CFP - Special Session: Learning from small data in medical imaging (LSD-MI)

From: Essam Rashed <rashed at gsis.u-hyogo.ac.jp>
Date: 2025-05-09 15:41:10 JST
To: image-temp at imageforum.org
image-MLの皆様、

兵庫県立大学のラシドと申します。

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*Call for papers: **Learning from Small Data in Medical Imaging (LSD-MI) *
A special session at the "*21st International Conference on Advanced Data
Mining and Applications 2025 (ADMA2025), 22-24 Oct. 2025, Kyoto, Japan*"

*Overview: *The integration of advanced learning techniques in medical
imaging offers unique opportunities for improved diagnostic accuracy and
personalized treatment. However, limited data availability poses
significant challenges, particularly for models requiring large datasets,
leading to reduced generalizability and increased overfitting risk. This
special session will address these challenges and explore strategies for
extracting insights from small datasets. We will discuss methodologies such
as data augmentation, transfer learning, active learning, and expert-driven
annotations to enhance model performance. By emphasizing robust validation
and interpretability, this session aims to advance medical imaging despite
data limitations. The "Learning from Small Data in Medical Imaging
(LSD-MI)" session aims to address the challenges of limited data
availability in the medical imaging field. We invite discussions on
innovative methodologies that enhance model performance, including data
augmentation, transfer learning, expert-driven annotations, and active
learning. Topics of interest encompass strategies for improving diagnostic
accuracy, ensuring model generalizability, and fostering interpretability
in data-scarce environments. By bridging the gap between advanced learning
techniques and clinical relevance, this session seeks to engage the broader
data mining community and provide valuable insights for ADMA2025 attendees
focused on practical applications in healthcare.

We invite contributions that address aspects including, but not limited to:

   - Techniques for data augmentation in medical imaging
   - Transfer learning approaches for small datasets
   - Few-shot learning methodologies tailored for medical applications
   - Active learning strategies to optimize data collection
   - Expert-driven annotation methods and their impact on model performance
   - Uncertainty quantification methods in medical imaging
   - Evaluating model generalizability in limited data scenarios
   - Robust validation techniques in medical imaging
   - Interpretability of machine learning models in healthcare
   - Applications of large language models (LLMs) in medical imaging
   - Case studies demonstrating successful applications of small data
   methodologies
   - Ethical considerations and biases in small dataset research
   - Collaborative frameworks for sharing medical imaging data across
   institutions


*Submission deadline:* 22 May 2025

More details: https://lsd-mi.github.io/LSD-MI2025/

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よろしくお願いします。


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ラシド イサム

兵庫県立大学大学院情報科学研究科

〒650-0047 神戸市中央区港島南町7-1-28

電話: 078-303-1924 (内線 610)

E-mail: rashed@gsis.u-hyogo.ac.jp

URL: *https://u-hyogo.info/research/faculty/erashed/
<https://u-hyogo.info/research/faculty/erashed/>*

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