AIRCAD Series
International Workshop on
Artificial Intelligence and Radiomics in
Computer-Aided Diagnosis
Scope
Nowadays, healthcare systems collect and provide most medical data in digital form. The availability of medical data enables a large number of artificial intelligence applications, and there is a growing interest in the quantitative analysis of clinical images using techniques such as Positron Emission Tomography, Computerized Tomography, and Magnetic Resonance Imaging, mainly applied to texture analysis and radiomics. In particular, thanks to machine and deep learning, researchers can generate insights to improve the discovery of new therapeutic tools, support diagnostic decisions, aid in the rehabilitation process, etc. However, the increasing amount of available data may lead to a more significant effort to make a diagnosis. Moreover, this task is even more challenging due to the high inter/intra patient variability, the availability of various imaging techniques, and the need to consider data from multiple sensors and sources.
To address the problems described, radiologists and pathologists today use tools to assist them in analysing biomedical images. They are known as Computer-Aided Diagnosis (CAD) systems and they allow to mitigate or eliminate the difficulties due to inter- and intra-observer variability, represented by various assessments of the same region, under the same assumptions, by the same physician at different times, and various assessments of the same region by several physicians, thanks to appropriate algorithms.
This workshop aims to provide an overview of recent advances in the field of biomedical image processing in medical imaging using machine learning, deep learning, artificial intelligence, and radiomics features. In particular, the ultimate goal is to analyse how these techniques can be employed in the typical medical image processing workflow, from image acquisition to classification, including retrieval, disease detection, prediction, and classification.
Topics
The workshop calls for submissions addressing, but not limited to, the following topics:
Biomedical Image Processing
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
Image-based 3D reconstruction
Computer-Aided Detection and Diagnosis Systems (CADs)
Biomedical Image Analysis
Radiomics and Artificial intelligence for personalised medicine
Multimodality fusion (e.g. MRI, PET, CT, Ultrasound) for diagnosis, image analysis and image-guided intervention
Machine and Deep Learning as tools to support medical diagnoses and decisions
Image retrieval (e.g., context-based retrieval, lesion similarity)
CAD architectures
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.
Chairs & Organizers
Albert Comelli
Ri.MED Foundation
Cecilia Di Ruberto
University of Cagliari
Andrea Loddo
University of Cagliari
Lorenzo Putzu
University of Cagliari
Alessandro Stefano
CNR - National Research Council of Cefalu’
Contacts
Albert Comelli <acomelli@fondazionerimed.com>
Cecilia Di Ruberto <dirubert@unica.it>
Andrea Loddo <andrea.loddo@unica.it>
Lorenzo Putzu <lorenzo.putzu@unica.it>
Alessandro Stefano <alessandro.stefano@ibfm.cnr.it>