Segmentation and ABCD rule extraction for skin tumors classification
- URL: http://arxiv.org/abs/2106.04372v1
- Date: Tue, 8 Jun 2021 14:07:59 GMT
- Title: Segmentation and ABCD rule extraction for skin tumors classification
- Authors: Mahammed Messadi, Hocine Cherifi (Le2i), Abdelhafid Bessaid
- Abstract summary: We present an automated diagnosis system based on the ABCD rule used in clinical diagnosis in order to discriminate benign from malignant skin lesions.
This framework has been tested on a dermoscopic database [16] of 320 images.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: During the last years, computer vision-based diagnosis systems have been
widely used in several hospitals and dermatology clinics, aiming at the early
detection of malignant melanoma tumor, which is among the most frequent types
of skin cancer. In this work, we present an automated diagnosis system based on
the ABCD rule used in clinical diagnosis in order to discriminate benign from
malignant skin lesions. First, to reduce the influence of small structures, a
preprocessing step based on morphological and fast marching schemes is used. In
the second step, an unsupervised approach for lesion segmentation is proposed.
Iterative thresholding is applied to initialize level set automatically. As the
detection of an automated border is an important step for the correctness of
subsequent phases in the computerized melanoma recognition systems, we compare
its accuracy with growcut and mean shift algorithms, and discuss how these
results may influence in the following steps: the feature extraction and the
final lesion classification. Relying on visual diagnosis four features:
Asymmetry (A), Border (B), Color (C) and Diversity (D) are computed and used to
construct a classification module based on artificial neural network for the
recognition of malignant melanoma. This framework has been tested on a
dermoscopic database [16] of 320 images. The classification results show an
increasing true detection rate and a decreasing false positive rate.
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