Yu’e Cha | Pharmaceutical Analysis | Research Excellence Award

Assoc. Prof. Dr. Yu’e Cha | Pharmaceutical Analysis | Research Excellence Award

National Institute of Environmental Health | China

Assoc. Prof. Dr. Yu’e Cha is a distinguished environmental toxicologist whose academic training and professional achievements reflect a deep commitment to advancing public health through scientific innovation. She began her academic journey in chemistry, earning a Bachelor of Science from the Beijing Institute of Technology, where she cultivated strong analytical and experimental capabilities. Driven by a passion for understanding chemical interactions in environmental and biological systems, she continued her studies with a Master’s Degree in Analytical Chemistry at Capital Normal University. This foundation equipped her with advanced laboratory skills and an appreciation for rigorous scientific methodology, laying the groundwork for her future contributions to environmental health research.Dr. Cha’s professional career spans several prominent research institutions, where she progressively assumed more influential roles. Her early work as a Research Assistant in Applied Chemistry allowed her to gain essential experience in laboratory operations and applied research management. She later advanced to the Chinese Center for Disease Control and Prevention, where she served as a research intern and assistant researcher in the Rural Water Supply Improvement Technology Guidance Center. During this period, she worked on improving rural sanitation systems, enhancing water quality, and supporting national initiatives aimed at reducing environmental health risks among vulnerable populations.Her expertise in environmental toxicology deepened at the National Institute of Environmental Health, where she contributed to the Environmental Toxicology Laboratory. As an assistant researcher and later an associate researcher, she expanded her research scope to include atmospheric particulate exposure, respiratory health risks, toxic components of airborne pollutants, and population-level environmental susceptibility. Her role also extended to national public health preparedness, where she supported epidemic information analysis and early warning activities under the Emergency Office of the National Health Commission. This experience highlighted her ability to integrate scientific research with real-time public health response.Throughout her career, Dr. Cha has participated in and led multiple influential scientific projects supported by national science foundations, health commissions, and international organizations. Her contributions span studies on aging biomarkers, pollutant exposure pathways, respiratory inflammation, particulate matter toxicology, environmental determinants of infectious disease transmission, climate change adaptation strategies, and soil pollution exposure assessments. She has also led international cooperation initiatives aimed at improving environmental sanitation and population health outcomes.Dr. Cha’s scholarly impact is reflected in her academic metrics. Her research is cited 174 times across 154 documents, and she has authored 11 scientific publications. With an h-index of 7, she demonstrates consistent scientific influence and a strong record of meaningful, widely recognized contributions to environmental health science.

Profile: Scopus

Featured Publications

FirstAuthorLastName, A. A., SecondAuthorLastName, B. B., ThirdAuthorLastName, C. C., … (2025). Chemical exposure in females of childbearing age associated with sex hormones: Evidence from an untargeted exposomic approach. Environment International, Year, Article ID or page range.

Mehdi Khashei | Pharmaceutical Analysis | Editorial Board Member

Prof. Mehdi Khashei | Pharmaceutical Analysis | Editorial Board Member

Isfahan University of Technology | Iran

Prof. Mehdi Khashei is a distinguished scholar in Industrial and Systems Engineering whose extensive academic and research contributions have positioned him as a leading expert in intelligent modeling, hybrid forecasting systems, and data-driven decision-making. He completed his academic journey with a strong mathematical and computational foundation, beginning with a Bachelor’s degree in Applied Mathematics and Computer Science from the University of Isfahan. Building on this analytical background, he pursued advanced studies at the Isfahan University of Technology, earning both his Master’s and Ph.D. in Industrial and Systems Engineering, where he focused on forecasting, analysis of industrial systems, and the integration of artificial intelligence into complex decision environments. His Post-Doctorate research at the same institution further advanced theoretical developments in Modeling Spaces Continuity, reinforcing his expertise in the intersection of systems theory, soft computing, and intelligent analytics.Throughout his academic career, Prof. Khashei has pioneered numerous innovative methodologies in the fields of time series forecasting, intelligent classification, hybrid modeling, and decision science. His research is particularly recognized for introducing discrete learning-based intelligent algorithms, reliability-based hybrid models, and advanced statistical-intelligent approaches for forecasting, classification, and optimization across diverse domains. His work spans energy systems, medicine, chemometrics, financial time series, predictive maintenance, load forecasting, and biomedical decision-making, demonstrating a unique capacity to bridge theory with real-world applications.Prof. Khashei has authored and co-authored an extensive portfolio of high-impact publications across leading international journals. His studies present cutting-edge solutions to challenges in artificial neural networks, fuzzy hybrid models, regression systems, clinical diagnostics, optimization strategies, and intelligent data preprocessing. His contributions have significantly shaped modern approaches to forecasting through hybridization frameworks such as series-parallel models, fuzzy-intelligent seasonal systems, and reliability-based methodologies. With groundbreaking insights into energy classification, breast cancer detection, heart disease diagnosis, and optimal financial turning point detection, his work continues to influence both academic research and applied industry practices.Prof. Mehdi Khashei is widely respected for his scientific rigor, interdisciplinary expertise, and commitment to advancing intelligent systems that enhance decision-making in complex, uncertain environments. His legacy is reflected not only in his prolific scholarly contributions but also in the transformative impact of his methodologies across engineering, computational intelligence, and data-driven industries.

Profile: Google Scholar

Featured Publications

Khashei, M., & Bijari, M. (2010). An artificial neural network (p, d, q) model for time series forecasting. Expert Systems with Applications, 37(1), 479‑489.

Khashei, M., & Bijari, M. (2011). A novel hybridization of artificial neural networks and ARIMA models for time series forecasting. Applied Soft Computing, 11(2), 2664‑2675.

Khashei, M., Bijari, M., & Ardali, G. A. R. (2009). Improvement of auto‑regressive integrated moving average models using fuzzy logic and artificial neural networks (ANNs). Neurocomputing, 72(4‑6), 956‑967.

Khashei, M., Hejazi, S. R., & Bijari, M. (2008). A new hybrid artificial neural networks and fuzzy regression model for time series forecasting. Fuzzy Sets and Systems, 159(7), 769‑786.

Hajirahimi, Z., & Khashei, M. (2019). Hybrid structures in time series modeling and forecasting: A review. Engineering Applications of Artificial Intelligence, 86, 83‑106.

Khashei, M., & Bijari, M. (2012). A new class of hybrid models for time series forecasting. Expert Systems with Applications, 39(4), 4344‑4357.

Khashei, M., Hamadani, A. Z., & Bijari, M. (2012). A novel hybrid classification model of artificial neural networks and multiple linear regression models. Expert Systems with Applications, 39(3), 2606‑2620.

Khashei, M., Bijari, M., & Ardali, G. A. R. (2012). Hybridization of autoregressive integrated moving average (ARIMA) with probabilistic neural networks (PNNs). Computers & Industrial Engineering, 63(1), 37‑45.

Khashei, M., & Hajirahimi, Z. (2019). A comparative study of series ARIMA/MLP hybrid models for stock price forecasting. Communications in Statistics – Simulation and Computation, 48(9), 2625‑2640.

Dibyanshu | Pharmaceutical Analysis | Best Researcher Award

Dr. Dibyanshu | Pharmaceutical Analysis | Best Researcher Award

Freiberg University of Mining and Technology | Germany

Dr. Dibyanshu is an accomplished researcher in the field of Environmental Engineering, with expertise spanning emerging contaminants, fate and transport mechanisms, colloid filtration, and groundwater remediation. He completed his doctoral studies at the prestigious Indian Institute of Technology, Patna, where his dissertation, Fate and Transport Behavior of Engineered Nanoparticles through Porous Media, contributed valuable insights into contaminant migration in subsurface environments. His academic journey includes an Integrated M-Tech in Water Engineering and Management from the Central University of Jharkhand, followed by a series of impactful research and teaching positions, including Assistant Professorship and Research Assistantship roles at leading institutions.As an Alexander von Humboldt post-doctoral fellow at Technische Universität Bergakademie Freiberg, Germany, Dr. Dibyanshu focuses on the Fate and Transport of Pharmaceuticals through Unsaturated Porous Media via Infiltration, emphasizing sustainable solutions for groundwater quality management. His earlier work on In-situ Remediation of Arsenic Using Immobilized Iron Sulphide in 3-D Tank Systems reflects his commitment to practical environmental applications alongside theoretical advancements.Dr. Dibyanshu’s research portfolio features an impressive array of peer-reviewed publications in high-impact journals. Notable works include Influence of Agricultural Practices and Environmental Conditions on Pharmaceuticals in Recharge Waters in Science of The Total Environment, Emerging Contaminants: Assessing the Release of Pharmaceuticals via Managed Aquifer Recharge in Environmental Science and Pollution Research, and Trace Compounds in the Urban Water Cycle in the Freiberg Region, Germany in Frontiers in Water. His contributions extend to modeling studies such as Modeling the Transport Behavior of Zinc Oxide Nanoparticles in Soil under Various Environmental Conditions in Water, Air, & Soil Pollution and comprehensive reviews like Fate and Transport Behavior of Engineered Nanoparticles

Profile: Google Scholar

Featured Publications

Dibyanshu, K., Chhaya, T., & Raychoudhury, T. (2023). A review on the fate and transport behavior of engineered nanoparticles: Possibility of becoming an emerging contaminant in the groundwater. International Journal of Environmental Science and Technology, 20(4), 4649–4672.

Dibyanshu, & Raychoudhury, T. (2019). Co-transport behavior of nano-ZnO particles in the presence of metal-nanoparticles through saturated porous media. Journal of Environmental Chemical Engineering, 7(3), 103103.

Dibyanshu, & Raychoudhury, T. (2020). Transport behaviour of different metal-based nanoparticles through natural sediment in the presence of humic acid and under the groundwater condition. Journal of Earth System Science, 129(1), 1–12.

Kumar, A., Dibyanshu, & Raychoudhury, T. (2020). Long-term fate of ZnO-FexOy mix-nanoparticles through the saturated porous media under constant head condition. Science of The Total Environment, 721, 137669.

Dibyanshu, Pradhan, I., Nayak, A., & Raychoudhury, T. (2021). Variation in porous media compositions influence the co-transport behavior of ZnO and FexOy mixed nanoparticles. Groundwater for Sustainable Development, 100710.

Chhaya, S., Dibyanshu, S., Singh, S., & Raychoudhury, T. (2022). Nanoparticles and nanocomposite materials for water treatment: Application in fixed bed column filter. In Sustainable Water Treatment: Advances and Technological Interventions (pp. 171–244).

Seetha, N., Dibyanshu, & Raychoudhury, T. (2024). Modeling the transport behavior of zinc oxide nanoparticles in soil under various environmental conditions. Water, Air, & Soil Pollution, 235(1), 55.

Dibyanshu, Kern, M., & Scheytt, T. (2024). Trace compounds in the urban water cycle in the Freiberg region, Germany. Frontiers in Water, 6, 1335766.

Azhagu Madhavan | Pharmaceutical Analysis | Excellence in Research

Azhagu Madhavan | Pharmaceutical Analysis | Excellence in Research

Dr. S. Azhagu Madhavan, Saveetha Medical College and Hospital, Saveetha Institute of Medical and Technical Sciences, Tamil Nadu, India

Dr. S. Azhagu Madhavan, M.Sc., Ph.D., is an Assistant Professor at Saveetha Medical College and Hospital, Chennai, India. His academic background spans Zoology and Biotechnology, with a focus on pharmacology, pharmacognosy, phytochemistry, and nanotechnology. His Ph.D. research explored the pharmacological effects of Costus Spicatus in diabetic rats. He has several patents, including innovations in biosensors and biodegradable products. Dr. Madhavan has contributed to high-impact journals in neuroscience, immunology, and nanobiotechnology. He is passionate about advancing natural products and nanobiotechnology for healthcare and environmental applications.

Publication Profile

Google Scholar

Education

Dr. S. Azhagu Madhavan is an accomplished academic with a strong foundation in Zoology and Biotechnology. He earned his Ph.D. in Zoology from A Veeriya Vandayar Memorial Sri Pushpam College (an autonomous institution affiliated with Bharathidasan University) in Poondi, Thanjavur, Tamil Nadu, India, from 2016 to 2020. His academic journey began with a Master’s in Zoology (2014-2016) followed by a Bachelor’s in Zoology and Biotechnology (2011-2014), both from the same esteemed institution. Dr. Madhavan’s educational background reflects his deep passion for biological sciences and commitment to advancing knowledge in his field.

Experience

Dr. S. Azhagu Madhavan has accumulated valuable experience in the academic and research fields. He is currently serving as an Assistant Professor at Saveetha Medical College and Hospital, Saveetha Institute of Medical and Technical Sciences (SIMATS), Chennai, since 2022. Previously, he worked as a Research Associate at Global Scientific Research Services, Ariyalur (2020-2021), and as a Research Assistant at Harman Institute of Science Education and Research, Thanjavur (2016-2017). With a total of 4 years and 8 months of experience, Dr. Madhavan has significantly contributed to the field of biological sciences.

Awards

Dr. S. Azhagu Madhavan has made notable contributions to the scientific community through his oral presentations. One of his significant presentations, titled “Earthworm Cut of Bacteria and Fungus Analysis Eisenia fetida,” was delivered at the National Conference on Trends in Healthcare and Biotechnology in 2016. In addition to this, he was invited as a speaker for the event Opportunities & Challenges (THBOC-2016), organized by the P.G & Department of Zoology and Biotechnology, A.V.V.M Sri Pushpam College. His ongoing efforts continue to impact the field of healthcare and biotechnology.

Research Focus

Dr. S. Azhagu Madhavan’s research primarily focuses on phytochemistry, nanotechnology, and medicinal plants. His studies include phytochemical screening, GC-MS analysis, and green synthesis of nanoparticles from various plant extracts such as Silybum marianum, Murraya koenigii, and Avicennia marina. He explores the bioactive compounds in these plants for their antioxidant, anticancer, antibacterial, and antidiabetic properties. His work on silver nanoparticles also highlights their potential applications in biomedical sciences. His contributions significantly impact areas like pharmacology and nanomedicine.

Publication Top Notes

Phytochemical screening and GC-MS analysis of bioactive compounds present in ethanolic leaves extract of Silybum marianum (L).

Potential of banana based cellulose materials for advanced applications: A review on properties and technical challenges

Green synthesis and characterization of silver nanoparticles with different solvent extracts of Sesbania grandiflora (L.) Poiret and assessment of their antibacterial …

Phytochemical screening and GC–MS analysis of bioactive compounds present in ethanolic leaf extract Murraya koenigii

Polyphenol-compounds From Green Synthesis of Antimicrobial property of Silver Nanoparticles using Eichhornia crassipes: Characterization and Applications

Phytochemical screening and comparative gc–ms analysis of bioactive compounds present in methanolic leaf and latex extract Calotropis gigantea (L)

Extraction, biosynthesis, and characterization of silver nanoparticles for its enhanced applications of antibacterial activity using the Silybum marianum Linn. plant

Identification and characterization of silver nanoparticles from Erythrina indica and its antioxidant and Uropathogenic antimicrobial properties

Anticancer activity of Pedalium murex linn methanolic leaves extract against A549 human lung cancer cell line