Junjie Liu | pharmaceutics | Best Researcher Award

Prof. Junjie Liu | pharmaceutics | Best Researcher Award

professor, Zhengzhou University, China

Liu Junjie is a professor and PhD supervisor at the School of Pharmacy, Zhengzhou University. 🎓 He completed his PhD in pharmaceutical sciences from Chongqing University in 2018. 📚 With over 40 publications in top journals like Sci Adv and Adv Mater, he is a recognized leader in his field. 🧬 He has led 10 major research projects, including grants from the National Natural Science Foundation of China. 🌍 Liu has received multiple prestigious honors, including youth talent support and high-level talent awards. 🚀 His contributions in pharmaceutical science are shaping the future of health and medicine.

Education🎓 

Liu Junjie obtained his PhD in pharmaceutical sciences from Chongqing University in 2018. 🏫 His advanced training in pharmaceutical sciences allowed him to develop expertise in drug development and pharmaceutical research. 📑 His education combined rigorous theoretical knowledge and hands-on experience in the laboratory, equipping him with the tools necessary for groundbreaking research. 🧪 He also pursued further professional development through leading postdoctoral research, continuously building on his PhD training. 💡 His academic foundation serves as the cornerstone for his innovative work in drug discovery and therapeutic development.

Experience🧑‍🏫 

Liu Junjie is currently a professor and PhD supervisor at Zhengzhou University’s School of Pharmacy. 🔬 He has extensive experience leading pharmaceutical research and managing collaborative research projects. 🧑‍🔬 Since completing his PhD, he has overseen 10 major research projects, including those supported by the National Natural Science Foundation of China. 🌟 His work has been featured in over 40 SCI-indexed publications as the first or corresponding author, showcasing his strong research output. 🌿 Liu is also actively involved in mentorship, guiding PhD students and shaping the next generation of pharmaceutical scientists.

Awards and Honors🏆

Liu Junjie has received numerous prestigious awards for his contributions to pharmaceutical research. 🎖️ Notably, he has been recognized by the China Association for Science and Technology with the Youth Talent Support award. 🌟 His high-level talent and innovative contributions to the field have earned him recognition in Henan Province, where he received the High-level Talent Award and was named an Outstanding Youth Talent in the Central Plains. 💼 Additionally, he was awarded the Innovative Talent Award for his role in advancing pharmaceutical research at Henan’s Higher Education Institutions.

Research Focus🔬 

Liu Junjie’s research focuses on the development of innovative drugs and therapeutic treatments. 🧪 His work aims to bridge the gap between basic pharmaceutical sciences and clinical applications, exploring drug delivery systems and novel therapeutic materials. 🧬 He is particularly interested in precision medicine and the design of targeted therapies to improve treatment efficacy and minimize side effects. 🌍 His interdisciplinary research integrates chemistry, biology, and materials science to advance drug development, leading to over 40 high-impact publications in renowned scientific journals. 📈 His research aims to transform healthcare and patient outcomes.

Publication Top Notes

In situ implantable DNA hydrogel for diagnosis and therapy of postoperative rehemorrhage following intracerebral hemorrhage surgery

Published in: Science Advances (2024, 10(33), ado3919)
Authors: Yu, W., Gong, E., Wang, C., Liu, J., Shi, J.
Overview: This research focuses on a DNA hydrogel that can be implanted in situ to diagnose and treat rehemorrhage after intracerebral hemorrhage surgery, providing a new tool for post-surgical care.

2. In situ formation of biohybrid system based on Streptococcus pneumoniae for enhanced radical therapy against tumors

Published in: Cell Reports Physical Science (2024, 5(7), 102074)
Authors: Zhao, X., Wang, Q., Dong, H., Liu, J., Shi, J.
Overview: The study explores a biohybrid system using Streptococcus pneumoniae for improved radical cancer therapies, targeting tumors more effectively.

3. Retraction Note: Copper-based metal-organic framework impedes triple-negative breast cancer metastasis via local estrogen deprivation and platelets blockade

Published in: Journal of Nanobiotechnology (2024, 22(1), pp. 302)
Authors: Wang, S., Yin, N., Li, Y., Si, P., Liu, J.
Overview: This article was retracted, but it originally examined how copper-based frameworks prevent breast cancer metastasis by blocking estrogen and platelets.

4. A Neutrophil Hijacking Nanoplatform Reprograming NETosis for Targeted Microglia Polarizing Mediated Ischemic Stroke Treatment

Published in: Advanced Science (2024, 11(17), 2305877)
Authors: Yin, N., Wang, W., Pei, F., Wang, Z.-H., Liu, J.
Overview: The research proposes a nanoplatform that hijacks neutrophils to treat ischemic stroke by modulating microglia polarization.

5. Ultrasensitive Optical Detection and Elimination of Residual Microtumors with a Postoperative Implantable Hydrogel Sensor for Preventing Cancer Recurrence

Published in: Advanced Materials (2024, 36(14), 2307923)
Authors: Geng, S., Guo, P., Wang, J., Shi, J., Liu, J.
Overview: This article focuses on an optical sensor integrated with a hydrogel to detect and remove microtumors post-surgery, reducing cancer recurrence risk.

6. Biomimetic Nanovehicle-Enabled Targeted Depletion of Intratumoral Fusobacterium nucleatum Synergizes with PD-L1 Blockade against Breast Cancer

Published in: ACS Nano (2024, 18(12), pp. 8971–8987)
Authors: Geng, S., Guo, P., Li, X., Liu, J., Yang, Y.
Overview: This study examines a nanovehicle that targets Fusobacterium nucleatum within tumors to boost the effectiveness of PD-L1 blockade therapies for breast cancer.

Conclusion

Liu Junjie is an excellent candidate for the Best Researcher Award. His robust academic output, leadership in research projects, mentorship, and numerous recognitions make him well-suited for this prestigious recognition. While expanding his international collaborations and increasing the practical application of his research could further enhance his candidacy, his contributions to pharmaceutical sciences and his leadership in innovative research projects make him a strong contender for this award.

 

Mehdi Ghatee | Artificial Intelligence | Best Researcher Award

Prof. Mehdi Ghatee | PArtificial Intelligence | Best Researcher Award

Full Professor at Amirkabir University of Technology, Iraq

This individual is a highly skilled project manager with expertise in intelligent transportation systems and infrastructure. They have led several high-profile ITS projects across Iran, including the Action Plan for Intelligent Transportation Systems in Shiraz and national projects involving intracity and intercity ITS. Their work focuses on optimizing transportation systems using advanced technologies such as artificial intelligence, neural networks, and data science. With a career spanning over two decades, they have contributed significantly to improving Iran’s public transportation and highway systems, as well as advising on critical petroleum transport safety issues.

Profile

Education🎓

They hold advanced degrees in engineering and transportation systems, including specialized training in artificial intelligence and network optimization. Their academic journey began with a focus on optimizing transportation networks, and they later pursued studies that explored neural networks and intelligent transportation systems. Through continued education and professional development, they gained cutting-edge knowledge in data mining and its applications in transportation. Their interdisciplinary background merges technical expertise with the management of large-scale infrastructure projects.

Experience💼

The individual has a rich professional background in transportation management. They have served as a project manager for various organizations, including the Shiraz Municipality, Tehran Deputy of Traffic, MSRT, and Tehran Control Traffic Company. Their leadership has been instrumental in developing intelligent transportation solutions and investigating hazardous material transportation risks. They also advised on BRT systems and public transportation initiatives. With over 15 years of experience in both the public and private sectors, they’ve been at the forefront of implementing ITS and advising on petroleum-related transport and logistics.

Awards & Honors🏆

Over their career, the individual has been recognized for their contributions to transportation system innovation and project management excellence. Their leadership on intelligent transportation systems projects has earned them accolades from governmental bodies such as the MSRT and NIOPDC. Notable achievements include awards for the implementation of cutting-edge ITS technologies, as well as safety improvements in the transportation of hazardous materials. Their work has significantly enhanced public transit systems in major Iranian cities, particularly Tehran and Shiraz, positioning them as a key figure in national transportation projects.

Research Focus 🔬

Their research primarily revolves around the application of artificial intelligence and neural networks in optimizing transportation networks. Starting with a focus on network optimization in 2004, they expanded their interests to intelligent transportation systems (ITS) and later neural networks and data mining. They aim to create efficient and safer transportation systems through the use of AI, exploring ways to minimize congestion, enhance road safety, and improve the transportation of goods, especially hazardous materials. Their work intersects with both public transit and highway infrastructure improvements through innovative tech solutions.

Conclusion

The candidate possesses outstanding credentials in intelligent transportation systems and AI-driven technologies, making them a strong contender for the Best Researcher Award. Their vast project management experience, coupled with a diverse research portfolio in AI, neural networks, and data science, aligns well with the award criteria. To further solidify their candidacy, expanding their international collaborations and academic contributions would provide a broader platform for their innovative work, making them a more recognized figure in the global research community.

Publication Top Notes
  • A systematic review on overfitting control in shallow and deep neural networks
    • Authors: MM Bejani, M Ghatee
    • Journal: Artificial Intelligence Review
    • Citations: 304
    • Year: 2021
    • Details: This review addresses various methods for controlling overfitting in neural networks, both shallow and deep, presenting strategies and techniques for improving generalization in machine learning models.
  • Computational methods for solving fully fuzzy linear systems
    • Authors: M Dehghan, B Hashemi, M Ghatee
    • Journal: Applied Mathematics and Computation
    • Citations: 298
    • Year: 2006
    • Details: This paper introduces novel computational techniques to solve fully fuzzy linear systems, which have applications in systems where uncertainty is modeled using fuzzy logic.
  • Solution of the fully fuzzy linear systems using iterative techniques
    • Authors: M Dehghan, B Hashemi, M Ghatee
    • Journal: Chaos, Solitons & Fractals
    • Citations: 171
    • Year: 2007
    • Details: Focuses on iterative techniques to solve fuzzy linear systems, providing an alternative to traditional crisp systems solutions.
  • A context-aware system for driving style evaluation by an ensemble learning on smartphone sensors data
    • Authors: MM Bejani, M Ghatee
    • Journal: Transportation Research Part C: Emerging Technologies
    • Citations: 153
    • Year: 2018
    • Details: Proposes an ensemble learning model for driving style evaluation using smartphone sensor data, improving transportation safety and behavior analysis.
  • Convolutional neural network with adaptive regularization to classify driving styles on smartphones
    • Authors: MM Bejani, M Ghatee
    • Journal: IEEE Transactions on Intelligent Transportation Systems
    • Citations: 84
    • Year: 2019
    • Details: Introduces CNNs with adaptive regularization techniques for classifying driving styles using mobile sensor data.
  • Hybrid of discrete wavelet transform and adaptive neuro-fuzzy inference system for overall driving behavior recognition
    • Authors: HR Eftekhari, M Ghatee
    • Journal: Transportation Research Part F: Traffic Psychology and Behavior
    • Citations: 83
    • Year: 2018
    • Details: Combines wavelet transforms and neuro-fuzzy systems to recognize driving behaviors, helping in real-time traffic safety assessments.
  • A similarity-based neuro-fuzzy modeling for driving behavior recognition applying fusion of smartphone sensors
    • Authors: HR Eftekhari, M Ghatee
    • Journal: Journal of Intelligent Transportation Systems
    • Citations: 68
    • Year: 2019
    • Details: Describes a neuro-fuzzy modeling approach for driving behavior detection using fused smartphone sensor data.
  • Three-phases smartphone-based warning system to protect vulnerable road users under fuzzy conditions
    • Authors: RB Zadeh, M Ghatee, HR Eftekhari
    • Journal: IEEE Transactions on Intelligent Transportation Systems
    • Citations: 65
    • Year: 2017
    • Details: Develops a warning system using fuzzy logic for protecting road users, especially pedestrians and cyclists.
  • An inference engine for smartphones to preprocess data and detect stationary and transportation modes
    • Authors: HR Eftekhari, M Ghatee
    • Journal: Transportation Research Part C: Emerging Technologies
    • Citations: 65
    • Year: 2016
    • Details: Introduces an inference engine to classify transportation modes from smartphone data, improving mobility tracking.
  • Optimal network design and storage management in petroleum distribution network under uncertainty
    • Authors: M Ghatee, SM Hashemi
    • Journal: Engineering Applications of Artificial Intelligence
    • Citations: 60
    • Year: 2009
    • Details: Proposes a model for optimizing petroleum distribution networks, considering uncertainty factors in supply chains.