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Medical AI Ecosystem Innovation Forum and iMedLoop Global Medical Imaging Data Platform Launch Held in Beijing

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When Healthcare Meets AI: A New Era of Ecosystem-wide Innovation Is Accelerating

BEIJING, July 10, 2026 /PRNewswire/ — On July 4, the Medical AI Ecosystem Innovation Forum and iMedLoop Global Medical Imaging Data Platform Launch was held in Beijing.

Jointly organized by Liaowang Finance, under Liaowang Weekly, and Diagens Technology, the event was guided by the theme of “AI for Science”, bringing together stakeholders from government, industry, academia, research, and healthcare across the medical AI ecosystem. More than 100 representatives attended the forum, including experts and leaders from the Chinese Academy of Sciences, the Chinese Academy of Engineering, the China National Health Association, the China Academy of Information and Communications Technology (CAICT), the Cyberspace Administration of Zhejiang Province, Zhejiang Cancer Hospital, Ruijin Hospital Affiliated to Shanghai Jiao Tong University School of Medicine, Hangzhou Data Group, and Legend Holdings.

During the event, Diagens Technology officially launched the iMedLoop Global Medical Imaging Data Platform, a proprietary platform developed specifically for the medical AI industry. More than 30 strategic cooperation agreements were also signed. Together, these initiatives establish a practical platform for collaboration among government, industry, academia, research, and healthcare sectors to advance the high-quality development of medical AI, while providing infrastructure to support China’s participation in the global medical AI ecosystem.

Unlocking the Full Value of Data for Medical AI

As the digital economy converges with the Healthy China strategy, artificial intelligence has become a key driver of new-quality productive forces in healthcare. With the continued advancement of tiered diagnosis and treatment, precision medicine, and smart hospitals, medical imaging has become an essential foundation for disease screening, clinical diagnosis, and medical research. As a result, the value of medical imaging data continues to grow, making compliant data circulation and utilization an inevitable direction for industry development. China’s National Data Administration, in its Action Plan for the Development of Trusted Data Spaces (2024–2028), has explicitly identified healthcare as one of the priority sectors for the development of trusted data spaces.

During the keynote session, Professor Chen Runsheng, bioinformatician and researcher at the Institute of Biophysics, Chinese Academy of Sciences, delivered a presentation entitled “Technical Principles and Future Challenges of Large AI Models.” He explained the technological foundations, innovative nature, and future prospects of large AI models, noting that artificial intelligence has become deeply integrated into medical imaging and is increasingly serving as an essential analytical tool. He remarked that AI can integrate the knowledge and expertise of medical imaging specialists, bringing together multiple analytical approaches to deliver high-quality imaging analysis capabilities. In his view, AI’s greatest strength lies not only in processing vast volumes of imaging data, but also in consolidating the knowledge and experience of multiple experts, overcoming the limitations of individual interpretation in ways that traditional manual image reading cannot achieve.

Drawing on frontline experience in hospital digital and smart transformation, Cai Xiujun, Academician of the Chinese Academy of Sciences and President of Sir Run Run Shaw Hospital, vividly demonstrated the innovative applications of AI in healthcare. Through practical examples — including remote robotic surgery, remote ultrasound diagnosis, intelligent pre-consultation systems, and AI-assisted medical imaging diagnosis — he demonstrated the innovative applications of AI in healthcare. Academician Cai emphasized that the core value of medical AI lies in solving real clinical challenges, improving the capabilities of primary healthcare institutions, and continuously enhancing patient experience. He also identified data quality, data scale, and data security as the three critical factors determining the success of AI applications in healthcare. Poorly standardized or low-quality data, he noted, directly reduces AI performance and ultimately limits its clinical value and broader adoption. He called on the industry to prioritize standardized medical data governance and robust compliance and security frameworks as the foundation for AI-enabled healthcare.

Academician Dong Jiahong of the Chinese Academy of Engineering, Dean of the School of Clinical Medicine at Tsinghua University and President of Beijing Tsinghua Changgung Hospital, stated that the engineering foundations for AI hospitals are now in place, driven by the simultaneous maturation of three pillars: the commercialization of AI-powered medical devices, the advancement of large medical AI models to near-specialist levels of clinical reasoning, and the engineering development of AI agents. Unlike smart hospitals, internet hospitals, or medical alliances, AI hospitals, he explained, are built upon digital twins and powered by AI-native operational logic. Such hospitals fundamentally reshape the entire healthcare workflow — from perception and cognition to decision-making and service delivery — enabling seamless integration of online and offline healthcare while providing proactive, lifecycle-wide health management that truly realizes the vision of AI Healthcare.

Dou Xizhao, President of the China National Health Association, observed that medical AI is rapidly evolving from isolated product applications toward comprehensive, ecosystem-driven development. Industry competition, he said, is no longer defined solely by algorithms and models, but increasingly by data resources, standards, application scenarios, innovation ecosystems, and integrated service capabilities. He emphasized that medical imaging data, given its scale, value, and broad applicability, provides a critical foundation for AI-assisted diagnosis and medical research innovation. He called on all stakeholders to strengthen open collaboration and, under the principles of legal compliance and data security, fully unlock the value of medical data so that it can better serve medical research, clinical practice, and industrial innovation.

Building a Trusted Industrial Foundation for Medical Imaging AI

Building a trusted collaborative platform that spans the entire medical imaging data lifecycle is fundamental for the industry to overcome development bottlenecks and achieve large-scale adoption.

At the event, Dr. Song Ning, Chairman of the Board and Chief Executive Officer of Diagens Technology, officially unveiled the iMedLoop Global Medical Imaging Data Platform. He noted that there are more than 3,000 medical imaging indications worldwide, while traditional AI model training typically requires hundreds of thousands of annotated images, with each annotation taking approximately one hour. Even if hundreds of thousands of imaging, pathology, and laboratory professionals across China devoted one hour per day to annotation work, completing the annotations for all projects would still take more than a thousand years.

To address the industry’s heavy reliance on annotated data for model training, Diagens Technology launched iMedImage®, the world’s largest medical imaging foundation model by parameter scale in its field, in May 2025. According to Dr. Song, the foundation model reduces the amount of annotated data required for disease-specific model training to one two-hundredth of traditional levels, shortens development cycles to one-twelfth, and reduces both development costs and computing expenses to one-tenth. Leveraging this foundation model, Diagens has participated in six national and provincial-level major projects and collaborated with 87 leading hospitals over the past 12 months to train 145 vertical AI models.

Regarding data annotation, Dr. Song identified four major pain points in current global annotation tools: inconsistent data formats that are difficult to process, low manual annotation efficiency, uneven annotation accuracy, and challenges in multi-person collaboration and quality control. To address these issues, Diagens introduced iMedStudio, a new-generation intelligent annotation tool featuring four core capabilities: multimodal integration, human-AI collaboration, precise segmentation, and intelligent arbitration.

iMedLoop integrates the iMedImage® foundation model, the iMedStudio intelligent annotation tool, and the iMedMaaS online model training and deployment platform to create a closed-loop ecosystem for medical data annotation and circulation, vertical model training, and model deployment. The platform is now officially open, with more than 3,000 professional annotators onboarded, 28.95 million high-quality data records and over 100 medical AI models deployed, and active participation from multiple data suppliers, AI healthcare companies, and ecosystem partners, establishing a strong resource and industrial foundation for the global medical AI industry.

Dr. Song stated that the platform is committed to deep integration of technology, data, and application scenarios, and that through the joint efforts of hospitals, research institutions, and technology companies, China’s medical AI industry has the potential to become a new pillar of the global healthcare sector.

Collaboratively Building an Innovative Medical AI Ecosystem

The high-quality development of medical AI requires coordinated efforts from diverse stakeholders. A roundtable discussion was held during the forum, bringing together representatives from basic research, clinical practice, policy and standards, and platform operations to discuss the construction of an industry-wide innovation ecosystem.

Academician Zhan Qimin of the Chinese Academy of Engineering, Director of the National Institute of Health Data Science at Peking University, stated that AI is driving oncology toward more personalized and precise treatment. “In the past, treatments were often broad and one-size-fits-all, without sufficient consideration for individual differences and precision. Such approaches could lead to significant side effects and limited efficacy. Today, by combining multi-omics data with AI analysis and applying the insights to pathology slides, it is becoming possible to provide each cancer patient with a truly tailored treatment plan.” He also highlighted AI’s potential in drug discovery, including shorter development cycles, lower costs, and higher success rates. In his view, the integration of AI and medicine is shortening the distance between the laboratory and the clinic, providing sustained momentum for the evolution of the medical AI ecosystem.

Zhang Hong, Deputy Party Secretary and Executive President of Zhejiang Cancer Hospital, emphasized the importance of real-world clinical application scenarios within ecosystem collaboration. He argued that for AI to be adopted in hospitals, it must meet three requirements: improved efficiency, ease of use, and data security. “All three standards are indispensable.” Clinical practice, he said, is both the ultimate testing ground for AI value and the source of feedback that drives technological iteration. Only when hospitals can afford to use AI and use it effectively can AI complete the value loop from research to application.

Ren Jiuxuan, Deputy Director of the Digital Health Department at the Institute of Cloud Computing and Digitalization of the China Academy of Information and Communications Technology, stated that the healthy development of the medical AI ecosystem depends on a unified evaluation framework. “We are building a dual-track evaluation system covering both laboratory testing and clinical validation. In addition to general model capability assessments, we have introduced testing for AI agents capable of multi-turn dialogue, because real clinical diagnosis is an interactive process in which patients and doctors gradually uncover information together rather than providing all information to AI at once.” He noted that China has advantages in data resources and application scenarios, that the diversity of domestic AI products already exceeds that of the United States, and that the computing gap between the two countries is narrowing. He believes that high-quality medical datasets will experience explosive industry growth within the next one to two years.

From the perspective of industrial practice, Dr. Song Ning explained the technological foundation of ecosystem collaboration. “iMedImage® is the technological foundation; without it, building an ecosystem would be like building a castle on sand. iMedLoop is the collaborative platform that integrates annotation, governance, validation, and the entire workflow.” He emphasized that the platform will remain open and work with medical institutions, research organizations, and industry partners to lower the barriers to AI-driven healthcare innovation. “The greatest challenge remains technological breakthroughs. Once the underlying technology advances, regulation and commercialization will gradually follow. What is required is long-term commitment.”

Zheng Mingzhi, former Vice Chairman of the Zhejiang Federation of Industry and Commerce and Vice President of the Zhejiang Merchants Development Institute, remarked that the future of medicine belongs not only to those who understand AI, but also to those who can apply AI appropriately. He stressed that the healthcare industry must keep pace with the AI era and make AI a true clinical support tool and assistant for physicians. In this process, he said, the iMedLoop platform is poised to play a very important role.

A strategic cooperation signing ceremony for the co-development of the medical AI ecosystem was also held during the forum. Hangzhou Data Group, Legend Holdings, the Wenzhou Municipal Health Commission, Zhengzhou People’s Hospital, the School of Mathematics, Physics and Medicine of Zhejiang Normal University, InferVision, and dozens of other institutions reached cooperation agreements. Leveraging the iMedLoop platform, the parties will collaborate on data governance, algorithm innovation, model development, and clinical validation to build a comprehensive medical AI innovation ecosystem, explore new pathways for improving healthcare delivery, and contribute to the advancement of the Healthy China initiative.

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SOURCE Diagens Technology

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AlgoLaser Launches DIY KIT MK3: Start, Just That Simple–A Smarter Way to Laser Engrave

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SHENZHEN, China, July 11, 2026 /PRNewswire/ — AlgoLaser, a global leader in smart laser engraving technology, today officially launched its latest desktop laser engraver: the DIY KIT MK3. For years, complex assembly, cumbersome operation, and steep learning curves have kept many creators from exploring laser engraving. The DIY KIT MK3 eliminates these barriers. Built around the core promise to ‘Start, Just That Simple,’ it features optimized structural engineering, an intuitive AlgoOS-powered HD touchscreen, and significantly boosted laser performance. From unboxing to final creation, the DIY KIT MK3 seamlessly streamlines the entire process while delivering exceptional value.

Streamlined Assembly for Immediate Use

The DIY KIT MK3 introduces an innovative Structrix Frame, featuring precision alignment slots and cable management. Arriving 95% pre-assembled, the machine can be fully set up in just five simple steps in under 10 minutes. This completely eliminates traditional frustrations like belt tensioning, repeated alignments, and messy wiring.

Intelligent, Computer-Free Operation

Powered by the proprietary AlgoOS, the built-in HD touchscreen enables fully offline, standalone operation. It boasts smart parameter recommendations, drag-and-drop positioning, and direct image processing. Combined with over 400 ready-to-use projects and creative tools like AlgoType and AlgoSketch, the system allows beginners to start creating instantly—no computer or technical expertise required.

Enhanced Power and Speed for Higher Productivity

Equipped with new 8W, 15W, and 20W laser modules, the DIY KIT MK3 delivers up to a 60% power increase over its predecessor. Robust structural and material upgrades fully harness this power, ensuring stable, high-precision engraving at speeds up to 15,000 mm/min. Additionally, the spacious 400×400mm workspace and an efficient repetitive processing mode make intricate designs and small-batch production highly practical, empowering users to easily monetize their craft.

Modular Design for Long-Term Flexibility

The DIY KIT MK3’s modular architecture supports seamless laser module upgrades and effortless integration with accessories like rotary attachments. This flexibility adapts to diverse needs—from scaling an Etsy business to exploring family DIY projects. Furthermore, with an optional Class 1 safety enclosure and multiple built-in monitoring systems, the DIY KIT MK3 provides peace of mind, making it safe for both commercial studios and home environments.

Availability

The DIY KIT MK3 is now available for pre-order exclusively on the official website, algolaser.com. From July 11–31, customers can order during the Super Early Bird window and enjoy exclusive perks, including free gifts and bonus points. It will then launch globally on Amazon and other major platforms starting August 1.

Order now to secure early access before the worldwide launch.

About AlgoLaser

AlgoLaser is a global provider of smart laser engraving solutions, dedicated to empowering makers, educators, and everyday creators around the world. By pairing high-performance hardware with the intuitive AlgoOS operating system, AlgoLaser breaks down technical barriers to make professional-quality creation as simple as everyday printing. The company is committed to helping users of all skill levels effortlessly transform creative ideas into reality, making laser technology easier, safer, and accessible enough for every household. For more information, visit www.algolaser.com.

View original content to download multimedia:https://www.prnewswire.com/news-releases/algolaser-launches-diy-kit-mk3-start-just-that-simplea-smarter-way-to-laser-engrave-302822637.html

SOURCE AlgoLaser

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DRAI Health Introduces SpaceXAI-Powered Personalized Voice Interaction in heyDRAI

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New capability delivers more natural, adaptive, and human-centered voice-guided healthcare experiences

LOS ANGELES, July 11, 2026 /PRNewswire-PRWeb/ — DRAI Health today announced the launch of a new personalized voice interaction capability within heyDRAI, its AI-powered healthcare platform. Powered by advanced SpaceXAI technology, this innovation enables more natural, expressive, and context-aware voice-guided healthcare interactions, further advancing DRAI Health’s mission to deliver truly patient-centric digital care.

“By integrating SpaceXAI technology into heyDRAI, we are enabling a more natural, adaptive, and emotionally intelligent interface that enhances how patients interact with healthcare information.” said Gor Galstyan, CTO of DRAI Health.

The new capability transforms AI-guided consultations from static, text-based exchanges into dynamic, conversational experiences tailored to each individual user. Patients can select from a range of voice styles—such as calm and reassuring, clear and clinical, or energetic and motivational—allowing interactions to align with their personal preferences and emotional needs.

Unlike conventional text-to-speech systems that simply vocalize scripted content, heyDRAI’s SpaceXAI-powered voice interaction is designed to understand conversational context, adjust tone dynamically, and deliver responses in a more human-like manner. This creates a more engaging and intuitive experience that helps patients feel more comfortable, attentive, and connected throughout their healthcare journey.

Each user’s preferred voice profile is retained across interactions, ensuring continuity and personalization over time, while maintaining flexibility for users to modify their preferences as needed.

Technology Differentiation Through SpaceXAI Integration

The integration of SpaceXAI technology enables a new class of voice interaction that goes beyond traditional AI voice systems by incorporating:

Context-aware response generation rather than static script delivery

Adaptive tone modulation based on conversational flow and user engagement

Improved reasoning and coherence in multi-step healthcare interactions

More natural conversational pacing, reducing cognitive load for users

These capabilities are particularly important in healthcare, where clarity, empathy, and precision directly impact patient understanding and engagement.

Leadership Commentary

“Healthcare conversations are deeply personal. Our goal is to make interactions with AI feel less transactional and more human,” said Gor Galstyan, CTO of DRAI Health. “By integrating SpaceXAI technology into heyDRAI, we are enabling a more natural, adaptive, and emotionally intelligent interface that enhances how patients interact with healthcare information.”

Enhancing the Patient-Centric Healthcare Experience

The introduction of personalized voice interaction represents a significant step forward in DRAI Health’s broader vision to create a continuous, patient-centered healthcare experience spanning:

Wellness and preventive care

Symptom assessment and early intervention

Acute and chronic condition support

Post-acute recovery and ongoing monitoring

By embedding advanced voice interaction into the consultation flow, heyDRAI improves accessibility for a wide range of users, including those who prefer voice-first interaction or may have difficulty engaging with traditional text-based interfaces.

Looking Ahead

The personalized voice capability is now available within heyDRAI and will continue to evolve with additional features, including deeper personalization, multilingual support, and enhanced clinical interaction workflows.

About DRAI Health

DRAI Health is developing AI-powered healthcare technologies designed to transform how patients, providers, and health systems interact with medical information. Through platforms such as heyDRAI, the company focuses on intelligent intake, guided consultation, patient engagement, and clinical decision support.

DRAI Health’s mission is to make healthcare more accessible, personalized, and human-centered, leveraging advanced artificial intelligence combined with real-world clinical insight.

For more information, visit www.draihealth.com.

Media Contact

Kelsey Whiddon, DRAI Health, Inc., 1 818.621.1441, marketing@draihealth.com, https://www.draihealth.com/

View original content to download multimedia:https://www.prweb.com/releases/drai-health-introduces-spacexai-powered-personalized-voice-interaction-in-heydrai-302822689.html

SOURCE DRAI Health, Inc.

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PrimeBOT Brings Personal Robotics to the UN’s AI for Good Summit in Geneva

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GENEVA, July 10, 2026 /PRNewswire/ — PrimeBOT, a robotics brand, appeared at the United Nations’ AI for Good Global Summit. The summit, organized by the International Telecommunication Union (ITU) with over 50 UN agencies including UNESCO, explores how AI can serve human welfare. PrimeBOT defines a new category: the Personal Robot – robots designed for homes and daily life, not production lines, that anyone can own, program, and create with. PrimeBOT came not to showcase technical specs, but to join a global conversation on education, inclusion, and human potential.

Personal robots will reshape how AI is taught. Imagine a child learning to code by teaching a real robot to move and respond. PrimeBOT Q1 offers a developer console for young learners. Children start with block-based programming to choreograph movements, expressions, and conversational responses – turning Q1 into a companion that listens and speaks. They can then convert blocks into Python code and train AI models to recognize gestures or objects, making the entire machine learning cycle tangible. Programming becomes a conversation with a robot, not abstract syntax. PrimeBOT envisions Q1 as an AI learning companion for every family – not replacing teachers or parents, but making education hands-on and playful.

PrimeBOT’s vision is collaboration and integration – robots understanding human needs and augmenting creativity. The brand partners with youth and educational institutions globally, helping people see technology as a connector, not a divider. At the UN, PrimeBOT chose education over spectacle. In its view, technology must let the next generation grow as creators of AI, not just consumers.

PrimeBOT is in dialogue with educational and non-profit organizations across North America and Europe to explore how personal robots can support youth AI literacy. This is a patient journey – not a product announcement, but a shared exploration with educators, parents, and children. The future of personal robots is not something to be defined alone – it will be built together.

View original content to download multimedia:https://www.prnewswire.com/news-releases/primebot-brings-personal-robotics-to-the-uns-ai-for-good-summit-in-geneva-302823152.html

SOURCE PrimeBOT

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