Dear colleagues,
please find enclosed the call for papers for our Special Issue
Kind regards
Guest Editors
[apologies for multiple postings]
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Synthetic Images to Support Computer-Aided Diagnosis Systems
https://www.sciencedirect.com/journal/pattern-recognition-letters/about/cal…
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DESCRIPTION OF THE ISSUE
Today's health systems collect and deliver most medical data in digital
format, mainly thanks to the scientific and technological advances that
have led to digitization and increased generation and collection of data
describing real-world applications or processes.
The availability of medical data enables a large number of artificial
intelligence applications, and there is growing interest in quantitative
analysis of clinical images, such as Positron Emission Tomography,
Computerized Tomography, and Magnetic Resonance Imaging.
In addition, machine and deep learning models and data-driven artificial
intelligence applications have proven to improve the management and
decision-making to improve the discovery of new therapeutic tools, support
diagnostic decisions, aid in the rehabilitation process, etc.
Despite the potential of data-driven solutions, many problems prevent or
delay the development of such solutions. For example, the increasing amount
of available data can lead to increased effort to make a diagnosis and is
even more challenging due to high inter/intra patient variability, the
availability of different imaging techniques, the absence of completely
standard acquisition procedures, and the need to consider data from
multiple sensors and sources.
Additional relevant issues are data access and the representativeness of
the captured sample compared to the actual population. Access to real data
may be delayed or even prevented for various reasons, such as privacy,
security, and intellectual property, or the development of the necessary
(quality) acquisition and preparation technology. Sample representativeness
is another critical issue involving class imbalance and the representation
of rare and extreme events, which is crucial for the performance of
artificial intelligence models.
For these reasons, researchers have recently explored the use of synthetic
data (SD) with three different use cases regarding (i) data augmentation to
balance data sets or supplement available data before training a model,
(ii) privacy preservation to enable secure and private sharing of sensitive
data; and (iii) simulation: to estimate and teach systems in situations
that have not been observed in actual reality.
The main goals of this special issue are to bring together diverse, new,
and impactful research on synthetic data generation for biomedical imaging
with a powerful impact on Computer-Aided Diagnosis systems for real-world
clinical applications.
TOPICS
Topics of interest to this special issue include, but are not limited to:
- Synthetic Images for Privacy-Preserving Computer-Aided Diagnosis Systems
- Computer-Aided Diagnosis Systems Training with Synthetic Images
- Synthetic Images for Benchmarking Computer-Aided Diagnosis Systems
- Medical Image Translation
- Text-guided Medical Image Generation
- Multimodal Medical Image Generation
- Synthetic Images for Computer-Aided Diagnosis Systems Domain Adaptation
- Synthetic Images for Computer-Aided Diagnosis Systems Domain
Generalisation
SUBMISSION GUIDELINES
The PRL's submission system (Editorial Manager®) will be open for
submissions to our Special Issue from July 1st, 2024. When submitting your
manuscript please select the article type VSI: SISCAD. Both the Guide for
Authors and the submission portal can be found on the Journal Homepage:
Guide for authors - Pattern Recognition Letters - ISSN 0167-8655 |
ScienceDirect.com by Elsevier.
IMPORTANT DATES
- Submission Period: *1-31 July 2024*
- Acceptance Deadline: *9 December 2024*
GUEST EDITORS
Andrea Loddo, University of Cagliari (Italy)
Lorenzo Putzu, University of Cagliari (Italy)
Cecilia Di Ruberto, University of Cagliari (Italy)
Carsten Marr, Helmholtz Center Munich German Research Center for
Environmental Health, Neuherberg (Germany)
Albert Comelli, Ri.MED Foundation (Italy)
Alessandro Stefano, Institute of Molecular Bioimaging and Physiology,
National Research Council of Cefalu’ (Italy)
___________
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*