A Computational Approach to Pertinent Feature Extraction for Diagnosis of Melanoma Skin Lesion


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Аннотация

Melanoma, starts growing in melanocytes, is less common but more serious and aggressive than any other types of skin cancers found in human. Melanoma skin cancer can be completely curable if it is diagnosed and treated in an early stage. Biopsy is a confirmation test of melanoma skin cancer which is invasive, time consuming, costly and painful. To prevent this problem, research regarding computerized analysis of skin cancer from dermoscopy images has become increasingly popular for last few years. In this research, we extract the pertinent features from dermoscopy images related to shape, size and color properties based on ABCD rule. Although ABCD features were used before, these features were mostly calculated to reflect asymmetry, compactness index as border irregularity, color variegation and average diameter. This paper proposes one asymmetry feature, three border irregularity features, one color feature and two diameter features as distinctive and pertinent. Implementation of our approach indicates that each of these proposed features is able to detect melanoma lesions with over 72% accuracy individually and the overall diagnostic system achieves 98% classification accuracy with 97.5% sensitivity and 98.75% specificity. Therefore, this method could assist dermatologist for making decision clinically.

Авторлар туралы

Sharmin Majumder

Department of Electrical and Electronic Engineering, Chittagong University of Engineering and Technology

Хат алмасуға жауапты Автор.
Email: sharminjouty48@gmail.com
Бангладеш, Chittagong, 4349

Muhammad Ullah

Department of Electrical and Electronic Engineering, Chittagong University of Engineering and Technology

Email: sharminjouty48@gmail.com
Бангладеш, Chittagong, 4349

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