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.

Radhakrishnanand Pullapanthula | Pharmaceutical Analysis |

Prof. Dr. Radhakrishnanand Pullapanthula | Pharmaceutical Analysis | Best Researcher Award

National Institute of Pharmaceutical Education and Research | India

Prof. Dr. Radhakrishnanand Pullapanthula is a highly accomplished pharmaceutical scientist and analytical research leader with over two decades of distinguished experience in both industry and academia. A quality-minded professional, he has built a reputation for excellence in analytical compliance, regulatory affairs, and strategic development in the pharmaceutical sector. With a career spanning more than 24 years, including over 12 years in senior management positions, Dr. Pullapanthula has contributed significantly to analytical research and development, project leadership, and regulatory compliance within the framework of international standards such as cGMP, FDA, and ICH. His expertise lies in analytical method development, impurity profiling, physico-chemical characterization, and life cycle management of complex pharmaceutical products, including ANDA and NDA applications.Dr. Radhakrishnanand has been a driving force in setting up GMP-compliant analytical laboratories and implementing best practices for quality and regulatory adherence. His technical mastery covers LC-MS/MS, GC-MS/MS, ICP-MS, LC-Q-TOF-MS/MS, HPLC, GC, and IC techniques, enabling him to develop and validate advanced analytical methods for drug substances, formulations, excipients, food, and herbal products. His pioneering work in impurity profiling, degradation chemistry, and reference standard qualification has had a lasting impact on analytical R&D and pharmaceutical quality systems. As a leader, he has successfully coordinated the establishment of ISO 17025:2005 and ISO 17025:2017 certified laboratories, and played a key role in achieving NABL accreditation and ISO certification for analytical facilities at Daicel Chiral Technologies–India and United States Pharmacopeia.In addition to his industrial achievements, Dr. Radhakrishnanand has held prominent academic and administrative roles, serving as Registrar (In-Charge) and a board-level member in key scientific and innovation committees. His contributions extend to serving as an Expert Member on several national panels including the DST-Technology Development Board, ANRF-Life Sciences, NGCMA, and the Pharmaceutical Policy Committee of Tripura. As a Board of Director at the Atal Innovation Mission, NIPER-Guwahati, he has actively promoted innovation and research excellence in the pharmaceutical sciences. He currently manages and coordinates major projects such as the “Quality Assessment and Value Addition Centre for Herbal Industry in the North-Eastern States of India,” funded by the Ministry of Commerce under the TIES scheme, with a project worth exceeding twenty crores.

Profile: Google Scholar

Featured Publications

Rao, D. V. S., Radhakrishnanand, P., Suryanarayana, M. V., & Himabindu, V. (n.d.). A stability-indicating LC method for candesartan cilexetil. Chromatographia.

Kumari Rayala, V. V. S. P., Kandula, J. S., & Radhakrishnanand, P. (n.d.). Advances and challenges in the pharmacokinetics and bioanalysis of chiral drugs. Chirality.

Rao, D. V. S., & Radhakrishnanand, P. (n.d.). Stress degradation studies on dutasteride and development of a stability-indicating HPLC assay method for bulk drug and pharmaceutical dosage form. Chromatographia.

Kaja, R. K., Surendranath, K. V., Radhakrishnanand, P., Satish, J., & others. (n.d.). A stability-indicating LC method for deferasirox in bulk drugs and pharmaceutical dosage forms. Chromatographia.

Vishnuvardhan, C., Radhakrishnanand, P., Navalgund, S. G., Atcha, K. R., & others. (n.d.). RP-HPLC method for the simultaneous estimation of eight cardiovascular drugs. Chromatographia.

Rao, D. V. S., Radhakrishnanand, P., & Himabindu, V. (n.d.). Stress degradation studies on tadalafil and development of a validated stability-indicating LC assay for bulk drug and pharmaceutical dosage form. Chromatographia.

Subba Rao, D. V., Surendranath, K. V., Radhakrishnanand, P., & others. (n.d.). A stability-indicating LC method for vardenafil HCl. Chromatographia.

Tadesse Tarik Tamir | Pharmaceutical Analysis | Best Researcher Award

Tadesse Tarik Tamir | Pharmaceutical Analysis | Best Researcher Award

Mr. Tadesse Tarik Tamir, College of Medicine and Health Sciences, University of Gondar, Ethiopia

Tadesse Tarik Tamir is a dedicated lecturer and researcher at the University of Gondar, Ethiopia 🎓. With a Master’s in Pediatrics and Child Health Nursing and an MPH in Epidemiology, he actively contributes to teaching, research, and community service. His expertise spans public health, epidemiology, and child healthcare 🏥. Tadesse has published several Q1-ranked research articles on childhood nutrition, vaccination, and PTSD in children 📑. Proficient in SPSS, STATA, R, and GIS 📊, he is committed to advancing healthcare research and education. His work continues to impact public health policies and child welfare across low- and middle-income countries 🌍.

Publication Profile

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Education

Tadesse Tarik Tamir 🎓 is a dedicated healthcare professional from Gondar, Ethiopia 🇪🇹. He is currently pursuing an MPH in Epidemiology 🦠 at the University of Gondar (since November 2022). Previously, he earned an MSc in Pediatrics and Child Health Nursing 👶🩺 (2019–2021) and a BSc in Nursing 🏥 (2014–2018) from the same university. His commitment to academia also led him to obtain a Diploma in Higher Education 📚 (2021–2022). With a strong educational background and expertise in nursing and epidemiology, Tadesse is devoted to improving public health and child healthcare in Ethiopia. 🌍✨

Experience 

Tadesse Tarik Tamir 🎓 is a dedicated educator and researcher at the University of Gondar 🇪🇹. Since July 2021, he has been serving as a Lecturer 🏫, actively engaged in teaching, research, and community service. Prior to this, he worked as an Assistant Lecturer 📚 (2019–2021), contributing to academic excellence and knowledge dissemination. His journey in academia began as a Graduate Assistant II 🏅 (2018–2019), where he honed his teaching and research skills. With a strong passion for education and public health, Tadesse continues to inspire students and contribute to impactful research in Ethiopia. 🌍✨

Networks and Membership

Tadesse Tarik Tamir 🎓 is an active contributor to academia and professional networks. Since 2016, he has served as an Editorial Board Member for BMC Public Health 📝, playing a vital role in scientific publishing. He has been a proud member of the Ethiopian Nursing Association (ENA) 🏥 since 2015, advocating for nursing excellence. His commitment to social impact extends to his role at the Menna Elderly and Mentally Challenging Support Center ❤️. Additionally, since 2021, he has been an Executive Member of the Ethiopian Teachers’ Association 📚, supporting educators and academic development in Ethiopia 🇪🇹. 🌍✨

Research Focus

Tadesse Tarik Tamir’s research focuses on public health 🏥, epidemiology 📊, and child health 👶 across low- and middle-income countries. His work extensively explores childhood vaccination 💉, nutritional health 🥦, infectious diseases 🦠, and maternal and neonatal mortality 👩‍🍼. He also investigates mental health disorders 🧠, particularly post-traumatic stress disorder (PTSD) in children. Through systematic reviews, meta-analyses, and spatial epidemiology, he provides critical insights into health disparities 🌍, aiming to influence policy decisions 📜 and improve healthcare outcomes. His high-impact Q1 journal publications 📄 reflect his leadership in global health research.

Publication Top Notes

Prof.Mehdi Khashei, Pharmaceutical Analysis,Editorial Board Member 1191

Prof.Mehdi Khashei, Pharmaceutical Analysis,Editorial Board Member

Prof.Mehdi Khashei, at Isfahan University of Technology, Iran

Author Profile

 

  • Education📚:

    • Ph.D. in Industrial and Systems Engineering, Isfahan University of Technology (IUT), 2014
      • Thesis: Modeling Spaces Continuity Theory
    • M.Sc. in Industrial and Systems Engineering, Isfahan University of Technology (IUT), 2005
      • Thesis: Forecasting and Analysis of Isfahan Steel Company Productions Price in Tehran Metals Exchange using Artificial Neural Networks
    • B.Sc. in Applied Mathematics and Computer Science, University of Isfahan, 2001
  • Publications🏅:

    • Mehdi Khashei has authored numerous articles in reputable journals such as Energy Reports, Biomedical Signal Processing and Control, International Journal of Computational Intelligence Systems, and many others. His research primarily focuses on innovative methodologies like discrete deep learning-based intelligent classification, hybrid models for time series forecasting, and applications in medical decision-making and energy classification.
  • Research Focus🧪:

    • His research interests span across areas like intelligent systems, deep learning, chemometrics, medical informatics, and statistical modeling, contributing significantly to advancements in predictive analytics and decision support systems.

🎓Publication Top Noted:

Paper Title :An artificial neural network (p, d, q) model for timeseries forecasting

  • Authors   : JMehdi Khashei, Mehdi Bijari
  • Journal    : Expert Systems with applications
  • Year        : 2010
Paper Title :A novel hybridization of artificial neural networks and ARIMA models for time series forecasting
    • Authors : Mehdi Khashei, Mehdi Bijari
    • Journal   : Applied soft computing
    • Year : 2011
Paper Title :Improvement of auto-regressive integrated moving average models using fuzzy logic and artificial neural networks (ANNs)
    • Authors :Mehdi Khashei, Mehdi Bijari, Gholam Ali Raissi Ardali
    • Journal   :Neurocomputing
    • Year : 2009
Paper Title :A new hybrid artificial neural networks and fuzzy regression model for time series forecasting
    • Authors : Mehdi Khashei, Seyed Reza Hejazi, Mehdi Bijari
    • Journal   :Fuzzy sets and systems
    • Year : 2008
Paper Title :Hybrid structures in time series modeling and forecasting: A review
    • Authors : Zahra Hajirahimi, Mehdi Khashei
    • Journal   : Engineering Applications of Artificial Intelligence
    • Year : 2019