Dongheon Lee | Medical Image Analysis | Best Researcher Award

Prof . Dr . Dongheon Lee | Medical Image Analysis | Best Researcher Award

Assistant Professor at Seoul National University / College of Medicine, South Korea

Dr. Dongheon Lee is an Assistant Professor in the Department of Radiology at Seoul National University College of Medicine, with a joint appointment in the Interdisciplinary Program in Bioengineering. He specializes in medical image analysis, deep learning, and computer vision, with a strong emphasis on clinically relevant AI systems. His academic journey is deeply rooted in bioengineering, having completed both his M.S. and Ph.D. at Seoul National University. Dr. Lee has a proven record of innovation, evidenced by multiple high-impact publications and patents, many of which contribute directly to enhancing diagnostic accuracy and clinical workflow. He has served in leadership roles, including Deputy Director at Chungnam National University’s research institutes and active committee memberships. His research has received several national and international accolades, demonstrating both depth and translational impact. He continues to drive forward advancements at the intersection of AI and medical practice, with a focus on diagnostic technologies and clinical decision support.

Professional Profile 

Education🎓 

Dr. Dongheon Lee’s educational foundation is built on interdisciplinary expertise in bioengineering and medical imaging. He earned his Ph.D. in Bioengineering from Seoul National University in 2020, under the mentorship of Professor Hee Chan Kim. His doctoral research, titled “Deep Learning Approaches for Clinical Performance Improvement: Applications to Colonoscopic Diagnosis and Robotic Surgical Skill Assessment”, reflects his early focus on practical, AI-based clinical solutions. Prior to that, he completed his M.S. in the same interdisciplinary program at Seoul National University in 2015, where he also concentrated on medical image analysis. His academic journey began with a B.S. degree in Electronic System Engineering from Hanyang University in 2013, providing him with a strong technical foundation in systems engineering and computational methods. This combination of engineering, medicine, and AI has shaped his approach to research and allowed him to work at the intersection of technology and clinical application with considerable effectiveness.

Professional Experience📝

Dr. Dongheon Lee has held multiple academic and research roles that showcase a steady progression in responsibility and impact. He currently serves as an Assistant Professor in the Department of Radiology at Seoul National University College of Medicine. Prior to this, he was an Assistant Professor in the Department of Biomedical Engineering at Chungnam National University from 2021 to 2025. During that time, he also served as Deputy Director at both the Biomedical Engineering Research Institute and the Big Data Center at Chungnam National University Hospital. Earlier in his career, Dr. Lee worked as a Research Assistant Professor and Research Specialist at the Biomedical Research Institute of Seoul National University Hospital. These roles have enabled him to gain comprehensive experience across clinical, academic, and data-intensive research environments. His career reflects a sustained commitment to developing AI solutions for healthcare, combining technical skill with clinical relevance in both research and educational settings.

Research Interest🔎

Dr. Dongheon Lee’s research interests lie at the intersection of medical image analysis, artificial intelligence, and computer vision, with a strong focus on clinical application. He is particularly invested in developing deep learning frameworks for diagnostic accuracy, disease classification, and surgical skill assessment. His work addresses real-world challenges in radiology and endoscopy, such as colorectal polyp detection and lung cancer screening, through robust AI-driven solutions. Dr. Lee is also deeply interested in uncertainty quantification, out-of-distribution detection, and the interpretability of AI models in clinical workflows. His research aims to make AI not only accurate but also explainable and trustworthy in medical environments. By integrating multimodal data and advanced visualization techniques, he seeks to improve human-AI collaboration in diagnosis and treatment planning. His ongoing projects involve 3D anatomical modeling, radiograph-based biological age estimation, and virtual simulation technologies, all of which reflect his mission to bridge engineering innovation with practical healthcare delivery.

Award and Honor🏆

Dr. Dongheon Lee has received multiple prestigious awards that underscore the impact and innovation of his research. In 2023, he was honored with the Medical Research Academic Award from Chungnam National University Hospital, recognizing his contributions to clinical imaging research. The same year, he was a winner in the MICCAI Grand Challenge (LDCTIQAC 2023), a significant achievement in the international medical image computing community. Earlier, in 2020, he received both the Outstanding Paper Award from Seoul National University Hospital and the ICT Colloquium Minister of Science and ICT Award, conferred by the Korean government and the Institute for Information & Communications Technology Planning & Evaluation (IITP). These awards highlight his excellence in both academic and applied domains, demonstrating a consistent ability to innovate in healthcare technologies. His achievements reflect strong peer recognition and align with his commitment to advancing artificial intelligence in real-world medical settings.

Research Skill🔬

Dr. Dongheon Lee possesses a robust and diverse set of research skills that bridge engineering, medical imaging, and artificial intelligence. He is highly proficient in deep learning model development for classification, detection, segmentation, and uncertainty estimation tasks, particularly in the context of radiological and endoscopic data. His expertise extends to algorithmic optimization, multi-modal data fusion, and computational modeling, with a focus on practical deployment in clinical workflows. Dr. Lee is experienced in designing and validating AI systems with real-world datasets, ensuring clinical relevance and regulatory compliance. He has also developed patented technologies for 3D anatomical mapping, lesion tracking, and endoscopic path guidance. Additionally, he demonstrates strong capabilities in interdisciplinary collaboration, leading cross-functional teams in bioengineering, computer science, and clinical departments. His skills in grant writing, manuscript preparation, and research leadership complement his technical acumen, enabling him to contribute meaningfully to both academic advancement and translational medical innovation.

Conclusion💡

Dr. Dongheon Lee is exceptionally qualified and stands out as a top-tier candidate for the Best Researcher Award. His research has made tangible impacts in clinical medicine, particularly through AI-driven diagnostics and medical imaging. The combination of high-impact publications, innovation through patents, and recognized academic leadership makes his profile exemplary.

With minor enhancements in global outreach and broader authorship representation, he could further solidify his stature as a global leader in biomedical AI.

Publications Top Noted✍

  • Title: Improved accuracy in optical diagnosis of colorectal polyps using convolutional neural networks with visual explanations
    Authors: EH Jin, D Lee, JH Bae, HY Kang, MS Kwak, JY Seo, JI Yang, SY Yang, …
    Year: 2020
    Citations: 137

  • Title: Evaluation of surgical skills during robotic surgery by deep learning-based multiple surgical instrument tracking in training and actual operations
    Authors: D Lee, HW Yu, H Kwon, HJ Kong, KE Lee, HC Kim
    Year: 2020
    Citations: 104

  • Title: CT-based deep learning model to differentiate invasive pulmonary adenocarcinomas appearing as subsolid nodules among surgical candidates
    Authors: H Kim, D Lee, WS Cho, JC Lee, JM Goo, HC Kim, CM Park
    Year: 2020
    Citations: 49

  • Title: Vision-based tracking system for augmented reality to localize recurrent laryngeal nerve during robotic thyroid surgery
    Authors: D Lee, HW Yu, S Kim, J Yoon, K Lee, YJ Chai, JY Choi, HJ Kong, KE Lee, …
    Year: 2020
    Citations: 29

  • Title: Deep learning to optimize candidate selection for lung cancer CT screening: advancing the 2021 USPSTF recommendations
    Authors: JH Lee, D Lee, MT Lu, VK Raghu, CM Park, JM Goo, SH Choi, H Kim
    Year: 2022
    Citations: 28

  • Title: Preliminary study on application of augmented reality visualization in robotic thyroid surgery
    Authors: D Lee, HJ Kong, D Kim, JW Yi, YJ Chai, KE Lee, HC Kim
    Year: 2018
    Citations: 27

  • Title: Estimating maximal oxygen uptake from daily activity data measured by a watch-type fitness tracker: cross-sectional study
    Authors: SB Kwon, JW Ahn, SM Lee, J Lee, D Lee, J Hong, HC Kim, HJ Yoon
    Year: 2019
    Citations: 23

  • Title: Augmented reality to localize individual organ in surgical procedure
    Authors: D Lee, JW Yi, J Hong, YJ Chai, HC Kim, HJ Kong
    Year: 2018
    Citations: 23

  • Title: Online learning for the hyoid bone tracking during swallowing with neck movement adjustment using semantic segmentation
    Authors: D Lee, WH Lee, HG Seo, BM Oh, JC Lee, HC Kim
    Year: 2020
    Citations: 21

  • Title: Endoscopists performance in optical diagnosis of colorectal polyps in artificial intelligence studies
    Authors: S Pecere, G Antonelli, M Dinis‐Ribeiro, Y Mori, C Hassan, L Fuccio, …
    Year: 2022
    Citations: 17

  • Title: Low-dose computed tomography perceptual image quality assessment
    Authors: W Lee, F Wagner, A Galdran, Y Shi, W Xia, G Wang, X Mou, MA Ahamed, …
    Year: 2025
    Citations: 13

  • Title: Enhancing artificial intelligence-doctor collaboration for computer-aided diagnosis in colonoscopy through improved digital literacy
    Authors: Y Mori, EH Jin, D Lee
    Year: 2024
    Citations: 10

  • Title: Practical training approaches for discordant atopic dermatitis severity datasets: merging methods with soft-label and train-set pruning
    Authors: SI Cho, D Lee, B Han, JS Lee, JY Hong, JH Chung, DH Lee, JI Na
    Year: 2022
    Citations: 10

  • Title: Reliability of suprahyoid and infrahyoid electromyographic measurements during swallowing in healthy subjects
    Authors: MW Park, D Lee, HG Seo, TR Han, JC Lee, HC Kim, BM Oh
    Year: 2021
    Citations: 8

  • Title: Essential elements of physical fitness analysis in male adolescent athletes using machine learning
    Authors: YH Lee, J Chang, JE Lee, YS Jung, D Lee, HS Lee
    Year: 2024
    Citations: 7

  • Title: External testing of a deep learning model to estimate biologic age using chest radiographs
    Authors: JH Lee, D Lee, MT Lu, VK Raghu, JM Goo, Y Choi, SH Choi, H Kim
    Year: 2024
    Citations: 5

  • Title: Effect of an anti-adhesion agent on vision-based assessment of cervical adhesions after thyroid surgery: randomized, placebo-controlled trial
    Authors: HW Yu, D Lee, K Lee, S Kim, YJ Chai, HC Kim, JY Choi, KE Lee
    Year: 2021
    Citations: 5

  • Title: Augmented Reality-Based Visual Cue for Guiding Central Catheter Insertion in Pediatric Oncologic Patients
    Authors: JK Youn, D Lee, D Ko, I Yeom, HJ Joo, HC Kim, HJ Kong, HY Kim
    Year: 2022
    Citations: 4

  • Title: Texture-preserving low dose CT image denoising using Pearson divergence
    Authors: J Oh, D Wu, B Hong, D Lee, M Kang, Q Li, K Kim
    Year: 2024
    Citations: 2

  • Title: Optimal view detection for ultrasound-guided supraclavicular block using deep learning approaches
    Authors: Y Jo, D Lee, D Baek, BK Choi, N Aryal, J Jung, YS Shin, B Hong
    Year: 2023
    Citations: 2

Yuanyuan QIN | Medical Image Analysis | Best Researcher Award

Dr . Yuanyuan QIN | Medical Image Analysis | Best Researcher Award

Associate Chief Physician, Associate Professor at  Department of Radiology, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology , China

Dr. Yuanyuan Qin is a distinguished Associate Chief Physician and Associate Professor in the Department of Radiology at Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology. With a strong foundation in clinical radiology and advanced neuroimaging, she has dedicated her career to investigating brain disorders such as Alzheimer’s disease, Parkinson’s disease, and post-COVID neurological changes. Her research integrates multimodal imaging techniques with cognitive neuroscience and machine learning, emphasizing non-invasive diagnostic innovations. A recipient of national research funding and provincial awards, Dr. Qin has published extensively in leading international journals, with several high-impact and highly cited articles. She has also demonstrated leadership in academic teaching through the adoption of blended learning methodologies. Her interdisciplinary expertise, clinical insights, and research productivity make her a recognized contributor to the fields of radiology and neuroscience, with ongoing work focused on understanding neural mechanisms underlying cognitive decline and aging-related diseases.

Professional Profile 

Education🎓

Dr. Yuanyuan Qin pursued her advanced medical education at Huazhong University of Science and Technology, completing a prestigious Combined Master-PhD program between 2008 and 2013. Her doctoral training emphasized advanced neuroimaging techniques, with research exploring structural and functional brain alterations in neurodegenerative conditions. During her PhD, she was selected for a one-year joint PhD training program at the esteemed Johns Hopkins University in the United States (2011–2012), where she gained international exposure to state-of-the-art imaging methodologies and collaborative research environments. Her interdisciplinary education integrated clinical radiology, neuroscience, and data-driven analysis, laying a strong foundation for her later research on cognitive disorders and aging. This cross-institutional and cross-national academic background not only enriched her scientific expertise but also cultivated her capacity to approach radiological challenges from both a clinical and research perspective. Her academic training continues to inform her innovative work in diagnostic imaging and cognitive neurodegeneration.

Professional Experience📝

Dr. Yuanyuan Qin has built a progressive and impactful professional career in radiology at Tongji Hospital. Starting in 2013 as a Resident Physician, she rapidly advanced through roles as an Attending Physician (2014–2019), Associate Chief Physician (2019–2020), and ultimately to Associate Professor (2020–present). Throughout her career, she has been deeply engaged in clinical diagnostics, medical imaging interpretation, and mentoring medical students and interns. Her dual roles in academic and clinical settings have allowed her to integrate patient-centered care with research-led innovation. Dr. Qin’s experience spans routine radiological evaluations to complex imaging studies in patients with neurological and neurodegenerative conditions. She has actively contributed to improving radiology internship training programs through digital platforms and 3D simulation tools. Her leadership within the department is recognized not only in her clinical acumen but also in fostering collaborative research projects and guiding junior physicians and researchers in translational imaging studies.

Research Interest🔎

Dr. Yuanyuan Qin’s research interests lie at the intersection of neuroimaging, cognitive neuroscience, and clinical radiology. Her primary focus is on understanding the neural mechanisms of neurodegenerative diseases, particularly Alzheimer’s and Parkinson’s, through advanced magnetic resonance imaging (MRI), diffusion tensor imaging (DTI), and functional connectivity analysis. She is also deeply interested in the application of repetitive transcranial magnetic stimulation (rTMS) combined with cognitive training as a therapeutic and diagnostic tool. Recently, her research has extended into the neurological impacts of COVID-19, exploring long-term cerebral microstructure changes in asymptomatic patients. Her work frequently integrates artificial intelligence, deep learning, and image quantification methods to improve diagnostic precision. Dr. Qin is committed to developing non-invasive imaging biomarkers that can track disease progression and predict cognitive decline. Her interdisciplinary approach bridges clinical needs with technological advancement, contributing valuable insights into early detection and intervention strategies for aging-related cognitive disorders.

Award and Honor🏆

Dr. Yuanyuan Qin has been widely recognized for her academic excellence and scientific contributions. Notably, she received the First Prize in the 2019 Hubei Provincial Science and Technology Progress Award for her innovative work on the integration of structural and functional MRI in brain development and aging-related diseases. In teaching, she earned the Second Prize in the 2020 Young Teacher Teaching Competition at Huazhong University of Science and Technology, highlighting her commitment to educational innovation. As a principal investigator, she has secured multiple competitive grants, including a General Program and a Youth Project from the National Natural Science Foundation of China (NSFC). Her work has garnered national attention and peer acknowledgment, with multiple publications cited widely in top-tier journals. Her research article in the Journal of Clinical Investigation is listed as a Highly Cited Article, further validating her impact in the fields of radiology and neuroscience.

Research Skill🔬

Dr. Yuanyuan Qin possesses a robust portfolio of research skills, especially in neuroimaging analysis, multimodal MRI, and diffusion tensor imaging (DTI). She has extensive expertise in image processing platforms such as 3D-Slicer, FSL, and SPM, along with experience in deep learning algorithms for radiological quantification. Her technical strengths extend to designing and conducting longitudinal studies, particularly in evaluating cognitive interventions like rTMS paired with cognitive training in Alzheimer’s patients. She demonstrates proficiency in integrating clinical data with imaging outcomes to derive meaningful correlations for disease diagnosis and prognosis. Additionally, she has contributed to the development of automated MRI quantification pipelines, including those for Parkinsonism index assessment. Her interdisciplinary methods often incorporate statistical modeling, functional connectivity analysis, and AI-based imaging biomarker discovery. These research capabilities position her as a key contributor in translating complex neuroimaging insights into real-world clinical applications.

Conclusion💡

Dr. Yuanyuan Qin is highly suitable for the Best Researcher Award based on her exceptional track record in neuroimaging research, consistent national-level funding, scientific leadership in Alzheimer’s and Parkinson’s research, and significant contributions to radiological education and practice. Her trajectory exemplifies a balance between academic rigor, innovation, and clinical relevance.

Publications Top Noted✍

  1. Title: Surface-Based Vertexwise Analysis of Morphometry and Microstructural Integrity for White Matter Tracts in Diffusion Tensor Imaging: With Application to the Corpus Callosum in Alzheimer’s Disease
    Authors: Tang, Xiaoying; Qin, Yuanyuan; Zhu, Wenzhen; Miller, Michael I.
    Year: 2017
    Citation: Human Brain Mapping, DOI: 10.1002/hbm.23491

  2. Title: Atlas-based deep gray matter and white matter analysis in Alzheimer’s disease: diffusion abnormality and correlation with cognitive function
    Authors: Qin Yuanyuan; Zhang Shun; Guo Linying; Zhang Min; Zhu Wenzhen
    Year: 2016
    Citation: Chinese Journal of Radiology, WOSUID: CSCD:5699935

  3. Title: Shape and diffusion tensor imaging based integrative analysis of the hippocampus and the amygdala in Alzheimer’s disease
    Authors: Tang, Xiaoying; Qin, Yuanyuan; Wu, Jiong; Zhang, Min; Zhu, Wenzhen; Miller, Michael I.
    Year: 2016
    Citation: Magnetic Resonance Imaging, DOI: 10.1016/j.mri.2016.05.001

  4. Title: Simulating the Evolution of Functional Brain Networks in Alzheimer’s Disease: Exploring Disease Dynamics from the Perspective of Global Activity
    Authors: Li, Wei; Wang, Miao; Zhu, Wenzhen; Qin, Yuanyuan; Huang, Yue; Chen, Xi
    Year: 2016
    Citation: Scientific Reports, DOI: 10.1038/srep34156

  5. Title: Frequency-specific Alterations of Large-scale Functional Brain Networks in Patients with Alzheimer’s Disease
    Authors: Qin, Yuan-Yuan; Li, Ya-Peng; Zhang, Shun; Xiong, Ying; Guo, Lin-Ying; Yang, Shi-Qi; Yao, Yi-Hao; Li, Wei; Zhu, Wen-Zhen
    Year: 2015
    Citation: Chinese Medical Journal, DOI: 10.4103/0366-6999.151654

  6. Title: Frequency-specific Alterations of Large-scale Functional Brain Networks in Patients with Alzheimer’s Disease (Correction)
    Authors: Qin, Y. Y.; Li, Y. P.; Zhang, S.; Xiong, Y.; Guo, L. Y.; Yang, S. Q.
    Year: 2015
    Citation: Chinese Medical Journal, DOI: 10.4103/0366-6999.156150

  7. Title: An Efficient Approach for Differentiating Alzheimer’s Disease from Normal Elderly Based on Multicenter MRI Using Gray-Level Invariant Features
    Authors: Li, Muwei; Oishi, Kenichi; He, Xiaohai; Qin, Yuanyuan; Gao, Fei; Mori, Susumu
    Year: 2014
    Citation: PLOS ONE, DOI: 10.1371/journal.pone.0105563

  8. Title: Discriminative Analysis of Multivariate Features from Structural MRI and Diffusion Tensor Images
    Authors: Li, Muwei; Qin, Yuanyuan; Gao, Fei; Zhu, Wenzhen; He, Xiaohai
    Year: 2014
    Citation: Magnetic Resonance Imaging, DOI: 10.1016/j.mri.2014.05.008

  9. Title: Exploring the Functional Brain Network of Alzheimer’s Disease: Based on the Computational Experiment
    Authors: Li, YaPeng; Qin, Yuanyuan; Chen, Xi; Li, Wei
    Year: 2013
    Citation: PLOS ONE, DOI: 10.1371/journal.pone.0073186

  10. Title: Gross Feature Recognition of Anatomical Images Based on Atlas Grid (GAIA)
    Authors: Qin, Yuan-Yuan; Hsu, Johnny T.; Yoshida, Shoko; Faria, Andreia V.; Oishi, Kumiko; et al.
    Year: 2013
    Citation: NeuroImage: Clinical, DOI: 10.1016/j.nicl.2013.08.006

  11. Title: In vivo Quantitative Whole-brain Diffusion Tensor Imaging Analysis of APP/PS1 Transgenic Mice
    Authors: Qin, Yuan-Yuan; Li, Mu-Wei; Zhang, Shun; Zhang, Yan; Zhao, Ling-Yun; et al.
    Year: 2013
    Citation: Neuroradiology, DOI: 10.1007/s00234-013-1195-0

  12. Title: The Functional Brain Network Changes of Alzheimer’s Disease
    Authors: Li YaPeng; Qin YuanYuan; Li Wei
    Year: 2013
    Citation: Chinese Journal of Medical Physics, WOSUID: CSCD:5004621

  13. Title: Voxel-Based Diffusion Tensor Imaging of an APP/PS1 Mouse Model of Alzheimer’s Disease
    Authors: Shu, Xiaogang; Qin, Yuan-Yuan; Zhang, Shun; Jiang, Jing-Jing; Zhang, Yan; et al.
    Year: 2013
    Citation: Molecular Neurobiology, DOI: 10.1007/s12035-013-8418-6

  14. Title: Stromal Cell-Derived Factor 1 Alpha Decreases Beta-Amyloid Deposition in Alzheimer’s Disease Mouse Model
    Authors: Wang, Qi; Xu, Yi; Chen, Jin-Cao; Qin, Yuan-Yuan; Liu, Mao; et al.
    Year: 2012
    Citation: Brain Research, DOI: 10.1016/j.brainres.2012.04.011