Resumen:
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[EN] Abstract: Background: Acne vulgaris is the most common dermatological pathology worldwide.
The currently used methodologies for the evaluation and monitoring of acne have been analyzed in
several studies, highlighting ...[+]
[EN] Abstract: Background: Acne vulgaris is the most common dermatological pathology worldwide.
The currently used methodologies for the evaluation and monitoring of acne have been analyzed in
several studies, highlighting important limitations that can be concretely addressed using image
processing methods by performing segmentation on different acne vulgaris image modalities. These
techniques reduce the costs of treatment and acne severity grading, since they improve objectivity
and are less time-consuming. That is why, in the last decade, several studies that propose segmentation
methodologies on acne patients¿ images have been published. The aim of this work is to analyze
the segmentation methods developed for acne vulgaris images until now, including an analysis
of the processing techniques and image modalities used, as well as the results. Results: Following
the PRISMA statement and PICO model, 27 studies were included in the systematic review, and
subsequently, they were divided into two groups: those that discuss methods based on classical
image processing techniques, such as contrast adjustment and conversion of RGB images to other
color spaces, and those discussing methods based on machine learning algorithms. Conclusions:
Currently, there is no preference between one group of segmentation methods or the other. Moreover,
the lack of uniformity in the evaluation of results for each study makes the comparison of methods
difficult. The preferred image modality for segmentation is conventional photography, which
shows a research gap in the application of segmentation algorithms to other acne vulgaris image
modalities that could be useful, such as fluorescence imaging.
Keywords: bioinformatics; acne; image segmentation; image processing;
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