Dear colleagues,
please find enclosed the call for papers for the third edition of AIRCAD
2025 @ ICIAP.
Kind regards
[apologies for multiple postings]
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CALL FOR PAPERS - AIRCAD 2025 @ICIAP 2025
3rd International Workshop on Artificial Intelligence and Radiomics in
Computer-Aided Diagnosis AIRCAD 2025
held in conjunction with the 23rd International Conference on Image
Analysis and Processing ICIAP2025,
Roma, Italy, September 2025
https://sites.google.com/view/aircad2025
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AIMS AND SCOPE
In the modern era, healthcare systems predominantly operate with digital
medical data, facilitating a wide array of artificial intelligence
applications. There's a growing interest in quantitatively analysing
clinical images through techniques like Positron Emission Tomography,
Computerised Tomography, and Magnetic Resonance Imaging, particularly in
the realms of texture analysis and radiomics. Through machine and deep
learning advancements, researchers can glean insights to enhance the
discovery of therapeutic tools, bolster diagnostic decisions, and aid in
the rehabilitation process. However, the huge volume of available data may
intensify the diagnostic effort, exacerbated by high inter/intra-patient
variability, diverse imaging techniques, and the necessity to incorporate
data from multiple sensors and sources, thus giving rise to the
well-documented domain shift issue.
To tackle these challenges, radiologists and pathologists employ
Computer-Aided Diagnosis (CAD) systems, which assist in analysing
biomedical images. These systems mitigate or eradicate difficulties arising
from inter- and intra-observer variability, ensuring consistent assessments
of the same region by the same physician at various times and across
different physicians, thanks to adept algorithms.
Additionally, significant issues such as delayed or restricted data access,
driven by privacy, security, and intellectual property concerns, pose
considerable hurdles. Consequently, researchers are increasingly exploring
the use of synthetic data, both for model training and for simulating
scenarios not observed in real life.
Furthermore, the emergence of foundation models, such as Vision
Transformers and large multimodal models, represents a paradigm shift in
medical image analysis. These models, pre-trained on vast datasets,
demonstrate remarkable adaptability across various tasks, including
segmentation, classification, and multi-modal integration. Their ability to
generalise effectively offers promising avenues for addressing domain shift
issues and integrating heterogeneous data sources, enhancing diagnostic and
predictive accuracy.
This workshop aims to provide a comprehensive overview of recent
advancements in biomedical image processing, leveraging machine learning,
deep learning, artificial intelligence, and radiomics features. Emphasis is
placed on practical applications, including potential solutions to address
domain shift issues, the utilisation of synthetic images to augment CAD
systems, and the integration of foundation models into clinical workflows.
Ultimately, the aim is to explore how these techniques can seamlessly
integrate into the conventional medical image processing workflow,
encompassing image acquisition, retrieval, disease detection, prediction,
and classification.
TOPICS
The workshop calls for submissions addressing, but not limited to, the
following topics:
- Machine and Deep Learning techniques for image analysis (i.e.,
segmentation of cells, tissues, organs, lesions; classification of cells,
diseases, tumours, etc.)
- Image Registration Techniques
- Image Preprocessing Techniques (e.g., noise reduction, enhancement of
contrast)
- Image-based 3D reconstruction
- Computer-Aided Detection and Diagnosis Systems (CADs) to support
clinicians in identifying pathological conditions
- Radiomics and Artificial intelligence for personalised medicine
- Machine and Deep Learning as tools to support medical diagnoses and
decisions
- Image retrieval (e.g., context-based retrieval, lesion similarity)
- Advanced architecture for biomedical image remote processing, elaboration
and transmission
- 3D Vision, Virtual, Augmented and Mixed Reality application for remote
surgery
- Image processing techniques for privacy-preserving AI in medicine.
- Generation and utilisation of synthetic medical images for model training
and validation
- Foundation models (e.g., Vision Transformers, GPT-like architectures) for
medical image analysis and multi-modal data integration
- Techniques for evaluating the reliability and robustness of synthetic
data in clinical scenarios
- Ethical and Regulatory Aspects in AI-Driven Medical Imaging
- Frameworks for ethical AI development and deployment in healthcare.
- Addressing biases and ensuring fairness in AI-driven diagnostic systems.
- Compliance with regulatory standards for AI-based medical devices
- Addressing the transparency issue with explainable AI models in clinical
practice.
SUBMISSION GUIDELINES
Accepted papers will be included in the ICIAP 2025 proceedings, which will
be published by Springer as Lecture Notes in Computer Science series
(LNCS). When preparing your contribution, please follow the guidelines
provided on the ICIAP main conference website. The maximum number of pages
is 12 including references. Each contribution will be reviewed based on
originality, significance, clarity, soundness, relevance and technical
content. The submission will be handled electronically via the Conference's
CMT Website:
https://cmt3.research.microsoft.com/AIRCAD2025
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Once accepted, the presence of at least one author at the event and the
oral presentation of the paper are expected. For more details about the
registration see the ICIAP main conference details.
IMPORTANT DATES
- Paper Submission : 15 June, 2025
- Notifications to Authors : 30 June 2025
- Camera Ready Papers Due : 10 July, 2025
- Workshop Event: 15/16 September, 2025
ORGANIZERS
Albert Comelli, Ri.MED Foundation, acomelli(a)fondazionerimed.com
Cecilia Di Ruberto, University of Cagliari, dirubert(a)unica.it
Andrea Loddo, University of Cagliari, andrea.loddo(a)unica.it
Lorenzo Putzu, University of Cagliari, lorenzo.putzu(a)unica.it
Alessandro Stefano, Institute of Molecular Bioimaging and Physiology,
National Research Council of Cefalu’, alessandro.stefano(a)ibfm.cnr.it
Luca Zedda, University of Cagliari, luca.zedda(a)unica.it
<luca.zedda(a)unica.it>
___________
Andrea Loddo
PhD | Dept. Of Mathematics and Computer Science | University of Cagliari
Via Ospedale 72, Cagliari, Italy
Office: +39 070 675 8503
*And after all we're only ordinary men*