Prof. Changfang Chen | Medical Image Processing | Research Excellence Award

Prof. Changfang Chen | Medical Image Processing | Research Excellence Award

Associate Professor | Qilu University of Technology | China

Prof. Changfang Chen is an associate professor at the Shandong Institute of Artificial Intelligence, Qilu University of Technology, where she contributes extensively to medical image processing and artificial intelligence research. She earned her doctorate in control science and engineering from Beihang University in Beijing. Her scholarly influence is supported by citation metrics across major databases, including a Google Scholar record showing more than five hundred citations with strong h-index and i10-index performance, and Scopus-indexed publications appearing in highly ranked journals. Her body of work spans intelligent systems, biomedical signal processing, autonomous control, and deep learning-driven medical applications.

Publication Profile

Google Scholar

Education Background

Prof. Changfang Chen completed her doctoral education at Beihang University with a focus on control science and engineering, where she developed a strong foundation in computational modeling, signal processing, and intelligent system design. Her academic journey fostered a multidisciplinary orientation that later supported her transition into artificial intelligence and medical image analysis. Through advanced coursework, laboratory research, and thesis contributions, she established technical strengths aligned with both theoretical control frameworks and practical biomedical computation, enabling a seamless integration of engineering principles with data-driven medical research applications.

Professional Experience

Prof. Changfang Chen serves as an associate professor at the Shandong Institute of Artificial Intelligence within Qilu University of Technology, contributing to research, postgraduate supervision, and high-impact project development. She has participated in multiple government-supported research programs, including national-level and provincial-level scientific foundations, where her role involved developing algorithms for image analysis, signal denoising, and autonomous systems. Her professional activity extends to collaboration with multidisciplinary teams, publication in leading indexed journals, and engagement in editorial and reviewing tasks, reflecting her sustained commitment to academic service and scientific advancement.

Awards and Honors

Throughout her career, Changfang Chen has been recognized through her involvement in competitive national and provincial research programs, reflecting the scientific value and societal relevance of her contributions. Her patents, including work on wavelet-domain ECG noise elimination, demonstrate innovation in biomedical signal processing. Her publications in prestigious SCI and Scopus-indexed journals such as Neurocomputing, Knowledge-Based Systems, IEEE Transactions on Instrumentation and Measurement, and IEEE Transactions on Intelligent Transportation Systems indicate consistent scholarly excellence. Her citation achievements further validate the long-term influence and recognition of her contributions within the global research community.

Research Focus

Prof. Changfang Chen’s research centers on medical image processing, biomedical signal reconstruction, autonomous control, and artificial intelligence with emphasis on multitask learning and deep neural architectures. Her recent work includes the development of a multi-task consistency learning framework designed to optimize predictions from unlabeled clinical images by integrating segmentation, signed distance mapping, and reconstruction processes. She has also contributed substantially to ECG signal denoising, autonomous vehicle tracking control, and wavelet-based sparse representations. Her research approach blends theoretical rigor with applied innovation to address challenges in modern intelligent healthcare technologies.

Top Publications

Chen, C., Jia, Y., Shu, M., & Wang, Y. (2015). Hierarchical adaptive path-tracking control for autonomous vehicles. IEEE Transactions on Intelligent Transportation Systems, 16(5), 2900–2912. This article has been cited widely for its contribution to autonomous path-tracking control and has received strong scholarly recognition based on citation counts.

Shu, M., Yuan, D., Zhang, C., Wang, Y., & Chen, C. (2015). A MAC protocol for medical monitoring applications of wireless body area networks. Sensors, 15(6), 12906–12931. This publication is frequently cited for its relevance to wireless body area networks and medical monitoring technologies, contributing significantly to wearable-sensing research.

Liu, H., Zhou, S., Chen, C., Gao, T., & Xu, J. (2022). Dynamic knowledge graph reasoning based on deep reinforcement learning. Knowledge-Based Systems, 241, 108235. This work has received strong citation activity and is noted for integrating reinforcement learning with knowledge graph reasoning in intelligent systems.

Hou, Y., Liu, R., Shu, M., Xie, X., & Chen, C. (2023). Deep neural network denoising model based on sparse representation algorithm for ECG signal. IEEE Transactions on Instrumentation and Measurement, 72, 1–11. This article is widely referenced for advancing ECG denoising using deep learning and sparse representation methods.

Hou, Y., Liu, R., Shu, M., & Chen, C. (2023). An ECG denoising method based on adversarial denoising convolutional neural network. Biomedical Signal Processing and Control, 84, 104964. This study has gained citations for its novel adversarial architecture applied to biomedical signal enhancement and reconstruction.

Conclusion

Through her sustained engagement in advanced artificial intelligence research, high-quality publications, and participation in major national science programs, Changfang Chen has established a strong academic profile within the fields of biomedical computation and intelligent systems. Her contributions to medical imaging and signal analysis demonstrate both technical innovation and societal relevance, while her citation record across Google Scholar and Scopus underscores her scholarly influence. Her work continues to advance computational methodologies that support reliability, accuracy, and efficiency in healthcare-oriented artificial intelligence systems.

Doohee Lee | Medical imaging | Computer Vision Contribution Award

Mr. Doohee Lee | Medical imaging | Computer Vision Contribution Award

ZIOVISION Co., Ltd., South Korea

Doohee Lee is the Chief Operating Officer (COO) at ZIOVISION Co., Ltd., where he leads advancements in AI-driven medical imaging solutions. With over a decade of experience in the medical AI field, he has collaborated with notable institutions such as Seoul National University Hospital and MEDICALIP Co., Ltd. He has published over 15 peer-reviewed articles and holds multiple U.S. and international patents in medical imaging and AI technologies. His innovative contributions in healthcare aim to revolutionize diagnostics and improve patient outcomes through advanced imaging technologies. 🔬💡

Publication Profile

Education:

Doohee Lee holds a B.S. and M.S. in Computer Science Engineering and is currently a Ph.D. candidate at Kangwon National University. His academic background has equipped him with a strong foundation in deep learning, medical image analysis, and AI applications in healthcare. 🎓📚

Experience:

With extensive experience in both academia and industry, Doohee Lee has contributed significantly to the field of medical AI. As the COO of ZIOVISION, he leads R&D teams in the development of cutting-edge medical imaging technologies. His previous roles at MEDICALIP Co., Ltd. and Seoul National University Hospital have allowed him to advance research projects and industry collaborations in the AI healthcare space. 💼🧑‍💻

Awards and Honors:

Doohee Lee’s groundbreaking work has earned him numerous accolades, including recognition in AI-driven medical imaging advancements. His efforts have led to significant developments in the field of medical diagnostics, especially in AI-based image segmentation and automated analysis. 🏆👏

Research Focus:

Doohee Lee specializes in AI-driven medical image analysis, focusing on deep learning-based segmentation, 3D image analysis, and clinical AI applications. His ongoing research includes automated tumor segmentation, sepsis mortality prediction, and osteoporosis grading via CT. He has also worked on developing AI models for predictive healthcare solutions. 🧠💻

Conclusion:

Doohee Lee’s expertise in medical AI and his leadership at ZIOVISION continue to drive innovation in healthcare. With a strong focus on utilizing AI to improve diagnostic accuracy and patient outcomes, he is at the forefront of technological advancements in the medical imaging sector. His contributions are shaping the future of AI-powered healthcare solutions. 🌐💪

Publications:

A Refined Approach to Segmenting and Quantifying Inter-Fracture Spaces in Facial Bone CT Imaging (2025) – Applied Sciences
DOI: 10.3390/app15031539
Cited by: 10 citations 📑

Very fast, high-resolution aggregation 3D detection CAM to quickly and accurately find facial fracture areas  (2024) – Computer Methods and Programs in Biomedicine
DOI: 10.1016/j.cmpb.2024.108379
Cited by: 5 citations 📑

Deep Learning-Based Dual-Stage Model for Accurate Nasogastric Tube Positioning in Chest Radiographs (2024) – SSRN
DOI: 10.2139/ssrn.4965848
Cited by: 3 citations 📑

Early Prediction of Mortality for Septic Patients Visiting Emergency Room Based on Explainable Machine Learning: A Real-World Multicenter Study (2024) – Journal of Korean Medical Science
DOI: 10.3346/jkms.2024.39.e53
Cited by: 15 citations 📑

Fully Automated MRI Segmentation and Volumetric Measurement of Intracranial Meningioma Using Deep Learning (2022) – Journal of Magnetic Resonance Imaging
DOI: 10.1002/jmri.28332
Cited by: 50 citations 📑

Development of a deep learning-based auto-segmentation algorithm for hepatocellular carcinoma (HCC) and application to predict microvascular invasion of HCC using CT texture analysis: preliminary results. (2022) – Acta radiologica (Stockholm, Sweden: 1987)
DOI: 10.1177/02841851221100318
Cited by: 20 citations 📑

Clinical application of patient-specific 3D printing brain tumor model production system for neurosurgery (2021) – Scientific Reports
DOI: 10.1038/s41598-021-86546-y
Cited by: 30 citations 📑