Assist. Prof. Dr. Xiongjun Zhao | Artificial Intelligence | Best Researcher Award

Assist. Prof. Dr. Xiongjun Zhao, Hunan University, China

Assist. Prof. Dr. Xiongjun Zhao is a biomedical AI researcher currently serving as an Assistant Researcher at the School of Information Science and Engineering, Hunan University. He holds a Ph.D. in Computer Science and Technology and a bachelor’s degree in Software Engineering, both from Hunan University, where he was recognized as an Outstanding Graduate and Student Leader. His research focuses on biomedical big data analysis, multi-modal learning, and intelligent medical systems. Dr. Zhao has authored five significant papers, including a CCF-A ACM MM conference paper and three SCI-indexed journal articles. He has also secured four patents in medical AI technologies and leads multiple funded research projects backed by prominent Chinese institutions. An awardee of national honors in mathematics and programming competitions, he brings strong technical expertise in Python, C++, and deep learning frameworks. Dr. Zhao actively mentors students and contributes to international conferences such as IEEE BIBM and ACM MM.

Publication Profile

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Work Experience

Assist. Prof. Dr. Xiongjun Zhao currently holds the position of Assistant Researcher at the School of Information Science and Engineering, Hunan University, a role he began in July 2025. In this capacity, he is deeply involved in cutting-edge research and development focused on biomedical big data analysis, multi-modal learning, and intelligent medical systems. His responsibilities include leading and contributing to a range of scientific research projects, many of which involve national and provincial collaborations. Dr. Zhao plays a pivotal role in advancing academic innovation through his contributions to interdisciplinary projects and by leveraging artificial intelligence in healthcare-related research. In addition to his research activities, he actively mentors students, fostering a dynamic and innovative research environment in the laboratory. His work exemplifies a commitment to technological advancement and academic leadership, positioning him as a key contributor to the development of intelligent medical solutions through data-driven methodologies.

Educational Background

Assist. Prof. Dr. Xiongjun Zhao received his comprehensive academic training from Hunan University, a prestigious institution recognized under China’s Double First-Class Initiative. He pursued a Direct Ph.D. Program in Computer Science and Technology from September 2020 to June 2025, under the mentorship of Prof. Ying Jianguo, a distinguished Changjiang Scholar. His doctoral studies focused on advanced topics in biomedical data science and artificial intelligence. Prior to that, Dr. Zhao completed his Bachelor’s degree in Software Engineering at the same university between September 2016 and June 2020. During his undergraduate years, he was honored as an Outstanding Graduate and recognized for his leadership and community involvement with accolades such as Outstanding Student Leader and Outstanding Volunteer. His solid educational foundation, shaped by rigorous training and guided mentorship, has laid the groundwork for his successful academic and research career in the fields of machine learning and intelligent medical systems.

Research Experience

Assist. Prof. Dr. Xiongjun Zhao has a strong and focused research background in biomedical big data analysis, multi-modal learning, and intelligent medical models. His work integrates advanced machine learning techniques with complex medical datasets to develop deep learning frameworks—particularly Transformer-based models—for clinical diagnostics and decision support systems. His notable academic contributions include the publication of one top-tier conference paper and three SCI-indexed journal articles, along with the successful registration of four patents in the medical AI domain. Dr. Zhao has led and participated in several high-impact research projects, notably those funded by the Hunan Provincial Department of Health and the China Association for Science and Technology. His role as a core researcher in these projects highlights his leadership in interdisciplinary and applied medical research. He has also presented at major international conferences such as ACM MM and IEEE BIBM, reflecting his active engagement in the global scientific community.

Awards and Recognitions

Assist. Prof. Dr. Xiongjun Zhao has received several prestigious awards that reflect his academic excellence and problem-solving capabilities in both theoretical and applied domains. He was awarded the National Second Prize in the National University Student Mathematics Competition (ASC), showcasing his strong analytical and mathematical skills. In competitive programming, he earned the Regional Second Prize in the ACM-ICPC International Collegiate Programming Contest, a globally recognized event for algorithmic proficiency. His team received an Honorable Mention (Top 15%) in the Mathematical Contest in Modeling (MCM/ICPC), further emphasizing his strength in interdisciplinary problem-solving. Additionally, he secured the National Third Prize in the China Graduate Mathematical Modeling Competition and the Provincial Third Prize in the Hunan “Internet+” Innovation and Entrepreneurship Competition. These accolades collectively highlight Dr. Zhao’s commitment to academic rigor, computational excellence, and innovation, and they underscore his readiness to tackle real-world challenges through collaborative and research-driven approaches.

Research Focus

Assist. Prof. Dr. Xiongjun Zhao’s research is primarily centered on biomedical big data analysis, intelligent medical systems, and multi-modal machine learning for clinical decision-making. His work integrates advanced deep learning techniques—such as Transformers, Graph Neural Networks (GNNs), and multimodal prompt learning—into healthcare applications, particularly in medical image analysis, electronic health record (EHR) modeling, and medication guidance systems. His studies include developing continual learning models for EHRs (TransEHR), large language models for drug recommendations (ShennongMGS), and novel diagnostic approaches using multimodal X-ray interpretation and ECG analysis (ECGNN). He also explores multitask and multi-view learning frameworks to enhance predictive accuracy in various clinical settings. His research lies at the intersection of artificial intelligence, medical informatics, and computational biology, aiming to improve diagnostic accuracy, clinical workflow, and personalized medicine. Through high-impact publications and patents, Dr. Zhao contributes significantly to the advancement of AI-driven healthcare technologies and smart medical diagnostics.

Publication Top Notes

  • TransEHR: Alignment-Free Electronic Health Records Continual Learning Across Feature Spaces, Expert Systems with Applications, 2025, DOI: 10.1016/j.eswa.2025.129020

  • ShennongMGS: An LLM-based Chinese Medication Guidance System, ACM Transactions on Management Information Systems, 2025, DOI: 10.1145/3658451

  • Report-Concept Textual-Prompt Learning for Enhancing X-ray Diagnosis, ACM MM (Conference), 2024, DOI: 10.1145/3664647.3681568

  • ECGNN: Enhancing Abnormal Recognition in 12-Lead ECG with Graph Neural Network, IEEE BIBM, 2022, DOI: 10.1109/BIBM55620.2022.9995419

  • UniMed: Multimodal Multitask Learning for Medical Predictions, IEEE BIBM, 2022, DOI: 10.1109/BIBM55620.2022.9995044

  • A Knowledge-aware Machine Reading Comprehension Framework for Dialogue Symptom Diagnosis, IEEE BIBM, 2021, DOI: 10.1109/bibm52615.2021.9669717

  • Multi-View Weighted Feature Fusion Using CNN for Pneumonia Detection on Chest X-Rays, IEEE HEALTHCOM, 2021, DOI: 10.1109/healthcom49281.2021.9399029

Xiongjun Zhao | Artificial Intelligence | Best Researcher Award

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