Toh Yen Pang | Engineering | Research Excellence Award

Toh Yen Pang | Engineering | Research Excellence Award

RMIT University | Australia

Prof. Dr. Toh Yen Pang is a researcher specialising in systems design, biomechanical modelling, and digital twin development for advanced biomedical applications. His work integrates advanced technologies and simulation methods to create bioengineered models and devices that support personalised solutions while reducing reliance on costly and time-intensive animal testing and clinical trials. He serves as a Theme Leader within the RMIT Digitalisation Network, focusing on human-centred design and workforce wellbeing, and has secured significant competitive research funding from major government, medical, and defence-related organisations.

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Abdullah G. Alharbi | Engineering | Research Excellence Award

Abdullah G. Alharbi | Engineering | Research Excellence Award

Princess Nourah Bint Abdulrahman University | Saudi Arabia

Assoc. Prof. Dr. Abdullah G. Alharbi is an accomplished engineering professional and academic leader specializing in aerospace and electrical engineering, with strong experience in program development, research leadership, and international collaboration. He has led academic programs, coordinated curriculum design, supervised faculty, and managed accreditation and continuous improvement initiatives. His technical expertise spans VLSI circuits, nanoelectronics, energy systems, and antenna design, supported by publications in ISI-indexed journals and professional certifications such as PMP and Lean Six Sigma.

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Christos Antonopoulos | Engineering | Research Excellence Award

Christos Antonopoulos | Engineering | Research Excellence Award

University of the Peloponnese | Greece

Associate Professor Christos P. Antonopoulos is an academic and researcher in the field of Electrical Engineering and Computer Technology, with strong expertise in telecommunication systems and embedded systems. He obtained his Diploma and PhD in Electrical Engineering and Computer Technology from the ECE Department of the University of Patras, Greece. He currently serves as an Associate Professor in the Department of Electrical and Computer Engineering at the University of the Peloponnese, Greece. His research career spans more than two decades, during which he has been actively involved in a large number of competitive research projects at both European and national levels. He has participated in over 22 European research projects under FP5, FP6, FP7, and Horizon 2020 frameworks, as well as more than 10 Greek national research projects, holding significant technical and managerial roles and contributing extensively to the preparation of successful research proposals. His scientific output is substantial, with more than 100 publications in high-quality international journals and conference proceedings, along with 13 book chapters, collectively receiving over 1,200 citations.

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Zeyang Zhou | Engineering | Most Cited Article Award

Zeyang Zhou | Engineering | Most Cited Article Award

Dr. Zeyang Zhou, Tianjin University, China

Dr. Zeyang Zhou is an Assistant Researcher at the School of Mechanical Engineering, Tianjin University, China. He specializes in surgical navigation, virtual/mixed reality (VR/MR)-assisted precision surgery, and intelligent medical image processing. With extensive experience in developing advanced technologies for minimally invasive surgery, he has led and contributed to multiple high-impact publications in biomedical engineering journals. His academic journey includes a Ph.D., M.S., and B.S. in Mechanical Engineering from Tianjin University, and a stint as a visiting Ph.D. student at the University of Cambridge. Dr. Zhou’s interdisciplinary expertise bridges engineering, computer science, and medicine, making significant strides in image-guided surgeries and personalized surgical simulations. His work integrates AI, MR, and machine learning into real-time clinical applications. Recognized for his impactful research and academic contributions, Dr. Zhou represents a new generation of researchers driving innovation in the integration of mechanical engineering with healthcare technologies.

Publication Profile

scopus

Education

Dr. Zeyang Zhou completed his entire higher education in Mechanical Engineering at Tianjin University, China, one of the country’s leading engineering institutions. He earned his Bachelor’s degree between 2013 and 2017, followed by a Master’s degree from 2017 to 2019, where he delved deeper into biomedical engineering applications. From 2019 to 2023, he pursued his Ph.D., focusing on surgical navigation systems and VR/MR applications in surgery. As part of his doctoral training, he was a visiting Ph.D. student at the University of Cambridge, UK, where he gained international exposure and collaborated with leading experts in the field. His academic training reflects a strong foundation in mechanical design, computational methods, and medical image processing, equipping him with the tools to innovate in precision medicine and minimally invasive surgical technology. This diverse and robust academic background fuels his interdisciplinary research approach.

Experience

Dr. Zeyang Zhou currently holds the position of Assistant Researcher at the School of Mechanical Engineering, Tianjin University since July 2023, where he is involved in cutting-edge research in surgical technologies. Before that, he served as a Postdoctoral Research Fellow in the same department, continuing his work on intelligent surgical systems and image-guided navigation from July 2023 onward. His early experience includes contributing to multidisciplinary teams focused on VR/MR-enhanced surgery, where he applied advanced mechanical and computational methods to solve real-world clinical problems. His collaborative work with surgeons, radiologists, and computer scientists has resulted in multiple peer-reviewed publications in top journals. Through continuous engagement in academia and research, Dr. Zhou has cultivated expertise in modeling soft-tissue mechanics, image registration, and neural network applications in surgery. His experience reflects a commitment to innovation, research excellence, and impactful medical technology development.

Awards and Honors

While specific awards are not listed in the provided profile, Dr. Zeyang Zhou’s selection as a Visiting Ph.D. Student at the University of Cambridge highlights significant academic recognition and trust in his research capabilities. This prestigious opportunity is typically granted to outstanding doctoral candidates showing exceptional promise in their fields. Additionally, his multiple first-author publications in top-tier international journals, including Medical Physics, Computers in Biology and Medicine, and Expert Systems with Applications, underscore his recognition within the research community. His continued progression from Ph.D. student to postdoc and now Assistant Researcher at Tianjin University further reflects institutional recognition of his contributions and research excellence. It is expected that Dr. Zhou has received internal university fellowships or academic performance-based honors, often common among top research scholars in China. As his career progresses, he is well-positioned to receive international research awards and fellowships in medical robotics and computational medicine.

Research Focus

Dr. Zeyang Zhou’s research is centered on surgical navigation systems, VR/MR-assisted precision surgery, and minimally invasive surgical robotics. His work aims to enhance the accuracy and efficiency of complex surgical procedures through intelligent systems that merge real-time imaging, machine learning, and 3D visualization technologies. One of his major focuses is on mixed reality-based navigation platforms for procedures like glioma resection and hypertensive intracerebral hemorrhage treatment, improving spatial awareness and decision-making in the operating room. He also explores neural network-based respiratory motion modeling, needle insertion planning, and automated medical image segmentation using AI techniques. His interdisciplinary approach integrates mechanical engineering, biomedical imaging, and artificial intelligence, with a strong emphasis on translating theoretical frameworks into clinically viable tools. Dr. Zhou’s research not only improves patient safety and surgical precision but also provides virtual training environments for clinicians using simulation technologies.

Publication Top Notes

  • 🧠 Segmentation of Brain Tumor Resections In Intraoperative 3D Ultrasound Images Using a Semi-supervised Cross nnSU-Net

  • 🪡 A method for predicting needle insertion deflection in soft tissue based on cutting force identification

  • 🫁 A back propagation neural network based respiratory motion modelling method

  • 🤖 A high-dimensional respiratory motion modeling method based on machine learning

  • 🧪 Personalized virtual reality simulation training system for percutaneous needle insertion and comparison of zSpace and vive

  • 🧠 Augmented reality surgical navigation system based on the spatial drift compensation method for glioma resection surgery

  • 🧠 Validation of a surgical navigation system for hypertensive intracerebral hemorrhage based on mixed reality using an automatic registration method

  • 🧠 Design and validation of a navigation system of multimodal medical images for neurosurgery based on mixed reality

  • 🧠 Surgical Navigation System for Hypertensive Intracerebral Hemorrhage Based on Mixed Reality

  • 🎯 DVH-based inverse planning for LDR pancreatic brachytherapy

  • 🧠 Surgical navigation system for brachytherapy based on mixed reality using a novel stereo registration method