Lilei Sun | Artificial intelligence | Best Researcher Award | 13305

Assist. Prof. Dr. Lilei Sun | Artificial intelligence | Best Researcher Award 

Assist. Prof. Dr. Lilei Sun, Guizhou Minzu University, China

Prof. Dr. Lilei Sun is an associate professor at Guizhou Minzu University, China, specializing in deep learning, image processing, pattern recognition, and medical image processing. He completed his B.E. in computer technology in 2016 and obtained his Ph.D. in software engineering in 2022, both from Guizhou University, Guiyang. Dr. Sun’s research focuses on incomplete multi-view clustering and has led to notable contributions in academic publications, including 10 articles in prestigious journals. He serves as an associate editor for the International Journal of Image and Graphics and is actively involved in collaborative research projects.

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🌱 Early Academic Pursuits

Prof. Dr. Lilei Sun began his academic journey with a solid foundation in computer technology. He received his B.E. degree in Computer Technology from Guizhou University in Guiyang, China, in 2016. This laid the groundwork for his advanced studies in software engineering, a field that has had a significant impact on his subsequent research. His academic excellence and curiosity drove him to pursue a Ph.D. in Software Engineering from Guizhou University, which he successfully completed in 2022. Throughout his academic journey, he consistently demonstrated a deep passion for understanding the intricacies of deep learning, image processing, and pattern recognition, as well as their transformative potential in medical image processing. 🌟

🔬 Professional Endeavors and Contributions

Since 2024, Prof. Dr. Sun has been serving as an Associate Professor at Guizhou Minzu University, where he has made notable strides in both teaching and research. In his role, he mentors students and collaborates with fellow researchers on projects that explore cutting-edge technologies in deep learning and image processing. His contributions to the academic community extend beyond the classroom as he actively participates in various consultancy projects and industry collaborations, applying his research to real-world problems. Dr. Sun’s work has led to practical innovations in the fields of medical image processing and pattern recognition, areas that are increasingly critical for advancing healthcare solutions globally. 🏥

💡 Research Focus

Prof. Dr. Sun’s research interests revolve around deep learning, image processing, pattern recognition, and medical image processing. One of his key areas of focus is incomplete multi-view clustering, a method that enables more accurate data analysis in scenarios where information is incomplete or fragmented. This has potential applications in various fields, including healthcare, where the integration of multi-source medical data can lead to better diagnostic models and more personalized treatments. Additionally, his work on medical image processing leverages machine learning techniques to enhance the quality and accuracy of medical imaging, providing practitioners with more reliable diagnostic tools. The potential to save lives and improve healthcare outcomes makes this research both significant and timely. 🔍

🏆 Accolades and Recognition

Prof. Dr. Sun has garnered recognition for his dedication to both teaching and research. He has published 10 academic articles, many of which have been featured in respected journals indexed by SCI and Scopus. He is also an associate editor of the International Journal of Image and Graphics, a prestigious journal that underscores his expertise in the field. His work has earned him an esteemed position in the academic community, further enhanced by his ongoing contributions to industry projects and collaborations. Through his research, Prof. Dr. Sun has received significant acknowledgment from his peers, with numerous invitations to speak at international conferences and collaborate with experts from various research institutes globally. 🌍

🌟 Impact and Influence

Prof. Dr. Sun’s work has had a profound impact on the fields of image processing and medical image processing. His research on deep learning and pattern recognition has contributed to advancements in the way medical data is processed, interpreted, and used in clinical decision-making. His innovations are poised to help healthcare providers access more accurate, timely, and comprehensive information, ultimately leading to improved patient outcomes. Furthermore, his involvement in professional memberships and editorial boards for various scientific journals has allowed him to influence the direction of research in his areas of expertise. 📊

💫 Legacy and Future Contributions

As Prof. Dr. Sun continues his research journey, his legacy is beginning to take shape through his groundbreaking contributions to deep learning and medical image processing. His passion for exploring innovative solutions to real-world challenges, particularly in healthcare, positions him as a leader in his field. In the coming years, Prof. Dr. Sun aims to push the boundaries of incomplete multi-view clustering, further developing techniques that can be applied across multiple domains, including medical diagnostics, artificial intelligence, and big data analytics. His commitment to excellence in research, teaching, and mentorship will continue to inspire future generations of students and researchers.

Publications Top Notes

Contributors: Lilei Sun; Wai Keung Wong; Yusen Fu; Jie Wen; Mu Li; Yuwu Lu; Lunke Fei
Journal: Pattern Recognition
Year: 2025
ContributorsLilei Sun; Jie Wen; Chengliang Liu; Lunke Fei; Lusi Li
Journal: Neural Networks
Year: 2023
Contributors: Lilei Sun; Jie Wen; Junqian Wang; Yong Zhao; Bob Zhang; Jian Wu; Yong Xu
Journal: CAAI Transactions on Intelligence Technology
Year: 2023

Cheng-Mao Zhou | Artificial intelligence | Best Researcher Award

Dr. Cheng-Mao Zhou | Artificial intelligence | Best Researcher Award 

Dr. Cheng-Mao Zhou, Central People’s Hospital of Zhanjiang, China

Dr. Cheng-Mao Zhou is a distinguished medical professional affiliated with the Central People’s Hospital of Zhanjiang, China. With extensive expertise in clinical practice and research, Dr. Zhou specializes in advancing patient care through innovative medical treatments and health management strategies. His contributions to the medical field reflect a commitment to excellence and the well-being of his community.

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🎓 Educational Qualification

Dr. Cheng-Mao Zhou’s academic journey is deeply rooted in a passion for innovation and excellence in medical science. From his formative years, he demonstrated an extraordinary aptitude for problem-solving and an eagerness to explore the intersection of technology and healthcare. His early academic focus on applied research set the foundation for his current expertise in artificial intelligence (AI) and perioperative medicine. By integrating traditional medical practices with emerging AI technologies, Dr. Zhou carved out a unique niche, positioning himself as a leader in predictive healthcare solutions.

🩺 Professional Endeavors

Currently serving at the Central People’s Hospital of Zhanjiang, Dr. Zhou has applied his expertise to revolutionize perioperative care. His professional trajectory reflects a seamless blend of clinical practice and research, where he employs machine learning and deep learning algorithms to address critical challenges in postoperative complication prediction and prevention. Over the years, he has developed and implemented cutting-edge AI models that significantly enhance diagnostic accuracy and patient outcomes, making complex healthcare processes more efficient and reliable.

🧠 Contributions and Research Focus

Dr. Zhou’s research centers on leveraging artificial intelligence to solve pressing issues in perioperative medicine. His focus areas include:

  1. Postoperative Complication Prediction
  2. Integration of AI in Medicine
  3. Educational Contributions

🏆 Accolades and Recognition

Dr. Zhou’s dedication and contributions have not gone unnoticed. Among his many affiliations, his membership with esteemed organizations like the American Society for Honorary Scientific Research (Sigma Xi) and the Big Data Group of Anesthesiology Branch of the Chinese Medical Association underscore his credibility and influence. Furthermore, his position as a young member of the Comfort Medical Branch of the China Cardiovascular Anesthesia Society reflects his commitment to advancing comfort-focused medical practices.

His academic contributions have been recognized in prestigious journals, with 40 publications indexed in SCI and Scopus. His citation index of 13 highlights the scholarly impact of his work on the global research community.

🌟 Impact and Influence

Dr. Zhou’s influence transcends the realm of academia. His innovative methodologies have significantly enhanced clinical practices, offering a roadmap for integrating AI into everyday medical care. By addressing critical challenges such as delayed diagnoses and suboptimal postoperative management, his work has led to improved patient safety and healthcare efficiency.

Through his articles and clinical implementations, Dr. Zhou has effectively raised awareness about the practical potential of AI in medicine, inspiring fellow researchers and healthcare practitioners to adopt data-driven solutions. His contributions serve as a blueprint for hospitals and medical institutions aiming to optimize their operational processes through technology.

🌍 Legacy and Future Contributions

Dr. Zhou envisions a future where AI seamlessly integrates with medical systems to revolutionize patient care worldwide. His ongoing research projects aim to further refine AI algorithms for predicting and preventing a broader range of complications. Beyond innovation, he is committed to mentoring young researchers, fostering interdisciplinary collaborations, and advocating for ethical AI practices in medicine.

📝Publication Top Notes

Predicting postoperative gastric cancer prognosis based on inflammatory factors and machine learning technology.

Contributors: Zhou CM; Wang Y; Yang JJ; Zhu Y

Journal: BMC medical informatics and decision making
Year: 2023

Differentiation of Bone Metastasis in Elderly Patients With Lung Adenocarcinoma Using Multiple Machine Learning Algorithms.

ContributorsChengmao Zhou; Wang Y; Xue Q; Zhu Y
Journal: Cancer control
Year: 2023

Machine learning predicts lymph node metastasis of poorly differentiated-type intramucosal gastric cancer

Contributors: Zhou, C.-M.; Wang, Y.; Ye, H.-T.; Yan, S.; Ji, M.; Liu, P.; Yang, J.-J.
Journal: Scientific Reports
Year: 2021