Jun-Jun Yeh | Data Analysis | Best Researcher Award

Prof. Dr. Jun-Jun Yeh | Data Analysis | Best Researcher Award

Prof. Dr. Jun-Jun Yeh, professor, ditmanson medical fondation, Taiwan.

Dr. Jun-Jun Yeh is a renowned Taiwanese physician and researcher with over 25 years of experience in pulmonary medicine and family medicine. He has held significant roles at China Medical University, Chung Gang Memorial Hospital, Pingtung Christian Hospital, and National Taiwan University Hospital. Currently, he is the Chief of Family Medicine and Attending Chest Physician at Ditmanson Medical Foundation Chia-Yi Christian Hospital and Professor at Chia Nan University of Pharmacy and Science. Widely recognized for his contributions, he has been featured in multiple editions of Marquis Who’s Who and holds leading positions in international medical societies.

Publication Profile

Scopus

ORCID

Google Scholar

🎓 Education Background

Dr. Yeh holds a Master’s degree in both pulmonary medicine and family medicine. His academic journey reflects a strong foundation in medical science and clinical practice, enabling him to specialize in respiratory conditions and chronic diseases. He has supplemented his formal education with continuous affiliations to leading organizations such as the American Thoracic Society and European Respiratory Society to stay updated with advancements in medicine. His dual-specialization has positioned him at the intersection of research and real-world healthcare application, allowing him to contribute substantially to both patient care and academic literature.

🏥 Professional Experience

Dr. Yeh began his medical career at China Medical University in Taichung, Taiwan, where he served for nearly 15 years. His professional trajectory then took him through appointments at Chung Gang Memorial Hospital, Pingtung Christian Hospital, and the prestigious National Taiwan University Hospital. Currently, he serves as Chief of Family Medicine and Chest Physician at Chia-Yi Christian Hospital and as a Professor at Chia Nan University. In addition to clinical responsibilities, he is an active peer reviewer and editorial chair for numerous international journals, significantly shaping the landscape of pulmonary and thoracic medicine.

🏆 Awards and Honors

Dr. Yeh has received numerous accolades over his career, including repeated listings in Who’s Who in the World and Who’s Who in Science and Engineering. He was honored with first place by the Korean Society of Thoracic Radiology from 2010 to 2012. His research has been cited in international guidelines, including those from the American College of Radiology. He is also ranked among the top global experts in pulmonary medicine according to Expertscape (2000–2018), reflecting his exceptional influence and contribution in areas such as thoracic imaging, pulmonary infection, and chronic respiratory disease.

🔬 Research Focus

Dr. Yeh’s research focuses on pulmonary medicine, specifically thoracic imaging, pulmonary infections, chronic obstructive pulmonary disease, asthma, and their intersections with metabolic syndromes like diabetes. His interests also extend to osteoporosis and dementia in respiratory patients. He has published extensively in high-impact journals such as European Radiology, European Respiratory Journal, Scientific Reports, and Journal of Clinical Medicine. His studies, including large cohort analyses, have had real-world implications, influencing clinical guidelines and therapeutic strategies across global healthcare systems.

🔚 Conclusion

Dr. Jun-Jun Yeh stands out as a globally respected leader in respiratory and internal medicine. With a career spanning academic, clinical, and editorial excellence, he continues to influence the fields of pulmonary care and interdisciplinary research. His dedication to clinical service, scholarly publishing, and international collaboration showcases his role as a thought leader and innovator in medical science. Dr. Yeh’s profound impact on global health is evident through his mentorship, publications, and active participation in advancing the field of cardio-metabolic-pulmonary medicine.

📚 Publications 

  1. Long-Term Impact of COVID-19 on Osteoporosis Risk Among Patients Aged ≥50 Years with New-Onset Overweight, Obesity, or Type 2 Diabetes
    Year: 2025 |  Medicina |  Cited by: –

  2. Relationship between GLP-1 Receptor Agonists and Cardiovascular Disease in Chronic Respiratory Disease and Diabetes
    Year: 2024 |  Biomedicines |  Cited by: 10+ articles

  3. Hydroxychloroquine on the Pulmonary Vascular Diseases in Interstitial Lung Disease: Immunologic Effects, and Virus Interplay
    Year: 2022 | Biomedicines |  Cited by: 25+ articles

  4. Time-dependent propensity-matched general population study of the effects of statin use on cancer risk
    Year: 2021 |  BMJ Open |  Cited by: 30+ articles

  5. Effects of statins and steroids on coronary artery disease and stroke in patients with ILD
    Year: 2021 |  PLOS ONE |  Cited by: 35+ articles

  6. Time to commence or time out for colchicine in secondary prevention of cardiovascular disease?
    Year: 2021 |  European Heart Journal |  Cited by: 100+ articles

  7. Predictors of Initial Smear-Negative Active Pulmonary Tuberculosis…
    Year: 2019 | Scientific Reports |  Cited by: 45+ articles

  8. Statin for Tuberculosis and Pneumonia in Patients with ACOS
    Year: 2018 | Journal of Clinical Medicine |  Cited by: 60+ articles

 

Prof. Dr. Metin Zontul | Machine Learning | Best Researcher Award

Prof. Dr. Metin Zontul | Machine Learning | Best Researcher Award

Dean, Sivas University of Science and Technology, Turkey

Prof. Dr. Metin Zontul is a seasoned academic and researcher in the fields of machine learning, data mining, and intelligent systems, currently serving as Professor and Dean at the Faculty of Engineering and Natural Sciences, Sivas University of Science and Technology, Turkey. With over 30 years of academic experience, he has held various esteemed positions at several universities in Turkey and contributed significantly to national-level research projects, innovation in artificial intelligence, and academic leadership.

Publication Profile

Google Scholar

ORCID

🎓 Education Background

He earned his Ph.D. in Quantitative Methods in Business Administration (2004) from the Institute of Social Sciences, focusing his dissertation on clustering countries trading with Turkey using SOM-type artificial neural networks. He holds an M.Sc. in Computer-Aided Design, Manufacturing, and Programming (1996), where he analyzed local area network access protocols, and a B.Sc. in Computer Engineering (1993) from Middle East Technical University.

💼 Professional Experience

Prof. Zontul has held multiple academic ranks, starting as a Lecturer at Cumhuriyet University (1994–2005) and advancing to Assistant, Associate, and then Professor at institutions such as Istanbul Aydın University, Arel University, Ayvansaray University, and Topkapi University. He has been a key academic leader, serving as Dean and Department Chair across several faculties. Since 2023, he has led the Faculty of Engineering and Natural Sciences at Sivas UST. He also supervises graduate theses and collaborates on research with TUBITAK and other industry-linked projects.

🏆 Awards and Honors

Prof. Zontul has received Publication Incentive Awards from Istanbul Aydın University in 2014 and 2016 for his scholarly contributions. He is a former member of IEEE and holds a 2024 patent for a Personnel Assignment and Routing System related to unit failure and maintenance operations.

🔬 Research Focus

His research interests span machine learning, deep learning, data mining, signal processing, natural language processing, and intelligent systems. He has contributed extensively to the scientific community through 25+ peer-reviewed journal articles, 20+ conference papers, and collaborative projects involving academia and industry. His supervision of numerous theses and his involvement in over 30 national research projects reflect his commitment to practical and academic advancements in AI.

🔚 Conclusion

Prof. Dr. Metin Zontul stands as a multifaceted academician blending research, leadership, and innovation. His significant contributions to AI, education, and national research initiatives have cemented his reputation as a leading scholar in his field.

📚 Top Publications 

  1. Application of artificial intelligence neural network modeling to predict the generation of domestic, commercial and construction wastes (2021)
    Journal: Waste Management & Research
    Cited by: 92
    Co-authors: G. Coskuner, M.S. Jassim, S. Karateke

  2. Comparative performance analysis of support vector regression and artificial neural network for prediction of municipal solid waste generation (2022)
    Journal: Waste Management & Research
    Cited by: 49
    Co-authors: M.S. Jassim, G. Coskuner

  3. Urban bus arrival time prediction: A review of computational models (2013)
    Journal: International Journal of Recent Technology and Engineering (IJRTE)
    Cited by: 123
    Co-author: M. Altinkaya

  4. Measuring the efficiency of telecommunication sectors of OECD countries using data envelopment analysis (2005)
    Journal: CU Journal of Economics and Administrative Sciences
    Cited by: 41
    Co-authors: O. Kaynar, H. Bircan

  5. Wind speed forecasting using reptree and bagging methods in Kirklareli-Turkey (2013)
    Journal: Journal of Theoretical and Applied Information Technology
    Cited by: 35
    Co-authors: F. Aydin, G. Dogan, S. Sener, O. Kaynar

  6. The prediction of the ZnNi thickness and Ni% of ZnNi alloy electroplating using a machine learning method (2021)
    Journal: Transactions of the IMF
    Cited by: 34
    Co-authors: R. Katirci, H. Aktas

  7. A smart and mechanized agricultural application: From cultivation to harvest (2022)
    Journal: Applied Sciences
    Cited by: 31
    Co-authors: F. Kiani, G. Randazzo, I. Yelmen, A. Seyyedabbasi, S. Nematzadeh, F.A. Anka, et al.

 

 

Zari Farhadi | Analytics | Best Researcher Award

Dr. Zari Farhadi | Analytics | Best Researcher Award

Lecturer, University of Tabriz, Iran

Dr. Zari Farhadi is a dedicated lecturer and researcher at the University of Tabriz, Iran, with expertise in Data Science, Machine Learning, and Predictive Modeling. Her passion for academic excellence is evident in her work, particularly in the development of hybrid models to enhance data analysis accuracy. With a Ph.D. in Data Science, she has contributed extensively to advancing predictive models through innovative techniques like ensemble learning and deep regression. 🌟📚

Publication Profile

Google Scholar

Education

Zari Farhadi holds a Ph.D. in Data Science, specializing in machine learning, deep learning, and statistical techniques, from the University of Tabriz. Her academic foundation supports her pioneering work in hybrid machine learning models. 🎓

Experience

As a lecturer and researcher, Dr. Farhadi has contributed to various research papers, focusing on machine learning and deep learning. She teaches at both the Computerized Intelligence Systems Laboratory and the Department of Statistics at the University of Tabriz. Her research experience spans across several high-impact areas of data science, including predictive modeling and statistical learning. 🧑‍🏫

Awards and Honors

Though not currently affiliated with professional organizations, Dr. Farhadi’s work has been recognized in academic circles through the citation of her research in top journals, underlining her growing impact in the field of data science. 🏅

Research Focus

Dr. Farhadi’s research centers on Machine Learning, Predictive Modeling, Ensemble Learning Methods, Statistical Learning, and Hybrid Models like ADeFS, which integrate deep learning with statistical shrinkage methods. She strives to improve model performance in real-world applications, including gold price prediction and real estate valuation. 🤖📊

Conclusion

Zari Farhadi continues to innovate and drive research in the fields of machine learning and data science. Through her groundbreaking work in hybrid models, she is shaping the future of predictive analytics and advancing the boundaries of artificial intelligence in academic and industrial applications. 🌍

Publications

An Ensemble Framework to Improve the Accuracy of Prediction Using Clustered Random-Forest and Shrinkage Methods,
Appl. Sci., vol. 12, no. 20, 2022, doi: 10.3390/app122010608
Cited by: 15 articles.

Improving random forest algorithm by selecting appropriate penalized method
Commun. Stat. Simul. Comput., vol. 0, no. 0, pp. 1–16, 2022, doi: 10.1080/03610918.2022.2150779
Cited by: 10 articles.

ERDeR: The combination of statistical shrinkage methods and ensemble approaches to improve the performance of deep regression,
IEEE Access, DOI: 10.1109/ACCESS.2024.3368067
Cited by: 3 articles.

ADeFS: A deep forest regression-based model to enhance the performance based on LASSO and Elastic Net,
Mathematics and Computer Science, MDPI, 13 (1), 118, 2024.
Cited by: Pending.

Combining Regularization and Dropout Techniques for Deep Convolutional Neural Network,
IEEE Glob. Energy Conf. GEC 2022, pp. 335–339, 2022, doi: 10.1109/GEC55014.2022.9986657
Cited by: 5 articles.

Analysis of Penalized Regression Methods in a Simple Linear Model on the High-Dimensional Data,
American Journal of Theoretical and Applied Statistics, 8 (5), 185, 2019.
Cited by: 2 articles.

An Ensemble-Based Model for Sentiment Analysis of Persian Comments on Instagram Using Deep Learning Algorithms,
IEEE Access, DOI: 10.1109/ACCESS.2024.3473617
Cited by: Pending.

Hybrid Model for Visual Sentiment Classification Using Content-Based Image Retrieval and Multi-Input Convolutional Neural Network,
International Journal of Intelligent Systems (Under review).