Qianqian Zhang | Decision Sciences | Best Researcher Award

Assist. Prof. Dr. Qianqian Zhang | Decision Sciences | Best Researcher Award

Lecturer from Anhui University, China

Qianqian Zhang is a Lecturer at the School of Artificial Intelligence, Anhui University, China. She has shown promising growth as an early-career researcher with a strong focus on intelligent control systems, particularly in the intersection of human-machine collaboration, reinforcement learning, and hybrid intelligence. Her academic background and research trajectory reflect a solid foundation in control science, intelligent systems, and automation. She has actively contributed to several national-level research projects funded by the National Natural Science Foundation of China (NSFC), where she has served as both principal investigator and co-investigator. Zhang has published high-quality research articles in prestigious journals such as IEEE Transactions on Artificial Intelligence and Journal of Systems Science and Complexity, where she has consistently served as the sole first author. Furthermore, she has been involved in multiple patents related to human-machine systems, brain-computer interfaces, and intelligent diagnostics. Her technical work demonstrates a clear commitment to impactful, interdisciplinary research. Although still at an early stage in her career, Zhang is making significant contributions to the field and is actively building a strong research profile. Her expertise and output position her as a valuable academic and researcher in the domain of artificial intelligence and intelligent control systems.

Professional Profile

Education

Qianqian Zhang earned her Ph.D. in Control Science and Engineering from the University of Science and Technology of China, where she studied from September 2015 to December 2021. This prestigious institution is well-known for its rigorous programs in science and technology, and her doctoral training reflects a deep specialization in advanced control methodologies and system design. Prior to that, she completed her undergraduate studies in Automation at Anhui Normal University from September 2011 to July 2015. This academic path provided her with a comprehensive grounding in automation technologies, systems engineering, and foundational theories in electronics and control. The transition from a solid undergraduate background to a high-tier doctoral program underscores her academic excellence and dedication to deepening her expertise. Her education has equipped her with strong theoretical knowledge, technical proficiency, and research acumen in intelligent systems. Zhang’s academic training is clearly aligned with her current research interests, particularly in intelligent control, reinforcement learning, and human-machine collaboration. Her education forms the core base for her scholarly output and reflects her capability to address complex, real-world challenges in automation and artificial intelligence. This academic journey serves as a strong backbone for her career as a researcher and educator.

Professional Experience

Since December 2021, Qianqian Zhang has been serving as a Lecturer at the School of Artificial Intelligence, Anhui University. In this role, she engages in teaching, supervising students, and leading research in intelligent systems and control engineering. This position marks her entry into academia as a professional educator and researcher, and she has quickly established herself as a productive contributor within her department. Her responsibilities include the development and execution of research projects, publication of scientific papers, and active participation in collaborative initiatives across academia and industry. While she does not yet have postdoctoral experience, Zhang has shown remarkable progress in a relatively short span by contributing to and leading national-level funded projects. Her work in this role reflects a balanced combination of academic rigor, innovation, and applied research. In addition to her teaching responsibilities, she is actively involved in research related to reinforcement learning, hybrid intelligent control, and human-machine systems. Her current position provides her with a platform to explore novel ideas and engage with the broader scientific community. Overall, her professional experience is marked by steady advancement and growing influence within her field of expertise.

Research Interests

Qianqian Zhang’s research interests lie at the intersection of artificial intelligence, intelligent control, and human-machine systems. She focuses primarily on reinforcement learning, stochastic systems, and Markov switching models, particularly in systems where decision-making is critical under uncertainty. A significant portion of her research investigates shared control in human-machine interactions, developing intelligent arbitration mechanisms to enable seamless collaboration between humans and machines. Her interest in hybrid intelligent control combines autonomous algorithms with human oversight, aiming to enhance adaptability and decision-making efficiency in real-time environments. Another core area of her research is data-driven control design, especially for wireless and networked control systems. Zhang is also deeply engaged in applying intelligent methods to socially relevant challenges, such as mental health diagnostics and brain-computer interfaces, as evidenced by her recent patents. She is committed to advancing theoretical models while ensuring practical applications in robotics, industrial automation, and smart systems. Through national projects and publications, she has established a multidisciplinary research portfolio that combines control theory, AI, and human factors. These research interests not only address contemporary scientific challenges but also align with strategic priorities in smart manufacturing, health technology, and cognitive AI systems.

Research Skills

Qianqian Zhang possesses a comprehensive set of research skills that reflect her deep expertise in intelligent control and artificial intelligence. She is highly proficient in developing and analyzing models of stochastic nonlinear systems, especially those governed by Markovian dynamics. Her technical capabilities include reinforcement learning, event-triggered control, sampled-data systems, and hybrid system modeling. She has hands-on experience with simulation tools and algorithm development platforms commonly used in control engineering and AI research. Zhang is skilled in designing and implementing shared control mechanisms for human-machine collaboration and has worked on autonomous boundary detection and arbitration strategies within hybrid systems. Her practical research skills extend to brain-computer interface modeling, intelligent diagnosis algorithms, and the use of control methods in mental health applications. Additionally, she demonstrates a strong ability to manage research projects, collaborate across disciplines, and write high-impact scientific articles. Zhang’s involvement in national-level funded research projects also reflects her organizational and strategic planning skills. Furthermore, her experience in translating academic research into patented technologies underlines her capability to innovate and create real-world solutions. Her blend of theoretical depth and application-oriented research skills enables her to contribute meaningfully to both academia and industry.

Awards and Honors

While Qianqian Zhang has not yet received widely recognized academic awards, her achievements in research and innovation are notable. She has led and participated in several prestigious national-level projects funded by the National Natural Science Foundation of China (NSFC). Her leadership in these projects—particularly her role as principal investigator in a youth science fund project on hybrid intelligent control—demonstrates the high regard in which her capabilities are held by funding agencies. Furthermore, Zhang is the sole first author of several peer-reviewed articles published in top-tier journals such as IEEE Transactions on Artificial Intelligence and Journal of Systems Science and Complexity. She also holds multiple patents on intelligent systems, including techniques for brain-computer interaction, smart manufacturing optimization, and depression detection through human-machine integration. These contributions indicate a strong track record of innovation and impactful research. Though she may still be at the early stage of her career, the recognition she has gained through funding, publications, and intellectual property positions her as a rising scholar with the potential to win future academic awards and honors. Her achievements reflect both promise and performance within her discipline.

Conclusion

Qianqian Zhang is an emerging researcher whose academic background, research accomplishments, and innovative output distinguish her as a strong candidate for recognition such as the Best Researcher Award. With a Ph.D. from one of China’s top institutions and a faculty position at Anhui University, she demonstrates a firm command of intelligent systems, control theory, and AI. Her contributions span key areas such as reinforcement learning, human-machine collaboration, stochastic control systems, and hybrid intelligent modeling. Notably, she has published high-quality journal articles as the sole first author and contributed to multiple patents—showcasing both theoretical rigor and applied innovation. Zhang’s involvement in national-level research projects as both a leader and contributor signals her growing leadership in scientific research. While she could further enhance her profile through international collaborations, academic awards, and postdoctoral experience, her current trajectory is clearly upward. Her work not only pushes the boundaries of knowledge but also translates into practical technologies with societal impact. In summary, Zhang Qianqian exemplifies the qualities of a dedicated, innovative, and capable researcher, and her ongoing achievements make her a deserving nominee for research excellence recognition.

 

Jin Yao | Decision Sciences | Best Researcher Award

Dr. Jin Yao | Decision Sciences | Best Researcher Award

Associate Chief Physician at West China Hospital of Sichuan University, China

Dr. Jin Yao, M.D., Ph.D., serves as the Associate Chief Physician and Deputy Director of the Department of Radiology at West China Hospital, Sichuan University, China. With over two decades of experience, Dr. Yao has established himself as a leading expert in the imaging evaluation of urinary system diseases, particularly prostate cancer and non-clear cell renal carcinoma. His innovative work integrates advanced radiological techniques such as radiomics and artificial intelligence to enhance diagnostic accuracy and patient outcomes. Dr. Yao has authored numerous impactful publications in high-impact journals, showcasing his dedication to advancing medical imaging. His contributions bridge clinical practice and research, positioning him as a pioneer in his field.

Professional Profile

Education

Dr. Jin Yao completed his M.D. in Imaging and Nuclear Medicine at Sichuan University in 2001. Building upon this foundation, he pursued a Ph.D. in the same field at the same institution, graduating in 2009. His academic journey at one of China’s most prestigious universities has equipped him with an in-depth understanding of imaging science, enabling him to address complex clinical challenges. His dual degrees highlight a commitment to combining clinical expertise with rigorous scientific inquiry.

Professional Experience

Dr. Yao began his professional career in 2001 as a Radiologist at West China Hospital, Sichuan University. Over the years, he has risen to become the Associate Chief Physician and Deputy Director of the Department of Radiology, reflecting his clinical excellence and leadership skills. His role involves managing complex radiological cases, mentoring younger colleagues, and leading research projects. Dr. Yao’s two decades of service have been instrumental in establishing West China Hospital as a center of excellence in diagnostic imaging and research.

Research Interests

Dr. Yao’s research focuses on the imaging evaluation of urinary system diseases, with a particular emphasis on non-clear cell renal carcinoma and prostate cancer. He is deeply involved in advancing multiparametric magnetic resonance imaging (mpMRI), radiomics, and artificial intelligence applications in medical imaging. His studies aim to improve diagnostic precision, reduce unnecessary procedures, and optimize treatment strategies. Dr. Yao’s innovative work contributes to the evolution of radiology as a tool for personalized medicine.

Research Skills

Dr. Yao possesses advanced expertise in multiparametric imaging, radiomics-based analysis, and the development of predictive models using artificial intelligence. His skills include quantitative imaging analysis, machine learning application, and contrast-enhanced CT interpretation. He is proficient in designing and conducting clinical studies, statistical data analysis, and collaborative interdisciplinary research. Dr. Yao’s technical proficiency and innovative approach make him a leader in translating imaging research into clinical practice.

Awards and Honors

While Dr. Yao’s profile does not list specific awards, his academic and professional accomplishments, coupled with his contributions to peer-reviewed journals, highlight his recognition within the radiology community. His role as Deputy Director of Radiology and his publications in high-impact journals such as British Journal of Radiology and Insights into Imaging underscore his influence in the field. Further achievements in grant funding and mentorship are potential avenues for additional recognition.

Conclusion

Dr. Jin Yao is a highly accomplished researcher with a solid track record in radiology, particularly in the imaging evaluation of urinary system diseases. His contributions to radiomics and predictive modeling in cancer imaging are commendable, and his extensive publication record underscores his research productivity. To maximize his competitiveness for the Best Researcher Award, highlighting leadership roles, mentorship, grant achievements, and broader research impact areas could further solidify his candidacy. Overall, he is a strong contender for the award based on his significant contributions to medical imaging research.

Publication Top Notes

  1. The accuracy and quality of image-based artificial intelligence for muscle-invasive bladder cancer prediction
    Authors: He, C., Xu, H., Yuan, E., Yao, J., Song, B.
    Year: 2024
    Journal: Insights into Imaging, 15(1), 185.
  2. Patients with ASPSCR1-TFE3 fusion achieve better response to ICI-based combination therapy among TFE3-rearranged renal cell carcinoma
    Authors: Zhao, J., Tang, Y., Hu, X., Zeng, H., Sun, G.X.
    Year: 2024
    Journal: Molecular Cancer, 23(1), 132.
  3. Development and validation of a predictive model based on clinical and MpMRI findings to reduce additional systematic prostate biopsy
    Authors: Cheng, X., Chen, Y., Xu, J., Yao, J., Song, B.
    Year: 2024
    Journal: Insights into Imaging, 15(1), 3.
  1. Subspecialized medical team mode facilitates radiology resident training
    Authors: Zhao, Y., Chen, Y., Yao, J., Hu, N., Lui, S.
    Year: 2024
    Journal: iRADIOLOGY, 2(5), 469–481.
  2. Application of Magnetic Resonance Imaging Report Combined With VI-RADS Bi-Parametric and Multi-Parametric Scoring Systems in Bladder Cancer Diagnosis
    Authors: Xu, H., Chen, Y., Ye, L., Song, B., Yao, J.
    Year: 2024
    Journal: Journal of Sichuan University. Medical Science Edition, 55(5), 1071–1077.
  3. Memory/Active T-Cell Activation Is Associated with Immunotherapeutic Response in Fumarate Hydratase–Deficient Renal Cell Carcinoma
    Authors: Chen, J., Hu, X., Zhao, J., Zeng, H., Sun, G.
    Year: 2024
    Journal: Clinical Cancer Research, 30(11), 2571–2581.
  1. Radiomics-based quantitative contrast-enhanced CT analysis of abdominal lymphadenopathy to differentiate tuberculosis from lymphoma
    Authors: Shen, M.-T., Liu, X., Gao, Y., Jiang, L., Yao, J.
    Year: 2024
    Journal: Precision Clinical Medicine, 7(1), pbae002.
  2. Corrigendum: Radiomic machine learning and external validation based on 3.0T mpMRI for prediction of intraductal carcinoma of prostate with different proportion
    Authors: Yang, L., Li, Z., Liang, X., Yao, J., Song, B.
    Year: 2024
    Journal: Frontiers in Oncology, 14, 1401121.
  3. The Value of Radiological Imaging in Assessing Extrarenal Fat and Renal Vein Invasion in Renal Cell Carcinoma
    Authors: Ma, J., Yuan, E., Chen, Y., Yao, J., Song, B.
    Year: 2024
    Journal: Current Medical Imaging, 20, e15734056243669.
  4. Genomic and Evolutionary Characterization of Concurrent Intraductal Carcinoma and Adenocarcinoma of the Prostate
    Authors: Zhao, J., Xu, N., Zhu, S., Zeng, H., Sun, G.
    Year: 2024
    Citations: 6
    Journal: Cancer Research, 184(1), 154–167.