Abstract

Differentiating melanocytic from non-melanocytic (MnM) skin lesions is the first and important step required by clinical experts to automatically diagnosis pigmented skin lesions (PSLs). In this paper, a new clinically-oriented expert system (COE-Deep) is presented for automatic classification of MnM skin lesions through deep-learning algorithms without focusing on pre- or post-processing steps. For the development of COE-Deep system, the convolutional neural network (CNN) model is employed to extract the prominent features from region-of-interest (ROI) skin images. Afterward, these features are further purified through stack-based autoencoders (SAE) and classified by a softmax linear classifier into categories of melanocytic and non-melanocytic skin lesions. The performance of COE-Deep system is evaluated based on 5200 clinical images dataset obtained from different public and private resources. The significance of COE-Deep system is statistical measured in terms of sensitivity (SE), specificity (SP), accuracy (ACC) and area under the receiver operating curve (AUC) based on 10-fold cross validation test. On average, the 90% of SE, 93% of SP, 91.5% of ACC and 0.92 of AUC values are obtained. It noticed that the results of the COE-Deep system are statistically significant. These experimental results indicate that the proposed COE-Deep system is better than state-of-the-art systems. Hence, the COE-Deep system is able to assist dermatologists during the screening process of skin cancer.

Highlights

  • Melanocytic and non-melanocytic (MnM) skin lesions [1] are the two major form of skin cancer

  • The statistical analysis was performed through sensitivity (SE), specificity (SP), accuracy (ACC) and area under the receiver operating curve (AUC) on the dataset of 5200 dermoscopy images collected from different resources

  • It is due to the fact that it is very difficult to recognize non-melanocytic lesions compared to melanocytic skin lesions

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Summary

Introduction

Melanocytic and non-melanocytic (MnM) skin lesions [1] are the two major form of skin cancer. The past studies suggested that the researchers focused only the classification of melanocytic lesions (benign and melanoma) from dermoscopy images due to certain issues mentioned in the previous section It is not so easy for clinical experts to differentiate among non-melanocytic lesions [8] such as SK, BCC or SCC compared with melanocytic lesions. The old CADx tools were developed through old machine learning algorithms such as artificial neural network (ANN), support vector machines (SVMs) and AdaBoost classifiers to recognize only melanocytic lesions Those CADx tools required lots of pre- or post-processing steps and domain expert knowledge for features selection. According to my limited knowledge, there is no study available that classify MnM through deep learning algorithm

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