Fahad Shahzad | Earth and Planetary Sciences | Best Researcher Award

Dr. Fahad Shahzad | Earth and Planetary Sciences | Best Researcher Award

Beijing Forestry University | Pakistan

Dr. Fahad Shahzad is a leading researcher in Remote Sensing and Geospatial Analysis, specializing in environmental monitoring, vegetation dynamics, forest fire prediction, and sustainable forest management. With an h-index of 11, 19 published documents, and 353 total citations, his work demonstrates significant impact in applying advanced machine learning and geospatial techniques to ecological and environmental challenges. He has developed ensemble machine learning models for forest fire prediction in Pakistan and China, spatio-temporal analyses of vegetation stress under climatic variability, and biomass and carbon stock modeling in Northern China forests. His research also explores urban heat island effects and vegetation dynamics in major Pakistani cities, along with long-term land-use and forest fragmentation analyses in Portugal. Dr. Shahzad has contributed extensively to high-impact journals including Fire Ecology, Earth Science Informatics, Scientific Reports, and Ecological Informatics, and actively serves as a reviewer for leading international SCI journals. Collaborating with multidisciplinary teams across China, Pakistan, and Europe, he integrates tools such as R, Google Earth Engine, and GIS to generate data-driven insights for climate resilience and environmental management. His work bridges fundamental research and applied solutions, advancing predictive modeling and geospatial approaches for global sustainability, while mentoring early-career researchers and contributing to collaborative, cross-border scientific initiatives.

Profiles : Scopus | Orcid | Google Scholar

Featured Publications

Shahzad, F., Mehmood, K., Anees, S. A., Adnan, M., Muhammad, S., Haidar, I., Ali, J., Hussain, K., Feng, Z., & Khan, W. R. (2025). Advancing forest fire prediction: A multi-layer stacking ensemble model approach. Earth Science Informatics.

Hussain, K., Badshah, T., Mehmood, K., Rahman, A. U., Shahzad, F., Anees, S. A., Khan, W. R., & Yujun, S. (2025). Comparative analysis of sensors and classification algorithms for land cover classification in Islamabad, Pakistan. Earth Science Informatics.

Mehmood, K., Anees, S. A., Muhammad, S., Shahzad, F., Liu, Q., Khan, W. R., Shrahili, M., Ansari, M. J., & Dube, T. (2025). Machine learning and spatio temporal analysis for assessing ecological impacts of the Billion Tree Afforestation Project. Ecology and Evolution.

Ali, J., Haoran, W., Mehmood, K., Hussain, W., Iftikhar, F., Shahzad, F., Hussain, K., Qun, Y., & Zhongkui, J. (2025). Remote sensing and integration of machine learning algorithms for above-ground biomass estimation in Larix principis-rupprechtii Mayr plantations: A case study using Sentinel-2 and Landsat-9 data in northern China. Frontiers in Environmental Science.

Hussain, K., Mehmood, K., Anees, S. A., Ding, Z., Muhammad, S., Badshah, T., Shahzad, F., Haidar, I., Wahab, A., Ali, J., et al. (2025). Retraction notice to “Assessing forest fragmentation due to land use changes from 1992 to 2023: A spatio-temporal analysis using remote sensing data” [Heliyon 10 (2024) e34710]. Heliyon.

Anees, S. A., Mehmood, K., Raza, S. I. H., Pfautsch, S., Shah, M., Jamjareegulgarn, P., Shahzad, F., Alarfaj, A. A., Alharbi, S. A., Khan, W. R., et al. (2025). Spatiotemporal analysis of surface Urban Heat Island intensity and the role of vegetation in six major Pakistani cities. Ecological Informatics.

Anees, S. A., Mehmood, K., Khan, W. R., Shahzad, F., Zhran, M., Ayub, R., Alarfaj, A. A., Alharbi, S. A., & Liu, Q. (2025). Spatiotemporal dynamics of vegetation cover: Integrative machine learning analysis of multispectral imagery and environmental predictors. Earth Science Informatics.

Al-Tameemi, N., Zhang, X., Shahzad, F., Mehmood, K., Xiao, L., & Zhou, J. (2025). From trends to drivers: Vegetation degradation and land-use change in Babil and Al-Qadisiyah, Iraq (2000–2023). Remote Sensing.

Hussain, K., Mehmood, K., Yujun, S., Badshah, T., Anees, S. A., Shahzad, F., Nooruddin, Ali, J., & Bilal, M. (2024). Analysing LULC transformations using remote sensing data: Insights from a multilayer perceptron neural network approach. Annals of GIS.

Mehmood, K., Anees, S. A., Muhammad, S., Hussain, K., Shahzad, F., Liu, Q., Ansari, M. J., Alharbi, S. A., & Khan, W. R. (2024). Analyzing vegetation health dynamics across seasons and regions through NDVI and climatic variables. Scientific Reports.

Hussain, K., Mehmood, K., Anees, S. A., Ding, Z., Muhammad, S., Badshah, T., Shahzad, F., Haidar, I., Wahab, A., Ali, J., et al. (2024). Assessing forest fragmentation due to land use changes from 1992 to 2023: A spatio-temporal analysis using remote sensing data. Heliyon.

Elif Keskin Bilgiç | Engineering | Best Researcher Award

Mrs. Elif Keskin Bilgiç | Engineering | Best Researcher Award

Istanbul University -Cerrahpaşa | Turkey

Author Profile

Orcid

Early Academic Pursuits 🎓

Mrs. Elif Keskin Bilgiç's academic journey began with a strong foundation in biology, earning her B.Sc. in Biology from Abant İzzet Baysal University in 2010. She further pursued her passion for biomedical engineering, completing an M.Sc. at Istanbul University in 2016. Her master's thesis focused on investigating the therapeutic effects of innovative biomaterials, such as L-Dopa and Lawsone, in wound healing. This early academic focus laid the groundwork for her expertise in biomedical engineering and clinical applications. In 2024, she completed her Ph.D. in Biomedical Engineering from Istanbul University-Cerrahpaşa, specializing in non-invasive clinical decision support systems for diagnosing gastrointestinal diseases using advanced machine learning methods. 📚

Professional Endeavors 💻

With over a decade of professional experience, Mrs. Bilgiç has made significant contributions as both a researcher and educator. She has taught Cambridge Biology at the A-Level from 2016 to 2024 at the International Gokkusagi School in Istanbul, equipping students with critical knowledge to excel in international examinations. As a researcher at Istanbul University-Cerrahpaşa since 2016, she has pioneered research using transfer learning techniques to detect celiac disease, developing predictive machine learning models to aid in diagnostics. Her work in wound healing and biomaterials during her early career helped shape her innovative approaches in biomedical engineering.

Contributions and Research Focus 🔬

Mrs. Bilgiç's research centers on developing non-invasive clinical decision support systems for diagnosing autoimmune diseases, with a particular focus on celiac disease. Her groundbreaking research involves the use of machine learning models, including transfer learning and deep learning, to diagnose the disease by analyzing facial images and predicting Marsh levels from patient data. This innovative approach merges cutting-edge AI technology with clinical diagnostics, advancing the field of medical science. In addition, her research on the therapeutic effects of biomaterials in wound healing has expanded the knowledge base in biomedical engineering.

Accolades and Recognition 🏆

Mrs. Bilgiç has published multiple scientific papers, including an original article on using transfer learning for celiac disease identification, which has garnered attention within the scientific community. Her work has been presented at numerous conferences and symposia, including international venues such as the Bilge Kagan 2nd International Science Congress in Barcelona, Spain, and the 11th Nanoscience and Nanotechnology Conference in Ankara, Turkey. Her innovative approaches to clinical diagnostics and contributions to autoimmune disease research have earned her recognition as a thought leader in the field.

Impact and Influence 🌍

Through her research, Mrs. Bilgiç is reshaping how clinical diagnostics are performed, particularly for gastrointestinal and autoimmune diseases. Her development of non-invasive diagnostic systems could revolutionize patient care, offering faster and more accurate diagnosis options. Her educational impact extends beyond the research lab, as she has inspired countless students through her teaching, blending her academic and professional expertise into practical applications that shape future scientists and researchers.

Legacy and Future Contributions ✨

Mrs. Bilgiç's work in machine learning, biomedical engineering, and education has laid a strong foundation for future advancements in healthcare technology. Her legacy will likely be marked by her innovations in non-invasive diagnostic tools and her contribution to the understanding of biomaterials in medical treatment. As her research evolves, she is poised to continue making significant contributions that will benefit patients and healthcare providers alike, influencing the future of clinical decision support systems and biomedical engineering for years to come.

 

Publications


📖 Innovative Approaches to Clinical Diagnosis: Transfer Learning in Facial Image Classification for Celiac Disease Identification 
Author: Elif Keskin Bilgiç, Inci Zaim Gokbay, Yusuf Kayar
Journal: Applied Sciences
Year: 2024


 

Xueqin Gao | Agricultural and Biological Sciences | Best Researcher Award

Dr. Xueqin Gao | Agricultural and Biological Sciences | Best Researcher Award

The University of Hong Kong | China

Author Profile

Scopus

Early Academic Pursuits

Xueqin Gao commenced his academic journey with a Bachelor's in Aquaculture from Yantai University, laying the foundation for his future research in coastal ecosystems.

Professional Endeavors

Gao has actively contributed to the scientific community, starting as a Research Assistant at Xiamen University and later as a Project Officer for the China Mangrove Conservation Network. His commitment continued as a Postdoc at The University of Hong Kong and a Researcher at the College of Environment and Ecology, Xiamen University.

Contributions and Research Focus

Gao's research revolves around Blue Carbon ecosystems, nutrient cycling, trophic interactions, and coastal wetlands restoration. His notable work includes exploring the biogeochemical role of sesarmid crabs, their feeding strategies, and the impact of nitrogen enrichment on mangrove ecosystems.

Accolades and Recognition

Gao's dedication is reflected in his publications in renowned journals like "Frontiers in Marine Science" and "Ecological Engineering." His contributions have earned him grants, including the prestigious Shenzhen-Hong Kong-Macau Technology Research Programme.

Impact and Influence

Gao's research on sesarmid crabs and mangrove ecosystems has contributed significantly to understanding the intricate relationships within coastal environments. His work has implications for biodiversity, carbon sequestration, and vegetation restoration.

Legacy and Future Contributions

As a co-PI on the Shenzhen-Hong Kong-Macau Technology Research Programme, Gao is poised to leave a lasting legacy. His future contributions aim to further unravel the mysteries of coastal ecosystems, fostering sustainable practices and biodiversity conservation.

Notable Publications

Feeding Strategies of Mangrove Leaf-Eating Crabs for Meeting Their Nitrogen Needs on a Low-Nutrient Diet 2022 (4)

Domestic duck (Anas platyrhynchos) farming in mangrove forests in southern China: Unsustainable and sustainable patterns 2019 (3)

Effects of Spartina alterniflora Invasion on the Diet of Mangrove Crabs ( Parasesarma plicata ) in the Zhangjiang Estuary, China 2018 (15)

Identification of the food sources of mangrove molluscs from different microhabitats at Qinglangang, Hainan 2015 (1)

Differences in burrow morphology of crabs between Spartina alterniflora marsh and mangrove habitats 2014 (55)