Special Session-2

ICMLC 2026 will be held in Nanjing, China on February 06-09, 2026. The ICMLC 2026 organizing committees invite you to submit the papers to special session. Each special session will be arranged for around 2 hours on Feb. 07 or 08’s afternoon. Now the information on special session as following:



Topic: Advances in Medical Image Analysis: AI, Automation, and Clinical Applications

Organizers | 组织者




Assoc. Prof. Yan Pang(Chair)
庞彦副教授
Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences
中国科学院深圳先进研究院



Assoc. Prof. Patrizia Savi(Co-chair)
Electronic and Telecommunication Dept.(DET),Politecnico di Torino,Italy



Assoc. Prof. Jingpeng Li(Co-chair)
李劲鹏副教授
South China University of Technology, China
华南理工大学


 


Introduction: Medical imaging plays a pivotal role in modern healthcare, serving as a critical tool for early diagnosis, treatment planning, and disease monitoring. With the rapid advancements in artificial intelligence, machine learning, and computer vision, the field of medical image analysis has witnessed transformative growth, enabling more accurate, efficient, and personalized patient care. This special session aims to bring together researchers, clinicians, and industry experts to discuss cutting-edge developments and real-world applications in medical image analysis. Topics will include, but are not limited to, deep learning-based segmentation and classification, multimodal image fusion, 3D reconstruction, explainable AI for clinical decision support, and integration of imaging data with electronic health records. The session will highlight how these innovations are bridging the gap between research and clinical practice, paving the way for smarter and more accessible diagnostic solutions.






Welcome to submit more proposal on ICMLC 2026 special session, please download:
 Proposals Submission Guidelines.

Learn more details or submit the proposal, please contact us:
Ms. Doris Ge
Email: icmlc@vip.126.com
Tel: +86-13709044746

 

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