Winston Dunn | Artificial Intelligence |  Best Researcher Award

Dr. Winston Dunn | Artificial Intelligence |  Best Researcher Award

The University Of Kansas Medical Center | United States

Author Profiles

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Orcid ID

Early Academic Pursuits

Dr. Winston Dunn began his academic journey with a Bachelor of Science in Biochemistry from the University of British Columbia. He pursued his medical degree at Ross University School of Medicine and later completed advanced training at The Chicago Medical School. His strong foundation in internal medicine was built through residency at the Mayo Graduate School of Medicine, followed by specialized fellowships in Gastroenterology at the University of California, San Diego, and in Transplant Hepatology at Mayo Clinic. Parallel to his clinical training, he enriched his expertise with a Master’s in Public Health, highlighting his commitment to blending clinical practice with population health perspectives.

Professional Endeavors

Dr. Dunn’s academic career began as an Instructor in Medicine at the Mayo Clinic College of Medicine (2009–2010). He then joined the University of Kansas Medical Center as an Assistant Professor (2010–2016), rising to Associate Professor (2016–2025), and currently serves as Professor in the Division of Gastroenterology. His steady progression reflects consistent excellence in teaching, research, and clinical leadership. Additionally, his professional licensure across multiple states and board certifications in Internal Medicine, Gastroenterology, and Transplant Hepatology highlight his depth of expertise.

Contributions and Research Focus

Dr. Dunn’s research is primarily centered on liver diseases, with a special focus on nonalcoholic steatohepatitis (NASH), metabolic dysfunction-associated steatohepatitis (MASH), cirrhosis, and outcomes after hepatitis C treatment. He has been the principal investigator in numerous Phase II and Phase III clinical trials, collaborating with leading pharmaceutical companies and institutions. His studies explore genetic predictors of liver disease outcomes, non-invasive biomarkers, and novel therapeutics aimed at reversing fibrosis and improving survival. He also contributed to improving models of care, diagnosis, and patient referral systems in hepatology.

Impact and Influence

Dr. Dunn’s work has had significant clinical implications, advancing knowledge in liver transplantation, NASH therapeutics, and hepatology practice. His role in high-impact trials, including those supported by Gilead Sciences, Novo Nordisk, and Madrigal Pharmaceuticals, positions him as a leader in shaping the future of liver disease management. His active service on the AASLD Alcoholic Liver Disease Steering Committee and Education Subcommittee further demonstrates his influence on clinical guidelines, education, and policy within the hepatology community.

Academic Citations and Recognition

Dr. Dunn’s contributions have been recognized through multiple awards, including the Sheila Sherlock Clinical and Translational Research Award (2012), the AASLD Advanced Transplant Hepatology Fellowship Award (2009), and induction as a Fellow of the American Association for the Study of Liver Diseases (FAASLD) in 2023. His research has generated numerous publications and citations, reflecting his impact on both scientific literature and clinical practice.

Legacy and Future Contributions

With an established record of academic excellence, groundbreaking research, and mentorship, Dr. Dunn’s legacy lies in advancing hepatology through both innovative research and translational impact. His ongoing leadership in pivotal trials will likely redefine therapeutic standards for NASH and related liver conditions. As a Professor at the University of Kansas Medical Center, he is poised to continue mentoring future hepatologists while contributing to international collaborations that influence the global fight against liver disease.

Conclusion

In summary, Dr. Winston Dunn exemplifies the qualities of a distinguished academic physician-scientist. His rigorous training, progressive academic career, and pioneering research in hepatology underscore his suitability for honors such as the Best Researcher Award. With a career dedicated to bridging clinical care, research innovation, and education, Dr. Dunn stands as a role model whose work continues to shape the future of liver disease management and patient outcomes worldwide.

Notable Publications

“Artificial Intelligence for Predictive Diagnostics, Prognosis, and Decision Support in MASLD, Hepatocellular Carcinoma, and Digital Pathology

  • Author: Nicholas Dunn; Nipun Verma; Winston Dunn
  • Journal: Journal of Clinical and Experimental Hepatology
  • Year: 2025

"Prevalence and Predictors of Suspected Metabolic Dysfunction‐Associated Steatotic Liver Disease in Adolescents in the United States

  • Author: Sheila L. Noon; Lauren F. Chun; Tin Bo Nicholas Lam; Nhat Quang N. Thai; Winston Dunn; Jeffrey B. Schwimmer‏
  • Journal: Alimentary Pharmacology & Therapeutics
  • Year: 2025

"Comparison Between Dynamic Models for Predicting Response to Corticosteroids in Alcohol‐Associated Hepatitis: A Global Cohort Study

  • Author: Francisco Idalsoaga; Luis Antonio Díaz; Leonardo Guizzetti; Winston Dunn; Heer Mehta; Jorge Arnold; Gustavo Ayares; Rokhsana Mortuza; Gurpreet Mahli; Alvi H. Islam et al.
  • Journal: Alimentary Pharmacology & Therapeutics
  • Year: 2025

"Moderate alcohol-associated hepatitis: A real-world multicenter study

  • Author: Francisco Idalsoaga; Luis Antonio Díaz; Winston Dunn; Heer Mehta; Karen Muñoz; Vicente Caldentey; Jorge Arnold; Gustavo Ayares; Rokhsana Mortuza; Shiv K. Sarin et al.
  • Journal: Hepatology Communications
  • Year: 2025

"An artificial intelligence-generated model predicts 90-day survival in alcohol-associated hepatitis: A global cohort study

  • Author: Winston Dunn; Yanming Li; Ashwani K. Singal; Douglas A. Simonetto; Luis A. Díaz; Francisco Idalsoaga; Gustavo Ayares; Jorge Arnold; María Ayala-Valverde; Diego Perez et al.
  • Journal: Hepatology
  • Year: 2024

Mian Usman Sattar | Artificial Intelligence | Best Researcher Award

Dr. Mian Usman Sattar | Artificial Intelligence | Best Researcher Award

University of Derby | United Kingdom

Author Profiles

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Orcid ID

Google Scholar

Early Academic Pursuits

Dr. Mian Usman Sattar’s academic journey reflects a sustained commitment to excellence in computing, informatics, and information systems. He began with a Postgraduate Diploma in Communication and Computer Technology from Government College University, Lahore (2002), followed by an M.Sc. in Computer Science (2004). His pursuit of international exposure led him to the United Kingdom, where he earned a Postgraduate Diploma in Computer Science (2008) and an MS in IT Management from the University of Sunderland (2010). His academic trajectory culminated in a Ph.D. in Informatics from the Malaysian University of Science and Technology (2022), under the guidance of Prof. Dr. Ang Ling Weay. Currently, he is further enhancing his expertise through a PG Certificate leading to FHEA from the University of Derby, UK (expected 2025).

Professional Endeavors

Dr. Sattar’s career spans academia, industry, and research leadership. His current role as Lecturer and Program Leader (Information Technology) at the University of Derby involves teaching diverse modules such as IT Product Design, Web Technologies, and Analytics Ethics. Prior to this, he served as Assistant Professor of Business Intelligence at Beaconhouse National University (2020–2023), where he introduced contemporary courses in analytics and emerging technologies. His earlier tenure as Assistant Professor of Information Systems at the University of Management and Technology (2014–2020) saw him direct academic programs, establish industry collaborations, and lead departmental initiatives. Beyond academia, he has contributed to industry as Deputy Manager (MIS) at AIAK International, UK, and as Unit Head for Training at Haseen Habib Corporation in Pakistan.

Contributions and Research Focus

Dr. Sattar’s research is anchored in Business Intelligence, Data Analytics, Enterprise Systems, and Information Security. He has secured multiple high-value research grants, including funding from the Pakistan Science Foundation, TWAS-COMSTECH, Malaysia Digital Economy Corporation, and the Malaysia Toray Science Foundation. His contributions extend beyond individual research, encompassing the creation of specialized academic tracks, development of curricula in disruptive technologies, and integration of industrial alliances such as with Microsoft Dynamics, Oracle, SAP, and Coursera.

Impact and Influence

Over two decades, Dr. Sattar has influenced academic landscapes in Pakistan, Malaysia, and the UK. He has mentored students on cutting-edge topics like Generative AI, Industry 4.0, and immersive technologies. As a conference chair, keynote speaker, and session leader, he has shaped dialogues on emerging business technologies. His role as a reviewer for numerous high-impact journals-including Sustainability, Frontiers in Medicine, and ACM Transactions-demonstrates his standing in the scholarly community.

Academic Citations and Recognitions

Dr. Sattar’s scholarly work is recognized through fellowships, travel grants, and the Higher Education Commission’s approval as a Ph.D. supervisor. His funded projects, often exceeding £30,000–£60,000 in value, have advanced applied research in artificial intelligence, data analytics, and enterprise systems. He is regularly invited to deliver talks at international conferences, reflecting the academic community’s acknowledgment of his expertise.

Legacy and Future Contributions

Dr. Sattar’s legacy lies in building academic bridges between industry and education, modernizing curricula, and fostering innovation-driven learning environments. His future trajectory points toward deepening his engagement with AI-driven business intelligence, strengthening global research collaborations, and influencing policy in higher education technology integration. By combining pedagogical innovation with robust research, he continues to prepare students for the demands of a data-driven global economy.

Conclusion

Dr. Mian Usman Sattar’s career exemplifies the synergy between scholarship, industry expertise, and educational leadership. From pioneering business intelligence programs to mentoring the next generation of data scientists, his work reflects both depth and breadth in the evolving field of information systems. His international academic footprint, sustained research output, and leadership roles position him as a transformative figure whose contributions will continue to shape the intersection of technology and business education.

Notable Publications

"Beyond Polarity: Forecasting Consumer Sentiment with Aspect- and Topic-Conditioned Time Series Models

  • Author: Mian Usman Sattar; Raza Hasan; Sellappan Palaniappan; Salman Mahmood; Hamza Wazir Khan
  • Journal: Information
  • Year: 2025

"From promotion to empathy: a content analysis of brand responses to social justice movements

  • Author: Dilshad, W.; Sattar, U.; Ghaffar, A.
  • Journal: Bulletin of Management Review
  • Year: 2025

"Enhancing Supply Chain Management: A Comparative Study of Machine Learning Techniques with Cost–Accuracy and ESG-Based Evaluation for Forecasting and Risk Mitigation

  • Author: Mian Usman Sattar; Vishal Dattana; Raza Hasan; Salman Mahmood; Hamza Wazir Khan; Saqib Hussain
  • Journal: Sustainability
  • Year: 2025

"Exploring the impact of augmented reality on medical students’ intrinsic motivation: a three-dimensional analysis

  • Author: Sattar, U.; Khan, H. W.; Ghaffar, A.; Raza, S.
  • Journal: Journal of Management & Social Science
  • Year: 2025

"Enhancing customer segmentation through factor analysis of mixed data (FAMD)-based approach using K-means and hierarchical clustering algorithms

  • Author: Sattar, U.; Ufeli, C. P.; Hasan, R.; Mahmood, S.
  • Journal: information
  • Year: 2025

Dr. Priyadharshini Vadivel Muthurathinam | Information Technology | Best Researcher Award

Dr. Priyadharshini Vadivel Muthurathinam | Information Technology | Best Researcher Award

Dr. Priyadharshini Vadivel Muthurathinam , BIT Campus, India

Dr. V.M. Priyadharshini is a seasoned academician with over 20 years of experience in Information Technology 🎓💻. Currently serving as an Assistant Professor (Selection Grade) at AUBIT, she holds a Ph.D. in Information Technology and specializes in Social Network Analysis 🌐. Her contributions span across intelligent systems, geospatial applications, and privacy-preserving frameworks, reflecting her commitment to impactful, interdisciplinary research 🔍📊. With numerous publications in reputed international journals and conferences, she continuously explores innovative solutions for modern-day digital challenges 🚀📡. Dr. Priyadharshini also mentors budding researchers while actively contributing to technological advancement in academia 🧑‍🔬📚.

Professional Profile:

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Suitability Of Best Researcher Award

Dr. V.M. Priyadharshini is an exemplary candidate for the Best Researcher Award based on her outstanding academic contributions, interdisciplinary research, and commitment to addressing pressing digital challenges. With over two decades of experience in Information Technology, Dr. Priyadharshini has developed a strong academic and professional profile, which includes notable achievements in Social Network Analysis (SNA), geospatial data analysis, and privacy-preserving frameworks.

🎓 Education and Experience 

  • 🎓 B.Tech in Information Technology

  • 🎓 M.Tech in Information Technology

  • 🎓 Ph.D. in Information Technology

  • 🧑‍🏫 Assistant Professor (Selection Grade) – Department of IT, AUBIT

  • 🗓️ 20 Years of Professional Experience in academia and research

📈 Professional Development

Dr. Priyadharshini has consistently enhanced her academic and research profile through active participation in scholarly publications and technology forums 📘🧠. Her recent works in geospatial data analysis, machine learning, and spam detection in online networks exemplify her engagement with real-world challenges through a research lens 🌍🤖. She collaborates with peers across disciplines and contributes to conferences and workshops on privacy, cyber safety, and AI applications 🛡️🧑‍💼. By integrating teaching and research, she ensures students stay updated with emerging trends while fostering innovation in the field of information technology 🎯📡.

🔬 Research Focus Category

Dr. Priyadharshini’s primary research lies in Social Network Analysis (SNA) and its applications in cyber-security and intelligent systems 🌐🔐. Her work involves analyzing complex user behaviors, detecting malicious profiles, and safeguarding digital communication through adaptive frameworks 💬🧠. She also delves into machine learning, spam detection, and geospatial risk assessment, bringing a multi-disciplinary approach to digital and environmental data analytics 🌎📊. Through applied computational models, she seeks to solve pressing issues in privacy protection, digital pollution monitoring, and smart data processing, pushing the envelope in IT-enabled societal resilience 📡🧬.

🏆 Awards and Honors 

  • 🏅 Published in high-impact international journals such as ScienceDirect, Springer, and IOS Press

  • 📖 Recognized contributor to IEEE Conferences and Proceedings

  • 🌟 Reputed faculty at AUBIT with 20 years of teaching and research excellence

  • 🧪 Lead researcher in government-funded academic projects

Publication Top Notes:

Title: Adaptive Framework for Privacy Preserving in Online Social Networks
Journal: Wireless Personal Communications
Publication Date: December 20, 2021
DOI: 10.1007/s11277-021-08822-4
Authors: V. M. Priyadharshini, A. Valarmathi

🔍 Summary in Simple Terms:

This research addresses the growing concern of privacy in online social networks (OSNs) like Facebook, Twitter, and Instagram. The authors propose an adaptive privacy-preserving framework that helps users control how much and what kind of personal information is shared with others.

Mohammad Reza Nikpour | Artificial Intelligence | Best Researcher Award

Assoc. Prof. Dr. Mohammad Reza Nikpour | Artificial Intelligence | Best Researcher Award

Mohammad Reza Nikpour at University of Mohaghegh Ardabili, Iran📖

Dr. Mohammad Reza Nikpour is an esteemed scholar in Water Engineering, currently serving as a faculty member at the University of Mohaghegh Ardabili, Iran. His expertise lies in hydrodynamics, river engineering, and water resource management, with extensive contributions to computational modeling and environmental sustainability.

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Education Background🎓

  • Ph.D. in Water Engineering, University of Mohaghegh Ardabili, Iran
  • M.Sc. in Water Engineering, University of Mohaghegh Ardabili, Iran
  • B.Sc. in Water Engineering, University of Mohaghegh Ardabili, Iran

Professional Experience🌱

Dr. Nikpour has been actively involved in academic research and teaching at the University of Mohaghegh Ardabili. His work focuses on computational hydrodynamics, groundwater quality assessment, and flood prediction modeling. He has collaborated with international researchers and contributed to innovative water management solutions through data-driven models.

Research Interests🔬

Her research interests include:

  • Hydrodynamics and River Engineering
  • Groundwater Quality Assessment
  • Soft Computing and AI Applications in Water Resource Management
  • Flood Prediction and Climate Change Impact Studies

Author Metrics

Dr. Mohammad Reza Nikpour has established a strong academic presence with numerous publications in high-impact journals, including River Research and Applications, Journal of Cleaner Production, and Stochastic Environmental Research and Risk Assessment. His research contributions have been widely recognized, earning him a growing citation count on Google Scholar and an impressive h-index on Scopus (to be verified). As a highly cited researcher in water engineering, his work has significantly influenced hydrodynamics, groundwater quality assessment, and computational water resource management. His ORCID ID is 0000-0003-4332-0525, and his research continues to shape innovative solutions in environmental sustainability and AI-driven water system modeling.

Awards and Honors
  • Recognized for outstanding contributions in hydrodynamic modeling and water resource sustainability.
  • Published multiple high-impact research papers in top-tier journals such as River Research and Applications, Journal of Cleaner Production, and Stochastic Environmental Research and Risk Assessment.
  • Recipient of research grants and funding for pioneering studies in environmental and computational water management.
Publications Top Notes 📄

1. Estimation of daily pan evaporation using two different adaptive neuro-fuzzy computing techniques

  • Authors: H. Sanikhani, O. Kisi, M.R. Nikpour, Y. Dinpashoh
  • Journal: Water Resources Management
  • Volume: 26
  • Pages: 4347-4365
  • Year: 2012
  • Citations: 70
  • Summary: This study applies adaptive neuro-fuzzy inference system (ANFIS) models to estimate daily pan evaporation, comparing their accuracy and efficiency in hydrological forecasting.

2. Experimental and numerical simulation of water hammer

  • Authors: M.R. Nikpour, A.H. Nazemi, A.H. Dalir, F. Shoja, P. Varjavand
  • Journal: Arabian Journal for Science and Engineering
  • Volume: 39
  • Pages: 2669-2675
  • Year: 2014
  • Citations: 48
  • Summary: This paper investigates water hammer phenomena using both experimental methods and numerical simulations, providing insights into fluid dynamics and pipeline safety.

3. Exploring the application of soft computing techniques for spatial evaluation of groundwater quality variables

  • Authors: F. Esmaeilbeiki, M.R. Nikpour, V.K. Singh, O. Kisi, P. Sihag, H. Sanikhani
  • Journal: Journal of Cleaner Production
  • Volume: 276
  • Article: 124206
  • Year: 2020
  • Citations: 31
  • Summary: This research explores soft computing techniques, such as machine learning, for the spatial analysis of groundwater quality, enhancing environmental monitoring and sustainability.

4. Hydrodynamics of river-channel confluence: toward modeling separation zone using GEP, MARS, M5 Tree, and DENFIS techniques

  • Authors: O. Kisi, P. Khosravinia, M.R. Nikpour, H. Sanikhani
  • Journal: Stochastic Environmental Research and Risk Assessment
  • Volume: 33 (4-6)
  • Pages: 1089-1107
  • Year: 2019
  • Citations: 28
  • Summary: The study applies various data-driven models, including gene expression programming (GEP) and M5 Tree, to model separation zones in river confluences, improving hydrodynamic predictions.

5. Application of novel data mining algorithms in prediction of discharge and end depth in trapezoidal sections

  • Authors: P. Khosravinia, M.R. Nikpour, O. Kisi, Z.M. Yaseen
  • Journal: Computers and Electronics in Agriculture
  • Volume: 170
  • Article: 105283
  • Year: 2020
  • Citations: 16
  • Summary: This paper investigates the use of advanced data mining techniques to predict discharge and end depth in trapezoidal channels, optimizing water resource management and agricultural planning.

Conclusion

Dr. Mohammad Reza Nikpour is an exceptional researcher in AI-driven water resource management, making him a strong candidate for the Best Researcher Award. His pioneering work in soft computing and AI applications for hydrology and environmental sustainability sets him apart in his field. Expanding into deep learning, increasing industry collaborations, and engaging in AI conferences could further solidify his leadership in AI for water engineering.

Faisal Mehmood | Computer Vision | Best Researcher Award

Dr. Faisal Mehmood | Computer Vision | Best Researcher Award

Post Doctorate at Shenzhen University, China📖

Faisal Mehmood is a passionate PhD researcher at Zhengzhou University, specializing in Electrical and Information Engineering. With a strong academic background, including degrees in Computer Science, he has a diverse range of expertise in deep learning, computer vision, and human action recognition (HAR). Faisal has authored numerous research papers in prominent journals and conferences and has practical experience as a software developer, database developer, and lecturer. His contributions are recognized in academia, where he also actively reviews for esteemed journals. Faisal continues to focus on advancing technologies in machine learning and artificial intelligence.

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Education Background🎓

  • Ph.D. in Electrical and Information Engineering (2019–2024), Zhengzhou University, Henan, China (1st Division).
  • MS in Computer Science (2015–2017), University of Agriculture Faisalabad (UAF), Punjab, Pakistan (1st Division).
  • MSc in Computer Science (2013–2015), University of Agriculture Faisalabad (UAF), Punjab, Pakistan (1st Division).
  • BSc (2011–2013), Islamia University Bahawalpur, Punjab, Pakistan (1st Division).
  • Intermediate (2008–2010), BISE Bahawalpur, Punjab, Pakistan (1st Division).
  • Matriculation (2006–2008), BISE Bahawalpur, Punjab, Pakistan (1st Division).

Professional Experience🌱

Faisal Mehmood has accumulated a wealth of teaching and industry experience over the years. He has served as a lecturer at institutions such as the University of Agriculture Faisalabad, University of Education Faisalabad, and GC University Faisalabad. Faisal has also gained industry experience as a Software Developer and Database Developer, working on various projects involving database management, web development, and system software design. He has supervised several undergraduate projects and contributed to academic workshops and seminars, fostering an environment of interactive learning and development.

Research Interests🔬

Faisal’s research interests include:

  • Deep Learning: Exploring advanced neural network architectures.
  • Computer Vision: Enhancing image and video processing for real-world applications.
  • Human Action Recognition (HAR): Developing systems for detecting and recognizing human actions through innovative algorithms.
  • Natural Language Processing: Applying machine learning techniques for language understanding and processing.

Author Metrics

Faisal Mehmood has published several research papers in reputed journals, such as IEEE Transactions on Consumer Electronics, Soft Computing, and Computers in Human Behavior, with numerous articles under review. His work has contributed significantly to advancements in the fields of human action recognition, machine learning, and data science. He has received merit scholarships throughout his academic career and has been recognized with awards such as the Chief Minister’s Laptop Scheme and various programming competition wins. Faisal actively contributes to the academic community as a reviewer for top journals and conferences, further enriching his research endeavors.

Publications Top Notes 📄

1. Human action recognition of spatiotemporal parameters for skeleton sequences using MTLN feature learning framework

  • Authors: F Mehmood, E Chen, MA Akbar, AA Alsanad
  • Journal: Electronics
  • Volume: 10
  • Issue: 21
  • Article: 2708
  • Year: 2021
  • Citations: 21

2. Three-dimensional agricultural land modeling using unmanned aerial system (UAS)

  • Authors: F Mahmood, K Abbas, A Raza, MA Khan, PW Khan
  • Journal: International Journal of Advanced Computer Science and Applications
  • Volume: 10
  • Issue: 1
  • Year: 2019
  • Citations: 18

3. Intelligent Transmission Control for Efficient Operations in SDN

  • Authors: R Alkanhel, A Ali, F Jamil, M Nawaz, F Mehmood, A Muthanna
  • Journal: Computers, Materials & Continua
  • Volume: 71
  • Issue: 2
  • Year: 2022
  • Citations: 11

4. Effect of human-related factors on requirements change management in offshore software development outsourcing: A theoretical framework

  • Author: FM Sukana Z
  • Journal: Soft Computing and Machine Intelligence
  • Volume: 1
  • Issue: 1
  • Pages: 36-52
  • Year: 2021
  • Citations: 11

5. Towards successful global software development

  • Authors: M Shafiq, Q Zhang, MA Akbar, T Kamal, F Mehmood, MT Riaz
  • Conference: Proceedings of the 24th International Conference on Evaluation and …
  • Year: 2020
  • Citations: 11

Conclusion

Dr. Faisal Mehmood is undoubtedly a highly deserving candidate for the Best Researcher Award due to his exceptional contributions to deep learning, computer vision, and human action recognition. His innovative frameworks, high-quality publications, and academic success distinguish him as a leader in his field. While there are areas for further improvement, particularly in expanding his research reach and increasing industrial collaborations, his continued growth and success make him a strong candidate for the award. His work, particularly in applying AI and deep learning for practical applications, has great potential to shape the future of technology.

Dr. Mehmood’s combination of academic rigor, technical expertise, and research impact make him a promising figure in the academic community and an excellent candidate for this prestigious recognition.

Raheleh Ghouchan Nezhad Noor Nia | Artificial Intelligence | Best Researcher Award

Dr. Raheleh Ghouchan Nezhad Noor Nia | Artificial Intelligence | Best Researcher Award

Postdoc Researcher at Mashhad University of Medical Sciences, Mashhad, Iran📖

Dr. Raheleh Ghouchan Nezhad Noor Nia is a Senior Data Scientist and Postdoctoral Researcher specializing in the application of machine learning, artificial intelligence, and medical informatics. She is currently based at the Department of Medical Informatics, School of Medicine, Mashhad University of Medical Sciences, Mashhad, Iran. Her extensive academic and professional experience spans multiple domains, including medical informatics, AI in medicine, and data science.

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Education Background🎓

  • Postdoc in Medical Informatics – Data Science & AI in Medicine (2022 – Present), Department of Medical Informatics, Mashhad University of Medical Sciences, Mashhad, Iran.
  • Ph.D. in Computer Engineering – Software (2016 – 2022), Department of Computer Engineering, Azad University, Mashhad, Iran.
  • Master’s in Computer Engineering – AI and Robotics (2013 – 2015), Department of Computer Engineering, Azad University, Mashhad, Iran.
  • Bachelor’s in Computer Engineering – Software (2009 – 2013), Department of Computer Engineering, Azad University, Mashhad, Iran.

Professional Experience🌱

Dr. Ghouchan Nezhad Noor Nia currently serves as a Postdoctoral Researcher and Senior Data Scientist at Mashhad University of Medical Sciences, where she is involved in several pioneering research projects related to AI in healthcare. In addition to her role as a researcher, she is a lecturer at various institutions, including the Department of Computer Engineering at Mashhad Azad University, Khayyam University, and Toos University. She is also actively contributing as a reviewer for prestigious journals such as Materials Today Communication and the Medical Informatics Europe conferences.

Her collaborative efforts extend internationally, having worked with prominent researchers at Karlsruhe Institute of Technology, Germany. Dr. Ghouchan Nezhad Noor Nia has also led and contributed to numerous conferences and workshops focused on AI in medical sciences and health technology.

Research Interests🔬

Dr. Ghouchan Nezhad Noor Nia’s research interests include the intersection of AI, machine learning, and medical informatics. Her focus is on big data mining, social mining, graph mining, material science, and AI applications in medical diagnostics, specifically in diseases like lupus nephritis and pulmonary thromboembolism. She is also interested in ontology engineering, metadata management, health social networks, deep learning, and point-of-interest recommendation systems

Author Metrics

Dr. Ghouchan Nezhad Noor Nia has contributed to numerous high-impact publications and has an active research profile with publications in reputed journals and conferences. Her work focuses on innovative solutions and machine learning methods to solve complex challenges in healthcare and material science. She has co-authored papers presented at various prestigious international conferences, including the 12th Neuroscience Congress and International Health Literacy Congress. Her Google Scholar profile reflects her growing influence in the field.

Publications Top Notes 📄

1. A Graph-Based k-Nearest Neighbor (KNN) Approach for Predicting Phases in High-Entropy Alloys

  • Authors: R Ghouchan Nezhad Noor Nia, M Jalali, M Houshmand
  • Journal: Applied Sciences
  • Volume: 12
  • Issue: 16
  • Article ID: 8021
  • Year: 2022
  • DOI: 10.3390/app12168021
  • Summary: This paper introduces a graph-based k-nearest neighbor (KNN) algorithm for phase prediction in high-entropy alloys, leveraging machine learning techniques for material science applications.

2. Machine Learning Approach to Community Detection in a High-Entropy Alloy Interaction Network

  • Authors: R Ghouchan Nezhad Noor Nia, M Jalali, M Mail, Y Ivanisenko, C Kübel
  • Journal: ACS Omega
  • Volume: 7
  • Issue: 15
  • Pages: 12978-12992
  • Year: 2022
  • DOI: 10.1021/acsomega.2c02625
  • Summary: This work focuses on community detection in a high-entropy alloy interaction network using machine learning methods, exploring the structure and relationships between various alloy elements.

3. Non-Alcoholic Fatty Liver Disease Diagnosis with Multi-Group Factors

  • Authors: A Arzehgar, RG Nezhad Noor Nia, V Dehdeleh, F Roudi, S Eslami
  • Journal: Healthcare Transformation with Informatics and Artificial Intelligence
  • Pages: 503-506
  • Year: 2023
  • Summary: This paper proposes a novel methodology for diagnosing non-alcoholic fatty liver disease (NAFLD) by considering multiple influencing factors and utilizing advanced informatics and artificial intelligence.

4. RecMem: Time Aware Recommender Systems Based on Memetic Evolutionary Clustering Algorithm

  • Authors: RG Nezhad Noor Nia, M Jalali
  • Journal: Computational Intelligence and Neuroscience
  • Article ID: 8714870
  • Year: 2022
  • DOI: 10.1155/2022/8714870
  • Summary: The paper presents RecMem, a time-aware recommender system that integrates a memetic evolutionary clustering algorithm, aiming to improve recommendation accuracy in dynamic environments.

5. A Community Detection-based Approach in Social Networks to Improve the Equation Analysis in Material Science

  • Authors: R Ghouchan Nezhad Noor Nia, M Jalali, M Houshmand
  • Journal: Journal of Iranian Association of Electrical and Electronics Engineers
  • Volume: 21
  • Issue: 1
  • Year: 2024 (upcoming)
  • Summary: This study proposes a community detection-based approach within social networks to enhance equation analysis methods used in material science, specifically in the context of high-entropy alloys.

Conclusion

Dr. Raheleh Ghouchan Nezhad Noor Nia is a highly deserving candidate for the Best Researcher Award. Her contributions to AI, machine learning, and medical informatics are transformative and have the potential to address critical healthcare challenges. She exhibits strengths in multidisciplinary research, with a particular focus on medical diagnostics and healthcare innovation. With further growth in clinical and practical applications, Dr. Ghouchan Nezhad Noor Nia’s work could have an even broader and more profound impact on both academia and real-world healthcare solutions. Her dedication to research, teaching, and international collaboration makes her an exemplary figure in her field.