical care efficiency and quality. HOPPR is
collaborating with DeepHealth to build a unified clinical and
operational workflow that enables radiologists to efficiently
access the information they need through the systems they
know.”
DeepHealth’s unique 'one system' approach addresses challenges
across the entire radiology value chain, from referral management,
scheduling, and patient engagement to technologist and radiologist
workflows. DeepHealth OS supports radiology departments with a
comprehensive solution for medical imaging, including operational
solutions and end-to-end services across the care continuum.
DeepHealth and other RadNet Digital Health technology is used in
over 800 clinical sites in select countries, and its AI tools
perform over fifteen million exams annually, resulting in more than
two million AI-informed diagnoses.
About DeepHealthDeepHealth, a wholly-owned
subsidiary of RadNet, Inc. (NASDAQ: RDNT), provides AI-powered
health informatics to empower breakthroughs in care delivery. The
heart of its portfolio of solutions, the DeepHealth OS, is a
cloud-native operating system that orchestrates all clinical and
operational data to drive value across the enterprise. The
portfolio builds on the strengths of RadNet’s existing digital
health businesses and products, including eRAD Radiology
Information Systems and Image Management Systems, Aidence lung AI,
Quantib prostate AI, and DeepHealth breast AI. DeepHealth aims to
elevate the role of the radiologist beyond radiology and across the
entire care pathway. It empowers all users across the care
continuum with personalized workflows to make work easier and more
meaningful. DeepHealth leverages advanced AI operational and
clinical technologies in breast, lung, brain, and prostate health,
leading to increased operational efficiency, clinical confidence,
and patient outcomes. https://deephealth.com/
About HOPPR AIHOPPR is transforming medical
imaging by providing medical-grade foundation models and
infrastructure that enables real-time engagement with data and
integration with clinical systems that enable physicians,
technicians, and clinical support staff to “converse” with medical
imaging studies, changing medical imaging interactions from static
to dynamic. HOPPR has created both medical and administrative use
cases that it will unveil with commercial partners at RSNA in
December 2024. https://hoppr.ai/
Forward Looking Statement This press release
contains “forward-looking statements” within the meaning of the
safe harbor provisions of the U.S. Private Securities Litigation
Reform Act of 1995. Forward-looking statements, including
statements regarding the capabilities of the DeepHealth health
informatics product portfolio, the DeepHealth OS and each’s impact
on radiology practices and healthcare workflow, are expressions of
our current beliefs, expectations and assumptions regarding the
future of our business, future plans and strategies, projections,
and anticipated future conditions, events and trends.
Forward-looking statements can generally be identified by words
such as: “anticipate,” “intend,” “plan,” “goal,” “seek,” “believe,”
“project,” “estimate,” “expect,” “strategy,” “future,” “likely,”
“may,” “should,” “will” and similar references to future
periods.
Forward-looking statements are neither historical facts nor
assurances of future performance. Because forward-looking
statements relate to the future, they are inherently subject to
uncertainties, risks and changes in circumstances that are
difficult to predict and many of which are outside of our control.
Our actual results and financial condition may differ materially
from those indicated in the forward-looking statements. Therefore,
you should not place undue reliance on any of these forward-looking
statements.
For media inquiries, please contact:
Andra AxenteCommunications
DirectorPhone: +31 614 440971Email:
andra.axente@deephealth.com
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