Baoshun Shi | Metal artifact reduction| Best Researcher Award

Assoc.Prof.Dr. Baoshun Shi | Metal artifact reduction| Best Researcher Award

Assoc. Prof. Dr.  Baoshun Shi,  Yanshan University,  China.

Baoshun Shi is an esteemed researcher and academic in medical imaging, specializing in CT/MRI reconstruction, deep dictionary learning, and computational imaging. His academic journey from Yanshan University to his current role as an Associate Professor has been marked by groundbreaking research and mentorship. His work has significantly contributed to medical diagnostics, receiving recognition through prestigious grants and impactful publications. His innovations continue to shape the future of medical imaging technologies.

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Early Academic Pursuits ✨

Baoshun Shi embarked on his academic journey with a deep fascination for electronic science and technology. His rigorous training at Yanshan University laid a strong foundation for his expertise in imaging sciences. Under the mentorship of Prof. Qiusheng Lian, he pursued both his Master’s and Ph.D. degrees from 2012 to 2017, immersing himself in advanced research on electronic imaging and computational techniques. His early studies revolved around the intricacies of image reconstruction and enhancement, which would later define his contributions to medical imaging and deep learning methodologies.

Professional Endeavors 🎓

After completing his doctorate, Baoshun Shi transitioned into academia as a Lecturer at the School of Information Science and Engineering at Yanshan University in 2017. His passion for research and education quickly propelled him to the position of Associate Professor in 2021. In this role, he has been instrumental in shaping the next generation of scholars while spearheading groundbreaking studies in medical imaging. His dedication to academic excellence is evident in his mentorship and continuous efforts to push the boundaries of imaging technology.

Contributions and Research Focus 🌍

Baoshun Shi’s research is centered on revolutionizing medical imaging through advanced computational models. His work spans multiple domains, including CT/MRI reconstruction, medical image analysis, deep dictionary learning, and compressed imaging. He has extensively explored imaging inverse problems, leveraging deep learning and model-driven approaches to enhance diagnostic accuracy and efficiency. His innovative methodologies in sparse-view CT reconstruction and metal artifact reduction have significantly contributed to the evolution of medical imaging solutions, making them more precise and accessible.

Accolades and Recognition 🏆

Recognized for his pioneering work, Baoshun Shi has secured prestigious research grants and accolades. As the Principal Investigator, he has led multiple national and provincial research projects, including grants from the National Natural Science Foundation of China and the Hebei Natural Science Foundation. His projects, focused on deep dictionary learning and unsupervised imaging techniques, have earned him a distinguished reputation in the field of medical imaging. His contributions are acknowledged not only through research funding but also through the impact his findings have had on computational imaging advancements.

Impact and Influence 🔄

Baoshun Shi’s research has had far-reaching implications, transforming the landscape of medical imaging and computational diagnostics. His deep-learning-driven approaches have set new benchmarks in image reconstruction, enabling more accurate and efficient analysis of CT and MRI scans. His work has been instrumental in reducing imaging artifacts, improving resolution, and optimizing sparse-view imaging, thereby enhancing diagnostic capabilities. His influence extends beyond research papers, as his findings are being implemented in real-world medical applications, benefiting both practitioners and patients alike.

Legacy and Future Contributions 🌟

As a thought leader in medical imaging and computational science, Baoshun Shi continues to shape the future of imaging technologies. His ongoing research in deep dictionary networks and unsupervised learning models aims to push the boundaries of what is possible in diagnostic imaging. With an unwavering commitment to scientific advancement, he strives to develop cutting-edge solutions that will further enhance medical diagnostics, making them more efficient and accessible. His legacy is one of innovation, mentorship, and transformative contributions to the field of imaging science, paving the way for future breakthroughs.

 

Publication

  • Research advances on dictionary learning models, algorithms and applications – QS Lian, BS Shi, SZ Chen (2015)

 

  • Constrained phase retrieval: when alternating projection meets regularization – B Shi, Q Lian, X Huang, N An (2018)

 

  • Deep prior-based sparse representation model for diffraction imaging: A plug-and-play method – B Shi, Q Lian, H Chang (2020)

 

  • Multi‐scale cross‐path concatenation residual network for Poisson denoising – Y Su, Q Lian, X Zhang, B Shi, X Fan (2019)

 

  • Compressed sensing MRI based on the hybrid regularization by denoising and the epigraph projection – L Qiusheng, F Xiaoyu, S Baoshun, Z Xiaohua (2020)

 

  • Compressed sensing MRI with phase noise disturbance based on adaptive tight frame and total variation – F Xiaoyu, L Qiusheng, S Baoshun (2017)

 

  • Provable general bounded denoisers for snapshot compressive imaging with convergence guarantee – B Shi, Y Wang, D Li (2023)

 

  • FASPR: A fast sparse phase retrieval algorithm via the epigraph concept – B Shi, S Chen, Y Tian, X Fan, Q Lian (2018)

 

  • PPR: Plug-and-play regularization model for solving nonlinear imaging inverse problems – B Shi, Q Lian, X Fan (2019)

 

  • Transfer orthogonal sparsifying transform learning for phase retrieval – Q Lian, B Shi, S Chen (2017)

 

Conclusion 📝

Baoshun Shi’s contributions to medical imaging and computational diagnostics have been transformative. His expertise in deep learning, imaging inverse problems, and artifact reduction has paved the way for more accurate and efficient diagnostic methods. As he continues to push the boundaries of scientific discovery, his legacy remains one of innovation and impact, ensuring that medical imaging evolves to better serve the healthcare industry and patients worldwide.

Zewen Cheng | Clinical Medicine | Young Scientist Award

Dr. Zewen Cheng | Clinical Medicine | Young Scientist Award

Dr. Zewen Cheng, Suzhou Hospital of Integrated Traditional Chinese and Western Medicine,  China.

Zewen Cheng’s career is a testament to his dedication to thoracic surgery, combining expertise in both Western and Traditional Chinese medicine. His academic excellence, professional experience, and research contributions highlight his unwavering commitment to advancing patient care. As a skilled surgeon and educator, he continues to make a significant impact in the medical community. Moving forward, his focus on innovation and mentorship will ensure that his contributions leave a lasting mark on the field of thoracic surgery, inspiring future generations of medical professionals.

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Scopus

 

🎓 Early Academic Pursuits

Zewen Cheng embarked on his medical journey with a passion for thoracic surgery, earning a Master of Medicine in Thoracic Surgery from Soochow University in Suzhou, China. Graduating in 2019, he dedicated himself to mastering the complexities of thoracic diseases, developing a strong foundation in both clinical and surgical practices. His academic years were marked by rigorous training and an unwavering commitment to patient care, setting the stage for his future contributions to the medical field.

🏥 Professional Endeavors

After completing his degree, Zewen Cheng undertook a comprehensive three-year residency at The First Affiliated Hospital of Soochow University. From July 2019 to June 2022, he refined his expertise in thoracic surgery, gaining invaluable hands-on experience in clinical diagnostics, patient management, and surgical procedures. His tenure in the residency program enabled him to work closely with senior specialists, tackling complex cases and honing his skills. In September 2022, he advanced to the role of Attending Physician at Suzhou Hospital of Integrated Traditional Chinese and Western Medicine, where he seamlessly integrates Western and Traditional Chinese medical treatments to provide holistic patient care.

🔬 Contributions and Research Focus

Zewen Cheng is deeply invested in the evolving landscape of thoracic surgery. His research interests span innovative surgical techniques, minimally invasive procedures, and the integration of Traditional Chinese Medicine (TCM) in thoracic disease management. With proficiency in data analysis software such as R and SPSS, he actively contributes to medical research, utilizing statistical methodologies to enhance clinical decision-making. His work emphasizes the importance of interdisciplinary approaches in improving patient outcomes and advancing the field of thoracic surgery.

🏆 Accolades and Recognition

Throughout his medical career, Zewen Cheng has been recognized for his dedication and expertise in thoracic surgery. Successfully completing the standardized residency training at The First Affiliated Hospital of Soochow University, he demonstrated exceptional skill and commitment to surgical excellence. His fluency in Medical English (CET-6) has enabled him to collaborate effectively with international medical professionals, further expanding his impact within the global medical community.

💪 Impact and Influence

As an Attending Physician, Zewen Cheng plays a crucial role in supervising and training junior doctors, fostering the next generation of thoracic surgeons. His ability to blend traditional and modern medical practices ensures that patients receive comprehensive treatment tailored to their specific needs. His contributions extend beyond direct patient care, as he actively participates in multidisciplinary teams, shaping the future of thoracic surgery through collaborative innovation and knowledge sharing.

🌟 Legacy and Future Contributions

With a strong foundation in both clinical practice and research, Zewen Cheng aspires to push the boundaries of thoracic surgery through continuous learning and innovation. His commitment to integrating Traditional Chinese Medicine with contemporary surgical techniques presents new avenues for patient care and treatment efficacy. Looking ahead, he envisions contributing to groundbreaking research, refining surgical methodologies, and mentoring future medical professionals, leaving a lasting legacy in the field of thoracic surgery.

 

Publication

Title: Exploring the Causal Relationship Between Frailty and Chronic Obstructive Pulmonary Disease: Insights From Bidirectional Mendelian Randomization and Mediation Analysis
Authors: Zewen Cheng, Jian Wu, Chun Xu, Xiaokun Yan
Year: 2025

 

🏆 Conclusion

Zewen Cheng is a strong candidate for the Young Scientist Award, given his clinical expertise, innovative approach to medicine, and commitment to training future surgeons. Strengthening his research impact and expanding international collaborations would further solidify his position as a leading young scientist in thoracic surgery.