[visionlist] Deadline Extension: IEEE Journal of Biomedical Health Informatics Special Issue on Skin Lesion Image Analysis for Melanoma Detection

Emre Celebi ecelebi at uca.edu
Wed Sep 27 14:51:32 -05 2017


The goals of this special issue are to summarize the state-of-the-art in
both the computerized analysis of skin lesion images, as well as image
acquisition technologies, providing future directions for this exciting
subfield of medical image analysis. The intended audience includes
researchers and practicing clinicians, who are increasingly using digital
analytic tools.

Invasive and in-situ malignant melanoma together comprise one of the most
rapidly increasing cancers in the world. Invasive melanoma alone has an
estimated incidence of 87,110 and of 9,730 deaths in the United States in
2017. Early diagnosis is critical, as melanoma can be effectively treated
with simple excision if detected early.

In the past, the primary form of diagnosis for melanoma has been unaided
clinical examination, which has limited and variable accuracy, leading to
significant challenges both in the early detection of disease and the
minimization of unnecessary biospies. In recent years, dermoscopy has
improved the diagnostic capability of trained specialists. However,
dermoscopy remains difficult to learn, and several studies have
demonstrated limits of dermoscopy when proper training is not administered.
In addition, even with sufficient training, analyses remain highly
subjective.

Newer imaging technologies such as infrared imaging, multispectral imaging,
and confocal microscopy, have recently come to the forefront in providing
the potential for greater diagnostic accuracy. In addition, various
research studies have been focused on developing algorithms for the
automated analysis of skin lesion images. Combinations of such technologies
have the potential to serve as adjuncts to physicians, improving clinical
management, especially for patients with a high degree of lesion burden.

This special issue aims to cover all aspects of skin lesion image analysis.
Topics of interest include, but are not limited to:

- Novel and emerging imaging technologies
- Image enhancement
- Image registration
- Image segmentation
- Feature extraction
- Image classification
- Hardware systems

We are particularly interested in studies that make their data sets and
software publicly available.

Please note that new submissions are required to be at least 70% different
from any other publications. For detailed manuscript preparation/submission
instructions, please visit http://jbhi.embs.org/for-autho
rs/prepare-and-submit-your-manuscript/
<https://access.lsus.edu/owa/redir.aspx?SURL=t2evkfs6KVIHI86xj8H26ou5ZMd8wu6tHNtW9rTy0-FTWFI7bNvUCGgAdAB0AHAAOgAvAC8AagBiAGgAaQAuAGUAbQBiAHMALgBvAHIAZwAvAGYAbwByAC0AYQB1AHQAaABvAHIAcwAvAHAAcgBlAHAAYQByAGUALQBhAG4AZAAtAHMAdQBiAG0AaQB0AC0AeQBvAHUAcgAtAG0AYQBuAHUAcwBjAHIAaQBwAHQALwA.&URL=http%3a%2f%2fjbhi.embs.org%2ffor-authors%2fprepare-and-submit-your-manuscript%2f>

Guest Editors

M. Emre Celebi
University of Central Arkansas
ecelebi AT uca DOT edu

Noel Codella
IBM T. J. Watson Research Center
nccodell AT us DOT ibm DOT com

Allan Halpern
Memorial Sloan Kettering Cancer Center
halperna AT mskcc DOT org

Dinggang Shen
University of North Carolina, Chapel Hill
dinggang_shen AT med DOT unc DOT edu

Important Dates

Submission of initial manuscripts: October 31, 2017
Initial notifications: January 1, 2018
Submission of revised manuscripts: March 1, 2018
Final notifications: April 1, 2018
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