Moumita Mukherjee | Machine Learning and Statistics | Best Researcher Award

Dr. Moumita Mukherjee | Machine Learning and Statistics | Best Researcher Award

Charite-University Medicine Berlin | Germany

Dr. Moumita Mukherjee is an accomplished health economist and digital health researcher with expertise in health systems research, machine learning applications in healthcare, and interdisciplinary teaching. She holds a PhD in Economics from the University of Calcutta, an MBA in Entrepreneurship, Innovation and Project Development from International Telematic University, and an MSc in Data Science from the University of Europe for Applied Sciences, Germany. Her professional experience spans both academic and applied research environments, including positions at Charite-University Medicine Berlin, the Indian Institute of Public Health in Shillong, and the Berlin School of Business and Innovation. She has contributed extensively to global health research focusing on digital transformation, equity in healthcare access, and the use of data-driven methods for improving health outcomes. Her body of work includes numerous peer-reviewed publications in leading journals such as Scientific Reports, Journal of Health, Population and Nutrition, Journal of Health Management, and International Journal for Equity in Health, as well as book chapters and authored volumes addressing child health, nutrition, and health equity. In her current role at Charite-University Medicine Berlin, she lectures on digital health and artificial intelligence, supervises master’s theses, and mentors students. With advanced technical proficiency in Python, STATA, and NVivo, she applies econometric, machine learning, and deep learning models to address complex public health and policy questions. Her interdisciplinary approach integrates health economics, digital innovation, and policy analysis to support equitable and sustainable health systems worldwide. Through her research, teaching, and mentorship, Dr. Moumita Mukherjee continues to bridge data science and health economics to shape the future of evidence-based global health policy and digital healthcare transformation.

Profiles: Google Scholar | Orcid

Featured Publications

Tao Zhong | Machine Learning and Statistics | Best Researcher Award

Dr. Tao Zhong | Machine Learning and Statistics | Best Researcher Award

Sun Yat-sen University | China

Dr. Zhong Tao is a dedicated interdisciplinary researcher specializing in environmental engineering, material science, and computational modelling. A native of Chongqing, China, he is a member of the Communist Party of China and currently based in Guangzhou. He earned his Bachelor’s degree in Environmental and Ecological Engineering with a minor in Computer Science and Technology from Sichuan Agricultural University, followed by a Master’s in Environmental Science and Engineering from Guangxi University under Prof. Yu Zebin, and is pursuing his Doctor of Engineering (Ph.D.) in Resources and Environment at Sun Yat-sen University under Prof. He Chun. His research focuses on the design and development of high-activity environmental functional materials for atmospheric and water pollutant removal, catalytic ozonation, and clean-energy catalysis, including hydrogen production via water splitting. He also employs Density Functional Theory (DFT) to analyze catalytic materials and pollutant molecular structures, building structure–property relationships to guide experiments. Dr. Zhong has contributed to 31 SCI-indexed papers, including 11 as first or co-first author, and applied for 5 patents, with 4 granted. His ongoing research includes national and provincial projects as principal investigator or key contributor. He has received multiple national and university-level scholarships and awards for academic excellence, innovation, and leadership. His Scopus metrics reflect a growing international influence, with an h-index of 10, 22 documents, and over 343 citations, underscoring his strong academic productivity. Known for his rigorous research approach, interdisciplinary collaboration, and mentoring of peers and students, Dr. Zhong also pursues interests in history, literature, and sports, maintaining an optimistic, resilient, and disciplined outlook that complements his scientific career.

Profiles: Scopus 

Featured Publications

Guo, X., Yao, Z., Long, X., Zeng, L., Wang, C., Fang, Z., Zhong, T., Tian, S., Shu, D., & He, C. (2025). Recent advances in tailored nanostructured ozonation catalysts for enhanced VOCs removal: Synergistic optimization of scale configuration and electronic microenvironment.

Zhong, T., Yao, Z., Zeng, L., Zhao, H., Long, X., Li, T., Tian, S., & He, C. (2025). Manipulating spin-configuration via electron reverse overflow to dynamically tune the adsorption behavior of sulfur-containing intermediates for enhanced sulfur resistance.

Kuruba Chandrakala | Machine Learning and Statistics | Best Researcher Award

Dr. Kuruba Chandrakala | Machine Learning and Statistics | Best Researcher Award

Siddhartha Academy of Higher Education | India

Dr. Kuruba Chandrakala is an emerging researcher in the domains of computer vision, deep learning, and medical image processing, currently serving as Assistant Professor (Selection Grade) in the CSE department at Siddhartha Academy of Higher Education, Vijayawada. She earned her Ph.D. from NIT Tiruchirappalli, preceded by M.Tech in Computer Science and Engineering with distinction from JNTU Kakinada and B.Tech in the same discipline from JNTU Anantapur. She has qualified both NET and APSET examinations. Her professional trajectory includes roles as Head of Department (CSE-AIML) at Vignan’s Nirula Institute of Technology & Science for Women and previous teaching appointments at VNITSW and SITAM, along with industry experience as a System Engineer with Tata Consultancy Services. Her publication record comprises five Scopus indexed papers, four of which are in SCIE journals, two IEEE conference papers, and one book chapter; she also holds one patent. Her Scopus metrics include an h-index of 4, 10 documents, and 150 citations. Her research has addressed areas such as diabetic retinopathy segmentation, robust blood vessel detection, and image enhancement through deep learning architectures. She teaches courses including Deep Learning, Machine Learning, Big Data Analytics, Cloud Computing, and programming in C, C++, Java, and Python. She has earned numerous certifications from NPTEL, Coursera, Microsoft, IBM, and Wipro and received awards such as the NPTEL Discipline Star and Wipro Project Excellence Award. Her leadership and mentoring roles include serving as a mentor for Wipro TalentNext, nodal officer for Microsoft Upskilling and APSCHE virtual internship programs, and coordinator for various hackathons. She is a life member of professional bodies such as CSI, ISTE, IAENG, and IET, and has delivered several invited and guest lectures, contributing significantly to academic excellence and research advancement.

Profiles: Scopus Google Scholar Orcid

Featured Publications

Chandrakala, K., & Gopalan, N. P. (2025). 3DECNN: A novel method for segmentation of diabetic retinopathy in retinal fundus images using 3D-edge CNN. Neural Computing and Applications.

Kuruba, C., Sharmila, S. K., Mounika, V., Aswini, D., & Poojitha, G. (2023). Three layered security model to prevent credit card fraud using LBPH and CNN-ResNet architecture. International Conference on Hybrid Intelligent Systems, 422–428.

Dharmaiah, K., Mebarek-Oudina, F., Sreenivasa Kumar, M., & Chandra Kala. (2023). Nuclear reactor application on Jeffrey fluid flow with Falkner-Skan factor, Brownian and thermophoresis, non-linear thermal radiation impacts past a wedge. Journal of the Indian Chemical Society, 100(2), 117.

Kuruba, C., & Gopalan, N. P. (2023). Robust blood vessel detection with image enhancement using relative intensity order transformation and deep learning. Biomedical Signal Processing and Control, 86, 105195.

Kuruba, C., Pushpalatha, N., Ramu, G., Suneetha, I., Kumar, M. R., & Harish, P. (2023). Data mining and deep learning-based hybrid health care application. Applied Nanoscience, 13(3), 2431–2437.

Changqing Cao | High-Dimensional Data Analysis | Best Researcher Award

Prof. Dr. Changqing Cao | High-Dimensional Data Analysis | Best Researcher Award

Prof. Dr. Changqing Cao | Xidian University | China

Dr. Cao Changqing is a distinguished researcher in the field of optoelectronic technology, remote sensing, and artificial intelligence–based image processing. With a career rooted in innovation and discovery, he has consistently contributed to advancing the frontiers of photonics and optical engineering. His dedication to academic excellence is reflected in his extensive involvement in high-impact publications, editorial roles, and global scientific recognition. A lifelong learner and mentor, Dr. Cao has guided numerous projects that bridge theoretical frameworks with practical applications, creating lasting impact across industries and research communities. His recognition as one of the world’s top scientists underscores the breadth of his expertise and the significance of his research contributions. Through his work, Dr. Cao has earned a reputation not only as a skilled academic but also as a visionary scientist committed to developing cutting-edge technologies that benefit society and foster interdisciplinary collaboration.

Profiles

Orcid
Scopus

Education

Dr. Cao pursued his higher education at Xidian University, where he dedicated nearly a decade to mastering the intricacies of optical engineering. Beginning with a foundation in undergraduate studies, he advanced seamlessly into postgraduate research, ultimately earning his doctorate in the same field. His academic journey was marked by an immersion in the principles of photonics, laser systems, and advanced optical imaging, disciplines that later became central to his professional expertise. The rigorous training he received equipped him with both theoretical knowledge and experimental skills, enabling him to explore challenging problems in optoelectronics. His progression from bachelor’s to doctoral studies at the same institution reflects a continuous commitment to deep specialization while maintaining a broad perspective on technological applications. This academic background provided the cornerstone for his innovative research career, nurturing the analytical rigor and creativity that define his scholarly contributions to modern optical and remote sensing technologies.

Experience

Dr. Cao began his professional career at Xidian University, where he continues to serve as a faculty member specializing in optoelectronics engineering. Over the years, he has developed a strong academic and professional identity by combining teaching, research, and scientific leadership. His responsibilities span supervising advanced research projects, mentoring young scholars, and contributing to international collaborations. Dr. Cao’s experience has also extended into peer-review and editorial activities for leading scientific journals such as those under the OSA Optica Publishing Group, IEEE, MDPI, and Wiley. Serving as both a reviewer and an editor has positioned him at the forefront of evaluating and shaping scientific advancements in his field. His work is characterized by a blend of experimental exploration and applied engineering, ensuring that his research remains both academically rigorous and technologically relevant. This long-standing experience illustrates his dedication to scientific excellence and knowledge dissemination worldwide.

Research Interests

Dr. Cao’s research interests lie at the intersection of optoelectronic technology, remote sensing, and artificial intelligence–driven image analysis. His work often bridges fundamental optical theories with advanced engineering practices, producing solutions that enhance imaging quality, detection accuracy, and data interpretation in complex environments. He has explored areas such as optical heterodyne detection, interferometric imaging, and laser dynamics, with applications spanning satellite imaging, photonics integration, and high-speed optical systems. A key theme of his research is the application of machine learning and clustering algorithms to improve image processing and modulation format identification, which has direct relevance in communication and sensing technologies. He has also contributed significantly to the study of light scattering, compressed sensing in remote imaging, and phase compensation algorithms. This combination of expertise highlights his versatility in applying optics and AI to solve real-world challenges, reflecting both innovative thinking and a strong commitment to interdisciplinary advancement.

Awards Recognitions

Dr. Cao’s career is his recognition in the prestigious Top Two Percent Global Scientists List, which highlights his global influence and outstanding contributions to optical engineering. This honor underscores the impact of his research and the high regard in which he is held within the international scientific community. Beyond this recognition, Dr. Cao’s roles as an editor and reviewer for top-tier journals further attest to his academic reputation and professional achievements. These positions not only reflect his expertise but also demonstrate his responsibility in guiding the quality of global scientific literature. His award recognition is a testament to his years of dedication, continuous innovation, and ability to address complex problems in optoelectronics. Such honors contribute to cementing his position as a thought leader whose work inspires fellow researchers and fosters the next generation of advancements in photonics and remote sensing.

Publication Top Notes

An Improved Satellite ISAL Imaging Vibration Phase Compensation Algorithm Based on Prior Information and Adaptive Windowing

Journal: Remote Sensing (2025)
Authors: Chenxuan Duan, Hongyuan Liu, Xiaona Wu, Jian Tang, Zhejun Feng, Changqing Cao

Calibration of 16 × 16 SOI optical phased arrays via improved SPGD algorithm

Journal: Optics and Laser Technology (2023)
Authors: Z. Wang, B. Wu, J. Liao, X. Li, C. Wang, Y. Sun, L. Jin, J. Feng,  Changqing Cao

Factors influencing the performance of optical heterodyne detection system

Journal: Optics and Lasers in Engineering (2023)
Authors: Z. Wu, C. Cao, Z. Feng, S. Ye, M. Li, B. Song, R. Wei

Improving distance imaging accuracy through temporal position correction with phase difference compensation

Journal: Applied Optics (2023)
Authors: Z. Wu, C. Cao, Z. Feng, X. Wu, C. Duan, H. Liu

Innovative OPA-based optical chip for enhanced digital holography

Journal: Optics Express (2023)
Authors: Z. Wang, L.I.U. Linke, P. Jiang, J. Liao, X.U. Jiamu, S.U.N. Yanlnig, J.I.N. Li, L.U. Zhenzhong, J. Feng, C. Cao

Conclusion

Dr. Cao Changqing embodies the qualities of a dedicated researcher, visionary innovator, and respected academic leader. His journey through higher education, research, and professional service demonstrates a lifelong commitment to pushing the boundaries of knowledge in optoelectronics and photonics. With an impressive body of published work, editorial engagements, and global recognition, he has established himself as a prominent figure in the scientific community. His achievements illustrate not only personal excellence but also a broader contribution to advancing the capabilities of imaging and optical systems for diverse applications. As an educator, he inspires students and collaborators, fostering an environment of curiosity and innovation. As a scientist, he delivers groundbreaking work that continues to shape the field. With such a strong record of achievements, Dr. Cao represents the ideal candidate for prestigious recognition, serving as a role model for future generations of researchers and a driving force in global technological progress.